Yang Yuhui, Li Yemian, Zhao Peng, Wang Jingxian, Mi Baibing, Pei Leilei, Zhao Yaling, Chen Fangyao
Department of Epidemiology and Biostatistics, School of Public Health, Xi'an Jiaotong University Health Science Center, Xi'an, China.
Department of Radiology, First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, China.
Front Aging Neurosci. 2022 Sep 1;14:934801. doi: 10.3389/fnagi.2022.934801. eCollection 2022.
Studies have suggested that there is a significant association between social engagement and depression symptoms. However, this association may differ in people with different features such as different sociodemographic characteristics and health conditions.
Research data were obtained from the CHARLS database. The causal inference was performed with the propensity score. We used the linear mixed-effects model tree algorithm under the causal inference frame for subgroup identification analysis.
We included 13,521 participants, and the median follow-up time is 4 years. Under the casual inference frame, the association between social engagement and depression symptoms is confirmed for all included individuals (OR = 0.957, = 0.016; 95%CI: 0.923-0.992). Using the linear mixed-effects model tree, we found two subgroups, including middle-aged and elderly residents who live in rural areas with <6 h of sleep and those living in urban areas, could benefit more from social engagement. After using the propensity score method, all the two subgroups selected are statistically significant ( = 0.007; = 0.013) and have a larger effect size (OR = 0.897, 95%CI: 0.830-0.971; OR = 0.916, 95%CI: 0.854-0.981) than the whole participants. As for sex difference, this associations are statistically significant in male (OR: 0.935, = 0.011, 95%CI: 0.888-0.985) but not in female (OR: 0.979, = 0.399, 95%CI: 0.931-1.029).
Our findings indicate that social engagement may reduce the risks of depressive symptoms among all individuals. The identified subgroups of middle-aged and elderly residents who live in rural areas with <6 h of sleep and those who live in urban areas may benefit more from the social engagement than the whole participants.
研究表明社交参与和抑郁症状之间存在显著关联。然而,这种关联在具有不同特征(如不同社会人口学特征和健康状况)的人群中可能有所不同。
研究数据来自中国健康与养老追踪调查(CHARLS)数据库。采用倾向得分进行因果推断。在因果推断框架下,我们使用线性混合效应模型树算法进行亚组识别分析。
我们纳入了13521名参与者,中位随访时间为4年。在因果推断框架下,所有纳入个体的社交参与和抑郁症状之间的关联得到证实(比值比[OR]=0.957,P=0.016;95%置信区间[CI]:0.923 - 0.992)。使用线性混合效应模型树,我们发现两个亚组,包括睡眠不足6小时的农村中年及老年居民和城市居民,他们可能从社交参与中获益更多。使用倾向得分法后,所选的两个亚组均具有统计学意义(P=0.007;P=0.013),且效应量比所有参与者更大(OR=0.897,95%CI:0.830 - 0.971;OR=0.916,95%CI:0.854 - 0.981)。至于性别差异,这种关联在男性中具有统计学意义(OR:0.935,P=0.011,95%CI:0.888 - 0.985),而在女性中无统计学意义(OR:0.979,P=0.399,95%CI:0.931 - 1.029)。
我们的研究结果表明社交参与可能降低所有个体出现抑郁症状的风险。已识别出的睡眠不足6小时的农村中年及老年居民亚组和城市居民亚组可能比所有参与者从社交参与中获益更多。