Hassan Shahab Ul, Mohd Zahid Mohd S, Abdullah Talal Aa, Husain Khaleel
Department of Computer and Information Sciences, Universiti Teknologi PETRONAS, Malaysia.
Institute of Health and Analytics, Universiti Teknologi PETRONAS, Malaysia (Until August 2021).
Digit Health. 2022 May 26;8:20552076221102766. doi: 10.1177/20552076221102766. eCollection 2022 Jan-Dec.
Cardiac arrhythmia is a leading cause of cardiovascular disease, with a high fatality rate worldwide. The timely diagnosis of cardiac arrhythmias, determined by irregular and fast heart rate, may help lower the risk of strokes. Electrocardiogram signals have been widely used to identify arrhythmias due to their non-invasive approach. However, the manual process is error-prone and time-consuming. A better alternative is to utilize deep learning models for early automatic identification of cardiac arrhythmia, thereby enhancing diagnosis and treatment. In this article, a novel deep learning model, combining convolutional neural network and bi-directional long short-term memory, is proposed for arrhythmia classification. Specifically, the classification comprises five different classes: non-ectopic (N), supraventricular ectopic (S), ventricular ectopic (V), fusion (F), and unknown (Q) beats. The proposed model is trained, validated, and tested using MIT-BIH and St-Petersburg data sets separately. Also, the performance was measured in terms of precision, accuracy, recall, specificity, and f1-score. The results show that the proposed model achieves training, validation, and testing accuracies of 100%, 98%, and 98%, respectively with the MIT-BIH data set. Lower accuracies were shown for the St-Petersburg data set. The performance of the proposed model based on the MIT-BIH data set is also compared with the performance of existing models based on the MIT-BIH data set.
心律失常是心血管疾病的主要病因,在全球范围内死亡率很高。通过不规则且快速的心率来判断的心律失常的及时诊断,可能有助于降低中风风险。心电图信号因其非侵入性方法已被广泛用于识别心律失常。然而,人工过程容易出错且耗时。一个更好的选择是利用深度学习模型对心律失常进行早期自动识别,从而加强诊断和治疗。在本文中,提出了一种结合卷积神经网络和双向长短期记忆的新型深度学习模型用于心律失常分类。具体来说,分类包括五个不同类别:非异位(N)、室上性异位(S)、室性异位(V)、融合(F)和未知(Q)搏动。所提出的模型分别使用麻省理工学院 - 比尔汉姆(MIT - BIH)和圣彼得堡数据集进行训练、验证和测试。此外,还从精确率、准确率、召回率、特异性和F1分数方面衡量了性能。结果表明,所提出的模型在MIT - BIH数据集上分别实现了100%、98%和98%的训练、验证和测试准确率。圣彼得堡数据集的准确率较低。还将基于MIT - BIH数据集的所提出模型的性能与基于MIT - BIH数据集的现有模型的性能进行了比较。