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部分可观测协作模型用于优化个性化治疗选择

Partially observable collaborative model for optimizing personalized treatment selection

European Journal of Operational Research · 2023
被引 6
ABS 4

中文导读

提出部分可观测协作模型(POCM),分三阶段利用群体数据推断疾病进展模式并针对个体微调,基于POMDP制定个性化治疗策略,在模拟慢性抑郁症人群中比传统方法更准确,且能获得最高净货币收益。

Abstract

Precision medicine that enables personalized treatment decision support has become an increasingly important research topic in chronic disease care. The main challenges in designing a treatment algorithm include modeling individual disease progression dynamics and designing adaptive treatment selection strategy. This study aims to develop an adaptive treatment selection framework tailored to an individual patient’s disease progression pattern and treatment response. We propose a Partially Observable Collaborative Model (POCM) to capture the individual variations in a heterogeneous population and optimize treatment outcomes in three stages. The POCM first infers the disease progression models by subgroup patterns using population data in stage one and then fine-tunes the models for individual patients with a small number of treatment trials in stage two. In stage three, we show how the treatment policies based on the Partially Observable Markov Decision Process (POMDP) can be tailored to individual patients by utilizing the disease models learned from the POCM. Using a simulated population of chronic depression patients, we show that the POCM can more accurately estimate the personal disease progression than the traditional method of solving a hidden Markov model. We also compare the POMDP treatment policies with other heuristic policies and demonstrate that the POCM-based policies give the highest net monetary benefits in majority of parameter settings. To conclude, the POCM method is a promising approach to model the chronic disease progression process and recommend a personalized treatment plan for individual patients in a heterogeneous population.

精准医学慢性病管理部分可观测马尔可夫决策过程个性化治疗机器学习