论文标题
使用卷积神经网络对心律失常信号的分类和自我监督回归
Classification and Self-Supervised Regression of Arrhythmic ECG Signals Using Convolutional Neural Networks
论文作者
论文摘要
心电图(ECG)信号的解释是诊断心律不齐所必需的。最近,机器学习技术已用于自动化计算机辅助诊断。机器学习任务可以分为回归和分类。回归可用于噪声和伪影去除,并解决低采样频率中缺少数据的问题。分类任务涉及根据专家标记的输入类预测输出诊断类的预测。在这项工作中,我们提出了一个能够解决回归和分类任务的深度神经网络模型。此外,我们使用未标记和标记的数据将这两种方法组合在一起来训练模型。我们在MIT-BIH心律失常数据库上测试了该模型。我们的方法在基于改良的铅I II ECG记录以及达到高质量的ECG信号近似方面检测心律不齐方面的有效性很高。对于前者而言,我们的方法的总体准确度为87:33%,平衡精度为80:54%,同等用途。对于后者,使用自我监督的学习允许无需专家标签就可以进行培训。回归模型通过相当准确的QRS复合物预测,产生了令人满意的性能。将知识从回归转移到分类任务,我们的方法达到了87:78%的总体准确性。
Interpretation of electrocardiography (ECG) signals is required for diagnosing cardiac arrhythmia. Recently, machine learning techniques have been applied for automated computer-aided diagnosis. Machine learning tasks can be divided into regression and classification. Regression can be used for noise and artifacts removal as well as resolve issues of missing data from low sampling frequency. Classification task concerns the prediction of output diagnostic classes according to expert-labeled input classes. In this work, we propose a deep neural network model capable of solving regression and classification tasks. Moreover, we combined the two approaches, using unlabeled and labeled data, to train the model. We tested the model on the MIT-BIH Arrhythmia database. Our method showed high effectiveness in detecting cardiac arrhythmia based on modified Lead II ECG records, as well as achieved high quality of ECG signal approximation. For the former, our method attained overall accuracy of 87:33% and balanced accuracy of 80:54%, on par with reference approaches. For the latter, application of self-supervised learning allowed for training without the need for expert labels. The regression model yielded satisfactory performance with fairly accurate prediction of QRS complexes. Transferring knowledge from regression to the classification task, our method attained higher overall accuracy of 87:78%.