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基于特征工程和混合堆叠机器学习的基于心电图的心律失常分类

ECG-based heart arrhythmia classification using feature engineering and a hybrid stacked machine learning.

作者信息

Jahangir Raiyan, Islam Muhammad Nazrul, Islam Md Shofiqul, Islam Md Motaharul

机构信息

Department of Computer Science and Engineering, Ahsanullah University of Science and Technology, Tejgaon, Dhaka, 1208, Bangladesh.

Department of Computer Science and Engineering, Military Institute of Science and Technology, Mirpur Cantonment, Dhaka, 1216, Bangladesh.

出版信息

BMC Cardiovasc Disord. 2025 Apr 7;25(1):260. doi: 10.1186/s12872-025-04678-9.

Abstract

A heart arrhythmia refers to a set of conditions characterized by irregular heart- beats, with an increasing mortality rate in recent years. Regular monitoring is essential for effective management, as early detection and timely treatment greatly improve survival outcomes. The electrocardiogram (ECG) remains the standard method for detecting arrhythmias, traditionally analyzed by cardiolo- gists and clinical experts. However, the incorporation of automated technology and computer-assisted systems offers substantial support in the accurate diagno- sis of heart arrhythmias. This research focused on developing a hybrid model with stack classifiers, which are state-of-the-art ensemble machine-learning techniques to accurately classify heart arrhythmias from ECG signals, eliminating the need for extensive human intervention. Other conventional machine-learning, bagging, and boosting ensemble algorithms were also explored along with the proposed stack classifiers. The classifiers were trained with a different number of features (50, 65, 80, 95) selected by feature engineering techniques (PCA, Chi-Square, RFE) from a dataset as the most important ones. As an outcome, the stack clas- sifier with XGBoost as the meta-classifier, trained with 65 important features determined by the Principal Component Analysis (PCA) technique, achieved the best performance among all the models. The proposed classifier achieved a perfor- mance of 99.58% accuracy, 99.57% precision, 99.58% recall, and 99.57% f1-score and can be promising for arrhythmia diagnosis.

摘要

心律失常是指以心跳不规则为特征的一组病症,近年来死亡率不断上升。定期监测对于有效管理至关重要,因为早期发现和及时治疗能大大提高生存几率。心电图(ECG)仍然是检测心律失常的标准方法,传统上由心脏病专家和临床专家进行分析。然而,自动化技术和计算机辅助系统的引入为心律失常的准确诊断提供了有力支持。本研究专注于开发一种带有堆叠分类器的混合模型,堆叠分类器是最先进的集成机器学习技术,用于从心电图信号中准确分类心律失常,无需大量人工干预。还探索了其他传统机器学习、装袋和提升集成算法以及所提出的堆叠分类器。通过特征工程技术(主成分分析、卡方检验、递归特征消除)从数据集中选择不同数量(50、65、80、95)的最重要特征对分类器进行训练。结果,以XGBoost作为元分类器、使用主成分分析(PCA)技术确定的65个重要特征进行训练的堆叠分类器在所有模型中表现最佳。所提出的分类器准确率达到99.58%,精确率达到99.57%,召回率达到99.58%,F1分数达到99.57%,在心律失常诊断方面前景广阔。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/52b4/11974107/fbf474ca4e9c/12872_2025_4678_Fig1_HTML.jpg

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