利用带有注意机制的残差CNN-GRU对12导联心电图进行分类

P. Nejedly, Adam Ivora, I. Viscor, J. Halámek, P. Jurák, F. Plesinger
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引用次数: 5

摘要

心脏病是最常见的死亡原因。心电图(ECG)的全自动分类支持心脏疾病的早期捕获,因此,可能有助于早期治疗。在本文中,我们介绍了一个深度神经网络,用于将人类ECG分为24个独立的组,如房颤、1度房室传导阻滞、束支传导阻滞、早搏、ST段改变、正常窦性心律等。网络结构采用了带有残差块的卷积神经网络、双向门控循环单元和注意机制。该算法在PhysioNet Challenge 2020提出的公共数据集上进行了训练和验证。训练后的算法在挑战的正式阶段使用隐藏测试集进行测试,获得了挑战验证分数0.659作为ISIBrno团队的条目。测试集I、测试集II、测试集III和完整测试集的最终测试分数分别为0.847、0.195、- 0.006和0.122。在官方排名中,我们在41支队伍中获得了第30名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilization of Residual CNN-GRU With Attention Mechanism for Classification of 12-lead ECG
Cardiac diseases are the most common cause of death. The fully automated classification of the electrocardiogram (ECG) supports early capturing of heart disorders, and, consequently, may help to get treatment early. Here in this paper, we introduce a deep neural network for human ECG classification into 24 independent groups, for example, atrial fibrillation, 1st degree AV block, Bundle branch blocks, premature contractions, changes in the ST segment, normal sinus rhythm, and others. The network architecture utilizes a convolutional neural network with residual blocks, bidirectional Gated Recurrent Units, and an attention mechanism. The algorithm was trained and validated on the public dataset proposed by the PhysioNet Challenge 2020. The trained algorithm was tested using a hidden test set during the official phase of the challenge and obtained the challenge validation score of 0.659 as entries by the ISIBrno team. The final testing scores were 0.847, 0.195, −0.006, and 0.122, for testing sets I, II, III, and full test set, respectively. We have obtained 30th place out of 41 teams in the official ranking.
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