Next Article in Journal
Risk Factors for Bullying Victimization in Children with Neurofibromatosis Type 1 (NF1)
Previous Article in Journal
Variability of Prognostic Results Based on Biological Parameters in Sickle Cell Disease Cohort Studies in Children: What Should Clinicians Know?
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Nicotine Dependence among Adolescents Single and Dual Cigarette Users

1
Department of Community Oral Health and Clinical Prevention, Faculty of Dentistry, University of Malaya, Kuala Lumpur 50603, Malaysia
2
Centre of Population Oral Health and Clinical Prevention Studies, Faculty of Dentistry, Universiti Teknologi MARA, Sungai Buloh Campus, Selangor 47000, Malaysia
3
Centre of Population Health, Department of Social and Preventive Medicine, Faculty of Medicine, University of Malaya, Kuala Lumpur 50603, Malaysia
4
Negeri Sembilan Oral Health Division, Ministry of Health Malaysia, Seremban, Negeri Sembilan 73000, Malaysia
*
Author to whom correspondence should be addressed.
Submission received: 12 January 2021 / Revised: 5 February 2021 / Accepted: 10 February 2021 / Published: 14 February 2021
(This article belongs to the Section Global and Public Health)

Abstract

:
The prevalence of concurrent use of combustible and electronic cigarettes (dual-use) is on the rise among Malaysian adolescents. This study compares nicotine dependence among exclusive cigarette users, e-cigarette users, and dual adolescent users. A total of 227 adolescent smokers completed a self-administrated questionnaire with items based on Hooked on Nicotine Checklist (HONC) incorporated. Endorsement of at least one HONC item indicates nicotine dependence. Exhaled carbon monoxide readings and salivary cotinine data were also collected. Over half (52.9%) of the participants were exclusive e-cigarette users (EC). The prevalence of exclusive conventional cigarette smokers (CC) and dual users was 11.9% and 35.2%, respectively. Adolescents who have mothers with secondary school education were more likely to become addicted to nicotine (Adjusted Odd Ratio (aOR) = 2.72; 95% CI = 1.17–6.32). Adolescents’ “mother’s education” level predicted nicotine dependence. This highlighted the need to target families within the identified demography with a more supportive anti-tobacco program.

Graphical Abstract

1. Introduction

Smoking continues to be a leading cause of preventable deaths from noncommunicable diseases around the world. With an estimated 6 million deaths worldwide due to tobacco use, it is the most critical health risk factor for the global population [1]. Cigarette smoking among adolescents is a public health concern as it is linked to a heavier smoking habit as an adult in the future [1,2,3].
Compared with adults, adolescents display evidence of addiction at a much lower level of tobacco consumption, which results in stronger addiction, a lower success rate of quitting, and higher mortality rate in later life [2,3]. Approximately 68.4% of Malaysian adolescents begin smoking at the age of 14, with 28.5% exhibiting low nicotine dependence [4].
The pattern of tobacco use has shifted from conventional combustible cigarettes to smokeless tobacco and recently, electronic cigarettes (e-cigarettes), with a staggering increase in global sales of e-cigarettes from £0.5 billion in 2009 to £6.1 billion in 2015 [5].
Two of the most commonly used e-cigarette devices are the Electronic Nicotine Delivery System and Electronic Non-Nicotine Delivery Systems (ENDS/ENNDS) that vaporize a solution consisting of nicotine, propylene glycol, flavorings, and other chemicals to create an aerosol for inhalation [2]. It can be a very potent vehicle for nicotine delivery, although some countries advocate e-cigarettes as a harm-reduction tool, especially solutions that are claimed to be nicotine-free based on evidence that it is effective in adult’s smoking cessation therapy [1]. E-cigarette use has significant but adverse implication in adolescents, whereby they are still forming their attitude towards smoking [2].
The varieties of e-cigarettes available in the market with tempting flavours and sleek, contemporary designs indicate that the tobacco industries understood the importance of strategically positioning and marketing a product that appeals to the younger demographic [6]. This, coupled with an aggressive advertisement campaign on the internet and onshopping malls and other strategic locations with large adolescent catchment, the e-cigarette has become a lifestyle choice among adolescents. Although not backed by scientific evidence, the tobacco industry continues to typically market e-cigarettes as a “healthier” and “cleaner” smoking alternative compared with combustible cigarettes [7].
In terms of local laws and regulations, the adolescents’ accessibility to combustible cigarettes was controlled by a complete ban of sales through legislation to those below 18 years old. Comparatively, the legislation on the sale of e-cigarettes to adolescents is still disjointed. Despite being completely banned in countries such as Australia, Brunei, Japan, and Singapore, the laws in countries such as Malaysia, the Philippines, Vietnam, and United Kingdom allow the selling of e-cigarettes with only sales restriction and regulations [8]. As a result, adults can be seen using an e-cigarette in places where the combustible cigarette was banned, and this will encourage the normalization of e-cigarette usage among the younger generation [6,9,10]. Evidence shows that even among nonsmoking adolescents, e-cigarette use was associated with smoking intention [11,12].
The declining international trends of cigarette smoking among adolescents were seemingly replaced by the increasing trends of e-cigarette use in this age group. As e-cigarette use is strongly associated with the use of other tobacco products among youth, particularly combustible tobacco products, a significant number of adolescents were reported to have used both products or become a dual user [1,10].
An estimated 9.1% of Malaysian adolescents aged 10 to 19 years old were current e-cigarette users, which accounted for 300,000 adolescents. The prevalence of dual users, however, was 5.2% (170,000 adolescents) [6].
A study showed that adolescents who are dual users are at higher odds of nicotine dependence and have lower cessation intention compared with exclusive cigarette smokers [5]. They are also highly likely to perpetuate intense combustible cigarette use in the future, resulting in heavier nicotine dependence [2]. Studies also linked dual-use with future substance misuse such as with drugs and alcohol [13]. Dual user adolescents were also associated with truancy and poor academic performance in schools [1].
There are two opinions on why adolescents are drawn to e-cigarettes. The first one is that they perceive the e-cigarette as a health-oriented decision that prevents them from smoking a combustible cigarette or other dangerous substance [1]. The other opinion is that it is a form of a rebellious act against the conventional value that brings pleasure and increases positive mood [14]. Adolescents in Malaysia are drawn into experimenting with e-cigarettes due to their taste, smell, and popularity [4].
Because there is limited research on adolescents’ dual-use pattern with nicotine dependence in Malaysia, the objectives of this article are to identify different types of cigarette use among adolescent smokers in Malaysia and the sociodemographical factors that influence their nicotine dependence. The findings of this study will be relevant for regulatory policymakers who are actively trying to understand the association of dual users with nicotine dependence in order to formulate specific policies for preventing nicotine dependence and design appropriate smoking cessation interventions.

2. Materials and Methods

2.1. Study Design

This cross-sectional study was conducted from October to November 2019.

2.2. Sample Population

The sample population was secondary school children who smoked tobacco or e-cigarettes from urban and rural areas in the district of Seremban, Negeri Sembilan, Malaysia. Four schools participated in this study; two from urban and two from rural areas.

2.3. Sample Size Calculation

The sample size was calculated using G* Power Statistical Analysis software version 3.1.9.4. Based on the effect size of 0.3 from the previous review of the national school-based smoking prevention program, the calculated sample size was 214 with 30% attrition rate consideration (α = 0.05, power = 0.80) [15].

2.4. Sampling Methods

Two levels of sampling were employed; only public non-boarding schools were included. The schools were ranked by their academic achievement before being matched according to the locality. To ensure a uniform school environment, same-gender and vernacular schools were excluded. Eligible schools were matched by their location and academic performance. Data on the previous academic ranking were obtained from the Seremban District’s education office. At the first level, a match-pair school was randomly chosen. At the second level, the participants were purposively recruited based on the inclusion criteria of being a smoker, fit, and healthy.

2.5. Instruments

A self-administrated questionnaire was developed to gather information about participants’ demographic data (age, gender, ethnicity, parental education, and parental household income), age of smoking initiation, and self-reported nicotine dependency.
Nicotine dependency was measured using The Hooked on Nicotine Checklist (HONC) [16]. HONC is a 10-item checklist, with the sum of one and above indicated nicotine dependence or loss of autonomy towards nicotine (HONC score ≥1). The English version of the HONC was translated into the Malay language prior to the study.
Exhaled carbon monoxide (CO) level was used to validate the self-reported smoking status of the participants. Those with a CO level of 5 to 6 parts per million (ppm) were light smokers, and ≥7 ppm were frequent smokers [17].
Cotinine is a major metabolite of nicotine with 10–40 h of half-life detectable in saliva, urine, or serum. It provides a reliable means of smoking status of tobacco use over a period of two to three days [18]. Salivary cotinine was collected from the participants as another adjunct to validate self-reporting smoking behavior.
The salivary cotinine of the participants was measured using NicAlert, which is a semiquantitative immunochromatographic assay test strip. It uses a “dipstick” method [18]. The participants’ saliva was collected using an individual plastic tube container. Once the container was filled with saliva, it closed using a snap-on cover. For testing, the salivary tube container was inverted to allow eight drops of saliva to be deposited on the padded end of the NicAlert Strip. The cotinine in the saliva reacted with the chemical in the strip to reveal a coloured band respective to the cotinine concentration in the saliva after approximately 15 to 30 min. Salivary cotinine was then categorized into low salivary cotinine (<10 ng/mL cotinine), medium salivary cotinine (10–100 ng/mL), and high salivary cotinine (100 ng/mL) categories [18].

2.6. Data Collection Process

Data were collected as part of a 6 month cluster-randomized control trial of a school-based smoking cessation program. The program consisted of a screening program and three sessions of group briefing to students who smoke, delivered by a government dentist who was also responsible for providing annual dental treatment at the schools. The participants were asked to classify themselves into any of the three groups of cigarette users in the questionnaire: “conventional cigarette” only (CC), “electronic cigarette” only (EC), and dual user [2].

2.7. Data Analysis

Descriptive and categorical variables were summarized as frequencies and percentages; chi-square test was used to assess the relationship between sociodemographic factors, different types of cigarette use, and nicotine dependence. Among other variables, simple and multiple logistic regressions were used to identify the factors associated with nicotine dependence in dual users and non-dual users. Nicotine dependence was used as a dichotomous criterion variable (code 0 = not addicted; code 1 = addicted). IBM SPSS v22 (Chicago, IL, USA: SPSS Inc) software was used to analyze the data.

3. Results

Overall, 227 adolescent smokers responded. The mean age was 14.62 (SD 1.32). The large majority of the sample were males (94.7%), and 57.7% were from the lower secondary school, which consisted of schoolchildren aged 13 to 15 years (Form 1 to 3). More than half (52.9%) were exclusive e-cigarette users (EC). The majority of the participants went to schools located in the rural area (69.2%). The majority of them were Malays (81.59%).
With regards to the parents’ education level, the majority of fathers (63.4%) and mothers (71.8%) had secondary school education. Most of the adolescents came from households with a monthly income below Malaysian Ringgit (MYR) 3900 (70.9%) (Table 1).
With regards to the participants’ smoking behavior, the majority of the participants began smoking between the age of 12 and 13 years (41%). More than 81.9% of the participants scored at least 1 point in HONC, indicating they were addicted towards nicotine (loss of autonomy). A small minority (14.5%) of the participants were found to have exhaled carbon monoxide of 5 ppm (and above). Salivary cotinine reading revealed that almost half of them (49.8%) have at least 100 ng/mL of cotinine, indicating frequent smoker.
Table 2 shows the association between sociodemographic characteristics and types of cigarette use among adolescents.
One-third of the CC users were in Form 4 (16 years old) (33.3%), while a little over one-third of the EC users were in Form 5 (17 years old). The small majority of dual users were Form 3 (15 years old) students (36.3%) (p = 0.02). Across the academic years, there was an increase trend in the percentage of CC users (Form 1 to Form 4). However, the opposite trend was observed (Form 3 to Form 4) in the EC and dual users, respectively.
Higher percentages of participants with HONC score of one (1) and above were observed for all types of users. Dual users have the highest percentage of 97.5% of those scoring (1) and above, followed by CC user and EC user with 88.9% and 71.4% respectively (p = 0.001).
Exhaled breath CO and salivary cotinine were found to be associated with the different types of cigarette use with a p-value of 0.001. More than half of the participants in all three types of cigarette user were recorded to have a low level of exhaled CO, with a maximum of 4 ppm of CO in their exhaled breath.
The majority of exclusive CC users were had high salivary cotinine (74.1%), while the majority of EC users had a medium level salivary cotinine (52.5%). Almost two-thirds of dual user smokers were categorised as having a high salivary cotinine level (63.3%).
Simple and multiple logistic regression analyses were performed to identify the factors associated with nicotine dependence. Simple logistic regression provided preliminary results on potential associated factors (p-value <0.25) [19]. From this analysis, four variables were found to be potentially significant, that is, type of cigarette user, gender, mother’s education, and CO reading. These variables were included in the multiple logistic regression analysis, and only one variable was found to be significant, which is the mother’s education. The odds of becoming “nicotine dependent” were higher in those whose mothers had education up to secondary school (Adjusted Odd Ratio (aOR) = 2.73; 95% CI = 1.18–6.33) (Table 3).

4. Discussion

The objectives of the study were to determine the prevalence of the different types of cigarette user in adolescents and explore how nicotine dependence differed based on their demography, smoking behavior, and types of cigarette use. In this study, we found that the overall prevalence of current e-cigarette users and dual users among a group of secondary schoolchildren smokers in Seremban, Negeri Sembilan was 52.9% and 35.2%, respectively. Both of these percentages were higher than the findings from a similar study conducted in Kuala Lumpur among adolescent smokers (42.2%) [20]. This could be due to the fact that our study involved adolescents from both rural and urban areas, while the Kuala Lumpur study involved adolescents from urban schools only [20]. The increasing trend of CC users and decreasing trend of EC users with age were consistent with findings from prospective studies that show e-cigarette use predicts future conventional cigarette smoking [21,22]. However, caution is needed when interpreting this finding as the sample in the current study was small. A study with a bigger sample size is required to confirm this trend.
A study conducted among Negeri Sembilan’s adolescents revealed that the prevalence of tobacco use in the rural area was higher than in the urban areas [23]. Coupled with lack of implementation, enforcement, and surveillance of tobacco law in Malaysia, access to tobacco product for adolescents in both urban and rural areas is not monitored [24]. Data from the National Tobacco and E-cigarette survey among Malaysian Adolescents (TECMA) revealed that rural adolescents who frequently smoked were more likely to purchase their cigarette from commercial sources such as supermarkets, grocery stores, and road stalls [24].
Evidence from 68 middle-income and low-income countries on tobacco use (inclusive of cigarette, pipe, water pipe, and other smokeless tobacco) showed that the mean prevalence of tobacco use among adolescents was 13.6%, ranging from 2.8% (Tajikistan) to 44.7% (Samoa) [25]. In a study that utilized nationally representative data in Malaysia, the percentages of exclusive cigarette and e-cigarette users were 21.4% and 9.1%, respectively [4]. With regards to the exclusive e-cigarette user, the prevalence was even lower in Hong Kong, with 4.0%, and in Taiwan, with 1.6% [26].
Research regarding dual users among adolescents has been limited, and the lack of a standardized measure complicates comparisons between countries. The percentage of the dual user in this study was 35.2%. In the United States, the percentage of the dual user was 1.7%, while adolescents in Hawaii showed a slightly higher percentage (12%) of dual users [1].
There are discrepancies in our research in terms of the prevalence of the different types of cigarette smokers with the national data and data from other countries. Apart from the larger sample size, the discrepancy can be due to variation in regulation and enforcement measures involving the sales and advertisement of e-cigarettes. In Taiwan, e-cigarettes are prohibited under the Tobacco Hazards Preventive Acts, while Malaysia has regulated e-cigarettes in accordance with the Poison Act 1952, which means that nicotine-containing e-cigarettes would be classified as a regulated pharmaceutical product, despite the fact that sales to below 18 years old will be penalized. In contrast, Hong Kong has implemented a ban on nicotine-containing e-cigarettes [27].
Research shows that chronic exposure to nicotine among adolescents is dangerous as it may induce changes that sensitize the brain to future substance abuse and can result in a depression-like state that requires treatment under antidepressants [2]. This study used HONC to assess potential nicotine dependence among adolescents. There were limited studies that used HONC, particularly on the dual user status of adolescents. In adults, however, a small-scale study among native American dual users revealed the median score of HONC did not differ from that of exclusive cigarette users despite the perception of e-cigarette use to be less harmful than use of conventional cigarettes [28]. The lowest percentage of nicotine addiction in this study was that of the exclusive e-cigarette users (71.4%), and the highest prevalence of nicotine addiction was that of the dual users (97.5%). This could be due to dual users generally having higher nicotine dependence from a concurrent exposure to a different tobacco-related device, which also will lower their intention to quit [11]. A study among Swedish youth associated dual users with having five times the odds of higher HONC score and failed quit attempts compared with exclusive cigarette smokers [29].
Limited research has compared salivary cotinine and the cigarette usage status among adolescents, however, in a study investigating the urinary cotinine concentration in adolescents who used a high-nicotine-content e-cigarette, famously known as “pod”, more signs of nicotine dependence (higher HONC score) were evident compared with exclusive cigarette users [30]. In this research, the relationship between the salivary cotinine and the different variants of e-cigarette devices such as ENDS or ENNDS were not explored because the adolescents could not ascertain whether their e-liquid contains nicotine or not. A study found that 99% of the e-cigarettes sold in the United States contained nicotine [31]. However, there were also cases of e-cigarettes that claimed to be nicotine-free being found to contain nicotine [32]. Findings from a qualitative study also revealed that adolescent smokers were unsure of the nicotine content in the e-cigarettes [33].
A study on salivary cotinine among adolescents in Negeri Sembilan and Kuala Lumpur identified factors that influenced schoolchildren exposure to secondhand smoke, and concluded that Malaysian adolescents have a higher salivary cotinine concentration that can be due to the lack of enforcement of the smoke-free law in Malaysia [34]. In this study, the participants’ CO reading revealed that 85% of them were categorized as having low CO level based on the cut-off point of 4 ppm and below. This was expected because the value was also dependent on the time of the day the measurement was taken using the detection device. Since the CO measurement was collected during their study period in schools, the student might not have a recent combustible cigarette exposure for the day due to smoking restriction at school. Exhaled CO has a relatively short half-life of four hours, which limited the accuracy and reliability in determining the students’ recent smoking exposure [35]. The CO level would be expected to be low in exclusive e-cigarette users, as showed in the current study. This is because only a minimal amount of CO is formed in e-cigarette users as the result of thermal decomposition of the e-liquid materials such as propylene glycol and glycerine [36]. Electronic cigarette aerosols contain carbonyl compounds that were found to be toxic. Although carbonyl and CO were found to be well correlated in the e-cigarette, they were generally less than in conventional cigarettes [36].
Our study showed that maternal education level has a protective factor in the smoking behavior of the adolescents [37,38]. This highlights the importance of taking into consideration parental education and socioeconomic (SES) level in the development stage of a future health promotion program, because low-SES families will require consistent support to prevent their children from smoking [39]. Due to a limited definition of e-cigarettes in this study, there is a need to standardize different generations of e-cigarettes available in the market for future studies [1].

Limitation

The schools selected in this study are only from Negeri Sembilan state, and despite the similarity in terms of population and SES with a major city like Kuala Lumpur, it has limited generalizability to other states in Malaysia. In this study, 95% of the sample were male adolescents. This could be because male adolescents were more likely to confess that they were smokers than female adolescents; a trend that was observed in a nationally representative sample [40]. Furthermore, Malaysian male adolescents were more likely to believe that smoking is socially acceptable and were less reluctant to hide their smoking status [41]. A similar finding was reflected in another national survey, where 25.3% of males were reported to smoke compared to 6.7% females [40].
The participants’ self-reported information regarding their smoking behavior could also be influenced by the social norms of their friends in school. Their daily usage frequency and e-cigarette topography data would provide a better understanding of the adolescents’ nicotine dependence.

5. Conclusions

More than half of the adolescents were exclusive e-cigarette users, and their nicotine dependence status was found to be associated with the mother’s education level. This is an essential finding in the planning of a future program that could further protect the “at-risk” population.

Author Contributions

Conceptualization, R.S., Z.Y.M.Y., M.D., S.L.S.; formal analysis, N.A.M.R.; writing—original draft preparation, N.A.M.R.; writing—review and editing R.S., Z.Y.M.Y., M.D., funding acquisition, R.S. All authors have read and agreed to the published version of the manuscript.

Funding

The authors would like to thank the University of Malaya for funding this study through the LRGS-NanoMITe research grant (RU029-2014).

Institutional Review Board Statement

This study obtained ethical approval from the Medical Ethics Committee, Faculty of Dentistry, University of Malaya (Reference number: DFCO1811/0080[P]0)). It was registered with the National Medical Research Registry (Registration number: NMRR-18-3415-44030) and with the ClinicalTrials.gov Protocol Registration Systems (ID NCT04378725). Permissions to conduct the study were obtained from the Educational, Planning and Research Division, Ministry of Education, Malaysia (Reference: KPM.600-3/2/3-ERAS(2336)), Negeri Sembilan Oral Health State Director (Reference: JKNNS.G.600-56/5/5/(76)), District of Serembans’ education office (Reference: JPNS.SPS.PP.100-1/7.Jld.19(24)), and the respective schools.

Informed Consent Statement

Written consent was obtained from the parents and participants of the study. The participants were also ensured of the confidentiality of their data.

Data Availability Statement

Data available on request due to restrictions from the funding agency.

Acknowledgments

We are very grateful to the Malaysian Ministry of Health and Ministry of Education for granting permission to conduct the study. The views expressed in this article are those of the authors and do not necessarily reflect the policies of any organisation.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

References

  1. DOH. Preventing tobacco use among youth and young adults. In A Report of the Surgeon General; US Department of Health Service: Washington, DC, USA, 2012. [Google Scholar]
  2. Chassin, L.; Presson, C.C.; Sherman, S.J.; Edwards, D.A. The natural history of cigarette smoking: Predicting young-adult smoking outcomes from adolescent smoking patterns. J. Health Psychol. 1990, 9, 701. [Google Scholar] [CrossRef]
  3. Marbin, J.N.; Gribben, V. Tobacco use as a health disparity: What can pediatric clinicians do? Children 2019, 6, 31. [Google Scholar] [CrossRef] [Green Version]
  4. Aris, T.; Abd Ghani, A.A.; MF, M.Y.; Robert, T.G.; Tee, G.H.; NH, M.H.; Manan, N.S.; NF, M.R.; Kamaruddin, N.A. Tobacco & E-Cigarette Survey Among Malaysian Adolescents (TECMA) 2016; Institute for Public Health: Kuala Lumpur, Malaysia, 2016. [Google Scholar]
  5. Ganasegeran, K.; Rashid, A. Clearing the clouds—Malaysia′s vape epidemic. Lancet Respir. Med. 2016, 4, 854–856. [Google Scholar] [CrossRef]
  6. Wills, T.A.; Knight, R.; Williams, R.J.; Pagano, I.; Sargent, J.D. Risk factors for exclusive e-cigarette use and dual e-cigarette use and tobacco use in adolescents. J. Pediatrics 2015, 135, e43–e51. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  7. Perry, C.L. The tobacco industry and underage youth smoking: Tobacco industry documents from the Minnesota litigation. J. Arch. Pediatr. Adolesc. Med. 1999, 153, 935–941. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  8. IGTC. Country Laws Regulating E-Cigarettes: A Policy Scan; Institute for Global Tobacco Control: Baltimore, MA, USA, 2015. [Google Scholar]
  9. Gottlieb, M.A. Regulation of e-cigarettes in the United States and its role in a youth epidemic. Children 2019, 6, 40. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  10. Jenssen, B.P.; Boykan, R. Electronic cigarettes and youth in the United States: A call to action (at the local, national and global levels). Children 2019, 6, 30. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  11. Azagba, S.; Shan, L.; Latham, K. Adolescent dual use classification and its association with nicotine dependence and quit intentions. J. Adolesc. Health 2019, 65, 195–201. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  12. Hiong Tee, G.; Low, W.Y. Electronic Cigarettes Use Among Adults and Adolescents in Malaysia: A Public Health Concern? SAGE Publications Sage CA: Los Angeles, CA, USA, 2019. [Google Scholar]
  13. Creamer, M.R.; Portillo, G.V.; Clendennen, S.L.; Perry, C.L. Is adolescent poly-tobacco use associated with alcohol and other drug use? Am. J. Health Behav. 2016, 40, 117–122. [Google Scholar] [CrossRef] [Green Version]
  14. Zhong, J.; Cao, S.; Gong, W.; Fei, F.; Wang, M. Electronic cigarettes use and intention to cigarette smoking among never-smoking adolescents and young adults: A meta-analysis. Int. J. Environ. Res. Public Health 2016, 13, 465. [Google Scholar] [CrossRef] [Green Version]
  15. BR Flay. School-based smoking prevention programs with the promise of long-term effects. J. Tob. Induc. Dis. 2009, 5, 6. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  16. DiFranza, J.R.; Savageau, J.A.; Fletcher, K.; Ockene, J.K.; Rigotti, N.A.; McNeill, A.D.; Coleman, M.; Wood, C. Measuring the loss of autonomy over nicotine use in adolescents: The DANDY (Development and Assessment of Nicotine Dependence in Youths) study. J. Arch. Pediatr. Adolesc. Med. 2002, 156, 397–403. [Google Scholar] [CrossRef] [Green Version]
  17. Sargent, J.D.; Gabrielli, J.; Budney, A.; Soneji, S.; Wills, T.A. Adolescent smoking experimentation as a predictor of daily cigarette smoking. Drug Alcohol Depend. 2017, 175, 55–59. [Google Scholar] [CrossRef]
  18. Montalto, N.J.; Wells, W.O. Validation of self-reported smoking status using saliva cotinine: A rapid semiquantitative dipstick method. J. Cancer Epidemiol. Prev. Biomark. 2007, 16, 1858–1862. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  19. Bursac, Z.; Gauss, C.H.; Williams, D.K.; Hosmer, D.W. Purposeful selection of variables in logistic regression. Source Code Biol. Med. 2008, 3, 17. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  20. Atikah, A.N.; Wee, L.H.; Zakiah, M.N.; Chan, C.M.H.; Haniki, N.M.; Swinderjit, J.; Siau, C.S. Factors associated with different smoking statuses among Malaysian adolescent smokers: A cross-sectional study. J. BMC Public Health 2019, 19, 579. [Google Scholar]
  21. Conner, M.; Grogan, S.; Simms-Ellis, R.; Flett, K.; Sykes-Muskett, B.; Cowap, L.; Lawton, R.; Armitage, C.J.; Meads, D.; Torgerson, C. Do electronic cigarettes increase cigarette smoking in UK adolescents? Evidence from a 12-month prospective study. J. Tob. Control 2018, 27, 365–372. [Google Scholar] [CrossRef]
  22. Doran, N.; Brikmanis, K.; Petersen, A.; Delucchi, K.; Al-Delaimy, W.K.; Luczak, S.; Myers, M.; Strong, D. Does e-cigarette use predict cigarette escalation? A longitudinal study of young adult non-daily smokers. Prev. Med. 2017, 100, 279–284. [Google Scholar] [CrossRef] [Green Version]
  23. Lee, L.; Paul, C.; Kam, C.; Jagmohni, K. Smoking among secondary school students in Negeri Sembilan, Malaysia. Asia Pac. J. Public Health 2005, 17, 130–136. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  24. Lim, K.H.; Teh, C.H.; Heng, P.P.; Pan, S.; Ling, M.Y.; Yusoff, M.F.M.; Ghazali, S.M.; Kee, C.C.; Shaharudin, R.; Lim, H.L. Source of cigarettes among youth smokers in Malaysia: Findings from the tobacco and e-cigarette survey among Malaysian school adolescents (TECMA). Tob. Induc. Dis. 2018, 16, 51. [Google Scholar] [CrossRef] [PubMed]
  25. Xi, B.; Liang, Y.; Liu, Y.; Yan, Y.; Zhao, M.; Ma, C.; Bovet, P. Tobacco use and second-hand smoke exposure in young adolescents aged 12–15 years: Data from 68 low-income and middle-income countries. Lancet Glob. Health 2016, 4, e795–e805. [Google Scholar] [CrossRef] [Green Version]
  26. Chen, P.-C.; Chang, L.-C.; Hsu, C.; Lee, Y.-C. Dual use of e-cigarettes and traditional cigarettes among adolescents in Taiwan, 2014–2016. Nicotine Tob. Res. 2019, 21, 48–54. [Google Scholar] [CrossRef] [PubMed]
  27. Jiranthanapiwat, W.; Assunta, M. ELECTRONIC CIGARRETES IN ASIA: A Review of Promotions and Availability. Southeast Asia Tob. Control Alliance (SEATCA) 2014, 1, 6–30. [Google Scholar]
  28. Rhoades, D.A.; Comiford, A.L.; Dvorak, J.D.; Ding, K.; Driskill, L.M.; Hopkins, A.M.; Spicer, P.; Wagener, T.L.; Doescher, M.P. Dual versus never use of E-cigarettes among american indians who smoke. Am. J. Prev. Med. 2019, 57, e59–e68. [Google Scholar] [CrossRef] [Green Version]
  29. Post, A.; Gilljam, H.; Rosendahl, I.; Bremberg, S.; Rosaria Galanti, M. Symptoms of nicotine dependence in a cohort of Swedish youths: A comparison between smokers, smokeless tobacco users and dual tobacco users. Addiction 2010, 105, 740–746. [Google Scholar] [CrossRef] [PubMed]
  30. Boykan, R.; Goniewicz, M.L.; Messina, C.R. Evidence of nicotine dependence in adolescents who use Juul and similar pod devices. Int. J. Environ. Res. Public Health 2019, 16, 2135. [Google Scholar] [CrossRef] [Green Version]
  31. Marynak, K.L.; Gammon, D.G.; Rogers, T.; Coats, E.M.; Singh, T.; King, B.A. Sales of nicotine-containing electronic cigarette products: United States, 2015. Am. J. Public Health 2017, 107, 702–705. [Google Scholar] [CrossRef] [PubMed]
  32. Goniewicz, M.L.; Gupta, R.; Lee, Y.H.; Reinhardt, S.; Kim, S.; Kim, B.; Kosmider, L.; Sobczak, A. Nicotine levels in electronic cigarette refill solutions: A comparative analysis of products from the US, Korea, and Poland. Int. J. Drug Policy 2015, 26, 583–588. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  33. Alexander, J.P.; Williams, P.; Lee, Y.O. Youth who use e-cigarettes regularly: A qualitative study of behavior, attitudes, and familial norms. Prev. Med. Rep. 2019, 13, 93–97. [Google Scholar] [CrossRef] [PubMed]
  34. Abidin, E.Z.; Semple, S.; Omar, A.; Rahman, H.A.; Turner, S.W.; Ayres, J.G. A survey of schoolchildren′s exposure to secondhand smoke in Malaysia. BMC Public Health 2011, 11, 634. [Google Scholar] [CrossRef] [Green Version]
  35. Cunnington, A.; Hormbrey, P. Breath analysis to detect recent exposure to carbon monoxide. Postgrad. Med J. 2002, 78, 233–237. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  36. Son, Y.; Bhattarai, C.; Samburova, V.; Khlystov, A. Carbonyls and carbon monoxide emissions from electronic cigarettes affected by device type and use patterns. Int. J. Environ. Res. Public Health 2020, 17, 2767. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  37. Kaleta, D.; Wojtysiak, P.; Polańska, K. Use of electronic cigarettes among secondary and high school students from a socially disadvantaged rural area in Poland. BMC Public Health 2016, 16, 703. [Google Scholar] [CrossRef] [Green Version]
  38. Kalan, M.E.; Bahelah, R.; Bursac, Z.; Taleb, Z.B.; DiFranza, J.R.; Tleis, M.; Nakkash, R.; Jebai, R.; Alam, M.M.; Cano, M.Á. Predictors of nicotine dependence among adolescent waterpipe and cigarette smokers: A 6-year longitudinal analysis. Drug Alcohol Depend. 2020, 217, 108346. [Google Scholar] [CrossRef] [PubMed]
  39. Ringlever, L.; Otten, R.; de Leeuw, R.N.; Engels, R.C. Effects of parents′ education and occupation on adolescent smoking and the mediating role of smoking-specific parenting and parent smoking. Eur. Addict. Res. 2011, 17, 55–63. [Google Scholar] [CrossRef]
  40. IPH. National Health and Morbidity Survey (NHMS) 2017: Adolescent Health; Institute for Public Health, Ministry of Health Malaysia: Kuala Lumpur, Malaysia, 2017.
  41. Parkinson, C.M.; Hammond, D.; Fong, G.T.; Borland, R.; Omar, M.; Sirirassamee, B.; Awang, R.; Driezen, P.; Thompson, M. Smoking beliefs and behavior among youth in Malaysia and Thailand. Am. J. Health Behav. 2009, 33, 366–375. [Google Scholar] [CrossRef] [PubMed] [Green Version]
Table 1. Sociodemographic characteristics of the study participants.
Table 1. Sociodemographic characteristics of the study participants.
Characteristic n (%)
Age (years)Mean (SD)
14.62 (1.32)
Gender:
Male215 (94.7)
Female12 (5.3)
Class:
Form 1 (13 years old)28 (12.3)
Form 2 (14 years old)47 (20.7)
Form 3 (15 years old) 56 (24.7)
Form 4 (16 years old)38 (16.7)
Form 5 (17 years old) 58 (25.6)
Smoking status:
Conventional Cigarette (CC)27 (11.9)
E-cigarette only (EC)120 (52.9)
Dual user80 (35.2)
School Location:
Urban70 (30.8)
Rural 157 (69.2)
Ethnicity:
Malay185 (81.5)
Chinese5 (2.2)
Indian34 (15.0)
Others3 (1.3)
Father’s Education:
Primary school 23 (10.1)
Secondary school144 (63.4)
University 53 (23.3)
Mother’s Education:
Primary school13 (5.7)
Secondary School 163 (71.8)
University46 (20.3)
Household Income (MYR) *:
≤3900161 (70.9)
3900–830049 (21.6)
≥830011 (4.8)
Initiation age of smoking (years):
≤7 9 (4.0)
8–9 13 (5.7)
10–1131 (13.7)
12–1393 (41.0)
14–15 61 (26.9)
≥1615 (6.6)
HONC score:
Not Nicotine Dependent (score <1)39 (17.2)
Nicotine Dependent (score ≥1)186 (81.9)
Carbon monoxide (ppm):
Low (0–4 ppm)193 (85.0)
High (≥5 ppm)33(14.5)
Salivary cotinine (ng/mL):
Low (<10 ng/mL) 25 (11.0)
Medium (10–100 ng/mL)88 (38.8)
High (>100 ng/mL) 113 (49.8)
SD = standard deviation, ppm = parts per million, HONC = Hooked on Nicotine Checklist, MYR = Malaysian Ringgit (MYR 4.08 = 1 USD).
Table 2. Association between sociodemographic characteristics and types of cigarette user (N = 227).
Table 2. Association between sociodemographic characteristics and types of cigarette user (N = 227).
CharacteristicCC Only
(n = 27)
n (%)
EC Only
(n = 120)
n (%)
Dual User
(n = 80)
n (%)
p-Value
Gender 0.244 b
Male 100 (27)111 (92.5)77 (96.3)
Female 0 (0)9 (7.2)3 (3.8)
Class 0.002 *,a
Form 1 (13 years old) 2 (7.4)20 (16.7)6 (7.5)
Form 2 (14 years old) 5 (18.5)23 (19.2)19 (23.8)
Form 3 (15 years old)6 (22.2)21 (17.5)29 (36.3)
Form 4 (16 years old)9 (33.3)15 (12.5)14 (17.5)
Form 5 (17 years old) 5 (18.5)41 (34.2)12 (15)
School location 0.057 a
Urban3 (11.1)39 (32.5)28 (35.0)
Rural24 (88.9)81 (67.8)52 (65.0)
Ethnicity 0.083 b
Malay22 (81.5)104 (86.7)59 (73.8)
Chinese1 (3.7)1 (0.8)3 (3.8)
Indian3 (11.1)15 (12.5)16 (20.0)
Others 1 (3.7)0 (0)2 (2.5)
Father’s Education 0.344 a
Primary school5 (19.2)9 (7.8)9 (11.4)
Secondary school17 (65.4)79 (68.7)48 (60.8)
University 4 (15.4)27 (23.5)22 (27.8)
Mother’s Education 0.748 b
Primary school 1 (3.8)5 (4.2)7 (9.0)
Secondary school20 (76.9)88 (74.6)55 (70.5)
University5 (19.2)25 (21.2)16 (20.5)
Household Income (MYR) * 0.153 b
≤390017 (68)84 (71.2)60 (76.9)
3900–83008 (32)29 (24.6)12 (15.4)
≥83000 (0)5 (4.2)6 (7.7)
Initiation age of smoking (years) 0.127 b
≤71 (3.7)2 (1.7)6 (7.7)
8–91 (3.7)8 (6.8)4 (5.1)
10–113 (11.1)19 (16.2)9 (11.5)
12–1317 (63.0)41 (35)35 (44.9)
14–153 (11.1)37 (31.6)21 (26.9)
≥162 (7.4)10 (8.5)3 (3.8)
HONC score <0.001 *,a
Not Nicotine Dependent (score < 1)3 (11.1)34 (28.6)2 (2.5)
Nicotine Dependent (score ≥ 1)24 (88.9)85 (71.4)77 (97.5)
CO ppm <0.001 *,a
Low (0–4ppm)16 (59.3)118 (98.3)59 (74.7)
High (≥5ppm)11 (40.7)2 (1.7)20 (25.3)
Salivary cotinine <0.001 *,a
Low (<10 ng/mL)1 (3.7)14 (11.7)10 (12.7)
Medium (10–100 ng/mL)6 (22.2)63 (52.5)19 (24.1)
High (>100 ng/mL)20 (74.1)43 (35.8)50 (63.3)
SD = standard deviation, ppm = parts per million, HONC = Hooked on Nicotine Checklist, MYR = Malaysian Ringgit (MYR 4.08 = 1 USD). a Chi-square test, b Fisher’s exact test, * p-value <0.05.
Table 3. Factors associated with nicotine dependence among different types of smoking classification of adolescent smokers (addicted, 1; not addicted, 0).
Table 3. Factors associated with nicotine dependence among different types of smoking classification of adolescent smokers (addicted, 1; not addicted, 0).
VariableSimple Logistic RegressionMultiple Logistic Regression
Crude OR
(95% CI)
p-ValueAdjusted OR
(95 CI%)
p-Value
Type of cigarette smoker
Conventional cigg. (CC) *1<0.0011
E-Cigarette only (EC)0.31 (0.08,1.10)0.48 (0.12,1.89)0.004
Dual User4.81 (0.75,30.51)5.94 (0.90,39.37)
Age0.90 (0.69,1.17)0.419
Gender
Female *1 1
Male2.54 (0.54,2.36)0.1452.08 (0.53,8.11)0.294
School Location
Urban *1
Rural1.13 (0.54,2.36)0.742
Ethnicity 0.82
Malay *1
Chinese0.91 (0.10,8.42)
Indian1.71 (0.57,5.18)
Father’s Education
Degree *10.511
Primary/Secondary1.31 (0.58,2.74)
Mother’s Education
Degree *10.02110.019
Primary/Secondary2.47 (1.14,5.36)2.73 (1.18,6.33)
Household Income
(MYR)
≥8300 *1
<83001.10 (0.22,5.33)0.901
Carbon monoxide (ppm)
Low (0–4 ppm) *1 1
High (≥5 ppm)7.95 (1.05,60.02)0.0443.03 (0.34,26.83)0.32
Salivary Cotinine (ng/mL)
Low (<99 ng/mL) *1
High (>100 ng/mL)0.62 (0.18,2.18)0.453
Initiation age of smoking
After age 10 *1
Before age 100.96 (0.31,3.01)0.945
* = reference group, SD = standard deviation, ppm = parts per million, HONC = Hooked on Nicotine Checklist, MYR = Malaysian Ringgit (MYR 4.08 = 1 USD). p-value < 0.05.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Mohd Radzi, N.A.; Saub, R.; Mohd Yusof, Z.Y.; Dahlui, M.; Sujak, S.L. Nicotine Dependence among Adolescents Single and Dual Cigarette Users. Children 2021, 8, 144. https://0-doi-org.brum.beds.ac.uk/10.3390/children8020144

AMA Style

Mohd Radzi NA, Saub R, Mohd Yusof ZY, Dahlui M, Sujak SL. Nicotine Dependence among Adolescents Single and Dual Cigarette Users. Children. 2021; 8(2):144. https://0-doi-org.brum.beds.ac.uk/10.3390/children8020144

Chicago/Turabian Style

Mohd Radzi, Nawwal Alwani, Roslan Saub, Zamros Yuzadi Mohd Yusof, Maznah Dahlui, and Sharol Lail Sujak. 2021. "Nicotine Dependence among Adolescents Single and Dual Cigarette Users" Children 8, no. 2: 144. https://0-doi-org.brum.beds.ac.uk/10.3390/children8020144

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