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Joint modeling of multiple longitudinal cost outcomes using multivariate generalized linear mixed models

机译:使用多元广义线性混合模型对多个纵向成本结果进行联合建模

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摘要

The common approach to modeling healthcare cost data is to use aggregated total cost from multiple categories or sources (e.g. inpatient, outpatient, prescriptions, etc.) as the dependent variable. However, this approach could hide the differential impact of covariates on the different cost categories. An alternative is to model each cost category separately. This could also lead to wrong conclusions due to failure to account for the interdependence among the multiple cost outcomes. Therefore, we propose a multivariate generalized linear mixed model (mGLMM) that allows for joint modeling of longitudinal cost data from multiple sources. We assessed four different approaches, (1) shared random intercept, (2) shared random intercept and slope, (3) separate random intercepts from a joint multivariate distribution, and (4) separate random intercepts and slopes from a joint multivariate distribution. Each of these approaches differs in the way they account for the correlation among the multiple cost outcomes. Comparison was made via goodness of fit measures and residual plots. Longitudinal cost data from a national cohort of 740,195 veterans with diabetes (followed from 2002-2006) was used to demonstrate joint modeling. Among examined models, the separate random intercept approach exhibited the lowest AIC/BIC in both log-normal and gamma GLMMs. However, for our data example, the shared random intercept approach seemed to be sufficient as the more complex models did not lead to qualitatively different conclusions.
机译:建模医疗保健费用数据的常用方法是使用来自多个类别或来源(例如住院,门诊,处方等)的汇总总费用作为因变量。但是,这种方法可能隐藏协变量对不同成本类别的不同影响。一种替代方法是分别为每个成本类别建模。由于未能考虑多种成本结果之间的相互依赖性,这也可能导致错误的结论。因此,我们提出了多变量广义线性混合模型(mGLMM),该模型允许对来自多个来源的纵向成本数据进行联合建模。我们评估了四种不同的方法,(1)共享随机截距,(2)共享随机截距和斜率,(3)从联合多元分布中分离随机截距,以及(4)从联合多元分布中分离随机截距和斜率。这些方法中的每种方法在考虑多种成本结果之间的相关性方面都不同。通过拟合度和残差图的优劣进行比较。来自全国740,195名患有糖尿病的退伍军人的队列研究的纵向成本数据(自2002年至2006年)用于证明联合建模。在检查的模型中,单独的随机拦截方法在对数正态和伽马GLMM中均表现出最低的AIC / BIC。但是,对于我们的数据示例,由于更复杂的模型并未得出定性不同的结论,因此共享随机拦截方法似乎已足够。

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