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首页> 外文期刊>Value in health: the journal of the International Society for Pharmacoeconomics and Outcomes Research >Application of Constrained Optimization Methods in Health Services Research: Report 2 of the ISPOR Optimization Methods Emerging Good Practices Task Force
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Application of Constrained Optimization Methods in Health Services Research: Report 2 of the ISPOR Optimization Methods Emerging Good Practices Task Force

机译:约束优化方法在卫生服务研究中的应用研究:ISPOR优化方法的报告2新出现良好实践的工作队

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Background: Constrained optimization methods are already widely used in health care to solve problems that represent traditional applications of operations research methods, such as choosing the optimal location for new facilities or making the most efficient use of operating room capacity. Objectives: In this paper we illustrate the potential utility of these methods for finding optimal solutions to problems in health care delivery and policy. To do so, we selected three award-winning papers in health care delivery or policy development, reflecting a range of optimization algorithms. Two of the three papers are reviewed using the ISPOR Constrained Optimization Good Practice Checklist, adapted from the framework presented in the initial Optimization Task Force Report. The first case study illustrates application of linear programming to determine the optimal mix of screening and vaccination strategies for the prevention of cervical cancer. The second case illustrates application of the Markov Decision Process to find the optimal strategy for treating type 2 diabetes patients for hypercholesterolemia using statins. The third paper (described in Appendix 1) is used as an educational tool. The goal is to describe the characteristics of a radiation therapy optimization problem and then invite the reader to formulate the mathematical model for solving it. This example is particularly interesting because it lends itself to a range of possible models, including linear, nonlinear, and mixed-integer programming formulations. From the case studies presented, we hope the reader will develop an appreciation for the wide range of problem types that can be addressed with constrained optimization methods, as well as the variety of methods available. Conclusions: Constrained optimization methods are informative in providing insights to decision makers about optimal target solutions and the magnitude of the loss of benefit or increased costs associated with the ultimate clinical decision or policy choice. Failing to identify a mathematically superior or optimal solution represents a missed opportunity to improve economic efficiency in the delivery of care and clinical outcomes for patients. The ISPOR Optimization Methods Emerging Good Practices Task Force's first report provided an introduction to constrained optimization methods to solve important clinical and health policy problems. This report also outlined the relationship of constrained optimization methods relative to traditional health economic modeling, graphically illustrated a simple formulation, and identified some of the major variants of constrained optimization models, such as linear programming, dynamic programming, integer programming, and stochastic programming. The second report illustrates the application of constrained optimization methods in health care decision making using three case studies. The studies focus on determining optimal screening and vaccination strategies for cervical cancer, optimal statin start times for diabetes, and an educational case to invite the reader to formulate radiation therapy optimization problems. These illustrate a wide range of problem types that can be addressed with constrained optimization methods.
机译:背景:受约束的优化方法已经广泛用于医疗保健,解决代表运营研究方法的传统应用的问题,例如为新设施选择最佳位置或最有效地使用手术室容量。目的:在本文中,我们说明了这些方法对医疗保健交付和政策问题的问题寻找最佳解决方案的潜在效用。为此,我们在医疗保健或政策开发中选择了三篇屡获殊荣的论文,反映了一系列优化算法。使用ISPOR约束优化良好练习清单进行审查三篇论文中的两个,该审查表协助了初始优化任务力报告中呈现的框架。第一种案例研究说明了线性规划的应用,以确定预防宫颈癌的筛选和疫苗接种策略的最佳混合。第二种情况说明了马尔可夫决策过程的应用,以找到使用他汀类药物治疗2型糖尿病患者的最佳策略。第三篇论文(附录1中描述)用作教育工具。目标是描述放射治疗优化问题的特征,然后邀请读者制定用于解决它的数学模型。此示例特别有趣,因为它它自身向一系列可能的型号,包括线性,非线性和混合整数编程配方。从提出的案例研究来看,我们希望读者能够对可以用约束优化方法的各种问题类型进行欣赏,以及可用的各种方法。结论:约束优化方法是对决策者提供了关于最佳目标解决方案的见解以及与终极临床决策或政策选择相关的损失或增加成本的洞察力。未能识别数学上优越或最佳的解决方案代表错失的机会,以提高患者提供​​护理和临床结果的经济效率。 ISPOR优化方法出现了良好的实践工作队的第一个报告提供了一个有限的优化方法,以解决重要的临床和健康政策问题。本报告还概述了相对于传统健康经济建模的受限优化方法的关系,图形说明了简单的配方,并确定了约束优化模型的一些主要变体,例如线性编程,动态编程,整数编程和随机编程。第二次报告说明了使用三种案例研究的受约束优化方法在医疗决策中的应用。研究专注于确定宫颈癌的最佳筛查和疫苗接种策略,糖尿病的最佳汀类药物开始时间,以及邀请读者制定放射治疗优化问题的教育案例。这些说明了可以通过约束优化方法寻址的广泛的问题类型。

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