Objective Selection for Cancer Treatment: An Inverse Optimization Approach

Oper. Res. Pub Date : 2022-01-06 DOI:10.1287/opre.2021.2192
T. Ajayi, Taewoo Lee, A. Schaefer
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引用次数: 8

Abstract

The quality of radiation therapy treatment plans and the efficiency of the planning process are heavily affected by the choice of planning objectives. Although simple objectives enable efficient treatment planning, the resulting treatment quality might not be clinically acceptable; complex objectives can generate high-quality treatment, yet the planning process becomes computationally prohibitive. In “Objective Selection for Cancer Treatment: An Inverse Optimization Approach,” by integrating inverse optimization and feature selection techniques, Ajayi, Lee, and Schaefer propose a novel objective selection method that uses historical radiation therapy treatment data to infer a set of planning objectives that are tractable and parsimonious yet clinically effective. Although the objective selection problem is a large-scale bilevel mixed-integer program, the authors propose various solution approaches inspired by feature selection greedy algorithms and patient-specific anatomical characteristics.
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肿瘤治疗的目的选择:一种逆优化方法
放射治疗计划的质量和计划过程的效率在很大程度上取决于计划目标的选择。虽然简单的目标使有效的治疗计划,由此产生的治疗质量可能不被临床接受;复杂的目标可以产生高质量的治疗,但规划过程变得难以计算。在“癌症治疗的客观选择:一种反向优化方法”中,Ajayi, Lee和Schaefer通过整合逆优化和特征选择技术,提出了一种新的客观选择方法,该方法使用历史放射治疗数据来推断一组易于处理和简约但临床有效的计划目标。虽然客观选择问题是一个大规模的两层混合整数规划,但作者根据特征选择贪婪算法和患者特异性解剖特征提出了多种解决方法。
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