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适应性疼痛管理的决策框架。

A decision-making framework for adaptive pain management.

机构信息

Department of Industrial & Manufacturing Systems Engineering, The University of Texas at Arlington, Arlington, TX, USA,

出版信息

Health Care Manag Sci. 2014 Sep;17(3):270-83. doi: 10.1007/s10729-013-9252-0. Epub 2013 Aug 24.

Abstract

Pain management is a critical international health issue. The Eugene McDermott Center for Pain Management at The University of Texas Southwestern Medical Center conducted a two-stage interdisciplinary pain management program that considers a wide variety of treatments. Prior to treatment (beginning of Stage 1), an evaluation records the patient's pain characteristics, medical history and related health parameters. A treatment regime is then determined. At the midpoint of the program (beginning of Stage 2), an evaluation is conducted to determine if an adjustment in the treatment should be made. A final evaluation is conducted at the end of the program to assess final outcomes. We structure this decision-making process using dynamic programming (DP) to generate adaptive treatment strategies for this two-stage program. An approximate DP solution method is employed in which state transition models are constructed empirically based on data from the pain management program, and the future value function is approximated using state space discretization based on a Latin hypercube design and artificial neural networks. The optimization seeks for treatment plans that minimize treatment dosage and pain levels simultaneously.

摘要

疼痛管理是一个重要的国际健康问题。德克萨斯大学西南医学中心的 Eugene McDermott 疼痛管理中心开展了一个两阶段的跨学科疼痛管理项目,考虑了多种治疗方法。在治疗前(第一阶段开始时),评估记录患者的疼痛特征、病史和相关健康参数。然后确定治疗方案。在项目的中点(第二阶段开始时),进行评估以确定是否需要调整治疗。在项目结束时进行最终评估,以评估最终结果。我们使用动态规划(DP)来构建这个决策过程,为这个两阶段的项目生成自适应的治疗策略。采用了一种近似的 DP 求解方法,其中状态转移模型是根据疼痛管理项目的数据经验构建的,未来值函数是基于拉丁超立方设计和人工神经网络的状态空间离散化来近似的。优化的目标是同时最小化治疗剂量和疼痛水平的治疗方案。

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