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Bayesian meta-analysis for longitudinal data models using multivariate mixture priors.

机译:使用多元混合先验的纵向数据模型的贝叶斯荟萃分析。

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摘要

We propose a class of longitudinal data models with random effects that generalizes currently used models in two important ways. First, the random-effects model is a flexible mixture of multivariate normals, accommodating population heterogeneity, outliers, and nonlinearity in the regression on subject-specific covariates. Second, the model includes a hierarchical extension to allow for meta-analysis over related studies. The random-effects distributions are decomposed into one part that is common across all related studies (common measure), and one part that is specific to each study and that captures the variability intrinsic between patients within the same study. Both the common measure and the study-specific measures are parameterized as mixture-of-normals models. We carry out inference using reversible jump posterior simulation to allow a random number of terms in the mixtures. The sampler takes advantage of the small number of entertained models. The motivating application is the analysis of twostudies carried out by the Cancer and Leukemia Group B (CALGB). In both studies, we record for each patient white blood cell counts (WBC) over time to characterize the toxic effects of treatment. The WBCs are modeled through a nonlinear hierarchical model that gathers the information from both studies.
机译:我们提出了一类具有随机效应的纵向数据模型,该模型以两种重要方式概括了当前使用的模型。首先,随机效应模型是多元正态变量的灵活混合,在特定于受试者的协变量回归中适应了种群异质性,离群值和非线性。其次,该模型包括分层扩展,以允许对相关研究进行荟萃分析。随机效应分布分解为所有相关研究(通用度量)中相同的部分,以及每个研究特有的一部分,该部分捕获了同一研究中患者之间固有的变异性。通用度量和研究专用度量均被参数化为法线混合模型。我们使用可逆的跳跃后验模拟进行推理,以允许混合物中出现随机数量的项。采样器利用了少量的娱乐模型。激励应用是对癌症和白血病B组(CALGB)进行的两项研究进行分析。在两项研究中,我们随时间记录每位患者的白细胞计数(WBC),以表征治疗的毒性作用。通过非线性分级模型对WBC进行建模,该非线性分级模型收集了两项研究的信息。

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