通过分层模型综合专家判断:在医生人员配置中的应用

Combining Expert Judgment by Hierarchical Modeling: An Application to Physician Staffing

Management Science · 1998
被引 43
人大 A+FT50UTD24ABS 4*

中文导读

提出基于贝叶斯分层模型的方法来综合专家判断,应用于美国退伍军人事务部医疗中心的医生人员配置问题,首次对医疗资源评估中的专家判断过程进行统计处理。

Abstract

Expert panels are playing an increasingly important role in U.S. health policy decision making. A fundamental issue in these applications is how to synthesize the judgments of individual experts into a group judgment. In this paper we propose an approach to synthesis based on Bayesian hierarchical models, and apply it to the problem of determining physician staffing at medical centers operated by the U.S. Department of Veteran Affairs (VA). Our starting point is the supra-Bayesian approach to synthesis, whose principal motivation in the present context is to generate an estimate of the uncertainty associated with a panel's evaluation of the number of physicians required under specified conditions. Hierarchical models are particularly natural in this context since variability in the experts' judgments results in part from heterogeneity in their baseline experiences at different VA medical centers. We derive alternative hierarchical Bayes synthesis distributions for the number of physicians required to handle the (service-mix specific) daily workload in internal medicine at a given VA medical center (VAMC). The analysis appears to be the first to provide a statistical treatment of expert judgment processes for evaluating the appropriate use of resources in health care. Also, while hierarchical models are well established, their application to the synthesis of expert judgment is novel.

专家判断合成贝叶斯分层模型医师人员配置退伍军人事务部