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Review

Impact of Foods and Dietary Supplements Containing Hydroxycinnamic Acids on Cardiometabolic Biomarkers: A Systematic Review to Explore Inter-Individual Variability

by
Daniela Martini
1,
Laura Chiavaroli
2,3,
Antonio González-Sarrías
4,
Letizia Bresciani
1,
Susana A. Palma-Duran
5,
Margherita Dall’Asta
2,
Georgia-Eirini Deligiannidou
6,
Marika Massaro
7,
Egeria Scoditti
7,
Emilie Combet
5,
Viktorija Maksimova
8,
Mireia Urpi-Sarda
9,10,
Christos A. Kontogiorgis
6,
Cristina Andrés-Lacueva
9,10,
Eileen R. Gibney
11,
Daniele Del Rio
1,12,
Christine Morand
13,
Mar Garcia-Aloy
9,10,
Ana Rodriguez-Mateos
14 and
Pedro Mena
2,*
1
Human Nutrition Unit, Department of Veterinary Science, University of Parma, 43121 Parma, Italy
2
Human Nutrition Unit, Department of Food & Drug, University of Parma, 43124 Parma, Italy
3
Department of Nutritional Sciences, Faculty of Medicine, University of Toronto, Toronto, ON M5S 1A8, Canada
4
Laboratory of Food and Health, Research Group on Quality, Safety and Bioactivity of Plant Foods, CEBAS-CSIC, 30100 Murcia, Spain
5
School of Medicine, Dentistry and Nursing, College of Medical, Veterinary and Life Sciences, University of Glasgow, Glasgow G31 2ER, UK
6
Laboratory of Hygiene and Environmental Protection, Department of Medicine, Democritus University of Thrace, 68100 Alexandroupolis, Greece
7
National Research Council (CNR), Institute of Clinical Physiology (IFC), 73100 Lecce, Italy
8
Department of Applied Pharmacy, Faculty of Medical Sciences, Goce Delcev University, 2000 Stip, Macedonia
9
Biomarkers & Nutrimetabolomic Laboratory, Department of Nutrition, Food Sciences and Gastronomy, XaRTA, INSA, Faculty of Pharmacy and Food Sciences, University of Barcelona, 08921 Santa Coloma de Gramenet, Spain
10
CIBER de Fragilidad y Envejecimiento Saludable (CIBERFES), Instituto de Salud Carlos III, 08028 Barcelona, Spain
11
UCD Institute of Food and Health, University College Dublin, Dublin 4, Ireland
12
School of Advanced Studies on Food and Nutrition, University of Parma, Parma, Italy and Microbiome Research Hub, University of Parma, 43124 Parma, Italy
13
Université Clermont Auvergne, Institut National de la Recherche Agronomique (INRA), Unité de Nutrition Humaine (UNH), CRNH Auvergne, F-63000 Clermont-Ferrand, France
14
Department of Nutritional Sciences, School of Life Course Sciences, Faculty of Life Science and Medicine, King’s College London, London SE1 9NH, UK
*
Author to whom correspondence should be addressed.
Submission received: 10 June 2019 / Revised: 30 July 2019 / Accepted: 2 August 2019 / Published: 5 August 2019
(This article belongs to the Special Issue Plant Food, Nutrition and Human Health)

Abstract

:
Plant-based diets rich in bioactive compounds such as polyphenols have been shown to positively modulate the risk of cardiometabolic (CM) diseases. The inter-individual variability in the response to these bioactives may affect the findings. This systematic review aimed to summarize findings from existing randomized clinical trials (RCTs) evaluating the effect of hydroxycinnamic acids (HCAs) on markers of CM health in humans. Literature searches were performed in PubMed and the Web of Science. RCTs on acute and chronic supplementation of HCA-rich foods/extracts on CM biomarkers were included. Forty-four RCTs (21 acute and 23 chronic) met inclusion criteria. Comparisons were made between RCTs, including assessments based on population health status. Of the 44 RCTs, only seven performed analyses on a factor exploring inter-individual response to HCA consumption. Results demonstrated that health status is a potentially important effect modifier as RCTs with higher baseline cholesterol, blood pressure and glycaemia demonstrated greater overall effectiveness, which was also found in studies where specific subgroup analyses were performed. Thus, the effect of HCAs on CM risk factors may be greater in individuals at higher CM risk, although future studies in these populations are needed, including those on other potential determinants of inter-individual variability. PROSPERO, registration number CRD42016050790.

1. Introduction

Cardiometabolic (CM) diseases include cardiovascular diseases (CVD), diabetes and their related risk factors, such as obesity, insulin resistance, impaired glucose tolerance, dyslipidemia, hypertension and central adiposity. Recently, the Global Burden of Disease study stated that CM diseases are the leading causes of death worldwide, mainly triggered by the rise in biomarkers of metabolic syndrome (MetS), such as waist circumference (WC), fasting blood glucose, triglycerides (TG) and blood pressure (BP) [1]. A diet rich in plant-based foods, such as fruit and vegetables, might decrease the risk of CVD in all individuals [2,3,4]. Plant foods are generally rich in fiber, vitamins, minerals and other bioactive compounds like glucosinolates, carotenoids and phenolic compounds. Phenolics are a family of over 5000 compounds, which can be classified as flavonoids (i.e., flavonols, flavanones, flavones, flavan-3-ols, isoflavones and anthocyanins) and nonflavonoids (including phenolic acids, lignans, hydrolyzable tannins and stilbenes) [5,6]. Among nonflavonoids, phenolic acids are low molecular weight compounds composed of at least one organic carboxylic acid bound to a phenol ring. Phenolic acids can be in turn classified into hydroxybenzoic or hydroxycinnamic acids (HCAs), if deriving from benzoic or cinnamic acid, respectively. Regarding HCAs, p-coumaric, ferulic and caffeic acids are the most abundant in plant-based foods, but can also be bound to other organic acids, such as quinic acid, by forming coumaroylquinic, feruloylquinic or caffeoylquinic acids (CQAs), mainly known as chlorogenic acids (CGAs) [6,7,8].
HCAs are present in several food sources, including coffee, cereals, potatoes and artichokes and, for this reason, they are generally ingested daily in high amounts with an estimated intake of ~200 mg/day in adults [9,10]. Once ingested, only a small part of HCAs are absorbed in the upper gastrointestinal tract, while the majority reaches the colon unmodified, to be then subjected to extensive catabolism by the gut microbiota [11]. These compounds and their metabolites, such as dihydrocaffeic and dihydroferulic acids, have been associated with a wide range of biological activities, which may contribute to the prevention of CM diseases [12]. For instance, HCA consumption has been shown to exert anti-inflammatory activities, and play a role in glucose and lipid metabolism regulation in in vivo animal and human studies [13]. However, despite the extensive literature available on this topic, the evidence regarding the role of HCAs on CM health is not consistent [5,6,13,14]. This can be partially due to the highly heterogeneous characteristics of human study participants recruited in the different investigations [15].
An increasing number of studies investigating the health effects of plant food bioactives have indeed shown that the response to the consumption of phenolic compounds may vary among different individuals [16,17,18,19]. This inter-individual variability may be due to genetic and non-genetic factors, such as age, sex, ethnicity and gut microbiota, and it may involve variations in human metabolism and in the bioavailability of plant food bioactives [16,17]. These aspects may affect the biological response on CM health outcomes and, as a result, some individuals may benefit more than others from the health effects of these compounds. To better elucidate the impact of inter-individual variability on the effects of phenolics on human health, some research groups have reviewed the current literature related to specific classes of phenolic compounds, namely the class of flavonoids, including flavanols and flavonols, suggesting that these bioactives might be more effective in specific subgroups [18,19].
However, the inter-individual variability in the efficacy of the main dietary phenolic acids, namely HCAs, which are consumed in abundance in coffee and cereals, has not been fully explored. Therefore, the aim of this systematic review was to provide an overview of the randomized controlled trials (RCTs) evaluating the effect of HCAs on markers of CM health, in order to increase the knowledge about the impact of the inter-individual variability in the responsiveness to the consumption of this class of phenolic compounds.

2. Materials and Methods

2.1. Search Strategy and Study Selection

This systematic review was conducted following the Cochrane Handbook for Systematic Reviews of Interventions [20] and the Centre for Reviews and Dissemination’s guidance for reviews in health care [21] and was reported in line with the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) statement guidelines (Supplementary Table S1) [22]. The review protocol was registered in the International Prospective Register of Systematic Reviews (PROSPERO, registration number CRD42016050790) [23].
The systematic literature search was conducted using PubMed (http://0-www-ncbi-nlm-nih-gov.brum.beds.ac.uk/pubmed) and the Web of Science (http://apps.webofknowledge.com) databases on December 2016 (updated December 2018), using the syntaxes reported in Supplementary Table S2. Electronic searches were supplemented with manual searches of references from included studies and reviews on similar topics. Studies were included in the present systematic review, based on the PICOS process (Supplementary Table S3), if (i) they were RCTs investigating the effect of the consumption of HCA-rich foods (artichoke, coffee, potato and cereal-based foods such as rye) or HCA extracts (i.e., containing HCAs extracted from one of the above-mentioned HCA-rich foods) in humans, where this was compared to a control, which was not high in HCAs; (ii) provided a quantitative characterization of the HCA content and (iii) reported on one or more of the following CM markers: Body mass index (BMI), WC, systolic and diastolic BP, TG, high-density lipoprotein cholesterol (HDL), low-density lipoprotein cholesterol (LDL), flow-mediated dilation (FMD), blood glucose, blood insulin, glycated hemoglobin (HbA1c), platelet aggregation or exercise capacity.
Exclusion criteria included (i) the presence of a co-intervention (e.g., physical activity) or other confounding factors; and (ii) not reported in a European language. No restrictions for the characteristics of study participants (e.g., age, sex and health condition) were applied.

2.2. Data Extraction

Two author-pairs independently assessed the studies for their inclusion. Disagreement between authors was resolved through consultation with a third author (PM) who performed an independent assessment to reach a consensus. Data were extracted from each identified study using a standardized form and the following information was collected: Name of first author; year of publication; study location; number of participants/controls; characteristics of intervention and placebo/control arms; characteristics of test food (e.g., HCA content); potential factors (e.g., sex, pathophysiological status) influencing the heterogeneity in the responses to the supplementation with HCA-rich food/extracts [24]; outcomes (BMI, WC, systolic and diastolic BP, TG, HDL, LDL, FMD, blood glucose, blood insulin and HbA1c); main findings. Studies were also assessed for whether there were any assessments made to explain inter-individual variability, including subgroup analyses (e.g., for age, pathophysiological status, sex, dietary patterns or specific polymorphisms). For these studies, the above-mentioned data were collected for each subgroup.
Data were then summarized by a qualitative assessment based on the results reported in individual studies. For each outcome assessed, studies were grouped by those significant or not and baseline levels of the outcome were used to compare studies. For studies that explored inter-individual variability in their own analyses, the results for each subgroup were assessed and summarized.

2.3. Risk of Bias

Risk of bias of the individual studies was assessed independently by two authors following the Cochrane Risk of Bias Tool [20]. The following categories were assessed: 1. Sequence generation and allocation sequence concealment (selection bias), 2. blinding of participants and personnel (performance bias), 3. blinding of outcome assessment (detection bias), 4. incomplete outcome data (attrition bias) and 5. selective outcome reporting (reporting bias). For each study, each category was assessed as either “Low risk of bias”, “High risk of bias” or “Unclear risk of bias”.

3. Results

3.1. Study Selection

The study selection process is shown in Figure 1. A total of 811 records were identified through the database search. After removing 185 duplicate articles, 626 studies were screened and 540 were excluded based on the title or abstract. A total of 86 eligible records went under the full text screening process, after which 41 records were excluded (Figure 1). Forty-five publications met eligibility criteria, providing data on a total of 44 unique RCTs, which were assessed in the qualitative analysis. The difference between the number of publications and the number of RCTs was due to the fact that three publications were on the same RCT but reported on different CM risk factors and, in one case, one publication reported results on two different RCTs.

3.2. Characteristics and Risk of Bias of the Included Studies

The main characteristics of the included studies are reported in Table 1 and Table 2. Out of the 45 included publications, 20 of them investigated the acute (i.e., single dose) effects of HCAs, which provided data on 21 RCTs (Mills et al. [25] included two different RCTs in the same publication). The remaining 25 publications investigated the chronic (2–16 weeks) effects of HCAs, which provided data on 23 RCTs (Martínez-López et al. 2018, Sarriá et al. 2016 and Sarriá et al. 2018 [26,27,28] provided data on different outcomes from the same RCT).
Most of the RCTs were performed in Japan (n = 11), followed by the United States of America and the United Kingdom (n = 5), Australia and Iran (n = 4), Italy (n = 3) and Germany, Denmark, Norway, Sweden, Finland, Greece, Thailand, Colombia, Mexico, Switzerland, Spain and Austria (n = 1).
For either acute or chronic studies, coffee was the most commonly investigated product, used as the HCA-source in 30 RCTs either as a beverage (n = 27), coffee polyphenols (n = 2) or as a green coffee extract (GCE; n = 1). Conversely, artichokes (n = 3), cereals (i.e., rye and wheat, n = 3) and potatoes (n = 2) were the least used sources of HCA. Pure compounds were also tested (n = 6), including both 3- and 5-CQA, ferulic acid or a mix of CGAs.
Risks of bias across the studies and within individual studies are shown in Supplementary Figure S1 and Supplementary Figure S2, respectively.
Studies often lacked details useful to make a judgment, mainly no mention of whether there was allocation concealment or blinding of outcome assessment, resulting in the majority of studies with domains predominantly assessed as unclear risk of bias. Conversely, there was very little high risk of bias observed where 0/21 acute studies and 4/23 chronic studies had only 1/5 domains (one study had two domains) rated as high.

3.3. Impact of Hydroxycinnamic Acids on Cardiometabolic Markers

3.3.1. Acute Studies

Table 1 reports the main results obtained from the 21 acute studies evaluating the impact of HCA-rich foods or dietary supplements (pure extracts) on CM health outcomes. As mentioned above, coffee was the main HCA-rich source considered (n = 11), while only few studies were focused on phenolic-rich extracts from coffee (n = 4), as well as on rye (n = 2), potatoes (n = 1) and pure CGAs (n = 3). Total doses of CGAs ranged from ~3 mg [29] to 600 mg [30,31] for the phenolic-rich foods and from 400 [32] to 900 mg [33] for pure compounds. The number of study participants ranged from n = 9 [34] to n = 41 [35], while mean age ranged from 23 [25,29,36] to 59 years [33,37]. Overall, studies were conducted on healthy individuals, except for two studies focused on overweight individuals [38] and on individuals with borderline (systolic BP (SBP): 130–139 mmHg, or diastolic BP (DBP): 85–89 mmHg) or stage 1 hypertension (systolic BP: 140–159 mmHg, or diastolic BP: 90–99 mmHg) [39] and one study on individuals who had self-reported gastrointestinal symptoms after eating cereal, particularly rye [40].
Among the outcomes, markers of blood glucose metabolism (i.e., postprandial glucose and insulin) were most often considered (n = 16), followed by BP (n = 8) and markers of endothelial function (i.e., FMD, n = 8). There were no studies focused on platelet aggregation or exercise capacity. For acute glucose metabolism, 16 studies reported a measure of postprandial glucose, 13 of which calculated an incremental area under the curve (IAUC) [29,30,31,34,35,36,38,40,41,42,43,44,45], while three of them evaluated the effect at various postprandial time points [37,39,46]. Of the 13 reporting an IAUC, only two reported a significant reduction in IAUC for glucose after a HCA-rich intervention compared to a control [36,44], whereas one study demonstrated an increase [43]. One of these two studies [36], conducted on 12 healthy young adults, found a significantly lower 2 h IAUC for glucose after consumption of 25 g sucrose with coffee enriched with GCE and containing ~432 mg CGAs, compared to 25 g sucrose in water. However, there was no effect when sucrose was consumed with normal or decaffeinated instant coffee containing ~220 mg CGAs [36]. The second study [44] was conducted in 12 healthy young adults who consumed one of three potato chips (from red, purple or white potatoes) containing up to ~360 mg CGAs and providing 50 g of available carbohydrates and compared to the consumption of 50 g available carbohydrates from plain salted wheat crackers. The 2 h IAUC for glucose was significantly lower after each of the potato chips compared to the cracker control. Nevertheless, it is possible that the observed differences here may be confounded by the greater fat or fiber content of the potato chips tested compared to the crackers. The one study that reported a significant increase in 2 h IAUC for glucose was that by Robertson et al. [43], in which they only found the increasing effect on IAUC glucose when caffeine was added to the test decaffeinated coffees in overweight men, using water as the control drink. No effect on IAUC glucose was found between the test drinks and control when the same amount of caffeine was added to each beverage. The study by Schubert et al. in 12 healthy adults, however, did not find an effect of decaffeinated coffee vs. water in either case when consumed without caffeine or when caffeine capsules were consumed [45]. However, Schubert et al. [45] used a standard breakfast with the test beverages, which included pancakes, butter and jam as a means to provide 48 g of carbohydrate as opposed to glucose load. Thus, the effects of caffeine on the glycemic response may differ when consumed with carbohydrates, which may affect its metabolism [47].
Of the three studies that only reported differences in postprandial glucose at various time points, one demonstrated a reduction at the peak glucose (30 min) after the ingestion of a coffee polyphenol extract providing 355 mg CQAs consumed with a meal compared to when the meal was consumed without the polyphenol extract in healthy men [46]. The other two studies found no differences between test and control groups in postprandial glucose response. However, one of these [39] in 19 middle-aged adults with borderline hypertension found a significant increase in postprandial glucose at 1 h and 2 h after the consumption of either the roasted coffee with CGAs or the coffee without CGAs. This study differs from the other two in that the test and control beverages were consumed alone, without a glucose load or meal as it was used in the other two studies, which may limit comparability as well as applicability.
Twelve studies reported a measure of acute postprandial insulin, ten of which calculated an IAUC [29,30,31,34,35,38,40,41,42,43] and two assessed the effect only at various postprandial time points [39,46]. Of the ten, one study reported a reduction in 3 h IAUC and one study an increase, while the others found no significant effects. The one study that found the reduction in IAUC was conducted by Rosen et al., which assessed five different varieties of rye made into breads and compared to a white wheat bread in 14 healthy adults [29]. Interestingly, there were only two rye bread varieties, which significantly reduced 3 h IAUC insulin compared to the white wheat control bread. These two breads differed from the other three rye breads in that one (Rekrut) had the highest soluble fiber content and the other (Amilo) had the highest insoluble fiber content, as well as higher levels of certain bioactives including caffeic and sinapic acid. Dietary fiber content was related to the early (0–60 min) lower levels of glucose and insulin and it has been previously demonstrated that breads made with endosperm rye, which are rich in soluble fibers and bioactives, reduce glycaemia whereas wheat breads enriched in rye do not [29]. Therefore, the bioprocessing may influence the metabolic effects of rye breads, as has been previously reported [48]. On the other hand, the study that reported an increase in IAUC for insulin by Rakvagg et al. [42], in 11 healthy young adults, only found a significant effect of the dark roast coffee (66.6 mg CQA) vs. control (water), but not of the light roast coffee (~400 mg CQA), so the increasing effect of the dark roast coffee may not be due to the CQA content but to some other confounding factors. This study was also the only one to administer the interventions 30 min before the glucose load, which may affect the interpretation and comparison of results. Of the two studies, which only reported the effect of HCAs on insulin at various postprandial time points, no significant effects were found [39,46].
Nine acute studies reported effects of HCA on BP [25,30,31,32,33,39,49], however only one demonstrated a significant reduction and one a significant increase while the remaining seven studies did not find significant effects. The study that demonstrated a reduction was performed in 23 healthy adults (mean age 52 y) [32], found a significant reduction in SBP and DBP over 3 h after consumption of 400 mg CGAs in 200 mL low nitrate water compared to plain water. It was not clear whether the control water was matched for nitrate content and thus, since nitric oxide (which nitrate is a precursor to) is a vasodilator, it may confound the effect on BP. The one study that found an increase was the one performed by Ioakeimidis et al. [49] in 24 healthy adults (mean age 33 y), who showed a significant increase in DBP and SBP over 2.5 h after consumption of a decaffeinated or caffeinated coffee (both with 81 mg of 3-CQA and 156 mg of 5-CQA) or caffeine tablets compared to a control of hot water. Interestingly, six of these nine studies assessing BP tested the effects of HCA when consumed alone (without a meal or glucose load) [25,32,33,39,49]. Only one study was done in a population with borderline or stage 1 hypertension (mean baseline SBP, 128 mmHg) [39], with the remaining in healthy adults (all with mean baseline SBP < 125 mmHg, except one study with 130.5 mmHg). Therefore, the applicability and generalizability of these results are limited.
Eight studies reported effects of HCAs on FMD with 50% (four studies) demonstrating a significant increase in FMD compared to control [25,30,46], and two studies demonstrating a significant increase in FMD within the HCA treatment [33,37], although not statistically significant compared to the control. Interestingly, the two studies that did not demonstrate a significant effect only assessed FMD at 2 h post-ingestion [32,39], whereas five of the six studies that found some significant effect assessed FMD between 4–6 h post-ingestion, which may be of importance since most of the HCAs are not metabolized until in the large intestine [5,6,11]. All studies were conducted in those who were healthy, other than one in borderline or stage 1 hypertension [39], with mean BMI in the normal range (21.8–25.6 kg/m2) and an average age of 45 y. Of the six studies that found some significant effects, four were conducted solely in men, with the other two having 67% and 38% men, in contrast to the two studies without significant effects, which had 58% and 17% men. Thus, these results may be indicative of a possible effect in men, although more studies assessing this are needed, specifically including women, with longer follow up for assessments (>2 h), and in higher risk populations.
In general, the acute studies demonstrated no effect of HCAs on glycaemia or BP, with some potential effects on FMD. Limitations of the comparability of these studies include the wide variability in terms of study design and methods of outcome assessment. Due to the vast majority of studies being conducted in healthy participants and with HCA coming mainly from coffee consumed alone, generalizability and applicability is also limited. From these studies it is unknown what the effects may be in higher risk populations, including those with impaired glucose tolerance or diabetes, and when HCAs are consumed as part of meals, which may be more common in real-world consumption.

3.3.2. Chronic Studies

The main findings associated with the 23 chronic studies investigating the effects of HCA-rich foods on cardiometabolic markers are reported in Table 2. Similar to the acute studies, coffee was the most commonly investigated HCA-rich food (n = 15), followed by artichokes (n = 3), wheat (n = 1) and potatoes (n = 1), while extracts or pure compounds were the subjects of three studies. The HCA dose was sometimes difficult to identify (e.g., in some cases expressed as mg/kg body weight) but it generally ranged from 25 mg CGAs [50] up to 1200 mg CGAs/day [51]. The number of participants ranged from 10 [52] to 183 [53] while mean age ranged from 23 [52] to 54 years [54]. Most study participants were generally healthy (n = 11), and sometimes with pathophysiological conditions such as mild hypertension or hypertension (n = 4), non-alcoholic fatty liver disease (NAFLD, n = 1), MetS (n = 2), impaired glucose tolerance (IGT, n = 1), impaired fasting glucose (IFG, n = 1), hyperlipidemia or hypercholesterolemia (n = 3). Three studies recruited solely individuals with overweight or obesity. The duration of the studies ranged from two weeks [52] to four months [55], although most studies (n = 17) were 4–8 weeks long.
Lipid profile components (n = 22), blood glucose (n = 14) and BP (n = 13) were the CM outcomes most often considered. There were no studies assessing platelet aggregation or exercise capacity. As already observed in acute studies, results from the different investigations were often contrasting. Regarding blood lipids, 55% of the studies (12/22 studies) demonstrated a significant effect on at least one measure of the lipid profile (i.e., decrease in TG, LDL-C and total-C and/or increase in HDL-C) following HCA consumption [28,50,51,53,54,56,57,58,59,60,61,62]. Fifty percent of studies (9/18 studies) that measured both LDL and TC demonstrated a significant reduction in both [28,50,51,54,58,59,60,61,62], aside from one which found significance only for TC [60]. In comparing those nine studies reporting a significant reduction to those that did not, those that did had a greater baseline LDL level (~3.34 mmol/L vs. 2.91 mmol/L). Furthermore, those studies that did find a significant reduction were also slightly more overweight (BMI ~28.9 kg/m2 vs. 26.4 kg/m2). The average of the mean ages in each study was similar between these groups (~43 y) and the ratio of men to women in each study was ~37% in those studies that found an effect compared to 49% in those that did not. However, only one study [54] assessed the effect separately for men and women and found consistent effects between sexes, except for a reduction in TG, which was only found for women.
Considering the source of the HCAs consumed, in the nine studies that found a significant reduction in TC or LDL, seven used capsules of extracts rich in HCAs [51,54,58,59,60,61,62], one used instant soup enriched in GCE [50] and one used 6 g/d of a soluble green/roasted coffee blend [28]. This contrasts the nine studies that did not find a significant improvement on TC or LDL, in which six studies used brewed or canned coffee [53,56,57,63,64,65], one used a beverage enriched in GCE [30], one fruit juice enriched in GCE [66] and one GCE in capsules [67]. Interestingly, one of the studies that used brewed coffee found an increase in TC, as well as an increase in HDL, after the consumption of 750 mL/d of moderate roasted coffee in 84 healthy subjects for 12 weeks [56]. The authors suggested that this increase in TC may be the result of the diterpenes (i.e., cafestol and kahweol) in coffee [68], which are present in unfiltered coffee. The food source of HCAs (interfering effects of other compounds in unfiltered coffee) may have influenced the difference in results between these two groups of studies.
For markers related to glucose metabolism, ~30% of the studies demonstrated a significant effect on fasting glucose (6/19 studies) [26,51,60,62,67,69] or HbA1c (2/7 studies) [54,62] following HCA consumption. In comparing those six and two studies that found a significant reduction to those that did not, those that did had a greater baseline glucose level (~6.00 mmol/L vs. 4.91 mmol/L and 6.55% vs. 5.9%, respectively). Furthermore, those studies that did find a significant reduction were also performed on slightly more overweight individuals (BMI ~27.9 kg/m2 vs. 26.2 kg/m2). The average of the mean ages in each study was similar between these groups (~41 y) and the ratio of men to women at ~45%. Of the nine studies that reported results for insulin, none demonstrated a significant reduction, with one that found a significant increase [56]. For homeostatic metabolic assessment-insulin resistance (HOMA-IR), 57% (4/7 studies) found a significant reduction [54,60,62,67] and one study found a significant increase [56]. In comparing the four studies that found a significant reduction in HOMA-IR to the two that found no effect, the mean baseline HOMA-IR level was higher (4.03 vs. 2.19), with similar BMI (31.3 vs. 29.5 kg/m2), age (45 vs. 44 y) and ratio of men to women (35% vs. 41%). Furthermore, those four studies all used HCAs consumed in the form of capsules (ranging from 372 mg to 600 mg/d CGAs from GCE or artichoke) [54,60,62,67] whereas the other three studies all assessed the effect of HCAs consumed in brewed coffee (ranging from 9 mg/d CGAs to 216 mg/d CGAs). Interestingly, the one study of 84 healthy adults that found a significant increase in insulin and HOMA-IR [56], had a much lower difference in CGA between the two coffees (difference of 9 mg/d of CGAs) compared to the rest of the studies, and the authors noted that the concentration of CGAs upon analyses demonstrate that they did not differ between the two coffees [70], thus the differences in outcomes may be the result of other differences between the coffees (e.g., N-methylpyridinium (NMP)). Additionally, one of the two studies that did not find an effect of HOMA-IR [57], conducted in 116 overweight adults, also described a similar intervention of brewed coffees to compare which differed in CGAs by 9 mg/d, thus may also not have had an adequate difference in CGAs in order to assess effectiveness.
The beneficial effects predominating in higher risk groups are further supported if we look at those studies that were done in higher risk groups. For instance, the consumption of HCA-rich foods provided beneficial effects to study participants with impaired glucose metabolism, who are at a higher risk of type 2 diabetes mellitus. In fact, the oral consumption of 1200 mg CGA by 30 study participants with IGT for 12 weeks [51], or 600 mg artichoke extract by 55 participants with IFG for eight weeks [62], significantly reduced fasting glucose (from 5.7 ± 0.4 to 5.5 ± 0.4 mmol/L) as well as other parameters such as the insulinogenic index and the homeostatic metabolic assessment (HOMA) index (−11.7%), compared to controls. Similarly, a positive effect on fasting blood glucose was observed in two other investigations on individuals with NAFLD supplemented with 1 g GCE/day (500 mg CGA) for eight weeks [60], as well as in individuals with MetS who consumed two decaffeinated GCE capsules (372 mg CGA/day) for eight weeks [67]. Interestingly, contrasting results were observed in four trials with healthy study participants [26,69,71,72]. A statistically significant amelioration of fasting blood glucose (from 107.6 ± 3.0 to 99.0 ± 2.5 mg/dL) was evidenced when healthy individuals consumed 185 mL of a test beverage with 329 mg CGA for four weeks [69] or green-roasted coffee blends providing 510 mg HCA/day for eight weeks [26]. On the contrary, Vitaglione et al. [71] failed to find any effect on blood glucose following an eight-week consumption of wholegrain biscuits (70 g, ~130 mg HCAs as sum of ferulic, sinapic and coumaric acids), similarly to Robertson and colleagues [72], who found no differences after the consumption of four cups/day of instant coffee (44 mg CGAs/serving) for 12 weeks, compared to non-coffee consumers.
Regarding BP, most studies (62%, 8/13 studies) demonstrated a significant effect on either SBP or DBP resulting from the consumption of HCA-rich foods [28,50,53,64,65,66,67,73]. In comparing those eight studies that found a significant reduction to those that did not, those that did had a greater baseline SBP level (~138 mmHg vs. 118 mmHg). Those studies that did find a significant reduction were performed on slightly less overweight subjects (BMI ~26.3 kg/m2 vs. 27.8 kg/m2) with similar mean ages (~45 y) and ratio of men to women (~46 vs. 43%). No study completed subgroup analyses by BP status or by sex.
With regard to measures of adiposity, 29% (5/17 studies) demonstrated a significant reduction in BMI, body weight or waist circumference [51,53,61,62,67]. In comparing those studies that found a significant reduction to those that did not, those that did had a greater baseline BMI (29.8 kg/m2 vs. 27.0 kg/m2) and greater baseline waist circumference (106.2 cm vs. 97.7 cm). Those studies that did find a significant reduction had similar mean ages (~44 vs. 43 y, respectively) and lower ratio of men to women (~30% vs. 54%). Interestingly the populations of those studies that found a reduction included (n = 1) mild hypertension, (n = 1) obese, (n = 2) impaired glucose tolerance and (n = 1) metabolic syndrome.
Overall, the results from each of the outcomes assessed in the chronic studies consistently demonstrate there is a significant effect in those studies with participants with higher baseline levels of each risk factor for CVD. Therefore, HCAs may be more effective in those at higher CVD risk.

3.3.3. Inter-Individual Variability

Only seven out of the 45 studies took into account one or more determinants that might explain inter-individual variability, such as pathophysiological status (n = 4), sex (n = 2), dietary patterns (n = 1) or specific polymorphisms (n = 1). The main findings of these studies are reported in Table 3. It is worth noting that the role of polymorphisms was also considered by the study of Robertson and colleagues, but the considered polymorphism (on the CYP1A2 gene) was related to the caffeine metabolism and no insights in the metabolism or effect of HCAs were provided [72].
Among the studies investigating the putative role of pathophysiological status in the effects of HCA-rich sources, two acute studies stratified results based on the glycemic response [35] or the insulinogenic index (an index of pancreatic β-cell function) [46]. In the former, the consumption of 300 mg of decaffeinated green coffee beans (EDGCB) extract significantly lowered peak glycemic levels, but not plasma glucose IAUC, after ingestion of a 200 g carbohydrate rich-meal, compared to water [35]. Interestingly, when results were analyzed on a sub-set of 18 study participants categorized as having a high-glycemic response (i.e., those with the highest mean postprandial glucose level 30 min after consumption of the loading diet/placebo food), plasma glucose 2 h IAUC was reduced following the 100 mg EDGCB beverage compared to control. Similarly, plasma glucose after 30 min was significantly lower after the ingestion of both low (100 mg) and high (300 mg) intake of EDGCB beverages, compared to controls. Jokura and colleagues [46] focused on the insulinogenic index and its potential role as a determinant of the effect of HCA on postprandial hyperglycemia and vascular endothelial function. In all study participants, the ingestion of a meal with a coffee phenolic extract (355 mg CQAs) beverage significantly lowered the plasma glucose levels (p < 0.05) after 30 min and FMD response after 60 min compared to the same meal without the coffee polyphenol extract. However, when study participants were stratified by insulinogenic index, those with an index <0.88 had significantly lower postprandial blood glucose concentration at 30 min (p < 0.01) compared to control, whereas there was no effect in those with an index ≥0.88. Thus in those with lower β-cell function, and thus at greater risk of chronic disease such as diabetes, there was an effect of HCA. With regards to the assessment of FMD, the response seemed not to be influenced by the insulinogenic index, being significantly higher at 120 min in both strata compared to control.
The role of background lipid status in determining the effect of HCA-rich foods on CM markers was considered in one chronic study (two publications [26,28]) in which half of the recruited study participants had hypercholesterolemia. In this study, daily consumption of green/roasted coffee blend (344 mg CQAs and ~510 mg HCAs total, plus ~120 mg caffeine) for eight weeks resulted in decreased the levels of several CVD risk factors including SBP, DBP, blood glucose, HOMA-IR, total-C, LDL-C and TG. However, when the results were separated by hyperlipidemia status, SBP, DBP, total-C, LDL-C and TG were significantly reduced after coffee consumption only in those with hyperlipidemia. Thus, demonstrating potential effectiveness of CQAs in those subjects at high CVD risk.
Regarding sex differences, the eight-week supplementation of a CQA-rich artichoke leaf extract significantly increased HDL-C in primary mild hypercholesterolemic study participants (0.207 mmol/L) [54]. However, when sex groups were compared, an increase in HDL was only significant for males and reductions in TG were only seen for women. However, when groups were further stratified by median HDL level, there was a significant increase in HDL in women who had ≤median HDL. The impact of sex was also considered in a study enrolling 80 patients with MetS and screened for polymorphisms of cholesteryl ester transfer protein (CETP), which is directly related to MetS risk [58]. Although there was no interaction in the whole population between CETP gene mutation and response to 12-week ALE supplementation (~22 mg CQAs), the subgroup analysis revealed that only men with CETP gene mutation had significantly lower LDL-C levels after 12-week supplementation, compared to placebo.
The inter-individual variability associated with the dietary pattern was taken into account by Ioakeimidis and colleagues [49] in an acute study focusing on habitual coffee consumption. Results revealed positive effects of both caffeinated and decaffeinated coffee consumption (79 mg CQAs each) on markers of arterial stiffness in non-habitual compared to habitual coffee consumers (maximal differences of changes in responses by 4.5%). As some markers, not subject of this systematic review (i.e., pulse wave velocity and augmentation index), increased only after decaffeinated coffee consumption in non-habitual consumers, authors hypothesized that the effect was related to compounds other than caffeine and supported the potential role of coffee habituation as determinant of its effect on vascular function.

4. Discussion

There is a clear interest in the exploitation of phenolic-rich foods as potential modulators of markers of CM health, and the present review aimed at summarizing the main findings from RCTs focused on HCA-rich foods. The observed intervention effects had clinical relevance mostly in study participants at high CVD risk. Conversely, many studies performed on self-reported healthy individuals failed to find any effect of HCAs, increasing the heterogeneity of the results and making it difficult to draw any clear conclusion.
In the present review, only seven studies out of the 45 included publications considered one or more determinants of inter-individual variability in response to HCAs, while the remaining studies did not stratify results based on these parameters. This hinders our understanding of the role played by these determinants in the individual response to HCA-rich foods.
Despite limited, results from these seven studies suggest that some individual characteristics may influence the beneficial effect of HCAs. Firstly, determinants of health or pathophysiological status, like baseline cholesterol levels [26,28], insulinogenic index [46] or glycemic response [35] could play an important role in the variation among study participants in the biological response to HCAs regarding CM outcomes, being associated with an increased beneficial effect following HCA intake. This was not only demonstrated in the stratified analyses conducted by Martinez-Lopez et al., Sarriá et al., Iwai et al. and Jokura et al., [26,28,35,46] but also in the assessments conducted within this systematic review for all outcomes in the chronic studies, which demonstrated that effectiveness of HCAs, regardless of specific source, was greater in those at higher risk (i.e., greater baseline cholesterol, glycemic or SBP). This supports previous studies that suggested that the pathophysiological status can lead to inter-individual variation in response to polyphenols [74,75]. Some recent systematic reviews and meta-analyses have also indicated that the health status or BMI may influence the impact of several polyphenols (flavonols, flavan-3-ols, anthocyanins and ellagitannins) on blood lipid levels [18,19,24].
Regarding sex differences, the response to HCAs has been shown to be different between men and women following artichoke leaf extract consumption [54]. So far, a sex effect in response to plant-food bioactive compounds such as HCAs has been reported in very few studies [76], mainly focusing on flavanol-rich products, with some but limited differences in the response between men and women. However, results are often contrasting; for instance, a decreased augmentation index was observed only in women after cocoa consumption for four weeks [77], while the antioxidant status was improved mostly in men after a four-week consumption of ready-to-eat meals supplemented with cocoa extract [78]. Again, TC and LDL were significantly reduced only in females after intervention with flavanol-containing products [19]. Similarly to what happens for other individual characteristics, the lack of differences in the response among men and women after consumption of HCAs could be due to the lack of statistical power resulting from smaller sample sizes after the stratification process.
Genetic polymorphisms have also been shown to impact the effect of plant compounds from different sources [79], since they are often present in genes encoding for enzymes involved in the metabolism of these bioactives. Regarding coffee, mostly polymorphisms related to caffeine metabolism have been investigated, above all the cytochrome P450 as CYP1A2 accounts for about 95% of caffeine metabolism, with a high inter-individual variability in activity [80]. In the present review, only one study investigating variation based on polymorphisms (in CETP Taq 1B) was included [58], suggesting that genetic polymorphism may predict the lipid responsiveness to HCA intake.
An additional determinant, not explored in any of the studies included in the present review, may likely be age, which is the strongest independent cardiovascular risk factor. Overall, the impact of age on the response to the consumption of plant food bioactives has received very limited attention [17]. Differences due to age might depend on variability in absorption, distribution, metabolism and excretion (ADME), as recently showed by Alkhaldy and colleagues, who found variation in the urinary phenolic acid profile between younger and older adults after a polyphenol-rich meal [81].
The inter-individual variability in the biological response to the consumption of phenolic compounds, such as HCAs, may be partially related to the inter-individual variation in the bioavailability and metabolism of these compounds [16]. Several human studies have demonstrated that the plasma concentrations and the urinary excretion of phenolics or their derived metabolites can differ markedly between individuals following a similar intake of plant food bioactives, due to variances in their ADME [82,83]. Despite a small amount of some (poly)phenols being absorbed in the upper gastrointestinal tract (and being subjected to glucuronidation, sulfation or methylation by the gut epithelium and/or liver) most compounds reach the lower gastrointestinal tract unmodified, where they undergo extensive metabolism [83]. Thus, a key role is played by the gut microbiota, which may modify the structure of polyphenols, releasing these colonic catabolites into the portal vein towards the liver, where they can: (i) Directly enter the bloodstream, (ii) undergo phase I and II metabolism and then enter the bloodstream and (iii) undergo enterohepatic recirculation until complete detoxification [84].
This long and complex physiological mechanism and the influence of gut microbiota composition form the pathway through which different types and levels of metabolites enter circulation where they may have metabolic effects. This is supported by the work by Stalmach and colleagues who assessed the metabolic fate of CGAs from coffee [85] and demonstrated that ~1 h after the consumption of instant coffee, low nanomolar concentrations of CQA lactones and caffeic acid sulfates reached the plasma. Although it has been hypothesized that quinic-HCA linkage is hydrolyzed with consequently few HCA conjugates being absorbed [83], ~5 h after coffee consumption, gut-derived phase II metabolites were detected in much higher concentrations in plasma showing high inter-individual differences. Gut microbial esterases can rapidly hydrolyze the quinic-phenolic linkage and convert the HCA into dihydroxy forms and further metabolism of these compounds by gut microbial strains leads to the formation of smaller catabolites [83,86,87]. Thus, future studies assessing the profile of phenolic metabolites in circulation in addition to variations in gut microbiota composition would be highly valuable in understanding the potential effectiveness of HCAs. Among the 44 included RCTs, only the one by Mills and colleagues [25] considered circulating metabolites and found that FMD responses to coffee intake were closely paralleled by the appearance of CGA metabolites in plasma.
In the framework of an intervention study, these aspects are further complicated by considering that the same colonic metabolites can be produced after the consumption of different classes of phenolic-rich foods. For example, in vitro and in vivo studies have shown that after berry, coffee, cocoa or orange consumption, the phenolic metabolic degradation pathways reach some common intermediates, most of them HCA or hydroxybenzoic acid derivatives, which can be further metabolized into smaller compounds [83,88,89]. To avoid this further confounding factor, some researchers have applied different strategies, such as: (i) Asking participants to maintain their usual diet; (ii) telling participant to refrain from consuming selected foods, rich in (poly) phenol compounds similar to those of the intervention and (iii) advising a low-/free-polyphenol diet in the day(s) prior to sample collection.
The limitations of the present systematic review include that there were relatively few studies (n = 7), which explored potential determinants of inter-individual variability, thus there may be other variables that may influence the effectiveness of HCAs on CM biomarkers. Additionally, of those included studies, there was a wide range of methods by which HCAs were delivered, as well as ranges of doses, including those coming from coffee (plain coffee and green coffee extracts consumed in a variety of forms (soups, capsules, in a test beverage and in fruit juice)) and foods (purple potatoes, whole grain biscuits and artichoke leaf extract), which may also influence the effect of HCAs. Furthermore, some studies controlled for caffeine whereas others did not, and considering the majority of studies focused on coffee, this also potentially confounds the ability to determine the effect of HCAs. In addition, further efforts should be paid on the contribution of other phytochemicals to the observed effects when dealing with food products rich in different bioactive compounds. A good example may be coffee, where the presence and amount of some compounds like caffeine, trigonelline and HHQ may affect the response to the intervention [8,38,64]. Lastly, it may be a limitation that only two databases were used for conducting the search and thus may not have captured all existing studies on HCAs, however manual searches of the reference lists of all included studies, supplemented the search to minimize this potential issue.
Overall, the studies were characterized by a high variability in study design and methods of outcome assessment and, consequently, comparisons among findings of the different studies challenging. In addition to the health status of the volunteers, major sources of variability include the type of HCA-based product (e.g., pure compounds, foods and beverages) and the dose of HCAs, which broadly ranged in both acute and chronic studies. It is worth noting that, even when the same HCA-food source was used as test food (e.g., coffee) in different investigations, a high variability in terms of phenolic content was observed. This further supports the importance of an in-depth characterization of the phenolic profile of the test items and, when possible, taking into account the actual phenolic amount provided by a single serving [90,91]. In addition to the above-mentioned sources of variability, studies often lacked in information on determinants that are known to influence CM biomarkers, such as BMI, age, sex, smoking habits, dietary patterns, physical activity levels or specific polymorphisms. Improvements in reporting possible determinants of inter-individual variability are needed to make secondary data analysis feasible [92].

5. Conclusions

The present review summarized the main findings of RCTs investigating the effect of HCA-rich foods on CM health, with a particular focus on the determinants of inter-individual variability such as pathophysiological status, sex or specific polymorphisms. Generally, there are limited studies that conduct stratified analyses to explore factors leading to inter-individual variation in the effect of HCAs to modulate CM outcomes, thus limiting the ability to conclude which factors may modulate the effectiveness of HCAs. However, the present systematic review demonstrates that overall, HCAs have greater effectiveness, regardless of the variation in the source of HCAs, in those subjects with greater baseline levels of cardiovascular risk factors such as cholesterol, BP and glycaemia. Further high quality, well powered RCTs with a low risk of bias should be performed, reporting all characteristics that may influence the individual response to these compounds, including but not limited to sex, age, BMI, pathophysiological status, presence of genetic polymorphisms, smoking habits, physical activity level and dietary patterns.

Supplementary Materials

The following are available online at https://0-www-mdpi-com.brum.beds.ac.uk/2072-6643/11/8/1805/s1: Supplementary Figure S1: Risk of bias graph: review authors’ judgments about each risk of bias item presented as percentages across all included acute (A) and chronic (B) studies, Supplementary Figure S2: Risk of bias summary: review authors’ judgments about each risk of bias item for each included acute (A) and chronic (B) study. Supplementary Table S1: PRISMA checklist. Supplementary Table S2: Literature search strategy used for each considered database. Supplementary Table S3: PICOS criteria for the inclusion of the intervention studies.

Author Contributions

E.C., C.A.-L., E.R.G., C.M., M.G.-A., A.R.-M. and P.M. conceived and designed the study; D.M., A.G.-S., L.B., S.A.P.-D., M.D., G.-E.D., M.M., E.S., E.C., V.M., M.U.-S., C.A.K. and P.M. performed data extraction; D.M., L.C. and P.M. analyzed the data; D.M., L.C., D.D.R. and P.M. contributed to the discussions and preparation of the manuscript; D.M. and L.C. wrote the article; and P.M. had primary responsibility for final content. All authors read and approved the final manuscript.

Funding

This research received no external funding.

Acknowledgments

This article is based upon work from COST Action FA1403—POSITIVe “Interindividual variation in response to consumption of plant food bioactives and determinants involved” supported by COST (European Cooperation in Science and Technology, http://www.cost.eu/).

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Gakidou, E.; Afshin, A.; Abajobir, A.A.; Abate, K.H.; Abbafati, C.; Abbas, K.M.; Abd-Allah, F.; Abdulle, A.M.; Abera, S.F.; Aboyans, V.; et al. Global, regional, and national comparative risk assessment of 84 behavioural, environmental and occupational, and metabolic risks or clusters of risks, 1990–2016: A systematic analysis for the Global Burden of Disease Study 2016. Lancet 2017, 390, 1345–1422. [Google Scholar] [CrossRef]
  2. Piepoli, M.F.; Hoes, A.W.; Agewall, S.; Albus, C.; Brotons, C.; Catapano, A.L.; Cooney, M.-T.; Corrà, U.; Cosyns, B.; Deaton, C.; et al. 2016 European Guidelines on cardiovascular disease prevention in clinical practice. Atherosclerosis 2016, 252, 207–274. [Google Scholar] [CrossRef] [Green Version]
  3. Petersen, K.S.; Flock, M.R.; Richter, C.K.; Mukherjea, R.; Slavin, J.L.; Kris-Etherton, P.M. Healthy Dietary Patterns for Preventing Cardiometabolic Disease: The Role of Plant-Based Foods and Animal Products. Curr. Dev. Nutr. 2017, 1, 001289. [Google Scholar] [CrossRef] [PubMed]
  4. Angelino, D.; Godos, J.; Ghelfi, F.; Tieri, M.; Titta, L.; Lafranconi, A.; Marventano, S.; Alonzo, E.; Gambera, A.; Sciacca, S.; et al. Fruit and vegetable consumption and health outcomes: An umbrella review of observational studies. Int. J. Food Sci. Nutr. 2019. [Google Scholar] [CrossRef] [PubMed]
  5. Rodriguez-Mateos, A.; Vauzour, D.; Krueger, C.G.; Shanmuganayagam, D.; Reed, J.; Calani, L.; Mena, P.; Del Rio, D.; Crozier, A. Bioavailability, bioactivity and impact on health of dietary flavonoids and related compounds: An update. Arch. Toxicol. 2014, 88, 1803–1853. [Google Scholar] [CrossRef] [PubMed]
  6. Del Rio, D.; Rodriguez-Mateos, A.; Spencer, J.P.E.; Tognolini, M.; Borges, G.; Crozier, A. Dietary (poly)phenolics in human health: Structures, bioavailability, and evidence of protective effects against chronic diseases. Antioxid. Redox Signal. 2013, 18, 1818–1892. [Google Scholar] [CrossRef] [PubMed]
  7. Clifford, M.N.; Johnston, K.L.; Knight, S.; Kuhnert, N. Hierarchical scheme for LC-MSn identification of chlorogenic acids. J. Agric. Food Chem. 2003, 51, 2900–2911. [Google Scholar] [CrossRef] [PubMed]
  8. Bento-Silva, A.; Koistinen, V.M.; Mena, P.; Bronze, M.R.; Hanhineva, K.; Sahlstrøm, S.; Kitrytė, V.; Moco, S.; Aura, A.-M. Factors affecting intake, metabolism and health benefits of phenolic acids: Do we understand individual variability? Eur. J. Nutr. 2019. [Google Scholar] [CrossRef] [PubMed]
  9. Phenol Explorer. Available online: http://phenol-explorer.eu/ (accessed on 11 May 2019).
  10. Ziauddeen, N.; Rosi, A.; Del Rio, D.; Amoutzopoulos, B.; Nicholson, S.; Page, P.; Scazzina, F.; Brighenti, F.; Ray, S.; Mena, P. Dietary intake of (poly)phenols in children and adults: Cross-sectional analysis of UK National Diet and Nutrition Survey Rolling Programme (2008–2014). Eur. J. Nutr. 2018. [Google Scholar] [CrossRef] [PubMed]
  11. Stalmach, A.; Steiling, H.; Williamson, G.; Crozier, A. Bioavailability of chlorogenic acids following acute ingestion of coffee by humans with an ileostomy. Arch. Biochem. Biophys. 2010, 50, 98–105. [Google Scholar] [CrossRef] [PubMed]
  12. Scalbert, A.; Manach, C.; Morand, C.; Rémésy, C.; Jiménez, L. Dietary Polyphenols and the Prevention of Diseases. Crit. Rev. Food Sci. Nutr. 2005, 45, 287–306. [Google Scholar] [CrossRef] [PubMed]
  13. Tajik, N.; Tajik, M.; Mack, I.; Enck, P. The potential effects of chlorogenic acid, the main phenolic components in coffee, on health: A comprehensive review of the literature. Eur. J. Nutr. 2017, 56, 2215–2244. [Google Scholar] [CrossRef] [PubMed]
  14. Potì, F.; Santi, D.; Spaggiari, G.; Zimetti, F.; Zanotti, I. Polyphenol Health Effects on Cardiovascular and Neurodegenerative Disorders: A Review and Meta-Analysis. Int. J. Mol. Sci. 2019, 20, 351. [Google Scholar] [CrossRef]
  15. Mena, P.; Del Rio, D. Gold Standards for Realistic (Poly)phenol Research. J. Agric. Food Chem. 2018, 66, 8221–8223. [Google Scholar] [CrossRef] [PubMed]
  16. Manach, C.; Milenkovic, D.; Van de Wiele, T.; Rodriguez-Mateos, A.; de Roos, B.; Garcia-Conesa, M.T.; Landberg, R.; Gibney, E.R.; Heinonen, M.; Tomás-Barberán, F.; et al. Addressing the inter-individual variation in response to consumption of plant food bioactives: Towards a better understanding of their role in healthy aging and cardiometabolic risk reduction. Mol. Nutr. Food Res. 2017, 61, 1600557. [Google Scholar] [CrossRef] [PubMed]
  17. Milenkovic, D.; Morand, C.; Cassidy, A.; Konic-Ristic, A.; Tomás-Barberán, F.; Ordovas, J.M.; Kroon, P.; De Caterina, R.; Rodriguez-Mateos, A. Interindividual Variability in Biomarkers of Cardiometabolic Health after Consumption of Major Plant-Food Bioactive Compounds and the Determinants Involved. Adv. Nutr. 2017, 8, 558–570. [Google Scholar] [PubMed]
  18. Menezes, R.; Rodriguez-Mateos, A.; Kaltsatou, A.; González-Sarrías, A.; Greyling, A.; Giannaki, C.; Andres-Lacueva, C.; Milenkovic, D.; Gibney, E.; Dumont, J.; et al. Impact of Flavonols on Cardiometabolic Biomarkers: A Meta-Analysis of Randomized Controlled Human Trials to Explore the Role of Inter-Individual Variability. Nutrients 2017, 9, 117. [Google Scholar] [CrossRef] [PubMed]
  19. González-Sarrías, A.; Combet, E.; Pinto, P.; Mena, P.; Dall’Asta, M.; Garcia-Aloy, M.; Rodríguez-Mateos, A.; Gibney, E.R.; Dumont, J.; Massaro, M.; et al. A Systematic Review and Meta-Analysis of the Effects of Flavanol-Containing Tea, Cocoa and Apple Products on Body Composition and Blood Lipids: Exploring the Factors Responsible for Variability in Their Efficacy. Nutrients 2017, 9, 746. [Google Scholar] [CrossRef]
  20. Higgins, J.; Green, S. Cochrane Handbook for Systematic Reviews of Interventions; Version 5.1.0; Cochrane Collaboration, 2011. [Google Scholar]
  21. Centre for Reviews and Dissemination (CRD). Systematic Reviews: CRD’s Guidance for Undertaking Reviews in Health Careitle; CRD, University of York: York, UK, 2009. [Google Scholar]
  22. Liberati, A.; Altman, D.G.; Tetzlaff, J.; Mulrow, C.; Gøtzsche, P.C.; Ioannidis, J.P.A.; Clarke, M.; Devereaux, P.J.; Kleijnen, J.; Moher, D. The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate health care interventions: Explanation and elaboration. J. Clin. Epidemiol. 2009, 62, e1–e34. [Google Scholar] [CrossRef]
  23. International Prospective Register of Systematic Reviews (PROSPERO). Available online: http://www.crd.york.ac.uk/PROSPERO/display_record.php?ID=CRD42016050790 (accessed on 7 November 2016).
  24. García-Conesa, M.T.; Chambers, K.; Combet, E.; Pinto, P.; Garcia-Aloy, M.; Andrés-Lacueva, C.; De Pascual-Teresa, S.; Mena, P.; Ristic, A.K.; Hollands, W.J.; et al. Meta-analysis of the effects of foods and derived products containing ellagitannins and anthocyanins on cardiometabolic biomarkers: Analysis of factors influencing variability of the individual responses. Int. J. Mol. Sci. 2018, 19, 694. [Google Scholar] [CrossRef]
  25. Mills, C.E.; Flury, A.; Marmet, C.; Poquet, L.; Rimoldi, S.F.; Sartori, C.; Rexhaj, E.; Brenner, R.; Allemann, Y.; Zimmermann, D.; et al. Mediation of coffee-induced improvements in human vascular function by chlorogenic acids and its metabolites: Two randomized, controlled, crossover intervention trials. Clin. Nutr. 2017, 36, 1520–1529. [Google Scholar] [CrossRef]
  26. Sarriá, B.; Martínez-López, S.; Sierra-Cinos, J.L.; García-Diz, L.; Mateos, R.; Bravo-Clemente, L. Regularly consuming a green/roasted coffee blend reduces the risk of metabolic syndrome. Eur. J. Nutr. 2018, 57, 269–278. [Google Scholar] [CrossRef]
  27. Sarriá, B.; Martínez-López, S.; Mateos, R.; Bravo-Clemente, L. Long-term consumption of a green/roasted coffee blend positively affects glucose metabolism and insulin resistance in humans. Food Res. Int. 2016, 89, 1023–1028. [Google Scholar] [CrossRef]
  28. Martínez-López, S.; Sarriá, B.; Mateos, R.; Bravo-Clemente, L. Moderate consumption of a soluble green/roasted coffee rich in caffeoylquinic acids reduces cardiovascular risk markers: Results from a randomized, cross-over, controlled trial in healthy and hypercholesterolemic subjects. Eur. J. Nutr. 2019, 58, 865–878. [Google Scholar] [CrossRef]
  29. Rosén, L.A.H.; Östman, E.M.; Shewry, P.R.; Ward, J.L.; Andersson, A.A.M.; Piironen, V.; Lampi, A.-M.; Rakszegi, M.; Bedö, Z.; Björck, I.M.E. Postprandial Glycemia, Insulinemia, and Satiety Responses in Healthy Subjects after Whole Grain Rye Bread Made from Different Rye Varieties. 1. J. Agric. Food Chem. 2011, 59, 12139–12148. [Google Scholar] [CrossRef]
  30. Ochiai, R.; Sugiura, Y.; Otsuka, K.; Katsuragi, Y.; Hashiguchi, T. Coffee bean polyphenols ameliorate postprandial endothelial dysfunction in healthy male adults. Int. J. Food Sci. Nutr. 2015, 66, 350–354. [Google Scholar] [CrossRef]
  31. Ochiai, R.; Sugiura, Y.; Shioya, Y.; Otsuka, K.; Katsuragi, Y.; Hashiguchi, T. Coffee polyphenols improve peripheral endothelial function after glucose loading in healthy male adults. Nutr. Res. 2014, 34, 155–159. [Google Scholar] [CrossRef]
  32. Mubarak, A.; Bondonno, C.P.; Liu, A.H.; Considine, M.J.; Rich, L.; Mas, E.; Croft, K.D.; Hodgson, J.M. Acute effects of chlorogenic acid on nitric oxide status, endothelial function, and blood pressure in healthy volunteers: A randomized trial. J. Agric. Food Chem. 2012, 60, 9130–9136. [Google Scholar] [CrossRef]
  33. Ward, N.C.; Hodgson, J.M.; Woodman, R.J.; Zimmermann, D.; Poquet, L.; Leveques, A.; Actis-Goretta, L.; Puddey, I.B.; Croft, K.D. Acute effects of chlorogenic acids on endothelial function and blood pressure in healthy men and women. Food Funct. 2016, 7, 2197–2203. [Google Scholar] [CrossRef] [Green Version]
  34. Johnston, K.L.; Clifford, M.N.; Morgan, L.M. Coffee acutely modifies gastrointestinal hormone secretion and glucose tolerance in humans: Glycemic effects of chlorogenic acid and caffeine. Am. J. Clin. Nutr. 2003, 78, 728–733. [Google Scholar] [CrossRef]
  35. Iwai, K.; Narita, Y.; Fukunaga, T.; Nakagiri, O.; Kamiya, T.; Ikeguchi, M.; Kikuchi, Y. Study on the Postprandial Glucose Responses to a Chlorogenic Acid-Rich Extract of Decaffeinated Green Coffee Beans in Rats and Healthy Human Subjects. Food Sci. Technol. Res. 2013, 18, 849–860. [Google Scholar] [CrossRef]
  36. Thom, E. The effect of chlorogenic acid enriched coffee on glucose absorption in healthy volunteers and its effect on body mass when used long-term in overweight and obese people. Int. J. Med. Res. 2007, 35, 900–908. [Google Scholar] [CrossRef]
  37. Boon, E.A.J.; Croft, K.D.; Shinde, S.; Hodgson, J.M.; Ward, N.C. The acute effect of coffee on endothelial function and glucose metabolism following a glucose load in healthy human volunteers. Food Funct. 2017, 8, 3366–3373. [Google Scholar] [CrossRef]
  38. Van Dijk, A.E.; Olthof, M.R.; Meeuse, J.C.; Seebus, E.; Heine, R.J.; Van Dam, R.M. Acute effects of decaffeinated coffee and the major coffee components chlorogenic acid and trigonelline on glucose tolerance. Diabetes Care 2009, 32, 1023–1025. [Google Scholar] [CrossRef]
  39. Kajikawa, M.; Maruhashi, T.; Hidaka, T.; Nakano, Y.; Kurisu, S.; Matsumoto, T.; Iwamoto, Y.; Kishimoto, S.; Matsui, S.; Aibara, Y.; et al. Coffee with a high content of chlorogenic acids and low content of hydroxyhydroquinone improves postprandial endothelial dysfunction in patients with borderline and stage 1 hypertension. Eur. J. Nutr. 2019, 58, 989–996. [Google Scholar] [CrossRef]
  40. Lappi, J.; Aura, A.M.; Katina, K.; Nordlund, E.; Kolehmainen, M.; Mykkänen, H.; Poutanen, K. Comparison of postprandial phenolic acid excretions and glucose responses after ingestion of breads with bioprocessed or native rye bran. Food Funct. 2013, 4, 972–981. [Google Scholar] [CrossRef]
  41. Beam, J.R.; Gibson, A.L.; Kerksick, C.M.; Conn, C.A.; White, A.C.; Mermier, C.M. Effect of post-exercise caffeine and green coffee bean extract consumption on blood glucose and insulin concentrations. Nutrition 2015, 31, 292–297. [Google Scholar] [CrossRef]
  42. Rakvaag, E.; Dragsted, L.O. Acute effects of light and dark roasted coffee on glucose tolerance: A randomized, controlled crossover trial in healthy volunteers. Eur. J. Nutr. 2016, 55, 2221–2230. [Google Scholar] [CrossRef]
  43. Robertson, T.M.; Clifford, M.N.; Penson, S.; Chope, G.; Robertson, M.D. A single serving of caffeinated coffee impairs postprandial glucose metabolism in overweight men. Br. J. Nutr. 2015, 114, 1218–1225. [Google Scholar] [CrossRef] [Green Version]
  44. Moser, S.; Aragon, I.; Furrer, A.; Van Klinken, J.W.; Kaczmarczyk, M.; Lee, B.H.; George, J.; Hamaker, B.R.; Mattes, R.; Ferruzzi, M.G. Potato phenolics impact starch digestion and glucose transport in model systems but translation to phenolic rich potato chips results in only modest modification of glycemic response in humans. Nutr. Res. 2018, 52, 57–70. [Google Scholar] [CrossRef]
  45. Schubert, M.M.; Grant, G.; Horner, K.; King, N.; Leveritt, M.; Sabapathy, S.; Desbrow, B. Coffee for morning hunger pangs. An examination of coffee and caffeine on appetite, gastric emptying, and energy intake. Appetite 2014, 83, 317–326. [Google Scholar] [CrossRef] [Green Version]
  46. Jokura, H.; Watanabe, I.; Umeda, M.; Hase, T.; Shimotoyodome, A. Coffee polyphenol consumption improves postprandial hyperglycemia associated with impaired vascular endothelial function in healthy male adults. Nutr. Res. 2015, 35, 873–881. [Google Scholar] [CrossRef]
  47. Skinner, T.L.; Jenkins, D.G.; Folling, J.; Leveritt, M.D.; Coombes, J.S.; Taaffe, D.R. Influence of carbohydrate on serum caffeine concentrations following caffeine ingestion. J. Sci. Med. Sport 2013, 16, 343–347. [Google Scholar] [CrossRef]
  48. Angelino, D.; Cossu, M.; Marti, A.; Zanoletti, M.; Chiavaroli, L.; Brighenti, F.; Del Rio, D.; Martini, D. Bioaccessibility and bioavailability of phenolic compounds in bread: A review. Food Funct. 2017, 8, 2368–2393. [Google Scholar] [CrossRef]
  49. Ioakeimidis, N.; Tzifos, V.; Vlachopoulos, C.; Terentes-Printzios, D.; Georgakopoulos, C.; Tousoulis, D. Acute effect of coffee on aortic stiffness and wave reflections in healthy individuals: Differential effect according to habitual consumption. Int. J. Food Sci. Nutr. 2018, 69, 870–881. [Google Scholar] [CrossRef]
  50. Kozuma, K.; Tsuchiya, S.; Kohori, J.; Hase, T.; Tokomitsu, I. Antihypertensive Effect of Green Coffee Bean Extract on Mildly Hypertensive Subjects. Hypertens. Res. 2005, 28, 711–718. [Google Scholar] [CrossRef] [Green Version]
  51. Zuñiga, L.Y.; Aceves-de la Mora, M.C.A.; González-Ortiz, M.; Ramos-Núñez, J.L.; Martínez-Abundis, E. Effect of Chlorogenic Acid Administration on Glycemic Control, Insulin Secretion, and Insulin Sensitivity in Patients with Impaired Glucose Tolerance. J. Med. Food 2017, 21, 469–473. [Google Scholar] [CrossRef]
  52. Lecoultre, V.; Carrel, G.; Egli, L.; Binnert, C.; Boss, A.; MacMillan, E.L.; Kreis, R.; Boesch, C.; Darimont, C.; Tappy, L. Coffee consumption attenuates short-term fructose-induced liver insulin resistance in healthy men. Am. J. Clin. Nutr. 2014, 99, 268–275. [Google Scholar] [CrossRef]
  53. Yamaguchi, T.; Chikama, A.; Mori, K.; Watanabe, T.; Shioya, Y.; Katsuragi, Y.; Tokimitsu, I. Hydroxyhydroquinone-free coffee: A double-blind, randomized controlled dose-response study of blood pressure. Nutr. Metab. Cardiovasc. Dis. 2008, 18, 408–414. [Google Scholar] [CrossRef]
  54. Rondanelli, M.; Giacosa, A.; Opizzi, A.; Faliva, M.A.; Sala, P.; Perna, S.; Riva, A.; Morazzoni, P.; Bombardelli, E. Beneficial effects of artichoke leaf extract supplementation on increasing HDL-cholesterol in subjects with primary mild hypercholesterolaemia: A double-blind, randomized, placebo-controlled trial. Int. J. Food Sci. Nutr. 2013, 64, 7–15. [Google Scholar] [CrossRef]
  55. Ochiai, R.; Jokura, H.; Suzuki, A.; Tokimitsu, I.; Ohishi, M.; Komai, N.; Rakugi, H.; Ogihara, T. Green Coffee Bean Extract Improves Human Vasoreactivity. Hypertens. Res. 2004, 27, 731–737. [Google Scholar] [CrossRef] [Green Version]
  56. Riedel, A.; Dieminger, N.; Bakuradze, T.; Lang, R.; Montoya Parra, G.A.; Hochkogler, C.M.; Winkler, S.; Bytof, G.; Lantz, I.; Stiebitz, H.; et al. A 4-week consumption of medium roast and dark roast coffees affects parameters of energy status in healthy subjects. Food Res. Int. 2014, 63, 409–419. [Google Scholar] [CrossRef]
  57. Kempf, K.; Kolb, H.; Gärtner, B.; Bytof, G.; Stiebitz, H.; Lantz, I.; Lang, R.; Hofmann, T.; Martin, S. Cardiometabolic effects of two coffee blends differing in content for major constituents in overweight adults: A randomized controlled trial. Eur. J. Nutr. 2015, 54, 845–854. [Google Scholar] [CrossRef]
  58. Rezazadeh, K.; Rezazadeh, F.; Ebrahimi-Mameghani, M. The effect of artichoke leaf extract supplementation on lipid and CETP response in metabolic syndrome with respect to Taq 1B CETP polymorphism: A randomized placebo-controlled clinical trial. Eur. J. Integr. Med. 2018, 17, 112–118. [Google Scholar] [CrossRef]
  59. Bumrungpert, A.; Lilitchan, S.; Tuntipopipat, S.; Tirawanchai, N.; Komindr, S. Ferulic acid supplementation improves lipid profiles, oxidative stress, and inflammatory status in hyperlipidemic subjects: A randomized, double-blind, placebo-controlled clinical trial. Nutrients 2018, 10, 713. [Google Scholar] [CrossRef]
  60. Shahmohammadi, H.A.; Hosseini, S.A.; Hajiani, E.; Malehi, A.S.; Alipour, M. Effects of Green Coffee Bean Extract Supplementation on Patients with Non-Alcoholic Fatty Liver Disease: A Randomized Clinical Trial. Hepat. Mon. 2017, 17, e45609. [Google Scholar] [CrossRef]
  61. Haidari, F.; Samadi, M.; Mohammadshahi, M.; Jalali, M.T.; Engali, K.A. Energy restriction combined with green coffee bean extract affects serum adipocytokines and the body composition in obese women. Asia Pac. J. Clin. Nutr. 2017, 26, 1048–1054. [Google Scholar]
  62. Rondanelli, M.; Opizzi, A.; Faliva, M.; Sala, P.; Perna, S.; Riva, A.; Morazzoni, P.; Bombardelli, E.; Giacosa, A. Metabolic Management in Overweight Subjects with Naive Impaired Fasting Glycaemia by Means of a Highly Standardized Extract From Cynara scolymus: A Double-blind, Placebo-controlled, Randomized Clinical Trial. Phyther. Res. 2014, 28, 33–41. [Google Scholar] [CrossRef]
  63. Agudelo-Ochoa, G.M.; Pulgarín-Zapata, I.C.; Velásquez-Rodriguez, C.M.; Duque-Ramírez, M.; Naranjo-Cano, M.; Quintero-Ortiz, M.M.; Lara-Guzmán, O.J.; Muñoz-Durango, K. Coffee Consumption Increases the Antioxidant Capacity of Plasma and Has No Effect on the Lipid Profile or Vascular Function in Healthy Adults in a Randomized Controlled Trial. J. Nutr. 2016, 146, 524–531. [Google Scholar] [CrossRef] [Green Version]
  64. Ochiai, R.; Chikama, A.; Kataoka, K.; Tokimitsu, I.; Maekawa, Y.; Ohishi, M.; Rakugi, H.; Mikami, H. Effects of hydroxyhydroquinone-reduced coffee on vasoreactivity and blood pressure. Hypertens. Res. 2009, 32, 969–974. [Google Scholar] [CrossRef]
  65. Wedick, N.M.; Brennan, A.M.; Sun, Q.; Hu, F.B.; Mantzoros, C.S.; Van Dam, R.M. Effects of caffeinated and decaffeinated coffee on biological risk factors for type 2 diabetes: A randomized controlled trial. Nutr. J. 2011, 10, 93. [Google Scholar] [CrossRef] [PubMed]
  66. Watanabe, T.; Arai, Y.; Mitsui, Y.; Kusaura, T.; Okawa, W.; Kajihara, Y.; Saito, I. The blood pressure-lowering effect and safety of chlorogenic acid from green coffee bean extract in essential hypertension. Clin. Exp. Hypertens. 2006, 28, 439–449. [Google Scholar] [CrossRef] [PubMed]
  67. Roshan, H.; Nikpayam, O.; Sedaghat, M.; Sohrab, G. Effects of green coffee extract supplementation on anthropometric indices, glycaemic control, blood pressure, lipid profile, insulin resistance and appetite in patients with the metabolic syndrome: A randomised clinical trial. Br. J. Nutr. 2018, 119, 250–258. [Google Scholar] [CrossRef] [PubMed]
  68. Urgert, R.; Katan, M.B. The Cholesterol-Raising Factor from Coffee Beans. J. R. Soc. Med. 1996, 89, 618–623. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  69. Soga, S.; Ota, N.; Shimotoyodome, A. Stimulation of Postprandial Fat Utilization in Healthy Humans by Daily Consumption of Chlorogenic Acids. Biosci. Biotechnol. Biochem. 2013, 77, 1633–1636. [Google Scholar] [CrossRef]
  70. Winkler, S.; Dieminger, N.; Blust, V.; Riedel, A.; Bakuradze, T.; Montoya, G.; Hassmann, U.; Lang, R.; Hofmann, T.; Somoza, V.; et al. Modulation of inflammatory gene transcription after long-term coffee consumption. Food Res. Int. 2014, 63, 428–438. [Google Scholar] [CrossRef]
  71. Vitaglione, P.; Mennella, I.; Ferracane, R.; Rivellese, A.A.; Giacco, R.; Ercolini, D.; Gibbons, S.M.; La Storia, A.; Gilbert, J.A.; Jonnalagadda, S.; et al. Whole-grain wheat consumption reduces inflammation in a randomized controlled trial on overweight and obese subjects with unhealthy dietary and lifestyle behaviors: Role of polyphenols bound to cereal dietary fiber. Am. J. Clin. Nutr. 2015, 101, 251–261. [Google Scholar] [CrossRef]
  72. Robertson, T.M.; Clifford, M.N.; Penson, S.; Williams, P.; Robertson, M.D. Postprandial glycaemic and lipaemic responses to chronic coffee consumption may be modulated by CYP1A2 polymorphisms. Br. J. Nutr. 2018, 119, 792–800. [Google Scholar] [CrossRef]
  73. Vinson, J.A.; Demkosky, C.A.; Navarre, D.A.; Smyda, M.A. High-Antioxidant Potatoes: Acute in Vivo Antioxidant Source and Hypotensive Agent in Humans after Supplementation to Hypertensive Subjects. J. Agric. Food Chem. 2012, 60, 6749–6754. [Google Scholar] [CrossRef]
  74. Egert, S.; Bosy-Westphal, A.; Seiberl, J.; Kürbitz, C.; Settler, U.; Plachta-Danielzik, S.; Wagner, A.E.; Frank, J.; Schrezenmeir, J.; Rimbach, G.; et al. Quercetin reduces systolic blood pressure and plasma oxidised low-density lipoprotein concentrations in overweight subjects with a high-cardiovascular disease risk phenotype: A double-blinded, placebo-controlled cross-over study. Br. J. Nutr. 2009, 102, 1065–1074. [Google Scholar] [CrossRef]
  75. Nagao, T.; Meguro, S.; Hase, T.; Otsuka, K.; Komikado, M.; Tokimitsu, I.; Yamamoto, T.; Yamamoto, K. A catechin-rich beverage improves obesity and blood glucose control in patients with type 2 diabetes. Obesity 2009, 17, 310–317. [Google Scholar] [CrossRef] [PubMed]
  76. Campesi, I.; Marino, M.; Cipolletti, M.; Romani, A.; Franconi, F. Put “gender glasses” on the effects of phenolic compounds on cardiovascular function and diseases. Eur. J. Nutr. 2018, 57, 2677–2691. [Google Scholar] [CrossRef] [PubMed]
  77. West, S.G.; McIntyre, M.D.; Piotrowski, M.J.; Poupin, N.; Miller, D.L.; Preston, A.G.; Wagner, P.; Groves, L.F.; Skulas-Ray, A.C. Effects of dark chocolate and cocoa consumption on endothelial function and arterial stiffness in overweight adults. Br. J. Nutr. 2014, 111, 653–661. [Google Scholar] [CrossRef] [PubMed]
  78. Ibero-Baraibar, I.; Abete, I.; Navas-Carretero, S.; Massis-Zaid, A.; Martinez, J.A.; Zulet, M.A. Oxidised LDL levels decreases after the consumption of ready-to-eat meals supplemented with cocoa extract within a hypocaloric diet. Nutr. Metab. Cardiovasc. Dis. 2014, 24, 416–422. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  79. Miller, R.J.; Jackson, K.G.; Dadd, T.; Mayes, A.E.; Louise Brown, A.; Minihane, A.M. The impact of the catechol-O-methyltransferase genotype on the acute responsiveness of vascular reactivity to a green tea extract. Br. J. Nutr. 2011, 105, 1138–1144. [Google Scholar] [CrossRef] [PubMed]
  80. Rasmussen, B.B.; Brix, T.H.; Kyvik, K.O.; Brøsen, K. The interindividual differences in the 3-demthylation of caffeine alias CYP1A2 is determined by both genetic and environmental factors. Pharmacogenetics 2002, 12, 473–478. [Google Scholar] [CrossRef] [PubMed]
  81. Alkhaldy, A.; Edwards, C.A.; Combet, E. The urinary phenolic acid profile varies between younger and older adults after a polyphenol-rich meal despite limited differences in in vitro colonic catabolism. Eur. J. Nutr. 2019, 58, 1095–1111. [Google Scholar] [CrossRef] [PubMed]
  82. Velderrain-Rodríguez, G.R.; Palafox-Carlos, H.; Wall-Medrano, A.; Ayala-Zavala, J.F.; Chen, C.Y.O.; Robles-Sánchez, M.; Astiazaran-García, H.; Alvarez-Parrilla, E.; González-Aguilar, G.A. Phenolic compounds: Their journey after intake. Food Funct. 2014, 5, 189–197. [Google Scholar] [CrossRef]
  83. Williamson, G.; Clifford, M.N. Role of the small intestine, colon and microbiota in determining the metabolic fate of polyphenols. Biochem. Pharmacol. 2017, 139, 24–39. [Google Scholar] [CrossRef] [PubMed]
  84. Van Duynhoven, J.; Vaughan, E.E.; Jacobs, D.M.; Kemperman, R.A.; van Velzen, E.J.J.; Gross, G.; Roger, L.C.; Possemiers, S.; Smilde, A.K.; Dore, J.; et al. Metabolic fate of polyphenols in the human superorganism. Proc. Natl. Acad. Sci. USA 2011, 108, 4531–4538. [Google Scholar] [CrossRef]
  85. Stalmach, A.; Mullen, W.; Barron, D.; Uchida, K.; Yokota, T.; Cavin, C.; Steiling, H.; Williamson, G.; Crozier, A. Metabolite Profiling of Hydroxycinnamate Derivatives in Plasma and Urine after the Ingestion of Coffee by Humans: Identification of Biomarkers of Coffee Consumption. Drug Metab. Dispos. 2009, 37, 1749–1758. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  86. Del Rio, D.; Stalmach, A.; Calani, L.; Crozier, A. Bioavailability of Coffee Chlorogenic Acids and Green Tea Flavan-3-ols. Nutrients 2010, 2, 820–833. [Google Scholar] [CrossRef] [PubMed]
  87. Calani, L.; Dall’Asta, M.; Derlindati, E.; Scazzina, F.; Bruni, R.; Del Rio, D. Colonic Metabolism of Polyphenols From Coffee, Green Tea, and Hazelnut Skins. J. Clin. Gastroenterol. 2012, 46, S95–S99. [Google Scholar] [CrossRef] [PubMed]
  88. Zhang, L.; Wang, Y.; Li, D.; Ho, C.T.; Li, J.; Wan, X. The absorption, distribution, metabolism and excretion of procyanidins. Food Funct. 2016, 7, 1273–1281. [Google Scholar] [CrossRef] [PubMed]
  89. González-Barrio, R.; Edwards, C.A.; Crozier, A. Colonic catabolism of ellagitannins, ellagic acid, and raspberry anthocyanins: In vivo and in vitro studies. Drug Metab. Dispos. 2011, 39, 1680–1688. [Google Scholar] [CrossRef]
  90. Ludwig, I.A.; Mena, P.; Calani, L.; Cid, C.; Del Rio, D.; Lean, M.E.J.; Crozier, A. Variations in caffeine and chlorogenic acid contents of coffees: What are we drinking? Food Funct. 2014, 5, 1718–1726. [Google Scholar] [CrossRef] [PubMed]
  91. Angelino, D.; Tassotti, M.; Brighenti, F.; Del Rio, D.; Mena, P. Niacin, alkaloids and (poly)phenolic compounds in the most widespread Italian capsule-brewed coffees. Sci. Rep. 2018, 8, 11. [Google Scholar] [CrossRef]
  92. Morand, C.; Tomás-Barberán, F.A. Interindividual Variability in Absorption, Distribution, Metabolism, and Excretion of Food Phytochemicals Should Be Reported. J. Agric. Food Chem. 2019, 67, 3843–3844. [Google Scholar] [CrossRef]
Figure 1. Flowchart of the study selection process. Legend: HCAs: Hydroxycinnamic acids; RCT: Randomized controlled trial and WOS: Web of Science.
Figure 1. Flowchart of the study selection process. Legend: HCAs: Hydroxycinnamic acids; RCT: Randomized controlled trial and WOS: Web of Science.
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Table 1. Characteristics of the included acute intervention studies investigating the effect of HCA-rich foods on cardiometabolic markers.
Table 1. Characteristics of the included acute intervention studies investigating the effect of HCA-rich foods on cardiometabolic markers.
ReferenceStudy ParticipantsStudy DesignInterventionDose of HCAsControl/PlaceboMain Findings
Beam et al. 2015 [41]n = 10 male cyclists; age 26 ± 5 y; BMI 24 ± 4.3 kg/m2 CO75 g of dextrose with 10 mg/kg bw of GC bean extract post-exercise5 mg/kg bw CGA (325–450 mg CGA)75 g of dextrose with 5 mg/kg bw caffeine= blood glucose and insulin 2 h AUC, Matsuda Index
Boon et al. 2017 [37]n = 12 (7M/5F); age 59.4 ± 6.4 y; BMI 24.7 ± 3.3 kg/m2 CO(1) 18 g of DC in 200 mL of hot water taken after a 12-h fast; then again 2h later plus 75 g glucose drink
(2) Note: Another treatment included 18 g of ground caffeinated coffee in 200 mL of hot water, taken after a 12-h fast; then again 2 h later plus 75 g glucose drink
(1) 287 mg CGAs (DC)
(2) 300 mg CGA (caffeinated coffee)
200 mL of hot water, taken after a 12-h fast; then again 2 h later plus 75 g glucose drink= 1 h FMD, 2 h glucose (at any time point) and 1 h or 2 h BP (based on a single reading)
↑FMD after caffeinated coffee vs. DC or control
Ioakeimidis et al. 2018 [49]n = 24 (16M/8F); age 32.7 ± 9.3 y; BMI 26.4 ± 2.5 kg/m2 (habitual consumers) and 26.4 ± 2.5 kg/m2 (non-habitual consumers)CO(1) triple coffee espresso (75 mL)
(2) triple DC espresso (75 mL)
81 mg of 3-CQA and 156 mg of 5-CQA (1) 240 mg caffeine tablet
(2) placebo (hot water, 75 mL)
↑peripheral SBP, DBP after DC, caffeinated coffee and caffeine tablet compared to placebo after 2.5 h
Iwai et al. 2013 [35]n = 41 (22M/19F); age 34.8 ± 8.0 y; BMI 22.0 ± 3.1 kg/m2CO2 pieces of Onigiri (200 g carbohydrate) together with:
(1) 100 mg or
(2) 300 mg decaffeinated green coffee beans extract in 200 mL water
39 and 118 g/day (39.2 g CGA/100 g)2 pieces of Onigiri (200 g carbohydrate) together with 200 mL water↓glucose after 300 mg decaffeinated green coffee beans extract compared to control at 30 min
= insulin and glucose 2 h AUC
Johnston et al. 2003 [34]n = 9 (4M/5F); age 26 ± 3.2 y; BMI ≤ 25 kg/m2CO25 g glucose in 400 mL of
(1) caffeinated or
(2) decaffeinated coffee
2.5 mmol CGA/L25 g glucose in 400 mL water= glucose, insulin at any time point
↑0–30 min IAUC insulin caffeinated coffee vs. DC and control
Jokura et al. 2015 [46]n = 19 M; age 38.1 ± 8.4 y; BMI 21.8 ± 2.2 kg/m2 COMeal (75 g carb, 28.5 g fat, 8 g protein) with coffee polyphenol extract355 mg CQAs in 185 mLMeal (75 g carb, 28.5 g fat, 8 g protein) without coffee polyphenol extract; matched caffeine (54.9 mg)↓peak postprandial blood glucose at 30 min vs. control
↑ postprandial FMD at 60 min, 120 min, 180 min over 4 h vs. control
= postprandial insulin
Kajikawa et al. 2019 [39]n = 18 patients with borderline or stage 1 hypertension (12M/6F); age 56 ± 15 y; BMI 23.2 ± 3.1 kg/m2COSingle intake of roasted coffee (beverage A)412 mg CGAs (beverage A)Single intake of beverage C (no CGAs)= TG, glucose, insulin, FMD, SBP vs. control
↑TG, glucose, insulin at 1 h and 2 h within beverage A and within control
↑FMD at 1 h and 2 h within beverage A
Lappi et al. 2013 [40]n = 15 (6M/9F); age 57 y; BMI 26 kg/m2; healthy but self-reported mild, moderate or severe gastrointestinal symptoms post-ingestion of cereals, particularly rye COMeal including white wheat breads fortified with bioprocessed rye bran (WW + BRB) or with native rye bran (WW + RB) providing 50 g of available starch (meal also included 40 g cucumber, 20 g margarine, 14/15 participants also consumed black coffee or tea)- WW + BRB: 134.6 mg total FA, 31.3 mg total sinapic acid and 4.7 mg coumaric acid
- WW + RB: 117.0 mg total FA, 28.8 mg total sinapic acid and 5.0 mg total coumaric acid
Control meals including wholegrain rye (R) bread (74.0 mg FA + 17.1 mg SA + 2.9 mg CA) or white wheat (WW) bread (6.6 mg FA + 1.7 mg SA + 0.2 mg CA) providing 50 g of available starch (meal also included 40 g cucumber, 20 g margarine, 14/15 participants also consumed black coffee or tea)= glucose
↓insulin incremental AUC for R bread (control) compared to others
Mills et al. 2017 [25]—Study 1n = 15 M; age 26.3 ± 1.6 y; BMI 23.5 ± 0.5 kg/m2COLPC and HPC coffees89 mg (LPC) and 310 mg (HPC) CGACaffeine control: 110 mg caffeine and 0 mg CGA in hot water↑FMD at 1 h and 5h for 450 mg and 900 mg CGA vs. control
= SBP, DBP
Mills et al. 2017 [43]—Study 2n = 24 M; age 23.8 ± 1.4 y; BMI 23.2 ± 1.4 kg/m2CO450 mg purified 5-CQA + 1 g maltodextrin; 900 mg purified 5-CQA + 1 g maltodextrin450 mg and 900 mg CGA1 g maltodextrin (negative control) and 200 mg (−)-epicatechin + 1 g maltodextrin (positive control)= FMD
↑FMD at 1 h within 450 mg CGA
= SBP, DBP
Moser et al. 2018 [44]n = 12 (6M/6F); range age 19–33 y; BMI 23.2 ± 0.7 kg/m2COPotato chip product made from (1) white, (2) purple or (3) red potatoes providing 50 g of available carbohydrates (~93 g potato chips)Total CGAs ranging from 13.4 ± 0.8 to 362.1 ± 9.2 mg/100 g dwPlain salted wheat crackers providing 50 g of available carbohydrates↓mean 2 h glucose IAUC and glucose at 20, 40 and 60 min time points to each potato chip vs. control
Mubarak et al. 2012 [32]n = 23 (4M/19F); age 52.3 ± 10.6 y; BMI 25.6 ± 4.7 kg/m2CO400 mg CGAs in 200 mL of low nitrate water400 mg CGAs (3-CQA)Water↓SBP, DBP (mean of 60, 90, 120 and 150 min)
= FMD at 120 min
Ochiai et al. 2014 [31]n = 14 M; age 36.2 ± 7.8 y; BMI 22.7 ± 1.8 kg/m2CO225 mL of a 75 g glucose-equivalent test solution with coffee polyphenols600 mg CQAs225 mL of a 75 g glucose-equivalent test solution= glucose, insulin, SBP
Ochiai et al. 2015 [30]n = 13 M; age 44.9 ± 1.4 y; BMI 21.9 ± 0.6 kg/m2COCoffee bean polyphenols beverage in 100 mL of water followed by a test meal (14 g of protein, 30 g of fat and 58 g of carbohydrates)600 mg CGAs Placebo beverage with same taste followed by a test meal (14 g of protein, 30 g of fat and 58 g of carbohydrates)↓DBP at 1 h vs. placebo
↑FMD at 6 h vs. placebo
= glucose, insulin, TG, TC
Rakvaag et al. 2016 [42]n = 11 (4M/7F); age 26.2 ± 0.6 y; BMI 23.2 ± 0.4 kg/m2CO300 mL of either light (LIR) or dark (DAR) roasted coffee 30 min before 75 g OGTT - LIR: 399.6 ± 12.5 mg CQA/serving
- DAR: 66.6 ± 1.2 CQA mg/serving
300 mL of tap water 30 min before 75 g OGTT↑insulin 2 h IAUC DAR vs. control
= glucose
↑glucose 60 min time point DAR vs. control
↓ISI (Matsuda) DAR and LIR vs. control
Robertson et al. 2015 [43]n = 10 overweight M; age 30.4 ± 14.2 y; BMI 27.8 ± 2.2 kg/m2CO(i) 2, 4 or 8 g instant DC in 400 mL water with caffeine added in proportion (total 100, 200 or 400 mg caffeine) all with 50 g glucose
(ii) 2, 4 and 8 g DC with a standard 100 mg caffeine added to each
47, 94 and 188 mg CQAs/drink(i) 400 mL water with 50 g glucose
(ii) 400 mL water with a standard 100 mg caffeine
(i) ↑2 h IAUC glucose for 2 and 4 g DC vs. control
(i) = 2 h IAUC insulin, ISI (Matsuda)
(ii) = 2 h IAUC glucose, 2 h IAUC insulin, ISI (Matsuda)
Rosen et al. 2011 [29]n = 14 (7M/7F); age 23.6 ± 0.5 y; BMI 22.0 ± 0.5 kg/m2COA portion of one of five whole grain rye test breads (differing in rye varieties) providing 50 g of available starchFA ranging from 2.2 to 2.6 mg/serving; sinapic acid ranging from 724 to 993 µg/serving122.7 g of WW bread providing 50 g of available starch↓3 h IAUC insulin for two rye test breads (Amilo and Rekrut) vs. WW
= 3 h IAUC glucose
Schubert et al. 2014 [45]n = 12 (3M/9F); age 26.3 ± 6.3 y; BMI 22.7 ± 2.2 kg/m2
(n = 10 in glucose analysis)
COA standardized breakfast (pancakes, butter, and jam: 48 g carbohydrate, 17 g fat, 15 g protein) at 0 min plus:
(i) 225 mL of DC + placebo capsules at 0 and 120 min
(ii) 225 mL DC + caffeine capsules at 0 and 120 min
248.9 ± 11.3 mg CGAs per serving A standardized breakfast (pancakes, butter and jam: 48 g carbohydrate, 17 g fat and 15 g protein) at 0 min plus:
(i) Placebo (250 mg Metamucil) capsules and 225 mL water at 0 and 120 min
(ii) Caffeine capsules and 225 mL water at 0 and 120 min
= 4.5 h IAUC glucose
Thom 2007 [36]n = 12 (6M/6F); age 24.2 ± 3.2 y; BMI < 25.0 kg/m2CO(i) 25 g of sucrose and 10 g of coffee made with GCE
(ii) 25 g of sucrose and 10 g of normal instant coffee;
(iii) 25 g of sucrose and 10 g of DC
all in 400 mL water
(i) ~432 mg CGA
(ii + iii) ~220 mg CGA
25 g of sucrose in 400 mL of water↓2 h IAUC glucose AUC for GCE vs. control only
Van Dijk et al. 2009 [38]n = 15 overweight M; age 39.9 ± 16.5 y; BMI 27.6 ± 2.2 kg/m2COEither (i) 12 g DC
(ii) 1 g CGA
30 min before a 75 g oral glucose
(i) 264 mg CGA
(ii) 1 g CGA
1 g mannitol 30 min before a 75 g oral glucose= 2 h IAUC glucose and insulin
↓glucose and insulin at 15 min CGA vs. control
Ward et al. 2016 [33]n = 16 (6M/10F); age 58.9 ± 8.2 y; BMI 24.7 ± 3.3 kg/m2CO200 mL warm water with either 450 mg and 900 mg purified 5-CGA
2 h after a standardized breakfast (2 pieces of white bread with cheese, tub of plain yoghurt and water)
450 and 900 mg CGA200 mL warm water with either 0 mg purified 5-CGA (control group) or 200 mg purified (−)-epicatechin (positive control)
2 h after a standardized breakfast (2 pieces of white bread with cheese, tub of plain yoghurt and water)
↑continuous FMD vs. control
= BP, peak FMD
Legend: AUC: Area under the curve; BMI: Body mass index; BP: Blood pressure; BRB: Bioprocessed rye bran; bw: Body weight; CGAs: Chlorogenic acids; CO: Cross-over design; DAR: Dark roasted coffee; DBP: Diastolic blood pressure; DC: Decaffeinated coffee; dw: Dry weight; EDGCB: Decaffeinated green coffee beans extract; F: Females; FA: Ferulic acid; FMD: Flow mediated dilation; GCE: Green coffee; HPC: High polyphenol coffee; IAUC: Incremental area under the curve; ISI: Insulin sensitivity index; LIR: Light roasted coffee; LPC: Low polyphenol coffee; M: Males; OGTT: Oral glucose tolerance test; SBP: Systolic blood pressure; WW: Whole wheat; =: No statistically significant effect; ↑: Significant increase; ↓: Significant decrease. Age and BMI are mean ± SD.
Table 2. Characteristics of the considered chronic intervention studies investigating the effect of HCA-rich foods on cardiometabolic markers.
Table 2. Characteristics of the considered chronic intervention studies investigating the effect of HCA-rich foods on cardiometabolic markers.
ReferenceSubjectsStudy DesignInterventionDose of HCAsControl/PlaceboMain Findings
Agudelo-Ochoa et al. 2016 [63]n = 75 (38M/37F); age 38.5 ± 9 y; BMI 24.1 ± 2.6 kg/m2; overall healthyP400 mL coffee/d containing a medium (MCCGA) or high (HCCGA) CGA content for 8 weeksMCCGA = 420 mg/400 mL; HCCGA = 780 mg/400 mL (each with ~193 mg/d caffeine)No consumption of coffee or placebo=TC, LDL, HDL, TG, FMD, BP
Bumrungpert et al. 2018 [59]n = 48 with hyperlipidemia (6M/42 F); age 48.7 ± 7.6 y (FA) and 45.9 ± 7.8 y (placebo); BMI 25.9 ± 5.3 kg/m2 (FA) and 26.6 ± 6.2 kg/m2 (placebo)P2 capsules of FA/day for 6 weeks1000 mg FA/day2 placebo capsules/day for 6 weeks↓TC, LDL, and TG ↑HDL
= SBP, DBP, glucose, BMI, WC
compared to control
Haidari et al. 2017 [61]64 obese F; age 36.1 (GCE) and 35.7 y (placebo); BMI 26.4 ± 2.5 kg/m2 (GCE) and 26.4 ± 2.5 kg/m2 (placebo)POne capsule of 400 mg GCE/day for 8 weeks180 mg CGA/capsuleOne placebo capsule of 400 mg starch/day for 8 weeks↓BMI, TC, LDL
= HDL, TG, glucose, insulin
in the GCE group + compared to control
Kempf et al. 2015 [57]n = 116 overweight (39M/77F); age 50.6 ± 11.8 y (M-coffee) and 48.0 ± 12.7 y (D-coffee); BMI 32.4 ± 4.4 kg/m2 (M-coffee) and 33.9 ± 4.6 kg/m2 (D-coffee)CO4–5 servings/day of 7.5 g MRC in 125 mL water for 3 months19.31 ± 0.28 mg/L CGA7.5 mg/L dark roast coffee (10.01 ± 0.28 mg/L CGA; 1.20 ± 0.03 mg/L N-methylpyridinium; caffeine-matched) in 125 mL water for 3 months↓SBP in control vs. M-coffee
↑TG within control
↑HDL within M-coffee
= BMI, DBP, glucose, insulin, HOMA-IR, TC, LDL, HbA1c between M-coffee and control
Kozuma et al. 2005 [50]n = 117 M with mild hypertension
-Group 46 mg (n = 29): age 42.9 ± 8.2 y; BMI 25.2 ± 4.0 kg/m2
-Group 93 mg (n = 28): age 43.3 ± 8.3 y; BMI 24.4 ± 2.6 kg/m2
-Group 185 mg (n = 31): age 43.4 ± 8.4 y; BMI 25.1 ± 3.6 kg/m2
-Placebo (n = 29): age 43.1 ± 9.1 y; BMI 24.0 ± 3.1 kg/m2
PSoy sauce-flavored instant cup soup containing 46 mg, 93 mg, or 185 mg of GCE, once a day for 28 days25 mg, 50 mg, and 100 mg CGAs, respectivelySoy sauce-flavored instant cup soup without GCE, once a day for 28 days↓SBP and DBP in all group compared to baseline, significant for 93 and 185 g groups compared to placebo
↓TC, LDL within 185 mg group
= BMI, TG, HDL
Lecoultre et al. 2014 [52]n = 10 M; age 23 ± 2 y; BMI 22.6 ± 0.6 kg/m2; healthyCO4 cups of (i) caffeinated coffee high in CGA (C-HCA), (ii) DC high in CGA (D-HCA), or (iii) DC regular in CGA (D-RCA) daily for 14 days, with 4 g fructose/kg day the last 6 days-C-HCA: 9% CGAs
-D-HCA: 9% CGAs
-D-RCA: 3% CGAs
No coffee + 4 g fructose/kg d (high fructose only) in the last 6 days= TG, glucose, insulin
↑TG after control
Martínez-López et al. 2018 [28] *n = 52: n = 25 NC (10M/15F) and n = 27 HC (10M/17F); age 26.6 ± 7.7 y (NC-F), 24.7 ± 5.8 y (NC-M), 33.3 ± 10.2 y (HC-F), 34.8 ± 9.2 y (HC-M); BMI 21.9 ± 2.5 kg/m2 (NC-F), 24.2 ± 2.8 kg/m2 (NC-M), 21.4 ± 2.5 kg/m2 (HC-F), 24.9 ± 2.3 kg/m2 (HC-M)CO6 g/day of soluble green/roasted (35:65) coffee for 8 weeks510.6 mg/day HCAs (~344 mg/d CGA) + ~120 mg caffeineControl beverage (water or an isotonic drink) for 8 weeks↓TC, LDL, TG
=HDL
↓TC, LDL, TG in HC only
= TC, LDL, TG in NC only
Ochiai et al. 2004 [55]n = 20 M; age 37.2 ± 1.6 y (test) and 34.8 ± 2.3y (placebo); BMI 24.7 ± 1.6 kg/m2 (test) and 23.8 ± 0.6 kg/m2 (placebo); healthyP1 bottle of 125 mL test drink containing GCE for 4 months140 mg CGA/serving (28%)125 mL GCE-free drink= SBP, DBP, TC, LDL, HDL, TG, glucose, insulin
Ochiai et al. 2009 [64]n = 21 with mild hypertension and vascular failure; range age 30–64 y; BMI 24.2 ± 0.9 kg/m2 (active group) and 24.2 ± 1.1 kg/m2 (placebo group)P1 can (184 mL) of active beverage (canned coffee) for 8 weeksActive beverage: 300 mg CGA/serving (reduced in HHQ)1 can (184 mL) of placebo beverage for 8 weeks (reduced in HHQ and CGA; caffeine-matched)↓SBP
= DBP, BMI, glucose, HbA1c, TG, LDL, HDL
= DBP, glucose, BMI, FMD, TC, LDL, HDL, TG
Rezazadeh et al. 2018 [58]68 patients with MetS (19M/49F); age 38.9 ± 6.9 y; BMI 34.3 ± 4.3 kg/m2P1800 mg/day ALE as four tablets for 12 weeks4%–5% CGAs4 placebo tablets/day↓TG, TC, LDL within ALE
=HDL
↓TG in ALE vs. control
Riedel et al. 2014 [56]n = 84 (46M/38F); age 25.6 ± 5.8 y; BMI 22.9 ± 1.9 kg/m2; healthyCO750 mL (6 coffee pads at 7.5 g) of MRC per day for 4 weeks 19.2 ± 0.3 mg/g CGA750 mL of DRC (10.0 ± 0.3 mg/L CGA; 1.20 ± 0.0 mg/L N-methylpyridinium; caffeine-matched) per day for 4 weeks↑TC within MRC only
↑insulin, HOMA-IR within MRC and vs. DRC (control)↑HDL within MRC and DRC, but greater in DRC (control)
=LDL, TG and glucose
Robertson et al. 2018 [72]n = 27: n = 19 (10M/9F) in the coffee group; range age 18–42; BMI 23.4 ± 3.0 kg/m2; n = 8 (4M/4F) in the control group; range age 19–41; BMI 22.9 ± 3.1 kg/m2; overall healthyPFour cups/day instant coffee for 12 weeks43.6 mg CGAs/cupNo coffee/caffeine for 12 weeks= fasting glucose, insulin, TG, BMI
Rondanelli et al. 2013 [54]n = 92 with mild hypercholesterolemia (41M/51F); age 54.2 ± 6.6 y (intervention) and 53.8 ± 9.0 y (placebo); BMI 25.8 ± 3.9 kg/m2 (intervention) and 24.8 ± 1.6 kg/m2 (placebo) PTablets of 250 mg ALE twice a day for 8 weeks>20% CQAs Placebo tablets of 250 mg twice a day for 8 weeks↑HDL within and between groups
↓LDL and TC within and between groups
= TG, glucose
Rondanelli et al. 2014 [62]n = 55 overweight with IFG (25M/30F) age 54.1 ± 9.8 y; BMI 30.7 ± 3.8 kg/m2P600 mg/day extract of Cs (30%–60% CQAs) tablets for 8 weeksCQAs between 30% and 60% Placebo tablets for 8 weeks↓BMI, glucose, HOMA, TC, and LDL within Cs and vs. control
↓HbA1c within Cs only
= insulin, HDL, TG, WC
Roshan et al. 2018 [67]n = 43 with MetS (10M/33F); age 52.8 ± 9.8 y (CGE) and 52.0 ± 8.7 y (placebo); BMI 31.6 ± 3.6 kg/m2 (CGE) and 31.2 ± 4.9 kg/m2 (placebo)PTwo decaffeinated CGE capsules of 400 mg/day for 8 weeks 372 mg CGA/day (186 mg/capsule)Two placebo capsules (starch)/day for 8 weeks↓SBP, fasting glucose, HOMA-IR, and WC compared to placebo = DBP, insulin, HbA1c, BMI, TC, LDL, HDL, TG
Sarriá et al. 2016 [27] *n = 52 (20M/32F); age 29.8 ± 8.9 y (M) and 29.4 ± 9.5 y (F); BMI 24.8 ± 2.7 kg/m2 (M) and 21.7±2.5 kg/m2 (F)CO6 g/day of soluble green/roasted (35:65) coffee for 8 weeks510.6 mg/day HCAs (~344 mg/day CGA) + ~120 mg caffeineWater or an isotonic drink↓glucose and HOMA-IR ↑QUICKI
Sarriá et al. 2018 [26] *n = 52: n = 25 NC (10M/15F) and n = 27 HC (10M/17F); age 26.6 ± 7.7 y (NC-F), 24.7 ± 5.8 y (NC-M), 33.3 ± 10.2 y (HC-F), 34.8 ± 9.2 y (HC-M); BMI 21.9 ± 2.5 kg/m2 (NC-F), 24.2 ± 2.8 kg/m2 (NC-M), 21.4 ± 2.5 kg/m2 (HC-F), 24.9 ± 2.3 kg/m2 (HC-M)CO6 g/day of soluble green/roasted (35:65) coffee for 8 weeks510.6 mg/day HCAs (~344 mg/day CGA) + ~120 mg caffeineWater or an isotonic drink↓SBP, DBP ↓glucose, HOMA-IR and TG
= HDL, insulin, waist circumference
↓SBP, DBP, HOMA-IR, TG in HC only
= HDL, glucose, insulin in HC only
↓HOMA-IR in NC only
= SBP, DBP, TG, HDL, glucose, insulin in NC only
Shahmohammadi et al. 2017 [60]n = 44 (22M/22F) patients with NAFLD; age 41.4 ± 7.7 y (GCE) and 44.5 ± 5.2 y (placebo); BMI 31.3 ± 2.6 kg/m2 (GCE) and 31.5 ± 2.2 kg/m2 (placebo)P1 g GCE/day for 8 weeks + advice on 30 min/day exercise500 mg CGAs/day1 g placebo/day for 8 weeks + advice on 30 min/day exercise↓TC, TG, fasting blood glucose, HOMA-IR
= HDL, LDL, insulin, WC, BMI
for GCE vs. control
Soga et al. 2013 [69]n = 18 M; age 36.1 ± 7:4 y; BMI 21.9 ± 0.6 kg/m2 (CGA) and 22.0 ± 0.5 kg/m2 (control); healthyCO185 mL of a test beverage with CGAs daily for 4 weeks329 mg CGAs/serving185 mL of test beverage without CGAs for 4 weeks; caffeine-matched↓glucose within CGA
= BMI
Vinson et al. 2012 [73]n = 18 hypertensive (7M/11F); age 54 ± 10 y; BMI 29.4 ± 6.4 kg/m2CO6–8 purple potatoes for 4 weeks2.72 mg/g dw CGA; 0.147 mg/g dw neoCGANo potatoes for 4 weeks↓DBP within purple potatoes
= SBP, glucose, HbA1c, TC, HDL, TG
Vitaglione et al. 2015 [71]n = 68 overweight/obese otherwise healthy (23M/45F); age 40 ± 2 y (WG) and 37 ± 2 y (control); BMI 30.0 ± 0.5 kg/m2 (WG) and 29.5 ± 0.4 kg/m2 (control)P70 g/d (3 biscuits/d) of WG products for 8 weeks96.7 mg FA/serving; 26.5 mg SA/serving; 9.4 mg CA/serving1 package (33 g) of crackers and 3 slices of toasted bread for 8 weeks= BMI, WC, glucose, TC, HDL, TG
Watanabe et al. 2006 [66]n = 28 with mild hypertension (11M/17F); age 52 ± 11 y (CGA) and 51 ± 8 y (placebo); BMI 23.8 ± 3.3 kg/m2 (CGA) and 25.0 ± 3.5 kg/m2 (placebo)P125 mL/day fruit and vegetable juice mixed with GCE for 12 weeks140 mg CGA/day125 mL/day fruit and vegetable juice for 12 weeks↓SBP and DBP within GCE
↓SBP GCE vs. control = BMI, TC, LDL, HDL, TG, glucose
Wedick et al. 2011 [65]n = 45 overweight (16M/29F); age 40 y; BMI 29.5 kg/m2P5 cups (177 mL each) per day of (1) DC or (2) caffeinated coffee for 8 weeks(1) 216 mg/5 cups of DC
(2) 302 mg/5 cups for caffeinated coffee
No coffee (i.e., water) for 8 weeks= BMI, WC, SBP, LDL, HDL, TG, glucose, insulin and HOMA-IR
↓DBP within DC
Yamaguchi et al. 2008 [53]n = 183 with mild hypertension (91M/92F); age 49.4 ± 10.1 y; BMI 25.4 ± 3.8 kg/m2POne can (184 mL)/day of zero-dose, low-dose, middle-dose, high-dose coffee for 4 weeks82 mg (low-dose), 172 mg (middle-dose) and 299 mg (high-dose) CGA/can0 mg (zero-dose) coffee (0 mg CGA) ↓SBP and DBP in low, middle and high-dose
= LDL, TG
↑HDL and TC within middle-dose
↓BW within middle and high dose
Zuñiga et al. 2017 [51]n = 30 (5M/25F) patients with IGT; age 43 ± 11 y (CGA) and 45 ± 9 y (placebo); BMI 32.6 ± 2.4 kg/m2 (CGA) and 32.1 ± 2.5 kg/m2 (placebo)POral CGAs from GCE, three times per day for 12 weeks1200 mg CGAs/dayOral placebo, three times per day for 12 weeks↓BMI, WC, TG, TC, LDL, glucose
= SBP, DBP, HDL, HbA1c within CGA
Legend: ALE: Artichoke leaf extract; AUC: Area under the curve; BMI: Body mass index; BP: Blood pressure; CA: Coumaric acid; CGA: Chlorogenic acid; CO: Cross-over design; Cs: Cynara scolymus (artichoke); DC: Decaffeinated coffee; D-coffee: Dark roast coffee; DBP: Diastolic blood pressure; DRC: Dark roast blend coffee; dw: Dry weight; F: Females; FA: Ferulic acid; FMD: Flow mediated dilation; GCE: Green coffee extract; HbA1c: Glycated hemoglobin; HC: Hypercholesterolemic; HCAs: Hydroxycinnamic acids; HDL: High density lipoprotein; HHQ: Hydroxyhydroquinone; HOMA: Homeostatic model assessment; IFG: Impaired fasting glucose; IGT: Impaired glucose tolerance; IR: Insulin resistance; LDL: Low density lipoprotein; M: Males; M-coffee: Medium roast coffee; MetS: Metabolic syndrome; MRC: Medium roast blend coffee; NAFLD: Non-alcoholic fatty liver disease; NC: Normocholesterolemic; P: Parallel design; RCT: Randomized controlled trial; SA: Sinapic acid; SBP: Systolic blood pressure; TC: Total cholesterol; TG: Triglycerides; WC: Waist circumference; WG: Whole grain; =: No statistically significant effect; ↑: Significant increase and ↓: Significant decrease. Age and BMI are mean ± SD. * These publications correspond to the same RCT.
Table 3. Main findings of studies investigating the effect of HCA-rich foods on cardiometabolic markers and considering determinants of inter-individual variability.
Table 3. Main findings of studies investigating the effect of HCA-rich foods on cardiometabolic markers and considering determinants of inter-individual variability.
ReferenceDeterminant of Inter-Individual VariabilityMain Findings
Acute studies
Ioakeimidis et al. 2018 [49]Dietary pattern (habitual and non habitul coffee consumers)= BP between habitual and non-habitual consumers
Iwai et al. 2013 [35]Pathophysiological status (high glycemic response vs. total mean glycemic response)↓glucose after both 100 mg 300 mg EDGCB in high glycemic response group
Jokura et al. 2015 [46]Pathophysiological status (lower or higher insulinogenic index)↓blood glucose after CPE compared to the placebo in study participants with a lower insulinogenic index
↑postprandial FMD after CPE compared to the placebo in study participants with either lower or higher insulinogenic index
Chronic studies
Martínez-López et al. 2018 [28] *Pathophysiological status (normocholesterolemia vs. hypercholesterolemia)↓TC, LDL, TG only in HC
Sarriá et al. 2018 [26] *Pathophysiological status (normocholesterolemia vs. hypercholesterolemia)↓SBP, DBP only in HC
↓HOMA-IR in both HC and NC separately
= glucose in either HC or NC separately
Rezazadeh et al. 2018 [58]-Taq IB polymorphism in cholesteryl ester transfer protein gene (B1B1 vs. B2 allel)
-Sex (men vs. women with the selected polymorphisms)
Similar changes in lipid profile among Taq IB genotype compared to placebo
↓LDL in men with B1B1 genotype after ALE
Rondanelli et al. 2013 [54]Sex (men vs. women)
Stratified by median HDL
↑HDL in men only
↓LDL, TC in men and women
↓ TG in women only
↑ HDL in men in both strata
↑HDL in women in ≤median HDL strata
Legend: ALE: Artichoke leaf extract; CPE: Coffee polyphenol extract; DBP: Diastolic blood pressure; EDGCB: Decaffeinated green coffee beans extract; FMC: Flow mediated dilation; HC: Hypercholesterolemic; HDL: High density lipoprotein; HOMA: Homeostatic model assessment; IFG: Impaired fasting glucose; IGT: Impaired glucose tolerance; IR: Insulin resistance; LDL: Low density lipoprotein; NC: Normocholesterolemic; PP: Pulse pressure; TC: Total cholesterol; SBP: Systolic blood pressure; TG: Triglycerides; =: No statistically significant effect; ↑: Significant increase; ↓: Significant decrease. * These publications correspond to the same RCT.

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Martini, D.; Chiavaroli, L.; González-Sarrías, A.; Bresciani, L.; Palma-Duran, S.A.; Dall’Asta, M.; Deligiannidou, G.-E.; Massaro, M.; Scoditti, E.; Combet, E.; et al. Impact of Foods and Dietary Supplements Containing Hydroxycinnamic Acids on Cardiometabolic Biomarkers: A Systematic Review to Explore Inter-Individual Variability. Nutrients 2019, 11, 1805. https://0-doi-org.brum.beds.ac.uk/10.3390/nu11081805

AMA Style

Martini D, Chiavaroli L, González-Sarrías A, Bresciani L, Palma-Duran SA, Dall’Asta M, Deligiannidou G-E, Massaro M, Scoditti E, Combet E, et al. Impact of Foods and Dietary Supplements Containing Hydroxycinnamic Acids on Cardiometabolic Biomarkers: A Systematic Review to Explore Inter-Individual Variability. Nutrients. 2019; 11(8):1805. https://0-doi-org.brum.beds.ac.uk/10.3390/nu11081805

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Martini, Daniela, Laura Chiavaroli, Antonio González-Sarrías, Letizia Bresciani, Susana A. Palma-Duran, Margherita Dall’Asta, Georgia-Eirini Deligiannidou, Marika Massaro, Egeria Scoditti, Emilie Combet, and et al. 2019. "Impact of Foods and Dietary Supplements Containing Hydroxycinnamic Acids on Cardiometabolic Biomarkers: A Systematic Review to Explore Inter-Individual Variability" Nutrients 11, no. 8: 1805. https://0-doi-org.brum.beds.ac.uk/10.3390/nu11081805

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