社会支持
自我效能感
路径分析(统计学)
医学
自我管理
临床心理学
疾病
心理学
老年学
社会心理学
内科学
数学
计算机科学
统计
机器学习
作者
Elliane Irani,Scott Emory Moore,Ronald L. Hickman,Mary A. Dolansky,Richard Josephson,Joel W. Hughes
标识
DOI:10.1097/jcn.0000000000000581
摘要
Living arrangements, social support, and self-efficacy have significant implications for self-management science. Despite the theoretical linkages among the 3 concepts, there is limited empirical evidence about their interplay and the subsequent influence on heart failure (HF) self-management.The aim of this study was to validate components of the Individual and Family Self-management Theory among individuals with HF.This is a secondary analysis of cross-sectional data generated from a sample of 370 individuals with HF. A path analysis was conducted to examine the indirect and direct associations among social environment (living arrangements), social facilitation (social support) and belief (self-efficacy) processes, and self-management behaviors (HF self-care maintenance) while accounting for individual and condition-specific factors (age, sex, race, and HF disease severity).Three contextual factors (living arrangements, age, and HF disease severity) had direct associations with perceived social support and self-efficacy, which in turn were positively associated with HF self-management behaviors. Living alone (β = -.164, P = .001) was associated with lower perceived social support, whereas being an older person (β = .145, P = .004) was associated with better support. Moderate to severe HF status (β = -.145, P = .004) or higher levels of perceived social support (β = .153, P = .003) were associated with self-efficacy.Our results support the Individual and Family Self-management Theory, highlighting the importance of social support and self-efficacy to foster self-management behaviors for individuals with HF. Future research is needed to further explore relationships among living arrangements, perceived and received social support, self-efficacy, and HF self-management.
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