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Personalized prediction of drug efficacy for diabetes treatment via patient-level sequential modeling with neural networks

机译:通过神经网络的患者水平顺序模型的个性化预测糖尿病治疗药物疗效的预测

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摘要

Patients with type 2 diabetes mellitus are generally under continuous long-term medical treatment based on anti-diabetic drugs to achieve the desired glucose level. Thus, each patient is associated with a sequence of multiple records for prescriptions and their efficacies. Sequential dependencies are embedded in these records as personal factors so that previous records affect the efficacy of the current prescription for each patient. In this study, we present a patient-level sequential modeling approach utilizing the sequential dependencies to render a personalized prediction of the prescription efficacy. The prediction models are implemented using recurrent neural networks that use the sequence of all the previous records as inputs to predict the prescription efficacy at the time the current prescription is provided for each patient. Through this approach, each patient's historical records are effectively incorporated into the prediction. The experimental results of both the regression and classification analyses on real-world data demonstrate improved prediction accuracy, particularly for those patients having multiple previous records. (C) 2018 Elsevier B.V. All rights reserved.
机译:2型糖尿病患者通常会根据抗糖尿病药物接受连续的长期医学治疗,以达到所需的葡萄糖水平。因此,每个患者都与一系列有关处方及其疗效的记录相关。顺序依赖性作为个人因素嵌入这些记录中,因此以前的记录会影响当前处方对每个患者的疗效。在这项研究中,我们提出了一种利用顺序依存关系来呈现处方疗效的个性化预测的患者水平顺序建模方法。预测模型是使用递归神经网络实现的,该递归神经网络使用所有先前记录的序列作为输入来预测为每个患者提供当前处方时的处方疗效。通过这种方法,将每个患者的历史记录有效地合并到预测中。对真实数据进行回归分析和分类分析的实验结果均显示出更高的预测准确性,尤其是对于那些具有多个先前记录的患者。 (C)2018 Elsevier B.V.保留所有权利。

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