基于2维深度CNN特征迁移学习的心电心律失常分类

M. Salem, S. Taheri, Jiann-Shiun Yuan
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引用次数: 109

摘要

由于深度学习领域的最新进展,已经证明,经过大量数据训练的深度神经网络可以比心脏病专家更好地识别心律失常。此外,传统上认为特征提取是心电模式识别的重要组成部分;然而,最近的研究结果表明,深度神经网络可以直接从数据本身进行特征提取。为了利用深度神经网络的准确性和特征提取,需要大量的训练数据,这在独立研究的情况下是不实用的。为了应对这一挑战,本工作从迁移学习的角度研究了四种心电模式的识别和分类,将从图像分类领域学习到的知识转移到心电信号分类领域。研究表明,在大量通用输入图像上训练的深度神经网络中学习到的特征映射可以用作心电信号谱图的一般描述符,并产生能够对心律失常进行分类的特征。总体而言,通过10倍交叉验证对近7000个实例进行分类,准确率达到97.23%。
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ECG Arrhythmia Classification Using Transfer Learning from 2- Dimensional Deep CNN Features
Due to the recent advances in the area of deep learning, it has been demonstrated that a deep neural network, trained on a huge amount of data, can recognize cardiac arrhythmias better than cardiologists. Moreover, traditionally feature extraction was considered an integral part of ECG pattern recognition; however, recent findings have shown that deep neural networks can carry out the task of feature extraction directly from the data itself. In order to use deep neural networks for their accuracy and feature extraction, high volume of training data is required, which in the case of independent studies is not pragmatic. To arise to this challenge, in this work, the identification and classification of four ECG patterns are studied from a transfer learning perspective, transferring knowledge learned from the image classification domain to the ECG signal classification domain. It is demonstrated that feature maps learned in a deep neural network trained on great amounts of generic input images can be used as general descriptors for the ECG signal spectrograms and result in features that enable classification of arrhythmias. Overall, an accuracy of 97.23 percent is achieved in classifying near 7000 instances by ten-fold cross validation.
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