Alqahtani Hamed, Aldehim Ghadah, Alruwais Nuha, Assiri Mohammed, Alneil Amani A, Mohamed Abdullah
Department of Information Systems, College of Computer Science, Center of Artificial Intelligence, Unit of Cybersecurity, King Khalid University, Abha, Saudi Arabia.
Department of Information Systems, College of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, P.O. Box 84428, Riyadh, 11671, Saudi Arabia.
Heliyon. 2024 Aug 5;10(16):e35621. doi: 10.1016/j.heliyon.2024.e35621. eCollection 2024 Aug 30.
Electrocardiography (ECG) is the most non-invasive diagnostic tool for cardiovascular diseases (CVDs). Automatic analysis of ECG signals assists in accurately and rapidly detecting life-threatening arrhythmias like atrioventricular blockage, atrial fibrillation, ventricular tachycardia, etc. The ECG recognition models need to utilize algorithms to detect various kinds of waveforms in the ECG and identify complicated relationships over time. However, the high variability of wave morphology among patients and noise are challenging issues. Physicians frequently utilize automated ECG abnormality recognition models to classify long-term ECG signals. Recently, deep learning (DL) models can be used to achieve enhanced ECG recognition accuracy in the healthcare decision making system. In this aspect, this study introduces an automated DL enabled ECG signal recognition (ADL-ECGSR) technique for CVD detection and classification. The ADL-ECGSR technique employs three most important subprocesses: pre-processed, feature extraction, parameter tuning, and classification. Besides, the ADL-ECGSR technique involves the design of a bidirectional long short-term memory (BiLSTM) based feature extractor, and the Adamax optimizer is utilized to optimize the trained method of the BiLSTM model. Finally, the dragonfly algorithm (DFA) with a stacked sparse autoencoder (SSAE) module is applied to recognize and classify EEG signals. An extensive range of simulations occur on benchmark PTB-XL datasets to validate the enhanced ECG recognition efficiency. The comparative analysis of the ADL-ECGSR methodology showed a remarkable performance of 91.24 % on the existing methods.
心电图(ECG)是用于心血管疾病(CVD)的最具无创性的诊断工具。对心电图信号进行自动分析有助于准确、快速地检测危及生命的心律失常,如房室传导阻滞、心房颤动、室性心动过速等。心电图识别模型需要利用算法来检测心电图中的各种波形,并识别随时间变化的复杂关系。然而,患者之间波形形态的高度变异性和噪声是具有挑战性的问题。医生经常使用自动心电图异常识别模型对长期心电图信号进行分类。近年来,深度学习(DL)模型可用于在医疗决策系统中提高心电图识别准确率。在这方面,本研究介绍了一种用于心血管疾病检测和分类的基于深度学习的自动心电图信号识别(ADL-ECGSR)技术。ADL-ECGSR技术采用三个最重要的子过程:预处理、特征提取、参数调整和分类。此外,ADL-ECGSR技术涉及基于双向长短期记忆(BiLSTM)的特征提取器的设计,并利用Adamax优化器优化BiLSTM模型的训练方法。最后,将带有堆叠稀疏自动编码器(SSAE)模块的蜻蜓算法(DFA)应用于脑电信号的识别和分类。在基准PTB-XL数据集上进行了广泛的模拟,以验证提高后的心电图识别效率。ADL-ECGSR方法的对比分析表明,与现有方法相比,其性能显著,达到了91.24%。