How robust is the association between smoking and depression in adults? A meta-analysis using linear mixed-effects models

心理信息 荟萃分析 萧条(经济学) 医学 优势比 可能性 戒烟 横断面研究 临床心理学 随机效应模型 精神科 心理学 人口学 梅德林 逻辑回归 内科学 病理 政治学 法学 经济 宏观经济学 社会学
作者
Tana M. Luger,Jerry Suls,Mark W. Vander Weg
出处
期刊:Addictive Behaviors [Elsevier]
卷期号:39 (10): 1418-1429 被引量:170
标识
DOI:10.1016/j.addbeh.2014.05.011
摘要

Our objective was to use meta-analytic techniques to assess the strength of the overall relationship and role of potential moderators in the association between smoking and depression in adults.Two popular health and social science databases (PubMed and PsycINFO) were systematically searched to identify studies which examined the association between adult smoking behavior and major depressive disorder (MDD) or depressive symptoms. A total of 85 relevant studies were selected for inclusion. Studies were analyzed using a linear mixed effects modeling package ("lme4" for R) and the Comprehensive Meta-Analysis program version 2.Multiple nested linear mixed-effects models were compared. The best fitting models were those that included only random study effects and smoking status. In cross-sectional studies, current smokers were more likely to be depressed than never smokers (OR=1.50, CI=1.39-1.60), and current smokers were more likely to be depressed than former smokers (OR=1.76, CI=1.48-2.09). The few available prospective studies, that used the requisite statistical adjustments, also showed smokers at baseline had greater odds of incident depression at follow-up than never smokers (OR=1.62, CI=1.10-2.40).In cross-sectional studies, smoking was associated with a nearly two-fold increased risk of depression relative to both never smokers and former smokers. In the smaller set of prospective studies, the odds of subsequent depression were also higher for current than never smokers. Attesting to its robustness, the relationship between smoking and depression was exhibited across several moderators. Findings could help health care providers to more effectively anticipate co-occurring health issues of their patients. Several methodological recommendations for future research are offered.
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