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Interpretable deep learning framework for mining and predictive modeling of health care data

机译:医疗保健数据采矿和预测建模的可解释的深度学习框架

摘要

A method for creating an interpretable model for healthcare predictions includes training, by a deep learning processor, a neural network to predict health information by providing training data, including multiple combinations of measured or observed health metrics and corresponding medical results, to the neural network. The method also includes determining, by the deep learning processor and using the neural network, prediction data including predicted results for the measured or observed health metrics for each of the multiple combinations of the measured or observed health metrics based on the training data. The method also includes training, by the deep learning processor or a learning processor, an interpretable machine learning model to make similar predictions as the neural network by providing mimic data, including combinations of the measured or observed health metrics and corresponding predicted results of the prediction data, to the interpretable machine learning model.
机译:一种为医疗预测创建可解释模型的方法包括通过提供训练数据来预测健康信息的训练,包括测量或观察到的健康度量和相应的医学结果的多种组合,以及对神经网络来预测健康信息。 该方法还包括由深度学习处理器和使用神经网络,包括基于训练数据的测量的或观察到的健康指标的多种组合的测量或观察到的健康指标的预测数据的预测数据。 该方法还包括由深度学习处理器或学习处理器的训练,可解释的机器学习模型通过提供模拟数据来使类似的预测作为神经网络,包括测量或观察到的健康度量的组合以及预测的相应预测结果 数据,到可解释的机器学习模型。

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