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Atrial fibrillation detection and ECG classification based on convolutional recurrent neural network

机译:基于卷积经常性神经网络的心房颤动检测和心电图分类

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The aim of the 2017 PhysioNet/CinC Challenge [1] is to classify short ECG signals (between 30 seconds and 60 seconds length), as Normal sinus rhythm (N), Atrial Fibrillation (AF), an alternative rhythm (O), or as too noisy to be classified. Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN) as classifiers have recently shown improved performances compared to methods established in various sound recognition tasks [2] and interesting result in tasks such as the 2016 Physionet Challenge for the classification of heart sound [3]. Our approach is based on a convolutional recurrent neural network (CRNN), involving two independent CNNs, to extract relevant patterns, one from the ECG and the other from the heart rate, which are then merged into a RNN accounting for the sequence of the extracted patterns. The final decision is then evaluated through a Support Vector Machine (SVM).
机译:2017个物理仪/ CINC挑战[1]的目的是将短eCG信号(在30秒和60秒之间)分类,作为正常的窦性节奏(n),心房颤动(AF),替代节律(O)或太吵了要被分类。与分类器相比,卷积神经网络(CNN)和经常性神经网络(RNN)与在各种声音识别任务[2]中建立的方法相比,与在各种声音识别任务[2]中建立的方法相比,如2016年对心声分类的挑战(如2016年的Physoionet挑战)相比,有趣的结果3]。我们的方法基于卷积复发性神经网络(CRNN),涉及两个独立的CNN,以提取相关模式,从心率中提取一个来自ECG,另一个从心率中得到的,然后将其合并为提取的提取序列的RNN算法模式。然后通过支持向量机(SVM)评估最终决定。

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