用于心电图心血管疾病分类的小波散射变换

Islam D. S. Aabdalla, D. Vasumathi
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摘要

对心电图数据集进行分类是诊断心脏病的主要技术。然而,这一领域的重点越来越多地放在预测上,对机器学习技术的依赖性也越来越强。本研究旨在通过采用机器学习(ML)技术,利用 PhysioNet 数据库的数据提高心血管疾病分类的准确性。研究提出了几种多类分类模型,可准确识别心衰节律(HFR)、正常心律(NHR)和心律失常(ARR)三个类别中的模式。这是通过使用包含 162 个心电图信号的数据库实现的。研究采用了多种技术,包括频时域分析、频谱特征和小波散射,以提取特征并捕捉心电图数据集的独特特征。SVM 模型的训练准确率为 97.1%,测试准确率为 92%。这项工作为识别心脏病提供了一种可靠、有效、无人为误差的诊断工具。此外,它还能为未来旨在改善心血管疾病诊断和治疗的医学研究项目提供宝贵的资源。
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Wavelet Scattering Transform for ECG Cardiovascular Disease Classification
Classifying the ECG dataset is the main technique for diagnosing heart disease. However, the focus of this field is increasingly on prediction, with a growing dependence on machine learning techniques. This study aimed to enhance the accuracy of cardiovascular disease classification using data from the PhysioNet database by employing machine learning (ML). The study proposed several multi-class classification models that accurately identify patterns within three classes: heart failure rhythm (HFR), normal heart rhythm (NHR), and arrhythmia (ARR). This was accomplished by utilizing a database containing 162 ECG signals. The study employed a variety of techniques, including frequency-time domain analysis, spectral features, and wavelet scattering, to extract features and capture unique characteristics from the ECG dataset. The SVM model produced a training accuracy of 97.1% and a testing accuracy of 92%. This work provides a reliable, effective, and human error-free diagnostic tool for identifying heart disease. Furthermore, it could prove to be a valuable resource for future medical research projects aimed at improving the diagnosis and treatment of cardiovascular diseases.
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