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首页> 外文期刊>Statistics in medicine >A mixture model for the joint analysis of latent developmental trajectories and survival.
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A mixture model for the joint analysis of latent developmental trajectories and survival.

机译:用于潜在发展轨迹和生存率联合分析的混合模型。

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摘要

A general joint modeling framework is proposed that includes a parametric stratified survival component for continuous time survival data, and a mixture multilevel item response component to model latent developmental trajectories given mixed discrete response data. The joint model is illustrated in a real data setting, where the utility of longitudinally measured cognitive function as a predictor for survival is investigated in a group of elderly persons. The object is partly to determine whether cognitive impairment is accompanied by a higher mortality rate. Time-dependent cognitive function is measured using the generalized partial credit model given occasion-specific mini-mental state examination response data. A parametric survival model is applied for the survival information, and cognitive function as a continuous latent variable is included as a time-dependent explanatory variable along with other explanatory information. A mixture model is defined, which incorporates the latent developmental trajectory and the survival component. The mixture model captures the heterogeneity in the developmental trajectories that could not be fully explained by the multilevel item response model and other explanatory variables. A Bayesian modeling approach is pursued, where a Markov chain Monte Carlo algorithm is developed for simultaneous estimation of the joint model parameters. Practical issues as model building and assessment are addressed using the DIC and various posterior predictive tests.
机译:提出了一个通用的联合建模框架,该框架包括用于连续时间生存数据的参数分层生存组件,以及用于在给定混合离散响应数据的情况下对潜在发展轨迹进行建模的混合多级项目响应组件。在真实数据设置中说明了联合模型,其中在一组老年人中研究了纵向测量的认知功能作为生存预测因子的效用。目的部分在于确定认知障碍是否伴随较高的死亡率。时间给定的认知功能是使用给定的特定场合的迷你心理状态检查响应数据使用广义的部分信用模型来衡量的。将参数生存模型应用于生存信息,并将认知功能作为连续的潜在变量与其他解释信息一起作为时间依赖的解释变量包括在内。定义了一个混合模型,其中包含了潜在的发展轨迹和生存成分。混合模型捕获了发展轨迹中的异质性,这是多级项目响应模型和其他解释变量无法完全解释的。追求贝叶斯建模方法,其中开发了马尔可夫链蒙特卡罗算法来同时估计联合模型参数。使用DIC和各种后验预测测试解决了模型构建和评估等实际问题。

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