卫生技术经济评价模型结构分类法

A taxonomy of model structures for economic evaluation of health technologies

Health Economics · 2006
被引 565 · 同刊同年前 2%
人大 A-

中文导读

提出一种新的模型结构分类法,从随机性、异质性、非马尔可夫结构等维度分类,帮助卫生经济研究者根据输出要求、人口规模和系统复杂性选择合适的模型。

Abstract

Models for the economic evaluation of health technologies provide valuable information to decision makers. The choice of model structure is rarely discussed in published studies and can affect the results produced. Many papers describe good modelling practice, but few describe how to choose from the many types of available models. This paper develops a new taxonomy of model structures. The horizontal axis of the taxonomy describes assumptions about the role of expected values, randomness, the heterogeneity of entities, and the degree of non-Markovian structure. Commonly used aggregate models, including decision trees and Markov models require large population numbers, homogeneous sub-groups and linear interactions. Individual models are more flexible, but may require replications with different random numbers to estimate expected values. The vertical axis of the taxonomy describes potential interactions between the individual actors, as well as how the interactions occur through time. Models using interactions, such as system dynamics, some Markov models, and discrete event simulation are fairly uncommon in the health economics but are necessary for modelling infectious diseases and systems with constrained resources. The paper provides guidance for choosing a model, based on key requirements, including output requirements, the population size, and system complexity.

经济评价模型分类模型结构选择健康技术评估决策树与马尔可夫模型