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首页> 外文期刊>Journal of applied statistics >Multivariate generalized linear mixed models with random intercepts to analyze cardiovascular risk markers in type-1 diabetic patients
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Multivariate generalized linear mixed models with random intercepts to analyze cardiovascular risk markers in type-1 diabetic patients

机译:具有随机截距的多元广义线性混合模型可分析1型糖尿病患者的心血管危险标志

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摘要

Statistical approaches tailored to analyzing longitudinal data that have multiple outcomes with different distributions are scarce. This paucity is due to the non-availability of multivariate distributions that jointly model outcomes with different distributions other than the multivariate normal. A plethora of research has been done on the specific combination of binary-Gaussian bivariate outcomes but a more general approach that allows other mixtures of distributions for multiple longitudinal outcomes has not been thoroughly demonstrated and examined. Here, we study a multivariate generalized linear mixed models approach that jointly models multiple longitudinal outcomes with different combinations of distributions and incorporates the correlations between the various outcomes through separate yet correlated random intercepts. Every outcome is linked to the set of covariates through a proper link function that allows the incorporation and joint modeling of different distributions. A novel application was demonstrated on a cohort study of Type-1 diabetic patients to jointly model a mix of longitudinal cardiovascular outcomes and to explore for the first time the effect of glycemic control treatment, plasma prekallikrein biomarker, gender and age on cardiovascular risk factors collectively.
机译:缺乏专门用于分析纵向数据的统计方法,这些纵向数据具有多个分布不同的结果。这种缺乏是由于无法使用多元分布共同建模具有除多元正态之外的不同分布的结果的多元分布。关于二元-高斯双变量结果的特定组合,已经进行了大量研究,但是还没有充分证明和研究允许更多种多样的纵向结果的更一般的方法。在这里,我们研究了一种多元广义线性混合模型方法,该方法联合对具有不同分布组合的多个纵向结果进行建模,并通过单独但相关的随机截距合并了各种结果之间的相关性。每个结果都通过适当的链接函数链接到协变量集,该链接函数允许对不同分布进行合并和联合建模。在一项针对1型糖尿病患者的队列研究中证明了一种新的应用,该模型可共同模拟纵向心血管疾病预后,并首次探索血糖控制治疗,血浆前激肽释放酶生物标志物,性别和年龄对心血管危险因素的影响。

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