生活满意度
社会支持
心理学
心理健康
静载荷
幸福
公共卫生
农村地区
老年学
社会心理学
医学
精神科
病理
护理部
神经科学
心理治疗师
作者
Kehan Mei,Feng Zhang,Jiatian Zhang,Hua Ming,Ying Jiang,Silin Huang
摘要
Abstract Purpose Previous studies have demonstrated that early adolescents residing in chaotic households experience adverse health and well‐being outcomes. However, the potential protective factors that mitigate the relationship between household chaos and early adolescents' health and well‐being remain unknown. Accordingly, this study aims to investigate whether perceived social support moderates the link between household chaos and the health and well‐being among Chinese rural early adolescents. Methods Physical health difficulties were assessed using two measures: general health and allostatic load (AL). Mental health difficulties were measured by depression. Well‐being was reflected by life satisfaction. Specifically, this study included early adolescents ( N = 337; M age = 10.88 ± 1.36 years) from rural counties in China who reported their household chaos, perceived social support, general health, depression, and life satisfaction. AL scores were determined based on six physiological indices. Results Household chaos exhibited a negative relationship with the general health and life satisfaction while a positive correlation with depression. Moreover, perceived social support was found to moderate the association between household chaos and these health and well‐being indicators of early adolescents. Specifically, early adolescents who reported higher levels of perceived social support exhibited weaker negative connections among household chaos and their general health, depression, and life satisfaction. Furthermore, no significant relationships were observed between the adolescents' AL and household chaos, perceived social support, or their interactions. Conclusions Household chaos poses a significant risk to health and well‐being. Furthermore, the findings indicate that perceived social support can mitigate these negative effects.
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