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首页> 外文期刊>Statistics in medicine >Discriminant analysis using a multivariate linear mixed model with a normal mixture in the random effects distribution.
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Discriminant analysis using a multivariate linear mixed model with a normal mixture in the random effects distribution.

机译:使用在随机效应分布中具有正态混合物的多元线性混合模型进行判别分析。

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摘要

We have developed a method to longitudinally classify subjects into two or more prognostic groups using longitudinally observed values of markers related to the prognosis. We assume the availability of a training data set where the subjects' allocation into the prognostic group is known. The proposed method proceeds in two steps as described earlier in the literature. First, multivariate linear mixed models are fitted in each prognostic group from the training data set to model the dependence of markers on time and on possibly other covariates. Second, fitted mixed models are used to develop a discrimination rule for future subjects. Our method improves upon existing approaches by relaxing the normality assumption of random effects in the underlying mixed models. Namely, we assume a heteroscedastic multivariate normal mixture for random effects. Inference is performed in the Bayesian framework using the Markov chain Monte Carlo methodology. Software has been written for the proposed method and it is freely available. The methodology is applied to data from the Dutch Primary Biliary Cirrhosis Study.
机译:我们已经开发出一种方法,可以使用纵向观察到的与预后相关的标志物值将受试者纵向分为两个或多个预后组。我们假设知道受试者分配给预后组的训练数据集的可用性。所提出的方法分两步进行,如文献先前所述。首先,从训练数据集中将多元线性混合模型拟合到每个预后组中,以对标记对时间和可能的其他协变量的依赖性进行建模。第二,拟合的混合模型用于为将来的主题制定判别规则。我们的方法通过放宽底层混合模型中随机效应的正态性假设来改进现有方法。即,我们假定随机效应为异方差多元正态混合物。使用马尔可夫链蒙特卡洛方法在贝叶斯框架中进行推理。已经为所建议的方法编写了软件,并且可以免费获得。该方法适用于荷兰原发性胆汁性肝硬化研究的数据。

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