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Use of Cigarettes and E-Cigarettes and Dual Use Among Adult Employees in the US Workplace

Christine M. Kava, PhD, MA1; Peggy A. Hannon, PhD, MPH, MA1; Jeffrey R. Harris, MD, MPH, MBA1 (View author affiliations)

Suggested citation for this article: Kava CM, Hannon PA, Harris JR. Use of Cigarettes and E-Cigarettes and Dual Use Among Adult Employees in the US Workplace. Prev Chronic Dis 2020;17:190217. DOI: http://dx.doi.org/10.5888/pcd17.190217.

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Summary

What is already known on this topic?

US smoking rates have steadily declined over time, but e-cigarette use and dual use are becoming increasingly popular. Increased worksite evidence-based interventions are still needed for tobacco control.

What is added by this report?

Employment type, age, sex, race/ethnicity, education, and health care coverage were associated with e-cigarette use and dual cigarette and e-cigarette use. Recent quit attempts were higher among dual users. Tobacco-product use varied by state.

What are the implications for public health practice?

These findings suggest the importance of targeting efforts when designing and implementing worksite interventions for tobacco control and cessation in the workplace.

Abstract

Introduction

Evidence-based interventions for tobacco control in the US workplace can reach a large audience. The purpose of our study was to explore the prevalence and determinants of type of tobacco use (ie, cigarettes only, e-cigarettes only, or dual use) among adult employees in the United States and to examine type of use by state.

Methods

We used data from the 2017 Behavioral Risk Factor Surveillance System to examine the prevalence of cigarette use, e-cigarette use, dual use, and quit attempts. We used multinomial logistic regression to examine the relationships between sociodemographic characteristics and type of tobacco product used, and we estimated adjusted prevalence.

Results

Approximately 17% of respondents were current smokers, 5% were current e-cigarette users, and 2% were dual users. E-cigarette-only and dual use were generally highest among young (aged 18–24), male, and less-educated respondents and lower for respondents who identified as black, Asian/Native Hawaiian/Pacific Islander, or Hispanic than for white respondents. Cigarette-only and dual use were higher for respondents who did not have health care coverage. Prevalence by state of e-cigarette use only ranged from 1.2% (Vermont) to 3.9% (Arkansas), whereas the prevalence of dual use ranged from 0.6% (District of Columbia) to 4.0% (Oklahoma).

Conclusion

Prevalence of cigarette, e-cigarette, and dual use varied by sociodemographic characteristics and by state. These findings can support targeting of specific populations when designing and implementing evidence-based interventions for tobacco control in workplace settings.

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Introduction

Smoking is the leading cause of preventable death in the United States (1). Smoking rates have declined over time, but the dual use of e-cigarettes and regular cigarettes has become increasingly popular. Current evidence on e-cigarettes shows that these products have adverse effects on the cardiovascular system and pulmonary function (2,3). Evidence-based interventions for tobacco control can reduce tobacco use (4,5). With approximately 60% of US adults currently employed (6), the workplace offers a large audience for these interventions. According to recent data (7), less than 20% of worksites have a policy banning all tobacco use or offer cessation programs, indicating a need for increased tobacco control interventions in the workplace.

Identifying characteristics associated with tobacco use among adult employees can help guide program implementation efforts. Previous studies found differences in employee tobacco use, including use of e-cigarettes, by sociodemographic characteristics such as sex and race (8,9). Tobacco use also varies by state (10,11). Our study explored the prevalence and determinants of type of tobacco use (cigarette-only, e-cigarette-only, and dual) among US adult employees to better understand their relationship with sociodemographic characteristics and employment type. We also examined state-level differences in use and report and compare data on recent quit attempts among cigarette-only users and among dual users. Although evidence on whether e-cigarettes help with smoking cessation is mixed (12,13), dual users may be primed to use worksite interventions to support their cessation.

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Methods

Design and sample

We used data from the 2017 Behavioral Risk Factor Surveillance System (BRFSS) (14). BRFSS is a random-digit–dial telephone survey that collects state-level data on a wide range of health behaviors and conditions and on use of health care services. The survey is conducted annually among people aged 18 or older . The response rate for the 2017 BRFSS was 45% (15). Additional information on BRFSS, including survey design and methodology, is available elsewhere (14). The total sample size for the 2017 BRFSS was 450,016. Our study included respondents in 50 US states and the District of Columbia who indicated that they were currently employed (N = 221,264).

Measures

Smoking status. Respondents were asked the following questions: 1) “Have you smoked at least 100 cigarettes in your entire life?” and 2) “Do you now smoke cigarettes every day, some days, or not at all?” We coded respondents who had smoked at least 100 cigarettes and currently smoked every day or some days as current smokers, respondents who had smoked 100 cigarettes but did not currently smoke as former smokers, and respondents who had not smoked at least 100 cigarettes as never smokers.

E-cigarette use. Respondents were asked 1) “Have you ever used an e-cigarette or other electronic “vaping” product, even just one time, in your entire life?” and 2) “Do you now use e-cigarettes or other electronic vaping products every day, some days, or not at all?” We coded respondents who had used e-cigarettes in their lifetime and currently used e-cigarettes as current e-cigarette users, respondents who had used e-cigarettes but did not currently use them as former e-cigarette users, and respondents who had never used them as never e-cigarette users.

Type of tobacco use. We created a measure for the type of tobacco product used that included the following categories: no tobacco use (no current cigarette or e-cigarette use), cigarettes only (current cigarette use but not e-cigarette use), e-cigarettes only (current e-cigarette use but not cigarette use), and dual use (current cigarette and e-cigarette use).

Quit attempts. Current smokers were asked the following question: “During the past 12 months, have you stopped smoking for 1 day or longer because you were trying to quit smoking?” We coded respondents as making a recent quit attempt if they answered yes to this question.

Sociodemographic characteristics. We included the following sociodemographic variables: age (18–24, 25–44, 45–64, ≥65), annual household income (<$15,000, $15,000–$24,999, $25,000–$34,999, $35,000–$49,999, ≥$50,000); education (less than high school, high school graduate, some college, college graduate), employment type (employed for wages or self-employed), sex (male or female), race/ethnicity (white, black, American Indian/Alaska Native, Asian/Native Hawaiian/Pacific Islander, other [other race or multiracial], or Hispanic), and whether the respondent had any kind of health care coverage (yes or no).

Data analysis

We conducted data analysis in Stata version 15 (Stata Corp LLC). To account for the complex survey design, we used the weight, strata, and cluster variables included in the BRFSS data set. We centered strata with only 1 primary sampling unit at the grand mean. We calculated descriptive statistics and produced 95% confidence interval estimates for general sociodemographic characteristics and tobacco-use behavior; we examined quit-attempt behavior separately for cigarette-only users and dual users.

We conducted a multinomial logistic regression to examine the adjusted relationships among sociodemographic characteristics and the type of tobacco product used. Given a moderate and significant correlation between education and income (ρ = 0.39; P < .001), we excluded income from multivariable analysis, which had a larger percentage of missing data. After running the multinomial logistic regression, we calculated predictive margins (16) to estimate the adjusted prevalence of types of tobacco use. To examine differences by state we calculated state-level prevalence, with confidence intervals, of the types of tobacco use.

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Results

Approximately 17% of respondents were current smokers, and 22% were former smokers (Table 1). Five percent were current e-cigarette users, 2% were dual users, and 18% were former e-cigarette users. Approximately 14% currently used cigarettes only, and 3% used e-cigarettes only. Approximately one-quarter (23%) of respondents had ever tried e-cigarettes. Recent quit attempts were higher among dual users (70%) than cigarette-only users (56%), and nearly two-thirds (61%) of e-cigarette-only users were former smokers. Most respondents were male (55%), white (63%), had at least some college education (64%), and had an annual household income of $50,000 or greater (60%). Eighty-four percent were employed for wages and 16% were self-employed; most (87%) had health care coverage.

Overall, the odds of cigarette-only, e-cigarette-only, and dual use compared with no tobacco use decreased as age and education increased (Table 2). Odds of cigarette-only use were higher among adults aged 25 to 44 and 45 to 64 than among those aged 18 to 24. Women were less likely than men to use tobacco in any form, as were respondents who self-identified as black, Asian/Native Hawaiian/Pacific Islander, or Hispanic compared with those who self-identified as white. In contrast, those classified as other race and American Indian/Alaska Native were more likely to be cigarette-only users; other-race respondents also had a greater likelihood of e-cigarette-only use. Respondents without health care coverage had higher odds of cigarette-only and dual use. Respondents who identified as self-employed had lower odds of being an e-cigarette-only user than those employed for wages.

We calculated the adjusted prevalence for the type of tobacco product used (Table 2) and the unadjusted prevalence (Appendix). The prevalence of cigarette-only use varied the most by education: 28% of respondents with less than high school education used cigarettes only, whereas only 5% of college graduates were cigarette-only users. E-cigarette-only use was highest for respondents aged 18 to 24 (7%), followed by other-race respondents (4%). Age showed the largest percentage difference in dual use: 4% of respondents aged 18 to 24 were dual users compared with less than 1% for respondents aged 65 or older.

State differences. The prevalence of cigarette-only use ranged from 7.2% in Utah to 21.5% in West Virginia (Table 3). The states with the lowest prevalence of e-cigarette-only use were Vermont (1.2%), South Dakota (1.4%), and District of Columbia (1.6%). The states with the highest prevalence of e-cigarette-only use were Arkansas (3.9%), Oklahoma (3.7%), and Utah (3.7%). Dual use was lowest in District of Columbia (0.6%), Alaska (1.4%), and California (1.5%), and highest in Oklahoma (4.0%), West Virginia (3.6%), and Indiana (3.3%).

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Discussion

Tobacco use, especially e-cigarette and dual use, tended to be most prevalent among young white males with less than a high school education. These findings are consistent with previous studies (9) and suggest the importance of targeting these populations when designing worksite programs for tobacco cessation. One approach could be to target policy, communication, and cessation program efforts within occupations and industries where a larger proportion of these populations reside. For example, according to data from the 2018 Current Population Survey, people employed in construction are 90% male and 88% white (17).

Previous studies have suggested that worksite culture, social norms (eg, coworker discouragement of quitting), and job stress may contribute to higher rates of tobacco use within construction and similar industries and occupations (18–20). Given this, efforts to reduce tobacco use should address both individual and organizational factors that contribute to a higher prevalence. Examples of evidence-based interventions for tobacco control include quitline counseling, nicotine-replacement therapy for cessation, and strong tobacco-free worksite policies (4,5). Incorporating strategies to reduce work stress (eg, increasing job control) may also help with cessation efforts (21).

Respondents with health care coverage had a lower prevalence of cigarette-only and dual use than those without. The Guide to Community Preventive Services recommends reducing out-of-pocket costs for evidence-based cessation treatments to reduce tobacco use (5). Employers can offer treatment benefits via employer-sponsored health insurance to help reduce treatment costs or copayments (5,22). Since the Affordable Care Act mandated the provision of preventive services, offering these benefits is now a requirement for employers with 50 or more full-time employees. These provisions have also helped to increase insurance coverage among the self-employed (23), a group not traditionally reached by worksite interventions. Smaller worksites are less likely to offer health insurance (24) and could be prioritized for intervention efforts to ensure that employees have access to tobacco control interventions. Group purchasing via trade associations and unions to increase insurance and cessation-program access is one possibility (24). States and worksites that have not expanded Medicaid or have low insurance coverage could also be urged to invest in and publicize state quitlines.

The prevalence of current cigarette (17%) and e-cigarette use (5%) found here were similar to a previous study among working adults reporting 15% and 4%, respectively (9). Consistent with previous studies (25), recent quit attempts were higher among dual users (70%) than cigarette-only users (56%). We also found that more than half of all e-cigarette-only users identified as former smokers. Taken together, these findings suggest that dual users may be using e-cigarettes as a smoking cessation aid and align with previous studies that found a higher readiness to quit among dual users (26). These results provide evidence in favor of targeting dual users when implementing cessation interventions, such as improved access to quitlines, in the worksite.

The prevalence of cigarette-only, e-cigarette-only, and dual use varied by state, and states with the lowest cigarette use did not always have the lowest e-cigarette or dual use. For example, although Utah had the lowest prevalence of cigarette-only users, prevalence of e-cigarette use was among the highest in the country. Additional research is needed to understand these relationships, but our findings provide insight into which states could benefit the most from comprehensive worksite policies and programs, for example, by prohibiting tobacco use both indoors and outdoors on campuses or explicitly addressing e-cigarette use in policy language.

Comprehensive clean indoor air laws at the state level can provide environmental support for cessation among employees. Because these laws restrict tobacco use in enclosed spaces, they have direct implications for worksite policy. Although nearly all states have some city or county ordinances that ban smoking in nonhospitality worksites, bars, and restaurants, only 27 states have enacted these ordinances at the state level (27). Excise tax rates on cigarettes, which vary widely by state (from $0.17 to $4.35 per pack) (28), can also affect smoking behavior. We found that employee smoking was highest in West Virginia, a state with a relatively low excise tax on cigarettes ($1.20/pack) (28) and fewer provisions on indoor smoking at the state level (27,29). Although Utah, the state with the highest e-cigarette prevalence among employees, is one of 17 states to restrict e-cigarette use in nonhospitality worksites, bars, and restaurants at the state level (30), it is not one of the 21 states that have enacted an excise tax on e-cigarettes (31). These data suggests that opportunities exist to improve these policies in an effort to reduce tobacco use.

This study had limitations. Data on occupation and industry were not publicly available in the BRFSS data set, which limited our ability to make worksite policy and program recommendations based on these data. The 2017 BRFSS had limited data on e-cigarette use; thus, it was not possible to assess whether respondents were experimenters or more frequent and long-term e-cigarette users. Future studies should collect more detailed data on length, intensity, and frequency of tobacco use. Study strengths were its large sample size (N = 221,264), strong sampling design, and a detailed examination of the determinants of tobacco use by sociodemographic characteristics and by state.

Findings from our study expand understanding of tobacco-product use among employees and have direct implications for worksite implementation of interventions for tobacco control. Practitioners and researchers can apply these findings to design and implement interventions and to select worksite populations likely to have employees who will benefit. The findings from our study can also inform which employee groups to prioritize when designing worksite interventions, and which states could benefit most from strong clean indoor air laws to protect worksites and their employees from the negative consequences of tobacco use.

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Acknowledgments

We thank K.C. Gary Chan for his statistical advice. This publication is a product of a Health Promotion and Disease Prevention Research Center supported by cooperative agreement no. U48DP005013 from the Centers for Disease Control and Prevention. The findings and conclusions in this article are those of the authors and do not necessarily represent the official position of the Centers for Disease Control and Prevention. No conflicts of interest are declared. No copyrighted material or tools were adapted or used in this study.

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Author Information

Corresponding Author: Christine Kava, PhD, MA, Health Promotion Research Center, University of Washington, Box 354804, 1107 NE 45th St, Ste 400, Seattle, WA 98105. Telephone: 206-685-9504. E-mail: ckava@uw.edu.

Author Affiliations: 1Health Promotion Research Center, Department of Health Services, University of Washington, Seattle, Washington.

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Tables

Table 1. Tobacco Use Among Adult Employees in the US Workplace (N = 221,264), Behavioral Risk Factor Surveillance System, 2017a
Variable n % (95% CI)
Smoking status
Current 31,356 16.5 (16.2–16.9)
Former 50,572 21.6 (21.3–22.0)
Never 130,016 61.9 (61.5–62.3)
E-cigarette use
Current user 7,600 4.8 (4.6–5.0)
Former user 30,697 17.8 (17.5–18.2)
Never user 172,495 77.4 (77.1–77.8)
Type of tobacco use
None 175,063 81.1 (80.8–81.5)
Cigarettes only 27,216 14.1 (13.8–14.4)
E-cigarettes only 3,850 2.5 (2.3–2.6)
Dual use 3,716 2.3 (2.2–2.4)
Recent quit attempt among cigarette-only usersb
No 12,463 43.7 (42.5–44.9)
Yes 14,655 56.3 (55.1–57.5)
Recent quit attempt among dual usersb
No 1,194 30.4 (27.6–33.3)
Yes 2,509 69.6 (66.7–72.4)
% E-cigarette-only users who identified as former smokers 2,600 60.6 (57.7–63.5)

Abbreviation: CI, confidence interval.
a Percentages are weighted.
b Asked only among current smokers. Recent quit attempts were those within the past 12 months.

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Table 2. Odds Ratios and Adjusted Prevalence of Type of Tobacco Use Among Adult Employees in the US Workplace (N = 221,264), Behavioral Risk Factor Surveillance System, 2017a
Variable Type of Tobacco Useb
Cigarettes Only E-Cigarettes Only Dual Use
OR Adjusted % (95% CI) OR Adjusted % (95% CI) OR Adjusted % (95% CI)
Employment type
Employed for wages 1 [Reference] 14.3 (14.0–14.6) 1 [Reference] 2.5 (2.3–2.6) 1 [Reference] 2.2 (2.2–2.4)
Self-employed 0.9 13.4 (12.6–14.3) 0.8c 2.1 (1.8–2.4) 1.2 2.8 (2.3–3.3)
Age, y
18–24 1 [Reference] 10.6 (9.7–11.5) 1 [Reference] 6.8 (6.1–7.6) 1 [Reference] 3.6 (3.1–4.2)
25–44 1.7c 17.0 (16.4–17.5) 0.4c 2.7 (2.5–3.0) 0.9 3.0 (2.7–3.2)
45–64 1.1c 13.1 (12.6–13.5) 0.1c 1.1 (0.9–1.2) 0.4c 1.4 (1.2–1.5)
≥65 0.6c 7.7 (6.9–8.4) 0.0c 0.3 (0.2–0.4) 0.2c 0.7 (0.4–1.0)
Sex
Male 1 [Reference] 14.9 (14.5–15.3) 1 [Reference] 3.0 (2.8–3.3) 1 [Reference] 2.5 (2.3–2.7)
Female 0.8c 13.1 (12.7–13.6) 0.5c 1.6 (1.5–1.8) 0.8c 2.1 (1.9–2.3)
Race/ethnicity
White 1 [Reference] 16.5 (16.1–16.9) 1 [Reference] 2.9 (2.8–3.1) 1 [Reference] 2.9 (2.7–3.1)
Black 0.8c 13.8 (12.9–14.7) 0.5c 1.6 (1.2–2.0) 0.5c 1.7 (1.3–2.2)
American Indian/Alaska Native 1.4c 21.1 (18.5–23.8) 1.2 3.3 (2.0–4.7) 1.1 3.0 (1.9–4.0)
Asian/Native Hawaiian/Pacific Islander 0.6c 11.7 (9.7–13.7) 0.5c 1.7 (1.1–2.3) 0.5c 1.6 (1.0–2.2)
Otherd 1.2c 18.1 (16.2–20.0) 1.4c 3.8 (2.8–4.7) 1.2 3.3 (2.3–4.3)
Hispanic 0.4c 8.2 (7.5–9.0) 0.4c 1.4 (1.1–1.6) 0.3c 1.2 (0.9–1.5)
Education
Less than high school 1 [Reference] 28.4 (26.5–30.2) 1 [Reference] 2.1 (1.5–2.8) 1 [Reference] 3.2 (2.5–4.0)
High school graduate 0.6c 20.3 (19.6–21.0) 1.3 3.0 (2.7–3.3) 0.9 3.2 (2.9–3.5)
Some college 0.4c 14.8 (14.2–15.3) 1.1 2.9 (2.6–3.2) 0.7c 2.8 (2.5–3.1)
College graduate 0.1c 5.4 (5.1–5.7) 0.5c 1.5 (1.3–1.6) 0.2c 0.9 (0.8–1.0)
Health care coverage
Yes 1 [Reference] 13.1 (12.8–13.5) 1 [Reference] 2.5 (2.3–2.6) 1 [Reference] 2.2 (2.0–2.3)
No 1.7c 19.9 (18.8–20.9) 1.0 2.3 (1.9–2.6) 1.7c 3.2 (2.7–3.6)

Abbreviations: CI, confidence interval; OR, odds ratio.
a Percentages are weighted. Odds ratios were produced by using multinomial logistic regression. We used predictive margins to calculate the adjusted prevalence.
b Reference is no tobacco use.
c Significant at P < .05.
d Other race or multiracial.

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Table 3. Type of Tobacco Use, by Type of Tobacco Product and by State, Among Adult Employees in the US Workplace, Behavioral Risk Factor Surveillance System, 2017a
State Cigarettes Only (N = 27,216) E-cigarettes Only (N = 3,850) Dual Use (N = 3,716)
Alabama 17.6 (15.7–19.6) 2.6 (1.8–3.7) 2.8 (2.1–3.9)
Alaska 17.2 (14.4–20.5) 2.1 (1.1–4.1) 1.4 (0.7–2.9)
Arizona 12.9 (11.9–14.0) 3.2 (2.7–3.8) 2.4 (2.0–3.0)
Arkansas 19.6 (16.5–23.2) 3.9 (2.4–6.2) 3.0 (1.8–5.1)
California 10.8 (9.5–12.1) 2.1 (1.7–2.7) 1.5 (1.1–2.0)
Colorado 12.4 (11.3–13.7) 3.2 (2.6–3.9) 2.7 (2.2–3.4)
Connecticut 11.3 (10.0–12.7) 1.6 (1.2–2.2) 1.7 (1.3–2.3)
Delaware 14.4 (12.3–16.8) 2.4 (1.5–3.8) 2.8 (1.9–3.9)
District of Columbia 10.6 (8.9–12.5) 1.6 (1.0–2.6) 0.6 (0.3–1.0)
Florida 13.9 (12.4–15.7) 2.3 (1.7–3.0) 2.2 (1.7–2.9)
Georgia 14.8 (13.2–16.7) 2.2 (1.7–3.1) 2.1 (1.5–3.0)
Hawaii 11.8 (10.5–13.2) 3.4 (2.7–4.3) 1.8 (1.3–2.4)
Idaho 12.7 (10.9–14.7) 3.0 (2.1–4.3) 2.7 (1.9–3.8)
Illinois 13.8 (12.2–15.6) 2.4 (1.8–3.4) 2.5 (1.7–3.6)
Indiana 18.9 (17.6–20.2) 3.2 (2.6–3.9) 3.3 (2.7–4.1)
Iowa 15.9 (14.6–17.2) 1.9 (1.5–2.6) 1.7 (1.3–2.2)
Kansas 15.2 (14.4–16.1) 2.7 (2.3–3.1) 2.4 (2.0–2.8)
Kentucky 20.6 (18.6–22.7) 3.0 (2.2–4.2) 3.1 (2.3–4.1)
Louisiana 19.9 (17.7–22.2) 2.3 (1.7–3.2) 2.1 (1.4–3.0)
Maine 14.9 (13.3–16.6) 1.9 (1.4–2.8) 2.3 (1.6–3.1)
Maryland 11.7 (10.4–13.0) 1.9 (1.4–2.5) 1.6 (1.1–2.1)
Massachusetts 10.9 (9.3–12.7) 1.6 (1.0–2.6) 1.5 (1.0–2.3)
Michigan 17.2 (15.9–18.7) 2.9 (2.3–3.7) 2.4 (1.9–3.0)
Minnesota 13.3 (12.4–14.2) 1.8 (1.5–2.2) 1.8 (1.4–2.2)
Mississippi 18.8 (16.4–21.6) 2.1 (1.3–3.4) 2.8 (1.9–4.0)
Missouri 17.5 (15.8–19.3) 2.8 (2.1–3.8) 2.7 (2.0–3.6)
Montana 16.9 (15.1–18.9) 2.1 (1.4–3.1) 1.7 (1.1–2.5)
Nebraska 13.5 (12.4–14.7) 1.9 (1.4–2.5) 1.8 (1.4–2.3)
Nevada 16.4 (13.9–19.3) 3.5 (2.3–5.2) 2.3 (1.3–3.9)
New Hampshire 13.0 (11.1–15.1) 2.4 (1.5–3.7) 2.3 (1.5–3.6)
New Jersey 11.5 (10.1–13.0) 2.2 (1.7–3.0) 2.6 (1.9–3.6)
New Mexico 14.2 (12.4–16.2) 3.3 (2.3–4.7) 2.3 (1.6–3.2)
New York 12.4 (11.2–13.6) 2.2 (1.7–2.8) 1.7 (1.3–2.3)
North Carolina 13.8 (12.1–15.7) 2.5 (1.8–3.5) 2.8 (2.0–4.0)
North Dakota 16.9 (15.3–18.5) 2.3 (1.6–3.2) 2.3 (1.6–3.1)
Ohio 17.7 (16.2–19.2) 2.8 (2.2–3.6) 2.7 (2.2–3.5)
Oklahoma 16.3 (14.6–18.2) 3.7 (2.9–4.7) 4.0 (3.1–5.2)
Oregon 13.6 (12.1–15.3) 2.8 (2.1–3.7) 2.7 (2.0–3.7)
Pennsylvania 16.0 (14.4–17.8) 2.3 (1.7–3.1) 2.9 (2.3–3.8)
Rhode Island 13.5 (11.6–15.8) 2.5 (1.8–3.6) 1.6 (1.0–2.4)
South Carolina 17.4 (16.0–19.0) 3.0 (2.3–3.9) 1.8 (1.4–2.4)
South Dakota 18.6 (16.3–21.1) 1.4 (0.8–2.6) 3.2 (2.0–5.2)
Tennessee 19.0 (17.0–21.3) 2.8 (2.0–3.9) 2.8 (2.0–3.9)
Texas 13.4 (11.7–15.3) 2.4 (1.6–3.4) 3.0 (2.2–4.1)
Utah 7.2 (6.4–8.1) 3.7 (3.0–4.4) 2.0 (1.5–2.5)
Vermont 14.3 (12.7–16.1) 1.2 (0.7–2.0) 1.7 (1.0–2.8)
Virginia 13.9 (12.6–15.3) 2.7 (2.1–3.5) 2.4 (1.8–3.1)
Washington 11.9 (10.9–13.0) 2.4 (1.9–2.9) 1.7 (1.3–2.2)
West Virginia 21.5 (19.5–23.8) 2.4 (1.7–3.5) 3.6 (2.7–4.8)
Wisconsin 14.2 (12.5–15.9) 2.8 (2.0–3.9) 2.0 (1.4–2.8)
Wyoming 16.4 (14.6–18.5) 3.0 (2.1–4.2) 2.9 (2.1–4.1)

Abbreviation: CI, confidence interval.
a Values are percentage (95% confidence interval). Percentages are weighted. Data are for current tobacco users.

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Appendix

Supplemental Table. Unadjusted Prevalence for Type of Tobacco Use Among Employed Adults in the US Workplace (N = 221,264), Behavioral Risk Factor Surveillance System, 2017a
Variable Tobacco Type
Cigarettes Only E-Cigarettes Only Dual Use
Employment type
Employed for wages 14.0 (13.7–14.4) 2.6 (2.4–2.8) 2.2 (2.1–2.4)
Self-employed 14.6 (13.7–15.5) 1.8 (1.5–2.1) 2.6 (2.2–3.1)
Age, y
18–24 12.4 (11.4–13.4) 7.6 (6.8–8.4) 4.1 (3.5–4.7)
25–44 16.4 (15.9–17.0) 2.6 (2.4–2.9) 2.8 (2.6–3.1)
45–64 13.1 (12.7–13.5) 1.1 (1.0–1.2) 1.4 (1.3–1.6)
≥65 7.2 (6.6–7.9) 0.4 (0.2–0.6) 0.7 (0.5–1.0)
Sex
Male 15.8 (15.3–16.3) 3.2 (3.0–3.4) 2.6 (2.4–2.8)
Female 12.0 (11.6–12.5) 1.6 (1.4–1.7) 1.9 (1.7–2.1)
Race/ethnicity
White 14.7 (14.3–15.0) 2.8 (2.6–3.0) 2.6 (2.4–2.8)
Black 14.5 (13.6–15.5) 1.7 (1.3–2.2) 1.9 (1.5–2.5)
American Indian/Alaska Native 23.4 (20.5–26.5) 3.9 (2.6–5.9) 3.3 (2.4–4.7)
Asian/Native Hawaiian/Pacific Islander 8.1 (6.7–9.7) 1.5 (1.0–2.1) 1.2 (0.8–1.7)
Other 17.7 (15.8–19.7) 4.3 (3.3–5.5) 3.5 (2.6–4.7)
Hispanic 13.1 (12.2–14.2) 1.8 (1.4–2.1) 1.8 (1.4–2.2)
Education
Less than high school 26.2 (24.6–27.9) 1.9 (1.5–2.5) 3.0 (2.5–3.6)
High school graduate 20.3 (19.6–21.0) 3.6 (3.2–3.9) 3.4 (3.1–3.7)
Some college 14.8 (14.3–15.4) 3.0 (2.7–3.3) 2.8 (2.5–3.1)
College graduate 5.4 (5.2–5.7) 1.3 (1.2–1.4) 0.9 (0.8–1.0)
Annual household income, $
Less than 15,000 21.3 (19.4–23.2) 2.0 (1.5–2.7) 2.7 (2.1–3.5)
15,000–24,999 22.8 (21.7–24.0) 2.6 (2.2–3.1) 3.9 (3.4–4.5)
25,000–34,999 20.1 (18.8–21.4) 3.0 (2.5–3.5) 2.9 (2.4–3.4)
35,000–49,999 18.6 (17.5–19.7) 2.6 (2.2–3.0) 3.1 (2.6–3.5)
≥50,000 10.0 (9.7–10.4) 2.3 (2.1–2.4) 1.7 (1.5–1.9)
Health care coverage
No 24.8 (23.6–26.0) 2.6 (2.3–3.1) 3.9 (3.4–4.5)
Yes 12.6 (12.3–12.9) 2.4 (2.3–2.6) 2.1 (1.9–2.2)

Abbreviations: CI, confidence interval.
a Percentages are weighted. Values are percentage (95% confidence interval).

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