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Identifying and interpreting subgroups in health care utilization data with count mixture regression models

机译:用计数混合回归模型识别和解释医疗保健利用数据的子组

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摘要

Inpatient care is a large share of total health care spending, making analysis of inpatient utilization patterns an important part of understanding what drives health care spending growth. Common features of inpatient utilization measures such as length of stay and spending include zero inflation, overdispersion, and skewness, all of which complicate statistical modeling. Moreover, latent subgroups of patients may have distinct patterns of utilization and relationships between that utilization and observed covariates. In this work, we apply and compare likelihood‐based and parametric Bayesian mixtures of negative binomial and zero‐inflated negative binomial regression models. In a simulation, we find that the Bayesian approach finds the true number of mixture components more accurately than using information criteria to select among likelihood‐based finite mixture models. When we apply the models to data on hospital lengths of stay for patients with lung cancer, we find distinct subgroups of patients with different means and variances of hospital days, health and treatment covariates, and relationships between covariates and length of stay.
机译:住院护理是一大堆卫生保健支出,对住院利用模式进行分析,了解有什么重要的一部分,了解如何推动医疗保健支出增长。住院时间长度和支出长度和支出的常见特征包括零充气,过度分散和偏振,所有这些都是复杂的统计建模。此外,患者的潜在亚组可能具有不同的利用模式和这种利用与观察协变量之间的关系。在这项工作中,我们申请并比较了负二项式和零膨胀负二进制回归模型的似然和参数贝叶斯混合物。在模拟中,我们发现贝叶斯方法比使用信息标准在基于似然的有限混合物模型中选择真正的混合组件的真正数量。当我们将模型应用于肺癌患者的医院住院时间的数据时,我们发现不同手段和医院日,健康和治疗协变量的患者的不同亚组,以及协变量和逗留时间之间的关系。

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