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Markov Decision Process Modeling for Multi-stage Optimization of Intervention and Treatment Strategies in Breast Cancer

机译:乳腺癌干预和治疗策略多阶段优化的马尔可夫决策过程建模

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The breast cancer is a prevalent problem that undermines quality of patients’ lives and causes significant impacts on psychosocial wellness. Advanced sensing provides unprecedented opportunities to develop smart cancer care. The available sensing data captured from individuals enable the extraction of information pertinent to the breast cancer conditions to construct efficient and personalized intervention and treatment strategies. This research develops a novel sequential decision-making framework to determine optimal intervention and treatment planning for breast cancer patients. We design a Markov decision process (MDP) model for both objectives of intervention and treatment costs as well as quality adjusted life years (QALYs) with the data-driven and state-dependent intervention and treatment actions. The state space is defined as a vector of age, health status, prior intervention, and treatment plans. Also, the action space includes wait, prophylactic surgery, radiation therapy, chemotherapy, and their combinations. Experimental results demonstrate that prophylactic mastectomy and chemotherapy are more effective than other intervention and treatment plans in minimizing the expected cancer cost of 25 to 60 years-old patient with in-situ stage of cancer. However, wait policy leads to an optimal quality of life for a patient with the same state. The proposed MDP framework can also be generally applicable to a variety of medical domains that entail evidence-based decision making.
机译:乳腺癌是一个普遍存在的问题,它损害了患者的生活质量,并严重影响了心理社会健康。先进的传感技术为开发智能癌症护理提供了前所未有的机会。从个体捕获的可用传感数据能够提取与乳腺癌状况有关的信息,以构建有效的个性化干预和治疗策略。这项研究开发了一种新颖的顺序决策框架,以确定针对乳腺癌患者的最佳干预和治疗计划。我们针对干预和治疗成本以及质量调整生命年(QALYs)的目标设计了马尔可夫决策过程(MDP)模型,该模型具有数据驱动的和取决于状态的干预和治疗措施。状态空间被定义为年龄,健康状况,先前的干预措施和治疗计划的向量。此外,行动空间还包括等待,预防性手术,放射疗法,化学疗法及其组合。实验结果表明,预防性乳房切除术和化学疗法比其他干预和治疗计划更有效地降低了25至60岁原位癌患者的预期癌症费用。但是,等待策略可为处于相同状态的患者带来最佳的生活质量。提议的MDP框架通常还可以应用于需要基于证据的决策的各种医学领域。

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