Jha Chandan Kumar
Department of Electronics & Communication Engineering, Indian Institute of Information Technology Bhagalpur, India.
Comput Methods Biomech Biomed Engin. 2025 Aug;28(10):1639-1654. doi: 10.1080/10255842.2024.2332942. Epub 2024 Apr 2.
Abnormal cardiac functionality produces irregular heart rhythms which are commonly known as arrhythmias. In some conditions, arrhythmias are treated as very dangerous which may lead to sudden cardiac arrest. The incidence and prevalence of cardiac anomalies seeks early detection of arrhythmias using automated classification techniques. In the past, numerous automated arrhythmia detection techniques have been developed that are based on electrocardiogram (ECG) signal analysis. Focusing on the prospective research in this field, this article reports a comprehensive review of existing techniques that are obtained using search engines such as IEEE explore, Google scholar and science direct. Based on the review, the existing techniques are broadly categorized into two types: machine-learning and deep-learning-based techniques. In this study, it is noticed that the performance of the machine-learning-based arrhythmia detection techniques depend on pre-processing of ECG signal, R-peaks detection, features extraction and classification tools while the deep-learning-based techniques do not require the features extraction step. Generally, the existing techniques utilize Massachusetts Institute of Technology-Beth Israel Hospital arrhythmia database to evaluate the classification performance. The classification performance of automated techniques also depends on ECG data used for training and testing of the classifier. It is expected that the performance should be evaluated using a variety of ECG signals including the cases of inter-patient and intra-patient paradigm. The existing techniques also require to deal with the class-imbalance problem. In addition to this, a specific partition-ratio between training and testing datasets should be maintained for fair comparison of performance of different techniques.
心脏功能异常会产生不规则的心律,也就是通常所说的心律失常。在某些情况下,心律失常被视为非常危险的情况,可能会导致心脏骤停。心脏异常的发病率和患病率促使人们使用自动分类技术尽早检测心律失常。过去,已经开发出了许多基于心电图(ECG)信号分析的自动心律失常检测技术。着眼于该领域的前瞻性研究,本文对使用诸如IEEE Xplore、谷歌学术和科学Direct等搜索引擎获得的现有技术进行了全面综述。基于该综述,现有技术大致可分为两类:基于机器学习的技术和基于深度学习的技术。在本研究中,注意到基于机器学习的心律失常检测技术的性能取决于心电图信号的预处理、R波检测、特征提取和分类工具,而基于深度学习的技术则不需要特征提取步骤。一般来说,现有技术利用麻省理工学院-贝斯以色列女执事医疗中心心律失常数据库来评估分类性能。自动技术的分类性能还取决于用于训练和测试分类器的心电图数据。预计应使用包括患者间和患者内范例情况在内的各种心电图信号来评估性能。现有技术还需要处理类别不平衡问题。除此之外,为了公平比较不同技术的性能,应保持训练数据集和测试数据集之间特定的划分比例。