焦虑
萧条(经济学)
横断面研究
优势比
医学
逻辑回归
医院焦虑抑郁量表
置信区间
分层抽样
病人健康调查表
精神科
老年学
人口学
抑郁症状
内科学
病理
社会学
经济
宏观经济学
作者
Zhen-fan He,Wenyan Tan,Huilin Ma,Yuxing Shuai,Zejun Shan,Jiaxiang Zhai,Yifeng Qiu,Honghao Zeng,Xinlin Chen,Sheng Wang,Yu Liu
标识
DOI:10.1016/j.jad.2023.11.022
摘要
To determine the prevalence of depression and anxiety among older adults in China, and explore the associated factors. This cross-sectional study recruited participants between October 2022 and December 2022. The sample collection utilized a multi-stage stratified equal probability random sampling method. This study included 8436 older adults who underwent interviews utilizing standardized assessment instruments. The assessment of depressive symptoms employed the Patient Health Questionnaire 9, while the evaluation of anxiety utilized the Generalized Anxiety Disorder 7. Multivariate logistic regression was conducted to determine the odds ratio and 95 % confidence interval (CI). The weighted prevalence rates for depression and anxiety were 2.79 % (95 % CI: 2.38 %–3.28 %) and 1.39 % (95 % CI: 1.12 %–1.74 %), respectively. Older adults who were female, widowed, had irregular dietary habits, spent <1 h per day using electronic devices for socializing and entertainment, engaged in >8 h of sedentary behavior per day, and had chronic diseases (cardiovascular disease, cerebrovascular disease, insomnia, and Chronic gastroenteritis) displayed a higher likelihood of encountering symptoms indicative of depression and anxiety. Conversely, older adults living in rural areas and those who walked daily were less prone to experience symptoms of depression and anxiety. This study suggests that the psychological well-being of older adults should be cared for when treating chronic diseases. Moreover, families, communities, and clinics should recognize that supporting regular diets, providing social engagement and recreational activities, encouraging physical activity, and minimizing sedentary behavior can reduce the risk of depression and anxiety.
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