基于残差CNN和分类注意的12导联心电图多标签分类

Yang Liu, Kuanquan Wang, Yongfeng Yuan, Qince Li, Yacong Li, Yongpeng Xu, Henggui Zhang
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引用次数: 3

摘要

心血管疾病已成为世界范围内疾病和死亡的主要原因。由于心血管疾病的慢性性质,早期筛查和随访管理将有效提高心血管疾病的预防和治疗水平,其中心电图自动分类将发挥重要作用。在这项工作中,我们参加了2020年PhysioNet - CinC挑战赛(在ECGMaster团队中),并提出了一种新的12导联ECG记录的多标签分类器,该分类器将残差卷积网络(残差CNN)与分类注意机制相结合。为了处理类之间的数据不平衡问题,我们在模型的训练中使用了一种新的加权焦点损失。我们的模型在训练数据上进行了5次交叉验证,结果得分为0.5501±0.0223,根据挑战度量,证明了一种有前途的ecg分类方法。我们注意到,我们无法在官方测试数据上对我们的模型进行评分和排名,结果仅在训练集上获得,可能过于乐观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Label Classification of 12-lead ECGs by Using Residual CNN and Class-Wise Attention
Cardiovascular diseases have become the leading cause of illness and death worldwide. Due to their chronic nature, early screening and follow-up management will effectively improve the prevention and treatment of cardiovascular diseases, where automatic electrocardiogram (ECG) classification will play an important role. In this work, we take part in the 2020 PhysioNet - CinC Challenge (in the team ECGMaster) and propose a novel multi-label classifier of 12-lead ECG recordings which combines a residual convolutional network (residual CNN) with a class-wise attention mechanism. To deal with the problem of data imbalance between classes, we utilize a novel weighted focal loss in the training of our models. Our models were trained and tested in a 5-fold cross validation on the training data with resulting scores of 0.5501 ± 0.0223 according to the challenge metric, demonstrating a promising method for the classification of ECGs. We note that we were unable to score and rank our model on the official test data, the results were obtained on the training set only and may be over-optimistic.
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