Does delay discounting play an etiological role in smoking or is it a consequence of smoking?

Janet Audrain-McGovern, Daniel Rodriguez, Leonard H Epstein, Jocelyn Cuevas, Kelli Rodgers, E Paul Wileyto, Janet Audrain-McGovern, Daniel Rodriguez, Leonard H Epstein, Jocelyn Cuevas, Kelli Rodgers, E Paul Wileyto

Abstract

Although higher delay discounting rates have been linked to cigarette smoking, little is known about the stability of delay discounting, whether delay discounting promotes smoking acquisition, whether smoking contributes to impulsive choices, or if different relationships exist in distinct subgroups. This study sought to fill these gaps within a prospective longitudinal cohort study (N=947) spanning mid-adolescence to young adulthood (age 15-21 years old). Smoking and delay discounting were measured across time. Covariates included peer and household smoking, academic performance, depression, novelty seeking, inattention and hyperactivity/impulsivity symptoms, and alcohol and marijuana use. The associated processes latent growth curve modeling (LGCM) with paths from the delay discounting level factor (baseline measure) and the trend factor (slope) to the smoking trend factor (slope) fit the data well, chi(2)((19,n=947)) =15.37, p=.70, CFI=1.00, RMSEA=0, WRMR=.36. The results revealed that delay discounting did not change significantly across time. Baseline delay discounting had a significant positive effect on smoking trend (beta=.08, z=2.16, p=.03). A standard deviation (SD=1.41) increase in baseline delay discounting resulted in an 11% increase (OR=1.11, 95% CI=1.03, 1.23) in the odds of smoking uptake. The alternative path LCGM revealed that smoking did not significantly impact delay discounting (p's>.05). Growth mixture modeling identified three smoking trajectories: nonsmokers, early/fast smoking adopters, and slow smoking progressors. Delay discounting was higher in the smoking versus nonsmoking trajectories, but did not discriminate between the smoking trajectories, despite different acquisition patterns. Delay discounting may provide a variable by which to screen for smoking vulnerability and help identify subgroups to target for more intensive smoking prevention efforts that include novel behavioral components directed toward aspects of impulsivity.

Figures

Figure 1
Figure 1
The etiological role of delay discounting in smoking acquisition. Note: Associated processes latent growth curve model with standardized path coefficients for significant model paths only, and factor loadings representing 10th grade baseline (0), and the first (3) and second (4) years post high school. DD = delay discounting; MJ = marijuana; DS = depression symptoms; HS = high school. *p<.05, **p<.0001
Figure 2
Figure 2
Smoking trajectories from mid-adolescence to young adulthood.

Source: PubMed

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