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首页> 外文期刊>Substance use & misuse >Bidirectional Influence: A Longitudinal Analysis of Size of Drug Network and Depression Among Inner-City Residents in Baltimore, Maryland
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Bidirectional Influence: A Longitudinal Analysis of Size of Drug Network and Depression Among Inner-City Residents in Baltimore, Maryland

机译:双向影响:马里兰州巴尔的摩市内城市居民药物网络规模和抑郁症的纵向分析

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Background: The prevalence of depression among drug users is high. It has been recognized that drug use behaviors can be influenced and spread through social networks. Objectives: We investigated the directional relationship between social network factors and depressive symptoms among a sample of inner-city residents in Baltimore, MD. Methods: We performed a longitudinal study of four-wave data collected from a network-based HIV/STI prevention intervention for women and network members, consisting of both men and women. Our primary outcome and exposure were depression using CESD scale and social network characteristics, respectively. Linear-mixed model with clustering adjustment was used to account for both repeated measurement and network design. Results: Of the 746 participants, those who had high levels of depression tended to be female, less educated, homeless, smokers, and did not have a main partner. In the univariate longitudinal model, larger size of drug network was significantly associated with depression (OR = 1.38, p < .001). This relationship held after controlling for age, gender, homeless in the past 6 months, college education, having a main partner, cigarette smoking, perceived health, and social support network (aOR = 1.19, p = .001). In the univariate mixed model using depression to predict size of drug network, the data suggested that depression was associated with larger size of drug network (coef. = 1.23, p < .001) and the same relation held in multivariate model (adjusted coef. = 1.08, p = .001). Conclusions: The results suggest that larger size of drug network is a risk factor for depression, and vice versa. Further intervention strategies to reduce depression should address social networks factors.
机译:背景:吸毒者中的抑郁症患病率很高。已经认识到,毒品使用行为可以通过社交网络受到影响和传播。目的:我们调查了马里兰州巴尔的摩市内一个城市居民样本中社交网络因素与抑郁症状之间的定向关系。方法:我们对从网络进行的针对妇女和网络成员(包括男性和女性)的HIV / STI预防干预措施收集的四波数据进行了纵向研究。我们的主要结果和暴露分别是使用CESD量表和社交网络特征的抑郁症。具有聚类调整的线性混合模型用于说明重复测量和网络设计。结果:在746名参与者中,患有抑郁症的人倾向于女性,文化程度较低,无家可归者,吸烟者,并且没有主要伴侣。在单变量纵向模型中,较大的药物网络与抑郁症显着相关(OR = 1.38,p <.001)。在控制了年龄,性别,过去六个月的无家可归者,大学教育,有主要伴侣,吸烟,知觉健康和社会支持网络之后,这种关系得以维持(aOR = 1.19,p = .001)。在使用抑郁预测药物网络规模的单变量混合模型中,数据表明抑郁症与更大的药物网络规模相关(系数= 1.23,p <.001),并且在多元模型中具有相同的关系(调整系数)。 = 1.08,p = 0.001)。结论:结果表明较大的药物网络是抑郁症的危险因素,反之亦然。减少抑郁症的进一步干预策略应解决社交网络因素。

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