利用马尔可夫决策过程方法优化多种方式的癌症治疗

Kelsey Maass;Minsun Kim
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引用次数: 7

摘要

目前有几种不同的治疗方式,如手术、化疗和放疗,用于治疗癌症。通常的做法是结合使用这些方式来最大化临床结果,这通常是通过最大化肿瘤损伤和最小化治疗引起的正常组织副作用之间的平衡来衡量的。然而,在目前的实践中,多模式治疗政策大多是经验性的,因此受到临床医生个人经验和直觉的影响。我们提出了一种使用有限视界马尔可夫决策过程方法的最佳多模态癌症管理的新公式。具体而言,在每个决策阶段,临床医生根据患者的观察状态选择最佳治疗方式,我们将其定义为肿瘤进展和正常组织副作用的结合。治疗方式分为(1)1型,风险高,回报高,但在治疗过程中给药频率受到限制;(2)第2类,风险和回报均低于第1类,但可以不受限制地重复;(3) 3型,不治疗(监测),有可能减少正常组织的副作用,但有恶化肿瘤进展的风险。使用各种直观的凹形奖励函数的数值模拟显示了最优策略的结构见解,并展示了使用严格方法优化多模态癌症管理的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Markov decision process approach to optimizing cancer therapy using multiple modalities
There are several different modalities, e.g. surgery, chemotherapy and radiotherapy, that are currently used to treat cancer. It is common practice to use a combination of these modalities to maximize clinical outcomes, which are often measured by a balance between maximizing tumor damage and minimizing normal tissue side effects due to treatment. However, multi-modality treatment policies are mostly empirical in current practice and are therefore subject to individual clinicians' experiences and intuition. We present a novel formulation of optimal multi-modality cancer management using a finite-horizon Markov decision process approach. Specifically, at each decision epoch, the clinician chooses an optimal treatment modality based on the patient's observed state, which we define as a combination of tumor progression and normal tissue side effect. Treatment modalities are categorized as (1) type 1, which has a high risk and high reward, but is restricted in the frequency of administration during a treatment course; (2) type 2, which has a lower risk and lower reward than type 1, but may be repeated without restriction; and (3) type 3, no treatment (surveillance), which has the possibility of reducing normal tissue side effect at the risk of worsening tumor progression. Numerical simulations using various intuitive, concave reward functions show the structural insights of optimal policies and demonstrate the potential applications of using a rigorous approach to optimizing multi-modality cancer management.
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