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Using recurrent neural network models for early detection of heart failure onset

机译:使用递归神经网络模型早期检测心力衰竭

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摘要

>Objective: We explored whether use of deep learning to model temporal relations among events in electronic health records (EHRs) would improve model performance in predicting initial diagnosis of heart failure (HF) compared to conventional methods that ignore temporality.>Materials and Methods: Data were from a health system’s EHR on 3884 incident HF cases and 28 903 controls, identified as primary care patients, between May 16, 2000, and May 23, 2013. Recurrent neural network (RNN) models using gated recurrent units (GRUs) were adapted to detect relations among time-stamped events (eg, disease diagnosis, medication orders, procedure orders, etc.) with a 12- to 18-month observation window of cases and controls. Model performance metrics were compared to regularized logistic regression, neural network, support vector machine, and K-nearest neighbor classifier approaches.>Results: Using a 12-month observation window, the area under the curve (AUC) for the RNN model was 0.777, compared to AUCs for logistic regression (0.747), multilayer perceptron (MLP) with 1 hidden layer (0.765), support vector machine (SVM) (0.743), and K-nearest neighbor (KNN) (0.730). When using an 18-month observation window, the AUC for the RNN model increased to 0.883 and was significantly higher than the 0.834 AUC for the best of the baseline methods (MLP).>Conclusion: Deep learning models adapted to leverage temporal relations appear to improve performance of models for detection of incident heart failure with a short observation window of 12–18 months.
机译:>目的:我们探索了使用深度学习对电子健康记录(EHR)中事件之间的时间关系进行建模的方法是否会比忽略时间性的传统方法提高预测心力衰竭(HF)初始诊断的模型性能。>材料和方法:数据来自2000年5月16日至2013年5月23日之间的3884例心衰患者和28 903例被确定为初级保健患者的对照。递归神经网络使用门控复发单元(GRU)的(RNN)模型适用于通过12到18个月的病例和对照观察窗口来检测带有时间戳的事件(例如疾病诊断,用药顺序,程序顺序等)之间的关系。将模型性能指标与常规Logistic回归,神经网络,支持向量机和K近邻分类器方法进行比较。>结果:使用12个月的观察窗,曲线下面积(AUC) RNN模型的系数为0.777,而逻辑回归的AUC(0.747),具有1个隐藏层的多层感知器(MLP)(0.765),支持向量机(SVM)(0.743)和K近邻(KNN)(0.730) )。使用18个月的观察窗时,RNN模型的AUC增加到0.883,并且明显高于最佳基准方法(MLP)的0.834 AUC。>结论:适应了深度学习模型利用时间关系似乎可以改善模型的性能,并在12到18个月的短观察窗内发现事件性心力衰竭。

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