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Automatic Multi-label Classification in 12-Lead ECGs Using Neural Networks and Characteristic Points

机译:使用神经网络和特征点对12导联心电图进行自动多标签分类

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Electrocardiogram (ECG) signals are widely used in the medical diagnosis of heart disease. Automatic extraction of relevant and reliable information from ECG signals is a tough challenge for computer systems. This study proposes a novel 12-lead electrocardiogram (ECG) multi-label classification algorithm using a combination of Neural Network (NN) and the characteristic points. The proposed model is an end-to-end model. CNN extracts the morphological features of each ECG. Then the features of all the beats are considered in the context via BiRNN. The proposed method was evaluated on the dataset offered by The First China Intelligent Competition, and results were measured using the macro Fl score of all nine classes. Our proposed method obtained a macro Fl score of 0.878, which is excellent among the competitors.
机译:心电图(ECG)信号广泛用于心脏病的医学诊断。从ECG信号中自动提取相关和可靠的信息对于计算机系统是一个艰巨的挑战。这项研究提出了一种新颖的结合了神经网络(NN)和特征点的12导联心电图(ECG)多标签分类算法。所提出的模型是端到端模型。 CNN提取每个ECG的形态特征。然后,通过BiRNN在上下文中考虑所有节拍的特征。该方法在第一届中国智能竞赛提供的数据集上进行了评估,并使用所有九个类别的宏观Fl得分对结果进行了测量。我们提出的方法获得的F1宏得分为0.878,在竞争者中非常出色。

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