A Novel Convolutional Neural Network for Arrhythmia Detection From 12-lead Electrocardiograms

Zhengling He, Pengfei Zhang, Lirui Xu, Zhongrui Bai, Hao Zhang, Weisong Li, Pan Xia, Xianxiang Chen
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引用次数: 1

Abstract

Electrocardiogram (ECG) is a widely medical tool used in the clinical diagnosis of arrhythmia, numerous algorithms based on deep learning have been proposed to achieve automatic arrhythmia detection. In PhysioNetlComputing in Cardiology Challenge 2020, inspired by the deep residual learning and attention mechanism, we proposed a novel neural network to accomplish this classification task. The backbone of the network is a carefully designed 2-D convolutional neural network (CNN) with residual connection and attention mechanism, and it can adapt to multi-lead ECG signals as input. The first 10 seconds of records from all leads are extracted and preprocessed as input for end-to-end training, and the prediction probabilities of 27 categories are output. The proposed algorithm was firstly verified and adjusted via 5-fold cross-validation on officially published datasets from 4 multiple sources. Finally, our team (MetaHeart) achieved a challenge validation score of 0.616 and full test score of 0.370, but were not ranked due to omissions in the submission.
一种用于12导联心电图心律失常检测的新型卷积神经网络
心电图(Electrocardiogram, ECG)是一种广泛应用于心律失常临床诊断的医疗工具,许多基于深度学习的算法被提出来实现心律失常的自动检测。在PhysioNetlComputing In Cardiology Challenge 2020中,受深度残差学习和注意机制的启发,我们提出了一种新的神经网络来完成这一分类任务。该网络的主干是一个精心设计的具有残差连接和注意机制的二维卷积神经网络(CNN),能够适应多导联心电信号作为输入。提取所有线索的前10秒记录作为端到端训练的输入进行预处理,输出27个类别的预测概率。首先对4个多源官方公布的数据集进行5次交叉验证,对算法进行了验证和调整。最后,我们团队(MetaHeart)的挑战验证得分为0.616,满分测试得分为0.370,但由于提交中有遗漏,没有进入排名。
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