Prevalence and related influencing factors of depressive symptoms among empty-nest elderly in Shanxi, China

2019 
Abstract Background In China, aging has become a serious social problem, and the number of empty-nest elderly is on the rise. The aim of this study is to clarify the prevalence of depressive symptoms among empty-nest elderly in Shanxi province and evaluate the effects of sociodemographic factors and health-promoting lifestyles so as to provide a scientific reference for preventing and intervening their depression. Methods A cross-sectional study, which used a multi-stage random cluster sampling way, was conducted among 4901 empty-nest elderly in Shanxi. An independent t -test and a chi square test were used to compare the sociodemographic factors, depression scores, and health-promoting lifestyle scores of the empty-nest elderly. Multinomial logistic regression was used to analyze the potential influencing factors for depression. Results The prevalence of depressive symptoms in the population was 64.2%. Among all participants 1,776 (36.2%) had mild depression, 1,236 (25.2%) had moderate depression, and 135 (2.8%) had severe depression. The health-promoting lifestyle of the empty nesters in this study was at the medium level (2.51 ± 0.47). Gender, education level, old-age provision model, exercise frequency, chronic disease, relationships with children, self-care ability, and health-promoting lifestyles were found to be influencing factors of depression and all variables had different effects on different degrees of depression. Limitations This was a cross-sectional study, so the results cannot establish causal relationships among the study variables. Conclusions Depression was prevalent among the empty-nest elderly in Shanxi. Maintaining good interpersonal relationships, developing extensive interests, and maintaining healthy lifestyles including good nutrition habits and regular exercises can reduce the incidence of depression among empty nesters.
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