Introduction
There are limited conclusive data about which smokers are most likely to use e-cigarettes and whether e-cigarettes help or hinder cessation efforts. This study used an observational, longitudinal cohort design to examine which cigarette smokers purchase e-cigarettes – either experimentally or repeatedly – and the potential harm reduction impact of e-cigarettes on smokers by following a cohort of smokers over time.
The first important questions to address are which smokers experiment with e-cigarettes and which are likely to become regular users of e-cigarettes? Answering these questions requires documenting differences in smoking behaviours among smokers. The type (e.g., menthol vs. non-menthol), price, and volume of cigarettes consumed at baseline might correlate with e-cigarette initiation and may impact the likelihood of continued use of e-cigarettes. For example, heavy smokers may be more likely to become intensive e-cigarette users than light smokers (Biener & Hargraves, Reference Biener and Hargraves2015).
Additionally, understanding one's motivation for using e-cigarettes and potentially quitting them is important. One study (Pepper, Ribisl, Emery, & Brewer, Reference Pepper, Ribisl, Emery and Brewer2014) noted that ‘curiosity’ was the most commonly reported reason for initially trying e-cigarettes and that the most common reason for discontinuing e-cigarette use was that participants were ‘just experimenting’ with them. Another study (Berg, Reference Berg2015) documented that the most common reasons current and former smokers used e-cigarettes were for harm reduction and cessation. The most common reason for discontinued e-cigarette use among current smokers was because they were using other tobacco products, while the most common reason for discontinued e-cigarette use among former smokers was because they quit the use of all nicotine/tobacco (Berg, Reference Berg2015). These findings suggest that indicators regarding motivation to quit smoking, such as prior nicotine replacement therapy (NRT) purchasing or previous gaps in cigarette purchase (potentially marking prior quit attempts), may be important correlates of e-cigarette initiation and regular use. Prior research has found that e-cigarette users report a higher number of previous quit attempts and intention to quit (Rutten et al., Reference Rutten, Blake, Agunwamba, Grana, Wilson and Ebbert2015).
From a broader socioecological perspective, little is known about the impact of the tobacco control environment on initiation and continued use of e-cigarettes. For example, stricter policies could promote denormalisation of tobacco and nicotine use altogether or promote the use of e-cigarettes in order to facilitate cessation. Accounting for these contextual findings may provide a more comprehensive account of how these factors might impact e-cigarette use over time.
In terms of the effect of e-cigarette use on smoking cessation, findings have been mixed. Two cohort studies found that e-cigarette use was negatively associated with cessation (Al-Delaimy et al., Reference Al-Delaimy, Myers, Leas, Strong and Hofstetter2015; Grana, Popova, & Ling, Reference Grana, Popova and Ling2014). Another six cohort studies found no significant association between e-cigarette use and cessation (Adkison et al., Reference Adkison, O'Connor, Bansal-Travers, Hyland, Borland and Yong2013; Borderud et al., Reference Borderud, Li, Burkhalter, Sheffer and Ostroff2014; Brose et al., Reference Brose, Hitchman, Brown, West and McNeill2015; Gmel et al., Reference Gmel, Baggio, Mohler-Kuo, Daeppen and Studer2016; Pearson et al., Reference Pearson, Stanton, Cha, Niaura, Luta and Graham2015; Prochaska & Grana, Reference Prochaska and Grana2014). Last, two studies documented that certain types of e-cigarette use were associated with cessation. A UK study found that daily tank users had increased odds of cessation, non-daily cig-a-like users have decreased odds, and all others demonstrated no difference in odds of cessation from non-users of e-cigarettes (Hitchman et al., Reference Hitchman, Brose, Brown, Robson and McNeill2015). Another study of smokers in the U.S. cities of Dallas and Indianapolis from 2011 to 2014 found an increase in the odds of smoking cessation among intensive e-cigarette users but no effect among intermittent e-cigarette users (Biener & Hargraves, Reference Biener and Hargraves2015). These findings indicate that quantifying and characterising e-cigarette use is important.
Given disparate findings reported by these prior observational studies, attention must be paid to the potential reasons for these differences. First is the timing and frequency of assessments. Some studies measure e-cigarette use only at baseline (Al-Delaimy et al., Reference Al-Delaimy, Myers, Leas, Strong and Hofstetter2015; Borderud et al., Reference Borderud, Li, Burkhalter, Sheffer and Ostroff2014; Brose et al., Reference Brose, Hitchman, Brown, West and McNeill2015; Grana, Popova, & Ling, Reference Grana, Popova and Ling2014). If a study focuses on a cohort that is smoking at baseline and measures e-cigarette use at baseline only, ex-smokers who experienced an e-cigarette-associated quit pre-baseline would be excluded, biasing the results (Hajek, McRobbie, & Bullen, Reference Hajek, McRobbie and Bullen2016). Others measure e-cigarette use only at follow-up, which limits the ability to determine sequencing of events in some cases (Adkison et al., Reference Adkison, O'Connor, Bansal-Travers, Hyland, Borland and Yong2013; Gmel et al., Reference Gmel, Baggio, Mohler-Kuo, Daeppen and Studer2016; Pearson et al., Reference Pearson, Stanton, Cha, Niaura, Luta and Graham2015). Second, some studies distinguished between different types of e-cigarette users (Biener & Hargraves, Reference Biener and Hargraves2015; Brose et al., Reference Brose, Hitchman, Brown, West and McNeill2015; Hitchman et al., Reference Hitchman, Brose, Brown, Robson and McNeill2015), while others did not (Adkison et al., Reference Adkison, O'Connor, Bansal-Travers, Hyland, Borland and Yong2013; Al-Delaimy et al., Reference Al-Delaimy, Myers, Leas, Strong and Hofstetter2015; Borderud et al., Reference Borderud, Li, Burkhalter, Sheffer and Ostroff2014; Gmel et al., Reference Gmel, Baggio, Mohler-Kuo, Daeppen and Studer2016; Grana, Popova, & Ling, Reference Grana, Popova and Ling2014; Pearson et al., Reference Pearson, Stanton, Cha, Niaura, Luta and Graham2015; Prochaska & Grana, Reference Prochaska and Grana2014). This is important for two reasons: (1) experimenters versus more intensive users may have different characteristics at baseline (Biener & Hargraves, Reference Biener and Hargraves2015; Pepper, Ribisl, Emery, & Brewer, Reference Pepper, Ribisl, Emery and Brewer2014); and (2) as with NRT, the causal impact of e-cigarette use on cessation is likely low among those that only briefly experiment with them. Greater attention must be given to understanding the characteristics of smokers who use e-cigarettes as well as characteristics of their use.
Given the aforementioned literature, the aims of the current study were (1) to examine correlates of single and repeat e-cigarette purchasing among panellists that consistently purchasers cigarettes at baseline and (2) to identify whether e-cigarette purchasing is associated with tobacco cigarette smoking cessation (defined as no purchases for at least 6 months and no subsequent purchases until the end of 2013) in a longitudinal national U.S. consumer panel. All household purchases were scanned by the panellists under study. Nielsen then keeps a record of the scanned purchases that match a database of over 3 million UPC codes including over 400 e-cigarette products from 49 different brands. In support of the study aims, we also examined whether cigarette purchase discontinuation was concurrent with the initiation of e-cigarette purchasing. Last, we presented trends in NRT purchasing to assess whether the growth in e-cigarette purchases reduced the amount of households purchasing NRT.
Methods
The consumer purchasing data for our study, conducted in 2015, were derived from the Nielsen Homescan Panel. This dataset provides a record of consumer packaged goods purchases for a national panel of U.S. households. Consumers opted into this panel by applying, at which point they were added to a waiting list until a spot that matched their ‘demographic profile’ opened up. At that point, panellists were sent a scanning device that they used to scan all household purchases. Nielsen households earned ‘points’ by scanning items that are redeemable for prizes. Nielsen recorded the date and time of each purchase along with the price of each item.
Nielsen did not record all products that were scanned. In 2013, Nielsen tracked over 3 million products, including over 400 e-cigarette products across 49 distinct e-cigarette brands. However, all e-cigarette products tracked were either disposable or refillable cig-a-like products. Tank-style e-cigarettes and e-liquid purchases were not tracked during this period, and so many purchases from vape shops and online were not recorded by Nielsen.
A sample of cigarette purchasers was constructed from the Nielsen panel. Households that had gaps of over 180 days between cigarette purchases were excluded from the sample. This was because ‘cessation’ is a key study outcome and is defined by prolonged discontinuation of cigarette purchasing, and one cannot confidently ascertain whether an intermittent cigarette purchaser has changed their purchase behaviour in a meaningful way. The effective ‘baseline’ of the sample period was the beginning of 2012, with ‘follow-up’ at the end of 2013. Data from 2011 were used to both initiate a set of smoking behaviour variables pre-baseline and to verify that a household had previously purchased cigarettes at baseline. Figure 1 shows the timeline of the pre-baseline period and the study observation window. The sample of smoking households was filtered to include only households who were in the sample in 2011 (N = 62,092), remained through 2013 (N = 43,828), and bought cigarettes at some point (25.2%, N = 11,060). The sample was further restricted to households who (1) purchased at least four cigarette packs between 2011 and 2013 (N = 7,159); (2) made at least two cigarette purchases before baseline (in 2011) and at least one cigarette purchase after baseline (in 2012 or 2013, N = 4,619); and (3) made consistent enough purchases that there are no gaps of greater than 180 days between purchases (N = 2,868). Households with non-sensical price data (priced below tax level or above $20 per pack) were also removed, leaving a final analytic sample of 2,854 panellists.
Measures
Outlined below are the variables included in this analysis.
Smoking cessation. The primary outcome for the second study aim was tobacco cigarette smoking cessation. Panellists were categorised to have ‘quit’ if they did not purchase a pack of cigarettes for at least 180 days at any point during the observational window and did not purchase cigarettes again subsequently until the end of the observation window.
E-cigarette use. E-cigarette purchase was the primary outcome for the first study aim and the primary explanatory variable of interest for the second aim. E-cigarette purchasing households were stratified into single purchasers and repeat purchasers, following other studies that have found different motivations (Pepper, Ribisl, Emery, & Brewer, Reference Pepper, Ribisl, Emery and Brewer2014) and effects (Biener & Hargraves, Reference Biener and Hargraves2015; Brose et al., Reference Brose, Hitchman, Brown, West and McNeill2015; Hitchman et al., Reference Hitchman, Brose, Brown, Robson and McNeill2015) between experimenters versus more intensive users.
For the analyses focusing on cessation, e-cigarette purchasing was also split into pre-baseline purchases (2011) and post-baseline purchases (2012–13), depending on when a panellist initiated e-cigarette purchasing. Note that a repeat purchasing household that initiated in 2011 was categorised as a pre-baseline repeat purchaser whether or not they continued using after baseline. This was done to accurately capture the prospective effect of e-cigarette purchase without ignoring past purchases or erroneously treating past purchasers as never purchasers. E-cigarette purchases made in the last 180 days of 2013 were excluded from cessation analyses because there were insufficient data to prospectively follow these households for 180 days in order to determine whether a cessation had occurred.
NRT use. Households that purchased NRT were stratified into single and repeat purchasers. Although this construction mirrors that of the e-cigarette use variables, the meaning of single NRT purchase may be different because a single purchase may include an entire recommended schedule for NRT. As with e-cigarettes, NRT use is also split into mutually exclusive pre-baseline and post-baseline purchasing categories. A repeat purchasing household that initiated in 2011 was categorised as a 2011 repeat purchaser whether or not they continued using into 2012 or 2013. Purchases during the final 180 days were excluded for the cessation analysis paralleling the treatment of e-cigarette purchases.
Sociodemographic characteristics. Precision regarding sociodemographics is limited because the panel operates at the level of the household. Age, race/ethnicity, household composition, and household income level were included. Specifically, either the age of single adult household members or the average age of the heads of household in multiple adult households was used. Exploratory analyses indicated that quit rates among Black panellists were significantly different from other races, and so race/ethnicity was categorised as Black versus other races. Hispanic ethnicity was included as well, along with variables for single male, single female, and multiple adult households.
State tobacco control environment. Individual consumer information was augmented with data on state-level tobacco control funding, cigarette excise taxes, and smoke-free restrictions per the U.S. Center for Disease Control's (CDC) State Tobacco Activities Tracking and Evaluation System. The variable for % CDC control funding was defined as the state's level of funding divided by funding recommended by CDC. To assess smoke-free restrictions, each smoker was matched to their respective state's level of smoke-free policies in six venues – restaurants, bars, government workplaces, private workplaces, multi-unit housing common areas, and multi-unit housing living areas. In each venue, smoke-free restrictions were assigned one of three values: 0 for no restriction, 0.5 for partial, and 1 for a complete. We took the average of the smoke-free restrictions across bars, restaurants, workplaces, and homes. Cigarette excise taxes were defined as the state level of cigarette taxes.
Purchasing characteristics. Purchase-related variables were calculated from pre-baseline data to prevent reverse causal effects of e-cigarette or NRT purchase after baseline. These variables include menthol (the only legal flavoured cigarette in the US), 20-pack price, monthly cigarette volume, purchase frequency, and recency. Menthol purchasing was operationalised based on whether at least 50% of a participants’ cigarette spending was allocated to menthol cigarettes. 20-Pack price was defined as the average price paid per pack. Monthly cigarette volume was calculated as the number of packs purchased per month. Purchase frequency was operationalised as the average number of days between purchases. Recency was operationalised as the gap in time between baseline and the most recent purchase before baseline.
Statistical Analysis
Descriptive analyses of participant baseline characteristics were conducted. Bivariate analyses were conducted examining correlates of single and repeat e-cigarette purchase at any point from 2011 to 13. For continuous variables, statistical significance was assessed using ordered logistic regression. For categorical variables, a standard chi-square test was used. Next, a multinomial logistic regression was used to determine correlates of single and repeat e-cigarette purchase in 2012 or 2013. After that, a bivariate analysis was conducted examining correlates of cessation in 2012–13 (using bivariate logistic regression). Binary logistic regression was used for the multivariable analyses, jointly examining all correlates of cessation. Following the cessation analysis, an investigation was undertaken to determine whether quitting was occurring at or around first purchase of e-cigarettes or NRT. Last, an exploration of whether e-cigarette purchases appeared to displace NRT purchases in this population was conducted. All statistical models were estimated using SAS 9.4.
Results
Household Characteristics
The average age of the heads of household was 58.86 years old (SD = 9.72). Households were 10.65% Black, 84.37% White, and 3.50% Hispanic. 73.09% of households contained multiple adults; the average household income was $47,926 (SD = $27,487; Table 1).
Note: M is the mean, N is the count, SD is the standard deviation around the mean, % is the share of the total sample represented by the count.
E-Cigarette Purchasing
Bivariate analyses indicated that e-cigarette purchase was correlated with lower levels of smoke-free policies (p = 0.025), lower cigarette prices (p < 0.001), higher monthly cigarette volume (p < 0.001), higher purchase frequency (p = 0.004), greater likelihood of NRT purchasing (p = 0.022), and greater likelihood of cessation. Single purchasers had the lowest quit rates and repeat purchasers having the highest (p = 0.043; Table S1). In multivariable analysis, single e-cigarette purchase was associated with whether the panellist resided in a single male household (p = 0.046) and bought a higher volume of cigarettes (p = 0.042; Table 2). Repeat purchase was associated with higher cigarette taxes (p = 0.022), less stringent public smoke-free policies (p = 0.014), lower cigarette prices (p = 0.017), and more frequent cigarette purchasing (p = 0.017).
Cessation
Cessation was associated with younger age (p < 0.001), being White (p = 0.015), residing in a multiple-person household (p = 0.040), purchasing fewer cigarettes per month (p < 0.001), purchasing cigarettes less frequently (p < 0.001), purchasing cigarettes less recently (p < 0.001), making a single e-cigarette purchase before cessation (p = 0.022), and making repeat NRT purchases after baseline (p = 0.034; Table 1). In multivariable analyses (Table 2), repeat e-cigarette purchase (p = 0.011) and repeat NRT purchase (p = 0.007) after baseline were both associated with cessation. Younger age (p = 0.001), lower monthly cigarette volume (p < 0.001), less frequent purchasing of cigarettes (p < 0.001), less recent cigarette purchase at baseline (p = 0.001), and single e-cigarette purchase before baseline (p = 0.020) were also associated with cessation.
Figure 2 uses the time granularity of this dataset to show the time between the initial e-cigarette or NRT purchase and the final cigarette purchase. The final cigarette purchase over time is plotted, with the initial e-cigarette or NRT purchase considered to be time 0. There was a spike in final cigarette purchases close to e-cigarette or NRT initiation date. The precise date of cessation was likely to occur sometime after the final cigarette purchase date because the purchase may take several days or weeks to consume. Initial NRT purchase was most frequently within 1 month after the final cigarette purchase; and initial e-cigarette purchase was estimated at 1–2 months after final cigarette purchase.
NRT Displacement
Figure 3 estimates how NRT purchasing was affected by the emergence of e-cigarettes. Overall, e-cigarettes did not appear to substantially displace NRT purchases. Although 16.5% of e-cigarette purchasers also purchased NRT, there was not an obvious reduction in the amount of NRT purchases over time.
Discussion
This study was the first cohort study using consumer purchase data to examine correlates of e-cigarette initiation and repeated purchase as well as the impact of e-cigarette purchase on cessation. The main finding was that repeat e-cigarette purchasing was associated with smoking cessation, while single e-cigarette purchase was not. Moreover, repeat e-cigarette purchase was associated with more frequent cigarette purchases before baseline, suggesting that these households have lower propensity to quit at baseline. However, multivariable analysis suggested significantly higher likelihood of quitting. It is important to interpret these findings with caution. This study design cannot discern causality. It is possible that repeat e-cigarette purchase selects for motivated smokers who may have quit regardless of e-cigarette use.
There are other findings related to cessation that are worth noting. All smoking intensity variables were associated with decreased odds of cessation. Although previous studies have examined the relationship between smoking cessation and over-the-counter NRT in real-world samples (Kotz, Brown, & West, Reference Kotz, Brown and West2014; Shiffman et al., Reference Shiffman, Rolf, Hellebusch, Gorsline, Gorodetzky and Chiang2002; West & Zhou, Reference West and Zhou2007), previous looks at NRT in the Nielsen sample had not examined the impact on cessation (Shiffman, Hughes, Pillitteri, & Burton, Reference Shiffman, Hughes, Pillitteri and Burton2003). Cessation was associated with repeat NRT purchase. As in the case of e-cigarettes, we could not disentangle the degree to which NRT purchase selects for quit intention. Single e-cigarette purchase before baseline was also associated with cessation. There were only 12 single e-cigarette purchasing households before baseline, of which five quit after baseline, so this result may not hold outside of this sample. To the extent that the relationship found among these 12 smokers is meaningful, it might indicate a selection effect among smokers who chose to purchase e-cigarettes in 2011. It is difficult to identify a clear causal mechanism that would apply to single purchasers but not repeat purchasers. Such a mechanisms has yet to emerge in the e-cigarette literature.
Additionally, e-cigarette purchase was associated with smoking intensity measures, similar to prior findings (Biener & Hargraves, Reference Biener and Hargraves2015). Specifically, higher volume smokers were more likely to make a single e-cigarette purchase, while more frequent cigarette purchasers were more likely to make repeat e-cigarette purchases. Repeat e-cigarette purchase was associated with lower per-pack cigarette cost, suggesting that e-cigarettes might appeal to more price-sensitive smokers. As for policy, some of the associations found between e-cigarette purchase and policy are intuitive (higher cigarette taxes were associated with repeat e-cigarette use, suggesting increased substitution where cigarette prices are higher). Others may be more surprising. The finding that higher levels of smoke-free policies were associated with lower rates of repeat e-cigarette purchase is interesting. This may be explained by cultural differences between states that pass more comprehensive smoke-free policies versus those lagging in that area. It may also be easier to vape indoors in states that do not have smoking bans, since the applicability of smoke-free policies to e-cigarettes was often not stipulated during this period.
Figure 2 underscores the need to pick up the change in e-cigarette or NRT purchase between baseline and follow-up to avoid selecting out successful quits that occurred right as these products were initiated (Hajek, McRobbie, & Bullen, Reference Hajek, McRobbie and Bullen2016). It also suggests the possibility that e-cigarettes were more likely than NRT to be initiated in the midst of a quit attempt as opposed to the outset, perhaps as relapse prevention. The finding that e-cigarette purchases did not seem to displace NRT purchase (Figure 3) echoes findings from a UK sample (Beard et al., Reference Beard, Brown, McNeill, Michie and West2015).
The current study has important implications for research and practice. In research, characterisation of e-cigarette types and usage patterns is necessary, especially with rapidly proliferating new product types (Zhu et al., Reference Zhu, Sun, Bonnevie, Cummins, Gamst and Yin2014 Jul. 1)). More detailed study of the interrelationships between quit intention, quit propensity, and e-cigarette purchase is also necessary to better control for selection effects. Additionally, other forms of verification beside purchase scanning are necessary in order to have more specific and precise measures of product usage. In practice, clinicians need better resources to aid them in discussions with patients about the state of the science regarding e-cigarettes and cessation.
Limitations
Limitations include the lack of ability to verify that households used the items that they purchased, including the possibility that households may have made purchases for non-household members. It is also possible that heavier smokers may have finished and disposed of cigarette packs before scanning or otherwise refrained from scanning cigarette purchases. This adds potential measurement error to measures of cigarette purchasing. Filtering out smokers who purchased intermittently mitigates this weakness. Similarly, some households may have received NRT directly from quit lines or healthcare providers, and so many households that are coded as non-NRT purchasers may in fact have used NRT. If these missing NRT users were more likely to have purchased e-cigarettes (as was the case with measured NRT purchasers), then the resultant confounding might create a bias towards a finding that e-cigarettes are associated with smoking cessation. Nielsen did not record all scanned products, most notably tank-style and e-liquid purchases. Previous studies have found cig-a-likes to have a lower association with smoking cessation than other product types (Hitchman et al., Reference Hitchman, Brose, Brown, Robson and McNeill2015).
In addition, data were collected at the household level, and it is not clear how many smokers lived in multi-person households. This may have biased cessation rates downward for both purchasers and non-purchasers of e-cigarettes because a multi-smoker household where one smoker discontinued cigarette purchases but the other did not was coded as a continuing cigarette purchaser. It is also possible that a non-smoking household member was purchasing e-cigarettes rather than the smoking member. This would bias the results towards a finding that e-cigarettes are unrelated to quitting, either positively or negatively, because the smoker was not the one purchasing e-cigarettes as had been assumed. Also, there was a lack of psychosocial measures, particularly those related to quit intention and reasons for using e-cigarettes. An arbitrary determination of eligibility criteria, cessation outcome, e-cigarette usage variables, etc. was necessary although sensitivity to these decisions was tested and they did not impact the core conclusions. The older average age of this sample may not allow for generalisability to younger populations. The largely White non-Hispanic sample may not generalise to non-White populations. Moreover, Nielsen does not include a racial category for mixed race individuals or households, who may decide to mark ‘Other’ when asked about their racial identity. Also, looking only at Nielsen participants who were willing to scan all of their purchases may limit generalisability. Some tobacco control policies were not included, such as vehicle bans, as there was little variability compared to the policies that were included.
Last, as in previous studies (Lewis, Wang, & Berg, Reference Lewis, Wang and Berg2014; Lewis, Wang, Cahn, & Berg, Reference Lewis, Wang, Cahn and Berg2015), the use of consumer purchase data required the construction of variables defined specifically for this analysis, most notably variables that served as proxies use of e-cigarettes, NRT, and tobacco smoking behaviours including cessation. Although this data does not rely on memory as in the case with self-report data, use of these proxies introduces potential measurement error of a different sort. Purchase data also makes it difficult to give a precise quit date for any smoker in the sample since the dataset only recorded the last date that a cigarette purchase was made. Depending on the size of that purchase and the smoking intensity of the household, the true cessation date could have been a month or more after the final purchase.
Conclusions
The key finding is that repeat e-cigarette purchasing was associated with discontinuation of cigarette purchasing in a cohort of mostly older smokers, as is the case with NRT. This design does not allow for causal conclusions about the effectiveness of e-cigarettes or NRT. Other results include that higher cigarette taxes and greater smoking intensity were associated with more e-cigarette use, while paying more per pack and facing stricter smoke-free policies were associated with less e-cigarette use. Further research is needed to add to these findings and inform policy.
Acknowledgements
We would like to thank our funders for their support. These results are Calculated (or Derived) based on data from The Nielsen Company (US), LLC and marketing databases provided by the Kilts Center for Marketing Data Center at The University of Chicago Booth School of Business. Information about the data and access are available at http://research.chicagobooth.edu/nielsen/
Conflict of Interest
The authors declare no conflicts of interest.
Financial Support
This work was supported by the National Cancer Institute (1R21CA198455-01, PI: Berg; U01CA154282-01, PI: Kegler). The funders had no role in the analyses or interpretation of the study or its results.
Contributorship Statement
All authors contributed to the conceptualisation of the research aims and analytic plan as well as the interpretation of the results. ZC and RH conducted the data analysis and contributed to the writing of the manuscript. ML, YW, and CB contributed to the writing. CB finalised the manuscript.
Data Sharing Statement
No additional data available.
Ethical Standards
The Emory University Institutional Review Board approved this study.
Disclaimer
Any views expressed here are those of the authors and do not necessarily represent their affiliated organisations.
Supplementary material
To view supplementary material for this article, please visit https://doi.org/10.1017/jsc.2018.11