Stochastic Modeling of Multi-state Disease Dynamics under Random Environments

M. Manoharan, T. D. Xavier
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Abstract

This paper presents the application of Semi-Markov decision Process(SMDP) for a multi-state disease under random environments to determine the optimal treatment strategy. The subject/patient lives in varying random environments, imparting significant effects on performance/health status. While the environment evolves according to a Semi-Markov Process, in each environment state, the subject goes through several states of disease according to a Semi-Markov Process. In an environment 'k' when the patient state is 'i', one of the following two actions are available: continue the present treatment strategy (C) with a given cost rate hk(i) or initiate a rejuvenating treatment strategy (R) with a cost rate ck(i). In this complex model the optimal strategy is found out minimizing the expected discounted total cost. A special case of Markov environment is discussed indicating the feasibility of the computation of optimal policy. A numerical illustration is also provided to support the viability of the analysis and results. The model provides a useful and flexible representation of acute and chronic events and can be used to explore the economic impact of changes in therapy.
随机环境下多态疾病动力学的随机建模
本文将半马尔可夫决策过程(SMDP)应用于随机环境下的多状态疾病,以确定最优治疗策略。受试者/患者生活在不同的随机环境中,对表现/健康状况产生重大影响。当环境根据半马尔可夫过程演变时,在每个环境状态中,受试者根据半马尔可夫过程经历几种疾病状态。在环境“k”中,当患者状态为“i”时,可采取以下两种行动之一:以给定的成本率hk(i)继续当前的治疗策略(C)或以成本率ck(i)启动恢复治疗策略(R)。在这个复杂的模型中,找到了使期望折现总成本最小化的最优策略。讨论了马尔可夫环境下的一个特例,说明了最优策略计算的可行性。数值说明也提供了支持可行性的分析和结果。该模型为急性和慢性事件提供了有用和灵活的表示,可用于探索治疗变化的经济影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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