Next Article in Journal
Personalized Healthcare for Dementia
Next Article in Special Issue
Effectiveness of Testing and Contact-Tracing to Counter COVID-19 Pandemic: Designed Experiments of Agent-Based Simulation
Previous Article in Journal
Multi-Objective Optimization of Integrated Civilian-Military Scheduling of Medical Supplies for Epidemic Prevention and Control
Previous Article in Special Issue
What Will Be the Impact of the COVID-19 Quarantine on Psychological Distress? Considerations Based on a Systematic Review of Pandemic Outbreaks
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Mortality, Severity, and Hospital Admission among COVID-19 Patients with ACEI/ARB Use: A Meta-Analysis Stratifying Countries Based on Response to the First Wave of the Pandemic

by
Ahmad A. Alamer
1,2,*,
Abdulaziz S. Almulhim
3,
Ahmed A. Alrashed
4 and
Ivo Abraham
1,5
1
Center for Health Outcomes and PharmacoEconomic Research, University of Arizona, 1295 N Martin Ave, Tucson, AZ 85721, USA
2
Department of Clinical Pharmacy, College of Pharmacy, Prince Sattam Bin Abdulaziz University, Alkharj 11942, Saudi Arabia
3
Department of Pharmacy Practice, College of Clinical Pharmacy, King Faisal University, Al-Ahasa 31982, Saudi Arabia
4
Pharmaceutical Service Department, Main Hospital, King Fahad Medical City, Riyadh 11564, Saudi Arabia
5
Department of Pharmacy Practice and Science, College of Pharmacy, University of Arizona, Tucson, AZ 85721, USA
*
Author to whom correspondence should be addressed.
Submission received: 25 December 2020 / Revised: 22 January 2021 / Accepted: 26 January 2021 / Published: 28 January 2021

Abstract

:
Background: The use of angiotensin-converting enzyme inhibitors (ACEIs) or angiotensin receptor blockers (ARBs) is controversial for treating COVID-19 patients. We aimed to estimate pooled risks of mortality, disease severity, and hospitalization associated with ACEI/ARB use and stratify them by country and country clusters. Methods: We conducted a search in various databases through 4 July 2020 and then applied random-effects models to estimate pooled risks (ORp) across stratifications by country cluster. Clusters were chosen to reflect outbreak times (China followed by Korea/Italy, others subsequently) and mobility restrictions (China and Denmark/France/Spain with stricter lockdowns than the UK/US). Results: Overall analysis showed no increase in mortality; however, a statistical increase in mortality was seen in the US/UK cluster with ORp = 1.28 [95% CI = 1.04; 1.56] and a decrease in China with ORp = 0.65 [95% CI = 0.43; 0.96] and France with OR = 0.31 [95% CI = 0.14; 0.69]. Severity and hospitalization were not statistically significant in the analysis; however, several associations were seen in specific countries but not in country clusters. Conclusion: The country-cluster meta-analysis provided a reasonable explanation for COVID-19 mortality among ACEI/ARB users. The analysis did not explain differences in severity and suggested the involvement of other factors. Hospitalization findings among ACEI/ARB users may be considered informative as they may have been subjected to clinical decisions and hospital-bed availability.

1. Background

Scientists have attempted to model the impact of non-pharmaceutical interventions (NPIs) on the global pandemic caused by the coronavirus beginning in 2019. NPIs may include contact tracing, increased testing, social distancing, wearing masks, and extreme measures such as complete lockdowns and banning public gatherings [1]. The most extreme example of an NPI was the national lockdown in Europe that included Italy, Spain, France, and Denmark, among other EU nations, and in China, which aimed to change the trajectory of the pandemic. This strategy was shown to be effective in reducing the time-varying reproduction number (Rt) of COVID-19—”an epidemiological quantity that represents the average number of infections generated at time (t) by each infected case over the course of their infection”—almost immediately after implementation [1]. By contrast, given the adverse economic impact of such strategies, few countries adopted the “herd immunity” strategy during the pandemic or imposed a delayed implementation of the lockdown [2,3]. The literature suggests that low levels of national preparedness and governmental responses can increase the likelihood of an overwhelmed healthcare system that could result in adverse health outcomes for the most vulnerable patients in a society [4].
With the recent concern regarding angiotensin-converting enzyme inhibitors (ACEI) and angiotensin II receptor blockers (ARB), there has been speculation that their use could increase the risk of exacerbating COVID-19 infections by upregulating ACE2 expression [5,6]. However, it has also been hypothesized that these could yield favorable outcomes [7]. These conflicting opinions are supported by published human studies, as we will discuss in this study.
Interestingly, many diseases such as hypertension, diabetes, renal, and cardiovascular diseases share a common indication for ACEI/ARB [5]. Among other factors, the association of ACEIs/ARBs with increased risk of COVID-19 requires further evaluation in this subset of vulnerable patients [5].
Beyond the theoretical risk in these patients, we attempted to evaluate whether or not specific countries and country clusters were successful in mitigating the risk of worse COVID-19 outcomes in ACEI/ARB users compared to non-ACEI/ARB users during their first wave of the pandemic. The results of this study would help to explain several of the discrepancies seen in COVID-19 outcomes associated with ACEIs/ARBs in the published literature. Therefore, the primary objective was to estimate the pooled risks of mortality and disease severity associated with ACEI/ARB use during the first wave of the pandemic. Exploratorily, we also estimated the pooled risk of hospitalization with due caution because of factors independent of COVID-19.

2. Methods

2.1. Literature Search and Data Extraction

We complemented an amended [8] meta-analysis and a living systematic review [9], [10] with an updated search through 4 July 2020 in the PubMed, Cochrane, and medRxiv.org databases. A PRISMA flowchart is shown in Figure S1 in the Supplementary Materials. The following modified population, intervention, comparison, outcome, study type (PICOS) criteria [11]. (1) Population: patients of any age who tested positive for COVID-19; (2) intervention: ACEs or ARBs; (3) comparison: placebo or active control; (4) outcomes: mortality, disease-severity, and hospital admission; (5) study type: controlled and non-controlled. The definition for COVID-19 severity may include the following: National Health Commission of the People’s Republic of China [12], WHO severity definition [13], requiring intensive care unit (ICU) care, Infectious Disease Society of America (IDSA) pneumonia severity [14], requiring mechanical ventilation or the development of Acute Respiratory Distress Syndrome (ARDS). Studies published a language other than English were excluded.
Two authors (Ahmad A. Alamer; Abdulaziz S. Almulhim) screened publications and extracted odds ratios (OR). For studies not reporting ORs but including adequate data, we estimated the crude OR (unadjusted). Each unadjusted OR was calculated with its standard error and 95% confidence interval according to Altman et al. [15]. In the case of zero events, we estimated the odds ratio with 0.5 correction in accordance with Deeks and Higgins’s recommendations [16]. In studies where adjusted odds ratios were reported, we used the reported estimates.

2.2. Data Synthesis and Analysis

Using R Core Team (2020) software (R Foundation for Statistical Computing, Version 4.0.1, Vienna, Austria) and the meta package [17], we applied random-effects models to estimate pooled risks (ORp) across all studies and then stratified the analysis by studies with and without statistical adjustment. The package uses the generic inverse variance method for the meta-analysis and requires the estimates (OR) and their standard errors as inputs to calculate the pooled estimates in accordance with Borenstein et al. [18].
Q-test and I2 were used to quantify heterogeneity of the included studies. An I2 > 50% indicates significant heterogeneity. We conducted Egger’s test and produced funnel plots to assess publication bias using the same package. A p value < 0.05 considered to be statistically significant. We performed sensitivity subgroup analyses by country and country clusters. The clusters were chosen to reflect time of outbreaks (China first, Korea/Italy next, others subsequently) and mobility restrictions (China and Denmark/France/Spain with stricter lockdowns than the UK/US). Quality assessment was carried out using the Newcastle–Ottawa Scale (NOS) [19].

3. Results

A total of 30 publications reporting 61 estimates (k) for mortality, disease-severity, and/or hospitalization analyses were included (Table S1 and Figure S1 in the Supplementary Materials). The ORp for mortality (k = 24) was statistically non-significant at 0.86 (95% CI = 0.68–1.08) and remaining non-significant when stratified by studies that reported adjusted or non-adjusted estimates (Figure 1A). The subgroup sensitivity analyses by country and country clusters for the mortality outcome was not significant, except for China and France, where a decrease was seen, and the UK/US cluster, where an increase in mortality risk in association with ACEI/ARB exposure was observed (Table 1; Figure 2A). The ORp for COVID-19 disease severity (k = 30) was 0.92 (95% CI = 0.74–1.15) and remained statistically non-significant when stratified by studies with or without adjustments (Figure 1B).
The single French study reported a statistically significant increase in COVID-19 severity with ACEI/ARB use, while the one British study related a significant decrease in severe COVID-19 disease risk in association with ACEI/ARB use (Figure 2B and Table 1). The ORp for hospitalization (k = 7) was 1.17 (95% CI = 0.78–1.75) and remained statistically non-significant in studies with or without adjustment (Figure 1C and Table 1). The association of ACEI/ARB use, and hospitalization risk was non-significant for China and Italy but significant for the US (Figure 2C and Table 1). Heterogeneity was low (I2 < 30% = 11) to moderate (I2 30%–60% = 8) with some high (I2 > 60% = 4). Funnel plots and Egger’s tests were significant for mortality (p = 0.04) but not for disease severity (p = 0.216) and hospitalization (p = 0.337), as shown in Figure S2.

4. Discussion

With a verifiable total of 43,829 patients in the analysis, including 11,166 exposed to ACEI/ARB, our meta-analysis consistently revealed the absence of an association between ACEI/ARB use and mortality, disease severity, and hospitalization risk in COVID-19, a finding to be validated as further evidence accumulates. The country cluster sensitivity analysis explained several of the differences seen in the mortality outcome. The UK/US cluster revealed an increased risk of mortality. The included studies for this cluster reported non-adjusted OR for the mortality outcome (see Table S1). The study by Richardson et al. was a large case series in New York conducted between March 1 and April 4, 2020, dates that coincide with that state’s first wave of the pandemic prior to extreme measures such as stay-at-home orders being taken [20,21]. A similar pattern emerges with the UK study by Bean et al. in which the country experienced their first wave prior to lockdown measures [1,21,22,23]. Studies in France, Italy, China, Denmark, Spain and Korea were also conducted in their first wave; however, in contrast, during that time they had already implemented multiple NPI strategies (including a national lockdown) to mitigate the impact of the pandemic [1,24,25]. Based on our analysis, two of these countries (France and China) saw a decrease in mortality among ACEI/ARB users (shown in Figure 2A). It would be difficult to determine whether this effect was due to an underlying mechanism of ACEI/ARB protection or if it was the result of very strict NPIs having been executed. Many of the included studies controlled for potential confounders that can affect the outcomes (see Table S1). With cautious interpretation, among many other factors, this may suggest that countries with much stricter NPI policies may have been successful in mitigating the risk of overall mortality among ACEI/ARB users. This finding should be viewed only as a signal as the majority of the studies included in the pooled synthesis were observational in nature.
The subgroup sensitivity analyses by country clusters did not explain the heterogeneity in the disease-severity endpoint very well which was evident by I2 > 50% in subgroup analysis by countries such as China and US/UK cluster. The included studies defined COVID-19 severity differently and that may explain the seen heterogeneity. Many of the included studies defined COVID-19 severity according to the National Health Commission of China which is similar to the WHO definition [12,13]. The second frequent definition was ICU care as in indication for COVID-19 severity. Only two studies used IDSA pneumonia severity definition (see Table S1 for definitions). Indeed, harmonization of disease-severity definitions may strengthen future studies and meta-analyses; however, more importantly, some researchers suggest the existence of ACE-2 overexpression polymorphism as a potential explanation for the severity of the COVID-19 presentation [26]. The country-cluster analysis is not well-suited to answer this question, and more studies among different ethnic groups are needed. For example, in a large cohort in the UK, it was found that Blacks being treated with ACEIs/ARBs were more susceptible to COVID-19 compared to Whites [27]. Whether this ethnic difference is real is yet to be determined, and the discordant country-specific results are points for future attention as more data start to accumulate. Lastly, the sensitivity analysis by country revealed more hospitalizations in the US among ACEI/ARB users. We believe that the hospitalization findings should be considered informative, at best, and not very reliable as these are influenced by clinical decisions and hospital-bed availability and not based on objective criteria.
An advantage of this current analysis is that we captured published studies from early stages of the pandemic in each country. Therefore, we think that we were able to estimate the risk of mortality during the implementation of NPI measures (especially national lockdowns) in a number of countries. The South Korean national response was a highly successful model for handling the pandemic. With aggressive measures that included contact tracing to prevent community transmissibility, South Korea reported the largest numbers of cases in the first two months of the pandemic. In this current analysis there was no signal of increased mortality among ACEI/ARB users in South Korea [25]. It should be emphasized this finding is based on one observational study from the country that was adjusted for potential confounders.
History of previous pandemics such The Spanish flu in 1918 taught us that subsequent waves (second and third) is likely to occur. The second wave of the Spanish flu was believed to be caused by a mutated virus [28]. There are several proposed mechanisms for a third wave such as increase viral transmissibility due to seasonal changes, changes in social mixing (such as holidays, schools’ closure and re-opening), viral mutation and emergence of escape variant mutation [29]. These pandemic waves and the potential of catastrophic consequences for high risk patients can be mitigated by initiating vaccination programs [30]. This would be possible with the recent introduction of highly effective vaccines in a wrap speed mission to control the pandemic [31,32].

5. Conclusions

In summary, our meta-analysis of studies accrued to 4 July 2020 suggests no evidence of an association of ACEI/ARB exposure with mortality, COVID-19 disease severity, or hospitalization. The country-cluster meta-analysis provided a reasonable explanation for differences in the mortality outcome, while it failed to explain the severity outcome. More studies of ACEIs/ARBs and COVID-19 severity outcomes in different populations are needed. The association of ACEIs/ARBs with mortality outcomes may be related in part to waves of infection; non-pharmaceutical measures such as mobility restrictions, contact tracing, and increased testing, and progress in vaccines and therapeutic treatments.

Supplementary Materials

The following are available online at https://0-www-mdpi-com.brum.beds.ac.uk/2227-9032/9/2/127/s1, Figure S1: PRISMA flowchart. Figure S2: Funnel plots (A) mortality, (B) severity of COVID-19 disease, and (C) hospitalization, Table S1: Corpus of studies included in meta-analysis (search closing date of 4 July 2020; citations in Appendix to this Table S1).

Author Contributions

Conceptualization: I.A., and A.A.A. (Ahmad A. Alamer); methodology: A.A.A. (Ahmad A. Alamer); software: A.A.A. (Ahmad A. Alamer); formal analysis: A.A.A. (Ahmad A. Alamer); data curation: A.A.A. (Ahmad A. Alamer), A.S.A., and A.A.A. (Ahmed A. Alrashed); writing: A.A.A. (Ahmad A. Alamer), I.A., A.S.A., and A.A.A. (Ahmed A. Alrashed); manuscript review and editing: I.A., A.A.A. (Ahmed A. Alrashed) and A.S.A.; visualization: A.A.A. (Ahmad A. Alamer), and A.S.A. All authors have read and agreed to the published version of the manuscript.

Funding

This work received no financial support or funding by any agency or organization.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The datasets supporting the conclusions of this article are included in the Supplementary Materials.

Acknowledgments

Authors will like to thank Prince Sattam Bin Abdulaziz University, University of Arizona, and King Faisal University. The authors would like to thank the Research Center at King Fahad Medical City, Riyadh, for their valuable technical support provided for the manuscript. This publication was supported by the Deanship of Scientific Research at Prince Sattam bin Abdulaziz University.

Conflicts of Interest

The authors have no financial or other beneficial interests related to the work reported herein to declare.

Abbreviations

NPIsNon-pharmaceutical interventions
COVID-19Novel coronavirus
RtReproduction number
tTime
kestimate
ACEIsAngiotensin-converting enzyme inhibitors
ARBsAngiotensin-receptor blockers
ACE2Angiotensin-converting enzyme-2
PRISMAPreferred Reporting Items for Systematic Reviews and Meta-Analyses
OROdds ratio
ORpPooled odds ratio
CIConfidence Interval
NOSNewcastle–Ottawa Scale
ICUIntensive care unit

References

  1. Flaxman, S.; Mishra, S.; Gandy, A.; Unwin, H.J.T.; Mellan, T.A.; Coupland, H.; Whittaker, C.; Zhu, H.; Berah, T.; Eaton, J.W.; et al. Estimating the effects of non-pharmaceutical interventions on COVID-19 in Europe. Nature 2020, 584, 257–261. [Google Scholar] [CrossRef]
  2. Giesecke, J. The invisible pandemic. Lancet 2020, 395, e98. [Google Scholar] [CrossRef]
  3. Ramachandran, R. COVID-19-a very visible pandemic. Lancet 2020, 396, e13–e14. [Google Scholar] [CrossRef]
  4. Chaudhry, R.; Dreanitsaris, G.; Mubashir, T.; Bartoszko, J.; Riazi, S. A country level analysis measuring the impact of government actions, country preparedness and socioeconomic factors on COVID-19 mortality and related health outcomes. EClinicalMedicine 2020, 25, 100464. [Google Scholar] [CrossRef]
  5. Fang, L.; Karakiulakis, G.; Roth, M. Are patients with hypertension and diabetes mellitus at increased risk for COVID-19 infection? Lancet Respir. Med. 2020, 8, e21. [Google Scholar] [CrossRef]
  6. Feng, Y.; Ling, Y.; Bai, T.; Xie, Y.; Huang, J.; Li, J.; Xiong, W.; Yang, D.; Chen, R.; Lu, F.; et al. COVID-19 with Different Severities: A Multicenter Study of Clinical Features. Am. J. Respir. Crit. Care Med. 2020, 201, 1380–1388. [Google Scholar] [CrossRef]
  7. Rico-Mesa, J.S.; White, A.; Anderson, A.S. Outcomes in Patients with COVID-19 Infection Taking ACEI/ARB. Curr. Cardiol. Rep. 2020, 22, 1–4. [Google Scholar] [CrossRef] [Green Version]
  8. Zhang, X.; Yu, J.; Pan, L.Y.; Jiang, H.Y. ACEI/ARB use and risk of infection or severity or mortality of COVID-19: A systematic review and meta-analysis. Pharmacol. Res. 2020, 158, 104927. [Google Scholar] [CrossRef]
  9. Kansagara, D.; Mackey, K.; Vela, K. Update Alert: Risks and Impact of Angiotensin-Converting Enzyme Inhibitors or Angiotensin-Receptor Blockers on SARS-CoV-2 Infection in Adults. Ann. Intern. Med. 2020. [Google Scholar] [CrossRef]
  10. Mackey, K.; King, V.J.; Gurley, S.; Kiefer, M.; Liederbauer, E.; Vela, K.; Sonnen, P.; Kansagara, D. Risks and Impact of Angiotensin-Converting Enzyme Inhibitors or Angiotensin-Receptor Blockers on SARS-CoV-2 Infection in Adults. Ann. Intern. Med. 2020, 173, 195–203. [Google Scholar] [CrossRef]
  11. Methley, A.M.; Campbell, S.; Chew-Graham, C.; McNally, R.; Cheraghi-Sohi, S. PICO, PICOS and SPIDER: A comparison study of specificity and sensitivity in three search tools for qualitative systematic reviews. BMC Heal. Serv. Res. 2014, 14, 1–10. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  12. China NHCotPsRo. Diagnosis and Treatment Protocol for COVID-19 Patients, 8th ed.; China NHCotPsRo: Beijing, China, 2020.
  13. World Health Organization. Clinical Management of COVID-19; WHO: Geneva, Switzerland, 2020. [Google Scholar]
  14. Metlay, J.P.; Waterer, G.; Long, A.C.; Anzueto, A.; Brozek, J.; Crothers, K.; Cooley, L.A.; Dean, N.C.; Fine, M.J.; Flanders, S.A.; et al. Diagnosis and Treatment of Adults with Community-acquired Pneumonia. An Official Clinical Practice Guideline of the American Thoracic Society and Infectious Diseases Society of America. Am. J. Respir. Crit. Care Med. 2019, 200, e45–e67. [Google Scholar] [CrossRef] [PubMed]
  15. Ashby, D. Practical Statistics for Medical Research. In Statistics in Medicine; Douglas, G., Ed.; Altman, Chapman and Hall: London, UK, 1991; p. 611. [Google Scholar]
  16. Deeks, J.J.; Higgins, J.P.; Altman, D.G. Analysing data and undertaking meta-analyses. In Cochrane Handbook for Systematic Reviews of Interventions; Cochrane Statistical Methods Group: Cardiff, UK, 2019; pp. 241–284. [Google Scholar]
  17. Balduzzi, S.; Rücker, G.; Schwarzer, G. How to perform a meta-analysis with R: A practical tutorial. Évid. Based Ment. Health 2019, 22, 153–160. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  18. Borenstein, M.; Hedges, L.V.; Higgins, J.P.; Rothstein, H.R. A basic introduction to fixed-effect and random-effects models for meta-analysis. Res. Synth. Methods 2010, 1, 97–111. [Google Scholar] [CrossRef] [PubMed]
  19. Wells, G. The Newcastle-Ottawa Scale (NOS) for Assessing the Quality of Nonrandomised Studies in Meta-Analysis. Available online: http://www.ohri.ca/programs/clinical_epidemiology/oxford.asp (accessed on 1 August 2020).
  20. Richardson, S.; Hirsch, J.S.; Narasimhan, M.; Crawford, J.M.; McGinn, T.; Davidson, K.W. Presenting Characteristics, Comorbidities, and Outcomes Among 5700 Patients Hospitalized With COVID-19 in the New York City Area. JAMA 2020, 323, 2052–2059. [Google Scholar] [CrossRef]
  21. Worldodometer Coronavirus. Available online: https://www.worldometers.info/coronavirus/country/uk/ (accessed on 15 September 2020).
  22. Bean, D.M.; Kraljevic, Z.; Searle, T.; Bendayan, R.; Kevin, O.G.; Pickles, A.; Folarin, A.; Roguski, L.; Noor, K.; Dobson, R.J.; et al. ACE-inhibitors and Angiotensin-2 Receptor Blockers are not associated with severe SARS-COVID19 infection in a multi-site UK acute Hospital Trust. Eur. J. Heart Fail. 2020, 22, 967–974. [Google Scholar] [CrossRef]
  23. Governor Cuomo Issues Guidance on Essential Services Under The ’New York State on PAUSE’ Executive Order. 2020. Available online: https://www.governor.ny.gov/news/governor-cuomo-issues-guidance-essential-services-under-new-york-state-pause-executive-order (accessed on 1 August 2020).
  24. Chinazzi, M.; Davis, J.T.; Ajelli, M.; Gioannini, C.; Litvinova, M.; Merler, S.; Piontti, A.P.Y.; Mu, K.; Rossi, L.; Sun, K.; et al. The effect of travel restrictions on the spread of the 2019 novel coronavirus (COVID-19) outbreak. Science 2020, 368, 395–400. [Google Scholar] [CrossRef] [Green Version]
  25. Oh, J.; Lee, J.K.; Schwarz, D.; Ratcliffe, H.L.; Markuns, J.F.; Hirschhorn, L.R. National Response to COVID-19 in the Republic of Korea and Lessons Learned for Other Countries. Heal. Syst. Reform 2020, 6, e1753464. [Google Scholar] [CrossRef]
  26. Lippi, G.; Lavie, C.J.; Henry, B.M.; Sanchis-Gomar, F. Do genetic polymorphisms in angiotensin converting enzyme 2 (ACE2) gene play a role in coronavirus disease 2019 (COVID-19)? Clin. Chem. Lab Med. 2020, 58, 1415–1422. [Google Scholar] [CrossRef]
  27. Hippisley-Cox, J.; Young, D.; Coupland, C.; Channon, K.M.; Tan, P.S.; Harrison, D.; Rowan, K.; Aveyard, P.; Pavord, I.D.; Watkinson, P. Risk of severe COVID-19 disease with ACE inhibitors and angiotensin receptor blockers: Cohort study including 8.3 million people. Heart 2020, 106, 1503–1511. [Google Scholar] [CrossRef]
  28. Martini, M.; Gazzaniga, V.; Bragazzi, N.L.; Barberis, I. The Spanish Influenza Pandemic: A lesson from history 100 years after 1918. J. Prev. Med. Hyg. 2019, 60, E64–E67. [Google Scholar] [CrossRef] [PubMed]
  29. Grubaugh, N.D.; Hanage, W.P.; Rasmussen, A.L. Making Sense of Mutation: What D614G Means for the COVID-19 Pandemic Remains Unclear. Cell 2020, 182, 794–795. [Google Scholar] [CrossRef] [PubMed]
  30. Lee, B.Y.; Brown, S.T.; Cooley, P.; Grefenstette, J.J.; Zimmerman, R.K.; Zimmer, S.M.; Potter, A.M.; Rosenfeld, R.; Wheaton, D.W.; Wiringa, A.E.; et al. Vaccination deep into a pandemic wave potential mechanisms for a “third wave” and the impact of vaccination. Am. J. Prev. Med. 2010, 39, e21–e29. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  31. Moore, J.P.; Klasse, P.J. COVID-19 Vaccines: “Warp Speed” Needs Mind Melds, Not Warped Minds. J. Virol. 2020, 94, e01083-20. [Google Scholar] [CrossRef] [PubMed]
  32. Polack, F.P.; Thomas, S.J.; Kitchin, N.; Absalon, J.; Gurtman, A.; Lockhart, S.; Perez, J.L.; Marc, G.P.; Moreira, E.D.; Zerbini, C.; et al. Safety and Efficacy of the BNT162b2 mRNA Covid-19 Vaccine. N. Engl. J. Med. 2020, 383, 2603–2615. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Forest plots for (A) mortality, (B) severity of COVID-19 disease, and (C) hospitalization. All studies were published in 2020. All citations included in the Supplementary Material Appendix to Table S1. The size of squares is proportional to the weight of each study. Horizontal lines indicate the 95% CI of each study; diamonds indicate the pooled estimate with 95% CI. Abbreviations: CI: confidence interval; OR: odds ratio. ACEI: Angiotensin-converting enzyme inhibitors. ARB: Angiotensin II receptor blockers.
Figure 1. Forest plots for (A) mortality, (B) severity of COVID-19 disease, and (C) hospitalization. All studies were published in 2020. All citations included in the Supplementary Material Appendix to Table S1. The size of squares is proportional to the weight of each study. Horizontal lines indicate the 95% CI of each study; diamonds indicate the pooled estimate with 95% CI. Abbreviations: CI: confidence interval; OR: odds ratio. ACEI: Angiotensin-converting enzyme inhibitors. ARB: Angiotensin II receptor blockers.
Healthcare 09 00127 g001aHealthcare 09 00127 g001b
Figure 2. Forest plots for country clusters (A) mortality, (B) severity of COVID-19 disease, and (C) hospitalization. All studies were published in 2020. All citations included in the Supplementary Materials file Appendix to Table S1. The size of squares is proportional to the weight of each study. Horizontal lines indicate the 95% CI of each study; diamonds, the pooled estimate with 95% CI. Abbreviations: CI: confidence interval; OR: odds ratio. ACEI: Angiotensin-converting enzyme inhibitors. ARB: Angiotensin II receptor blockers.
Figure 2. Forest plots for country clusters (A) mortality, (B) severity of COVID-19 disease, and (C) hospitalization. All studies were published in 2020. All citations included in the Supplementary Materials file Appendix to Table S1. The size of squares is proportional to the weight of each study. Horizontal lines indicate the 95% CI of each study; diamonds, the pooled estimate with 95% CI. Abbreviations: CI: confidence interval; OR: odds ratio. ACEI: Angiotensin-converting enzyme inhibitors. ARB: Angiotensin II receptor blockers.
Healthcare 09 00127 g002aHealthcare 09 00127 g002b
Table 1. Overall and stratified pooled risk estimates for mortality, severity, and hospitalization 1.
Table 1. Overall and stratified pooled risk estimates for mortality, severity, and hospitalization 1.
Outcome/SourceStudies 2 ORp [95% CI] 3I2 (if k ≥ 2)
Mortality
All reports 4240.86 [0.68; 1.08]41%
Adjusted110.81 [0.65; 1.02]0%
Unadjusted 5130.91 [0.61; 1.35]50%
By country/cluster
China110.65 [0.43; 0.96]0%
Korea10.88 [0.53; 1.45]-
Italy51.03 [0.71; 1.46]29%
Denmark10.83 [0.67; 1.03]-
France10.31 [0.14; 0.69]-
Spain20.58 [0.19; 1.81]0%
UK11.23 [0.93; 1.62]-
US21.32 [0.99; 1.75]0%
Korea/Italy61.00 [0.74; 1.36]15%
Denmark/France/Spain40.60 [0.35; 1.03]50%
UK/US31.28 [1.04; 1.56]0%
Severity
All reports 4300.92 [0.74; 1.15]64%
Adjusted200.92 [0.74; 1.16]59%
Unadjusted 5100.90 [0.61; 1.33]67%
By country/cluster
China140.74 [0.50; 1.10]54%
Italy50.74 [0.49; 1.11]40%
Denmark11.15 [0.94; 1.40]-
France12.28 [1.17; 4.43]-
Spain21.13 [0.67; 1.91]0%
UK10.63 [0.47; 0.84]-
US61.27 [0.96; 1.66]73%
Denmark/France/Spain41.30 [0.91; 1.87]24%
UK/US71.15 [0.84; 1.56]81%
Hospitalization
All reports 471.17 [0.78; 1.75]46%
Adjusted61.29 [0.94; 1.77]31%
Unadjusted 510.38 [0.12; 2.91]-
By country
China10.38 [0.12; 1.25]-
Italy31.04 [0.66; 1.65]0%
US31.56 [1.17; 2.07]0%
1 Patients (ACEI/ARB vs. non-ACEI/ARB) in analyses: mortality: 4145 vs. 14,996; severity: 8168 vs. 28,976; hospitalization: 1374 vs. 8138 (numbers are approximate because of inconsistent reporting as some studies did not report the exact number of patients on ACEI/ or ARB for specific outcomes); 2 Number of studies included in the meta-analysis. Studies with separate estimates for both ACEI and ARB are counted separately; 3 Random effect models were used for all analyses. ORp was estimated if ≥2 studies and OR if only 1 study in the analysis; 4 Combined analysis of adjusted and unadjusted odds ratios; 5 Crude OR calculated for studies reporting adequate data; ACEI: angiotensin-converting enzyme inhibitors; ARB: angiotensin II receptor blockers; CI: confidence interval; k: number of estimates in analysis; OR: odds ratio; ORp: pooled odds ratio.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Alamer, A.A.; Almulhim, A.S.; Alrashed, A.A.; Abraham, I. Mortality, Severity, and Hospital Admission among COVID-19 Patients with ACEI/ARB Use: A Meta-Analysis Stratifying Countries Based on Response to the First Wave of the Pandemic. Healthcare 2021, 9, 127. https://0-doi-org.brum.beds.ac.uk/10.3390/healthcare9020127

AMA Style

Alamer AA, Almulhim AS, Alrashed AA, Abraham I. Mortality, Severity, and Hospital Admission among COVID-19 Patients with ACEI/ARB Use: A Meta-Analysis Stratifying Countries Based on Response to the First Wave of the Pandemic. Healthcare. 2021; 9(2):127. https://0-doi-org.brum.beds.ac.uk/10.3390/healthcare9020127

Chicago/Turabian Style

Alamer, Ahmad A., Abdulaziz S. Almulhim, Ahmed A. Alrashed, and Ivo Abraham. 2021. "Mortality, Severity, and Hospital Admission among COVID-19 Patients with ACEI/ARB Use: A Meta-Analysis Stratifying Countries Based on Response to the First Wave of the Pandemic" Healthcare 9, no. 2: 127. https://0-doi-org.brum.beds.ac.uk/10.3390/healthcare9020127

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop