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Multidimensional dependency subgroups in community-dwelling older adults: A latent class analysis

机译:社区住宅年龄较大的成年人中的多维依赖性亚组:潜在课程分析

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Objectives: Use latent class analysis (LCA) to identify patterns of multidimensional dependency in a sample of older adults and assess sociodemographic, predictors of class membership. Material and methods: Longitudinal data were used from the Mexican Health and Aging Study (MHAS). 7,920 older adults, 55% women, were recruited. LCA were used to identify meaningful subgroups. LCA was conducted using MPlus version. The final class model was chosen based on the comparison of multiple fit statistics and theoretical parsimony, with models of increasing complexity analyzed sequentially until the best fitting model was identified. Covariates were incorporated to explore the association between these variables and class membership. Results: Three classes groups based on the nine indicators were identified: “Active older adults” was comprised of 64% of the sample participants, “Relatively independent” and “Physically impaired” were comprised of 26% and 10% of the sample. The “Active older adults” profile comprised the majority of respondents who exhibited high endorsement rates across all criteria. The profiles of the “Active older adults” and “Relatively independent” were comparatively more uniform. Finally, respondents belonging to the “Physically impaired” profile, the smallest subgroup, encompassed the individuals most susceptible to a poor dependency profile. Conclusions: These findings highlighted the usefulness to adopt a person-centered approach rather than a variable-centered approach, suggesting directions for future research and tailored interventions approaches to older adults with particular characteristics. Based on patterns of multidimensional dependency, this study identified a typology of dependency using data from a large, nationally representative survey.
机译:目标:使用潜在级别分析(LCA)识别老年人样本的多维依赖模式,评估阶级成员资格的社会评估。材料和方法:从墨西哥健康和老化研究中使用纵向数据(MHA)。招募了7,920名老年人,55%妇女。 LCA用于识别有意义的子组。使用Mplus版本进行LCA。基于多种拟合统计和理论分析的比较选择了最终类模型,其模型依次分析了复杂性的模型,直到确定了最佳拟合模型。注册了协变量,探讨这些变量和班级成员之间的关联。结果:确定了基于九个指标的三个课程组:“活跃的老年人”由64%的样本参与者组成,“相对独立”,“物理受损”由26%和10%的样品组成。 “活跃的老年人”个人资料包括大多数受访者,他们在所有标准中表现出高认可率。 “活跃的老年人”和“相对独立”的档案相对更均匀。最后,属于“物理受损”型材的受访者,最小的子群,包括最容易受抚养性差异的个人。结论:这些调查结果强调了采用以人为本的方法而不是可变居中的方法,表明未来研究的指示和定制干预措施对老年人的特殊成年人的方法。基于多维依赖的模式,本研究确定了使用来自大型国家代表性调查的数据的依赖性的类型。

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