Informing sequential clinical decision-making through reinforcement learning: an empirical study

被引:0
|
作者
Susan M. Shortreed
Eric Laber
Daniel J. Lizotte
T. Scott Stroup
Joelle Pineau
Susan A. Murphy
机构
[1] McGill University,School of Computer Science
[2] University of Michigan,Department of Statistics
[3] NYS Psychiatric Institute,undefined
来源
Machine Learning | 2011年 / 84卷
关键词
Optimal treatment policies; Fitted Q-iteration; Policy uncertainty;
D O I
暂无
中图分类号
学科分类号
摘要
This paper highlights the role that reinforcement learning can play in the optimization of treatment policies for chronic illnesses. Before applying any off-the-shelf reinforcement learning methods in this setting, we must first tackle a number of challenges. We outline some of these challenges and present methods for overcoming them. First, we describe a multiple imputation approach to overcome the problem of missing data. Second, we discuss the use of function approximation in the context of a highly variable observation set. Finally, we discuss approaches to summarizing the evidence in the data for recommending a particular action and quantifying the uncertainty around the Q-function of the recommended policy. We present the results of applying these methods to real clinical trial data of patients with schizophrenia.
引用
收藏
页码:109 / 136
页数:27
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