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Using Latent Variable Modeling for Discrete Time Survival Analysis: Examining the Links of Depression to Mortality

机译:使用潜变量建模进行离散时间生存分析:检查抑郁与死亡率的联系

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摘要

Using a latent variable modeling approach to discrete time survival analysis, the dynamics of the relationships of depression and body mass index to mortality are examined with data from the multiwave, nationally representative Health and Retirement Study. A set of medical and demographic variables are employed as time-invariant covariates along with lag-1 depression scores and body mass indexes as time-varying covariates for mortality within an up to 2-year follow-up interval. The results indicate marked links of immediately prior depression levels, as well as notable relations of the body mass indexes, to within-wave mortality in middle-aged and older adults. The approach highlights the benefits of using latent variable modeling for survival analysis, and its findings represent potentially important relationships of clinical and theoretical relevance.
机译:使用潜变量建模方法进行离散时间生存分析,通过多波,具有全国代表性的卫生与退休研究的数据,研究了抑郁症和体重指数与死亡率之间关系的动态。一组医学和人口统计学变量用作时变协变量,以及lag-1抑郁评分和体重指数作为长达2年随访间隔内死亡率的时变协变量。结果表明,中老年人的近期内抑郁水平与体重指数之间的显着关系与潮内死亡率显着相关。该方法强调了使用潜在变量建模进行生存分析的好处,其发现代表了临床和理论相关性的潜在重要关系。

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