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Dynamic Learning of Patient Response Types: An Application to Treating Chronic Diseases

机译:动态学习患者反应类型:在治疗慢性疾病中的应用

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摘要

Currently available medication for treating many chronic diseases is often effective only for a subgroup of patients, and biomarkers accurately assessing whether an individual belongs to this subgroup typically do not exist. In such settings, physicians learn about the effectiveness of a drug primarily through experimentation, i.e., by initiating treatment and monitoring the patient’s response. Precise guidelines for discontinuing treatment are often lacking or left entirely to the physician’s discretion. We introduce a framework for developing adaptive, personalized treatments for such chronic diseases. Our model is based on a continuous-time, multi-armed bandit setting where drug effectiveness is assessed by aggregating information from several channels: by continuously monitoring the state of the patient, but also by (not) observing the occurrence of particular infrequent health events, such as relapses or disease flare-ups. Recognizing that the timing and severity of such events provides critical information for treatment decisions is a key point of departure in our framework compared with typical (bandit) models used in healthcare. We show that the model can be analyzed in closed form for several settings of interest, resulting in optimal policies that are intuitive and may have practical appeal. We illustrate the effectiveness of the methodology by developing a set of efficient treatment policies for multiple sclerosis, which we then use to benchmark several existing treatment guidelines.
机译:目前可用于治疗许多慢性疾病的药物通常仅对一部分患者有效,而准确地评估个体是否属于该亚组的生物标志物通常不存在。在这种情况下,医生主要是通过实验来了解药物的有效性,即通过开始治疗并监测患者的反应。通常缺乏精确的指南来终止治疗,或者完全由医师自行决定。我们介绍了开发针对此类慢性疾病的适应性,个性化治疗的框架。我们的模型基于连续时间,多武装匪徒的环境,在该环境中,通过汇总来自多个渠道的信息来评估药物的有效性:通过持续监控患者的状态,但也可以(不)观察特定的罕见健康事件的发生,例如复发或疾病发作。与医疗保健中使用的典型(强盗)模型相比,认识到此类事件的时间和严重性可为治疗决策提供关键信息是我们框架中的关键出发点。我们展示了可以针对几种感兴趣的设置以封闭形式分析模型,从而产生直观且可能具有实际吸引力的最佳策略。我们通过制定一套有效的多发性硬化症治疗策略来说明该方法的有效性,然后将其用于对数种现有治疗指南进行基准测试。

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