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A nonlinear latent class model for joint analysis of multivariate longitudinal data and a binary outcome.

机译:用于对多元纵向数据和二进制结果进行联合分析的非线性潜在类模型。

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摘要

We consider a joint model for exploring association between several correlated longitudinal markers and a clinical event. A nonlinear growth mixture model exhibits the different latent classes of evolution of the latent quantity underlying the correlated longitudinal markers and a logistic regression models the probability of occurence of the clinical event according to the latent classes. By introducing a flexible nonlinear transformation including parameters to be estimated between each marker and the latent process, the model also deals with non-Gaussian continuous markers. Through an application on cognitive ageing, the two advantages of the model are underlined: (1) the latent profiles of evolution associated with the clinical event are described including covariate effects in the longitudinal model but also in the probability of class membership and in the probability of occurence of the event, and (2) a diagnostic and a prognostic tools are derived from the model for early detection of the clinical event using any available information about the longitudinal markers.
机译:我们考虑了一个联合模型,用于探索几个相关的纵向标志物与临床事件之间的关联。非线性增长混合模型显示了相关纵向标记背后潜在量的不同潜在演化类别,而逻辑回归模型根据潜在类别对临床事件发生的概率进行了建模。通过引入灵活的非线性变换,包括要在每个标记和潜在过程之间估计的参数,该模型还可以处理非高斯连续标记。通过应用认知老龄化,该模型的两个优点得到了强调:(1)描述了与临床事件相关的潜在进化特征,包括纵向模型中的协变量效应,以及类成员的概率和概率。 (2)使用有关纵向标记的任何可用信息从模型中导出诊断和预后工具,以用于临床事件的早期检测。

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