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抑郁症家族史能否预测中年女性的重度抑郁症?全国女性健康心理健康研究(SWAN MHS)

Does family history of depression predict major depression in midlife women? Study of Women's Health Across the Nation Mental Health Study (SWAN MHS).

作者信息

Colvin Alicia, Richardson Gale A, Cyranowski Jill M, Youk Ada, Bromberger Joyce T

机构信息

Department of Epidemiology, Graduate School of Public Health, University of Pittsburgh, 3811 O'Hara St., Pittsburgh, PA, 15213, USA.

出版信息

Arch Womens Ment Health. 2014 Aug;17(4):269-78. doi: 10.1007/s00737-014-0433-8. Epub 2014 Jun 21.

Abstract

This study aims to determine whether family history of depression predicts major depression in midlife women independent of psychosocial and health profiles at midlife. Participants were 303 African American and Caucasian women (42-52 years at baseline) recruited into the Study of Women's Health Across the Nation (SWAN) and the Women's Mental Health Study (MHS) in Pittsburgh. Major depression was assessed annually with the Structured Clinical Interview for DSM-IV. Family mental health history was collected at the ninth or tenth follow-up. Multivariable logistic regression was used to determine whether family history of depression predicted major depression in midlife, adjusting for covariates. The odds of experiencing major depression during the study were three times greater for those with a family history than for those without a family history (OR = 3.22, 95% CI = 1.95-5.31). Family history predicted depression (OR = 2.67, 95% CI = 1.50-4.78) after adjusting for lifetime history of depression, age, trait anxiety, chronic medical conditions, and stressful life events. In analyses stratified by lifetime history of depression, family history significantly predicted depression only among women with a lifetime history of depression. Family history of depression predicts major depression in midlife women generally, but particularly in those with a lifetime history of depression prior to midlife.

摘要

本研究旨在确定抑郁症家族史能否独立于中年期的心理社会和健康状况,预测中年女性的重度抑郁症。研究参与者为303名非裔美国人和白人女性(基线年龄42 - 52岁),她们被招募进全国女性健康研究(SWAN)以及匹兹堡的女性心理健康研究(MHS)。每年采用《精神疾病诊断与统计手册》第四版(DSM-IV)的结构化临床访谈来评估重度抑郁症。在第九次或第十次随访时收集家族心理健康史。使用多变量逻辑回归来确定抑郁症家族史能否预测中年期的重度抑郁症,并对协变量进行调整。有家族史者在研究期间经历重度抑郁症的几率是无家族史者的三倍(比值比[OR] = 3.22,95%置信区间[CI] = 1.95 - 5.31)。在对抑郁症终生史、年龄、特质焦虑、慢性疾病和应激性生活事件进行调整后,家族史仍可预测抑郁症(OR = 2.67,95% CI = 1.50 - 4.78)。在按抑郁症终生史分层的分析中,家族史仅在有抑郁症终生史的女性中显著预测抑郁症。抑郁症家族史通常能预测中年女性的重度抑郁症,尤其是在那些中年之前有抑郁症终生史的女性中。

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