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卫生服务研究中的约束优化方法——简介:药物经济学与结果研究国际协会(ISPOR)优化方法新兴良好实践特别工作组报告1

Constrained Optimization Methods in Health Services Research-An Introduction: Report 1 of the ISPOR Optimization Methods Emerging Good Practices Task Force.

作者信息

Crown William, Buyukkaramikli Nasuh, Thokala Praveen, Morton Alec, Sir Mustafa Y, Marshall Deborah A, Tosh Jon, Padula William V, Ijzerman Maarten J, Wong Peter K, Pasupathy Kalyan S

机构信息

OptumLabs, Boston, MA, USA.

Scientific Researcher, Institute of Medical Technology Assessment, Erasmus University Rotterdam, Rotterdam, The Netherlands.

出版信息

Value Health. 2017 Mar;20(3):310-319. doi: 10.1016/j.jval.2017.01.013.

Abstract

Providing health services with the greatest possible value to patients and society given the constraints imposed by patient characteristics, health care system characteristics, budgets, and so forth relies heavily on the design of structures and processes. Such problems are complex and require a rigorous and systematic approach to identify the best solution. Constrained optimization is a set of methods designed to identify efficiently and systematically the best solution (the optimal solution) to a problem characterized by a number of potential solutions in the presence of identified constraints. This report identifies 1) key concepts and the main steps in building an optimization model; 2) the types of problems for which optimal solutions can be determined in real-world health applications; and 3) the appropriate optimization methods for these problems. We first present a simple graphical model based on the treatment of "regular" and "severe" patients, which maximizes the overall health benefit subject to time and budget constraints. We then relate it back to how optimization is relevant in health services research for addressing present day challenges. We also explain how these mathematical optimization methods relate to simulation methods, to standard health economic analysis techniques, and to the emergent fields of analytics and machine learning.

摘要

在患者特征、医疗保健系统特征、预算等限制条件下,为患者和社会提供具有最大可能价值的医疗服务,在很大程度上依赖于结构和流程的设计。此类问题复杂,需要严谨且系统的方法来确定最佳解决方案。约束优化是一组旨在高效且系统地确定在存在既定约束条件下具有多个潜在解决方案的问题的最佳解决方案(最优解)的方法。本报告确定了:1)构建优化模型的关键概念和主要步骤;2)在实际医疗应用中可确定最优解的问题类型;3)针对这些问题的适当优化方法。我们首先提出一个基于“普通”和“重症”患者治疗的简单图形模型,该模型在时间和预算约束下使总体健康效益最大化。然后我们将其与优化在医疗服务研究中如何应对当今挑战的相关性联系起来。我们还解释了这些数学优化方法如何与模拟方法、标准健康经济分析技术以及新兴的分析和机器学习领域相关联。

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