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Clinical data based optimal STI strategies for HIV: a reinforcement learning approach

机译:基于临床数据的艾滋病优化STI策略:加强学习方法

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This paper addresses the problem of computing optimal structured treatment interruption strategies for HIV infected patients. We show that reinforcement learning may be useful to extract such strategies directly from clinical data, without the need of an accurate mathematical model of HIV infection dynamics. To support our claims, we report simulation results obtained by running a recently proposed batch-mode reinforcement learning algorithm, known as fitted Q iteration, on numerically generated data.
机译:本文涉及计算HIV感染患者最佳结构化治疗中断策略的问题。我们表明,强化学习可能有助于从临床数据中提取此类策略,而无需准确的HIV感染动态的数学模型。为了支持我们的索赔,我们报告了通过在数值生成的数据上运行最近提出的批次模式加强学习算法而获得的仿真结果,该批量批量频率已知为Q迭代。

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