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Identification of multivariate responders and non-responders by using Bayesian growth curve latent class models

机译:使用贝叶斯增长曲线潜在类模型识别多元反应者和非反应者

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We propose a multivariate growth curve mixture model that groups subjects on the basis of multiple symptoms measured repeatedly overtime. Our model synthesizes features of two models. First, we follow Roy and Lin in relating the multiple symptoms at each time point to a single latent variable. Second, we use the growth mixture model of Muthen and Shedden to group subjects on the basis of distinctive longitudinal profiles of this latent variable. The mean growth curve for the latent variable in each class defines that class's features. For example, a class of 'responders' would have a decline in the latent symptom summary variable over time. A Bayesian approach to estimation is employed where the methods of Elliott and co-workers are extended to estimate simultaneously the posterior distributions of the parameters from the latent variable and growth curve mixture portions of the model. We apply our model to data from a randomized clinical trial evaluating the efficacy of bacillus Calmette-Guerin in treating symptoms of interstitial cystitis. In contrast with conventional approaches using a single subjective global response assessment, we use the multivariate symptom data to identify a class of subjects where treatment demonstrates effectiveness. Simulations are used to confirm identifiability results and to evaluate the performance of our algorithm.
机译:我们提出了一个多变量增长曲线混合模型,该模型根据长时间反复测量的多种症状对受试者进行分组。我们的模型综合了两个模型的功能。首先,我们遵循Roy和Lin的观点,将每个时间点的多种症状与单个潜在变量相关联。其次,我们使用Muthen和Shedden的增长混合模型根据该潜在变量的独特纵向分布对受试者进行分组。每个类别中潜在变量的平均增长曲线定义了该类别的特征。例如,一类“响应者”的潜在症状摘要变量会随着时间的推移而下降。采用贝叶斯估计方法,其中扩展了Elliott和同事的方法,以从模型的潜在变量和生长曲线混合部分同时估计参数的后验分布。我们将我们的模型应用于评估卡介苗治疗间质性膀胱炎症状的随机临床试验数据。与使用单一主观整体反应评估的常规方法相比,我们使用多元症状数据来识别治疗可证明有效的一类受试者。仿真用于确认可识别性结果并评估我们算法的性能。

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