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首页> 外文期刊>Cancer epidemiology >Self-efficacy difference among patients with cancer with different socioeconomic status: Application of latent class analysis and standardization and decomposition analysis
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Self-efficacy difference among patients with cancer with different socioeconomic status: Application of latent class analysis and standardization and decomposition analysis

机译:不同社会经济地位的癌症患者的自我效能差异:潜在类别分析和标准化与分解分析的应用

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摘要

Introduction: Although the relationship between partial socioeconomic status (SES) and self-efficacy has been studied in previous studies, few research have examined self-efficacy difference among patients with cancer with different SES. Methods: A cross-sectional survey involving 764 patients with cancer was completed. Latent class analysis (LCA) was applied to identify distinct groups of patients with cancer using four SES indicators (education, income, employment status and health insurance status). Standardization and decomposition analysis (SDA) was then used to examine differences in patients' self-efficacy among SES groups and the components of the differences attributed to confounding factors, such as gender, age, anxiety, depression and social support. Results: Participants were classified into four distinctive SES groups via using LCA method, and the observed self-efficacy level significantly varied by SES groups; as theorized, higher self-efficacy was associated with higher SES. The self-efficacy differences by SES groups were decomposed into "real" group differences and factor component effects that are attributed to group differences in confounding factor compositions. Conclusion: Self-efficacy significantly varies by SES. Social support significantly confounded the observed differences in self-efficacy between different SES groups among Chinese patients with cancer.
机译:简介:尽管在先前的研究中已经研究了部分社会经济地位(SES)与自我效能之间的关系,但很少有研究检查了具有不同SES的癌症患者之间的自我效能差异。方法:完成一项涉及764例癌症患者的横断面调查。应用潜在类别分析(LCA),使用四个SES指标(教育,收入,就业状况和健康保险状况)来识别不同类型的癌症患者。然后使用标准化和分解分析(SDA)来检查SES组之间患者自我效能的差异以及归因于性别,年龄,焦虑,抑郁和社会支持等混杂因素的差异的组成部分。结果:采用LCA方法将参与者分为四个独特的SES组,观察到的自我效能水平因SES组而有显着差异。从理论上讲,较高的自我效能感与较高的SES有关。 SES组的自我效能差异被分解为“真实”组差异和因素成分影响,这些因素归因于混杂因素组成中的组差异。结论:自我效能因SES而有显着差异。社会支持显着混淆了中国癌症患者不同SES组之间观察到的自我效能差异。

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