ECGNET: Learning where to attend for detection of atrial fibrillation with deep visual attention.

Seyed Sajad Mousavi, Fatemah Afghah, Abolfazl Razi, U Rajendra Acharya
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Abstract

The complexity of the patterns associated with atrial fibrillation (AF) and the high level of noise affecting these patterns have significantly limited the application of current signal processing and shallow machine learning approaches to accurately detect this condition. Deep neural networks have shown to be very powerful to learn the non-linear patterns in various problems such as computer vision tasks. While deep learning approaches have been utilized to learn complex patterns related to the presence of AF in electrocardiogram (ECG) signals, they can considerably benefit from knowing which parts of the signal is more important to focus on during learning. In this paper, we introduce a two-channel deep neural network to more accurately detect the presence of AF in the ECG signals. The first channel takes in an ECG signal and automatically learns where to attend for detection of AF. The second channel simultaneously takes in the same ECG signal to consider all features of the entire signal. Besides improving detection accuracy, this model can guide the physicians via visualization that what parts of the given ECG signal are important to attend while trying to detect atrial fibrillation. The experimental results confirm that the proposed model significantly improves the performance of AF detection on well-known MIT-BIH AF database with 5-s ECG segments (achieved a sensitivity of 99.53%, specificity of 99.26% and accuracy of 99.40%).

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ECGNET:通过深度视觉注意力学习检测心房颤动时的注意点。
心房颤动(房颤)相关模式的复杂性和影响这些模式的高水平噪声极大地限制了当前信号处理和浅层机器学习方法在准确检测这种情况方面的应用。在计算机视觉任务等各种问题中,深度神经网络在学习非线性模式方面已显示出非常强大的功能。虽然深度学习方法已被用于学习与心电图(ECG)信号中是否存在房颤有关的复杂模式,但在学习过程中,如果能知道信号的哪些部分更重要,就能大大受益。在本文中,我们引入了双通道深度神经网络,以更准确地检测心电图信号中是否存在房颤。第一个通道接收心电信号,并自动学习检测房颤时应关注的部分。第二个通道同时接收同一心电信号,以考虑整个信号的所有特征。除了提高检测准确率外,该模型还能通过可视化引导医生在检测心房颤动时关注给定心电图信号的哪些部分。实验结果证实,在著名的 MIT-BIH 房颤数据库中,所提出的模型显著提高了 5 秒心电图片段的房颤检测性能(灵敏度达到 99.53%,特异度达到 99.26%,准确度达到 99.40%)。
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