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Constructing evidence-based treatment strategies using methods from computer science

机译:使用计算机科学的方法构建循证治疗策略

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摘要

This paper details a new methodology, instance–based reinforcement learning, for constructing adaptive treatment strategies from randomized trials. Adaptive treatment strategies are operationalized clinical guidelines which recommend the next best treatment for an individual based on his/her personal characteristics and response to earlier treatments. The instance-based reinforcement learning methodology comes from the computer science literature, where it was developed to optimize sequences of actions in an evolving, time varying system. When applied in the context of treatment design, this method provides the means to evaluate both the therapeutic and diagnostic effects of treatments in constructing an adaptive treatment strategy. The methodology is illustrated with data from the STAR*D trial, a multi-step randomized study of treatment alternatives for individuals with treatment-resistant major depressive disorder.
机译:本文详细介绍了一种新的方法,基于实例的强化学习,用于根据随机试验构建适应性治疗策略。适应性治疗策略是可操作的临床指南,可根据其个人特征和对早期治疗的反应为患者推荐次佳治疗方案。基于实例的强化学习方法论来自计算机科学文献,在该文献中,它被开发用于在不断发展的时变系统中优化动作序列。当在治疗设计中应用时,该方法提供了在构建适应性治疗策略时评估治疗的治疗和诊断效果的方法。 STAR * D试验的数据说明了该方法,该试验是针对具有治疗抵抗力的重度抑郁症患者的治疗选择的多步骤随机研究。

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