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SYSTEMS AND METHODS FOR PROGNOSIS PREDICTION OF ACUTE MYELOID LEUKEMIA PATIENTS

机译:急性髓鞘白血病患者预后预测的系统和方法

摘要

This application relates generally to a computer implemented method comprising: receiving a medical record data from a patient, wherein said record comprising a static attribute and a time dependent progression attribute; processing the time dependent progression attributes of medical record data using a trained neural network to into time-series representation, and converting the static attributes into static variables; combining the time-series representation and static variables to multiple vectors; providing a prognosis outcome by a trained classifier using said multiple vectors; wherein the neural network is trained by steps of (a) assembling a training data set comprising a retrospective collection of patients' medical record data wherein said record data comprising collected number of static attributes, time dependent progression attributes and patients' mortality and relapse outcomes; (b) processing the time dependent progression attributes of the training data set using a neural network to convert the time dependent progression attributes into time-series representation; (c) processing the static attributes of the training data set into static variables; and (d) combining the time-series representation and static variables to train a classifier based on the combined time-series representation and static variables.
机译:该应用程序一般涉及计算机实现的方法,包括:从患者接收医疗记录数据,其中所述记录包括静态属性和时间相关的Dression属性;使用培训的神经网络处理医疗记录数据的时间依赖性进展属性进入时间序列表示,并将静态属性转换为静态变量;将时间序列表示和静态变量组合到多个向量;使用所述多个向量提供训练分类器的预后结果;其中,通过组装训练数据集的步骤训练了神经网络,该训练数据集包括患者医疗记录数据的回顾性收集,其中所述记录数据包括收集的静态属性,时间相关的进展属性和患者死亡率和复发结果; (b)使用神经网络处理训练数据集的时间依赖性进展属性,将时间相关的进展属性转换为时间序列表示; (c)将训练数据的静态属性处理成静态变量; (d)组合时间序列表示和静态变量以基于组合的时间序列表示和静态变量训练分类器。

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