利用广义计数数据模型对住院概率和住院时长进行建模

Modelling Hospital Admission and Length of Stay by Means of Generalised Count Data Models

Journal of Applied Econometrics · 2015
被引 3
人大 AABS 3

中文导读

使用贝叶斯计数数据模型分析患者个体特征如何影响住院概率和住院时长,发现既往病史增加住院风险,而预防性医疗和康复可缩短住院时间。

Abstract

Summary For a large heterogeneous group of patients, we analyse probabilities of hospital admission and distributional properties of lengths of hospital stay conditional on individual determinants. Bayesian structured additive regression models for zero‐inflated and overdispersed count data are employed. In addition, the framework is extended towards hurdle specifications, providing an alternative approach to cover particularly large frequencies of zero quotes in count data. As a specific merit, the model class considered embeds linear and nonlinear effects of covariates on all distribution parameters. Linear effects indicate that the quantity and severity of prior illness are positively correlated with the risk of hospital admission, while medical prevention (in the form of general practice visits) and rehabilitation reduce the expected length of future hospital stays. Flexible nonlinear response patterns are diagnosed for age and an indicator of a patients' socioeconomic status. We find that social deprivation exhibits a positive impact on the risk of admission and a negative effect on the expected length of future hospital stays of admitted patients. Copyright © 2015 John Wiley & Sons, Ltd.

零膨胀计数模型住院时长贝叶斯结构化加性回归社会剥夺