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Q-Learning Based Therapy Planning Decision Support System

机译:基于Q学习的治疗计划决策支持系统

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This paper presents an approach for a Q-Learning based Decision Support System for Therapy Planning. It focuses the consideration on a multilevel approach for constructing a data driven evidence based model for classification of different drug dosages and their effectiveness for clinical trials. We consider time - ordered sequences of patient data (critical patient events) called patient trials consisting of state, time and the medication ordered by clinicians. A patient state generalization function to provide generalized patient states as categories of patient observation vectors is presented which is based on a neural network. For classification of medications we introduce a medication generalization function based on similarity classes of medications and a similarity function between two drug dosages. Both generalization functions are used for generalizing patient trials and the life long quality function to synthesize the Q-Learning agent for the Decision Support System.
机译:本文提出了一种基于Q学习决策支持系统的治疗计划的方法。它专注于对多级方法的考虑,用于构建基于数据驱动的基于数据的分类模型及其对临床试验的有效性。我们考虑时间有序的患者数据序列(关键患者事件)称为患者试验,由临床医生排序的状态,时间和药物组成。呈现患者状态普遍性函数,以提供作为患者观察向量的类别的患者态,其基于神经网络。对于药物的分类,我们将基于类似药物的药物概括功能和两种药物剂量之间的相似性函数引入药物泛化函数。概括功能均用于概括患者试验和寿命长度功能,以合成决策支持系统的Q学习代理。

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