Modelling Healthcare Demand Count Data with Excessive Zeros and Overdispersion

IF 1.9 4区 经济学 Q2 ECONOMICS
Myung Hyun Park, Joseph H. T. Kim
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引用次数: 1

Abstract

ABSTRACT In healthcare economics count datasets often exhibit excessive zeros or right-skewed tails. When covariates are available, such datasets are typically modelled using the zero-inflated (ZI) or finite mixture (FM) regression models. However, neither model performs adequately when the dataset has both excessive zeros and a long tail, which is often the case in practice. In this paper we combine these two models to create a more flexible, versatile class of ZIFM models. With this model we perform a comprehensive analysis on the number of visits to a physician’s office using the US healthcare demand dataset that has been used in numerous healthcare studies in the literature. After comparing to other existing models which have been reported to perform well on this dataset, we find that the ZIFM model substantially outperforms alternative models. In addition, the model offers a new interpretation that is in contrast to previous empirical findings regarding the factors associated with the demand for the physicians, which can shed a fresh light on the healthcare utilisation policies.
有过零和过分散的医疗保健需求计数数据建模
在医疗经济学中,计数数据集经常表现出过多的零或右偏尾。当协变量可用时,这些数据集通常使用零膨胀(ZI)或有限混合(FM)回归模型建模。然而,当数据集有过多的零和长尾时,这两种模型都不能很好地执行,这在实践中经常出现。在本文中,我们将这两个模型结合起来创建一个更灵活、更通用的ZIFM模型类。有了这个模型,我们使用美国医疗保健需求数据集对医生办公室的就诊次数进行了全面分析,该数据集已在文献中的许多医疗保健研究中使用。在与其他已报道在该数据集上表现良好的现有模型进行比较后,我们发现ZIFM模型实质上优于替代模型。此外,该模型提供了一个新的解释,这是在对比以往的实证研究结果,关于对医生的需求相关的因素,这可以在医疗保健利用政策的新光。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
12
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