萧条(经济学)
优势比
医学
病人健康调查表
横断面研究
可能性
人口
置信区间
逻辑回归
重性抑郁发作
人口学
精神科
环境卫生
抑郁症状
焦虑
内科学
社会学
病理
经济
认知
宏观经济学
作者
Brendon Stubbs,Davy Vancampfort,Nicola Veronese,Kai G. Kahl,Alex J. Mitchell,P-Y Lin,P.-T. Tseng,James Mugisha,Marco Solmi,André F. Carvalho,Ai Koyanagi
标识
DOI:10.1017/s0033291717000551
摘要
Background Despite the known heightened risk and burden of various somatic diseases in people with depression, very little is known about physical health multimorbidity (i.e. two or more physical health co-morbidities) in individuals with depression. This study explored physical health multimorbidity in people with clinical depression, subsyndromal depression and brief depressive episode across 43 low- and middle-income countries (LMICs). Method Cross-sectional, community-based data on 190 593 individuals from 43 LMICs recruited via the World Health Survey were analysed. Multivariable logistic regression analysis was done to assess the association between depression and physical multimorbidity. Results Overall, two, three and four or more physical health conditions were present in 7.4, 2.4 and 0.9% of non-depressive individuals compared with 17.7, 9.1 and 4.9% among people with any depressive episode, respectively. Compared with those with no depression, subsyndromal depression, brief depressive episode and depressive episode were significantly associated with 2.62, 2.14 and 3.44 times higher odds for multimorbidity, respectively. A significant positive association between multimorbidity and any depression was observed across 42 of the 43 countries, with particularly high odds ratios (ORs) in China (OR 8.84), Laos (OR 5.08), Ethiopia (OR 4.99), the Philippines (OR 4.81) and Malaysia (OR 4.58). The pooled OR for multimorbidity and depression estimated by meta-analysis across 43 countries was 3.26 (95% confident interval 2.98–3.57). Conclusions Our large multinational study demonstrates that physical health multimorbidity is increased across the depression spectrum. Public health interventions are required to address this global health problem.
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