{"title":"通过集合学习进行心电信号分类:应对患者内部和患者之间的差异","authors":"Madhavi Mahajan, Sonali Kadam, Vinaya Kulkarni, Jotiram Gujar, Sanah Naik, Suruchi Bibikar, Ankita Ochani, Sakshi Pratap","doi":"10.1007/s41870-024-02086-4","DOIUrl":null,"url":null,"abstract":"<p>Electrocardiogram (ECG) signal classification is a cornerstone of automated heart abnormality detection. Unlike the limitations of human interpretation, AI techniques can effectively identify subtle patterns in ECG signals. This makes ECG a powerful non-invasive tool for assessing cardiovascular health. Existing methods for classifying ECG signals while valuable, they still struggle to achieve both high sensitivity and specificity. This limitation hinders their ability to deliver accurate and timely diagnoses for cardiac conditions. These shortcomings emphasize the need for more effective techniques to improve the precision of ECG signal classification. In response to these challenges, this study introduces a novel approach, using an ensemble methodology, a machine learning technique to enhance the precision of ECG classification through the fusion of signal and wave features. The proposed methodology addresses two key challenges: the transformation of paper ECG recordings into one-dimensional digital signals amenable to machine learning algorithms and the automated extraction of diagnostically significant features including the P wave, QRS complex, and T wave. Validation of the proposed methodology encompasses a comprehensive evaluation on a heterogeneous dataset comprising real-world and publicly available online resources. Noteworthy aspects of the evaluation include considerations of both intra-patient variations and inter-patient discrepancies, thus reflecting real-world complexities. Notably, in the realm of machine learning, the study employs ensemble algorithms and a soft voting classifier to enhance classification accuracy and robustness. This paper contributes to the advancement of automated ECG classification, offering a promising avenue for precise and reliable cardiovascular health assessment.</p>","PeriodicalId":14138,"journal":{"name":"International Journal of Information Technology","volume":"53 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"ECG signal classification via ensemble learning: addressing intra and inter-patient variations\",\"authors\":\"Madhavi Mahajan, Sonali Kadam, Vinaya Kulkarni, Jotiram Gujar, Sanah Naik, Suruchi Bibikar, Ankita Ochani, Sakshi Pratap\",\"doi\":\"10.1007/s41870-024-02086-4\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Electrocardiogram (ECG) signal classification is a cornerstone of automated heart abnormality detection. Unlike the limitations of human interpretation, AI techniques can effectively identify subtle patterns in ECG signals. This makes ECG a powerful non-invasive tool for assessing cardiovascular health. Existing methods for classifying ECG signals while valuable, they still struggle to achieve both high sensitivity and specificity. This limitation hinders their ability to deliver accurate and timely diagnoses for cardiac conditions. These shortcomings emphasize the need for more effective techniques to improve the precision of ECG signal classification. In response to these challenges, this study introduces a novel approach, using an ensemble methodology, a machine learning technique to enhance the precision of ECG classification through the fusion of signal and wave features. The proposed methodology addresses two key challenges: the transformation of paper ECG recordings into one-dimensional digital signals amenable to machine learning algorithms and the automated extraction of diagnostically significant features including the P wave, QRS complex, and T wave. Validation of the proposed methodology encompasses a comprehensive evaluation on a heterogeneous dataset comprising real-world and publicly available online resources. Noteworthy aspects of the evaluation include considerations of both intra-patient variations and inter-patient discrepancies, thus reflecting real-world complexities. Notably, in the realm of machine learning, the study employs ensemble algorithms and a soft voting classifier to enhance classification accuracy and robustness. 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引用次数: 0
摘要
心电图(ECG)信号分类是自动检测心脏异常的基石。与人工判读的局限性不同,人工智能技术能有效识别心电图信号中的微妙模式。这使得心电图成为评估心血管健康的强大无创工具。现有的心电信号分类方法虽然很有价值,但仍难以实现高灵敏度和高特异性。这一局限性阻碍了它们准确、及时诊断心脏疾病的能力。这些缺陷凸显出需要更有效的技术来提高心电信号分类的精确度。为了应对这些挑战,本研究引入了一种新方法,即使用机器学习技术的集合方法,通过融合信号和波形特征来提高心电图分类的精确度。所提出的方法解决了两个关键难题:将纸质心电图记录转化为适合机器学习算法的一维数字信号,以及自动提取具有诊断意义的特征,包括 P 波、QRS 波群和 T 波。对所提方法的验证包括对一个由真实世界和公开在线资源组成的异构数据集进行全面评估。值得注意的是,评估既考虑了患者内部的差异,也考虑了患者之间的差异,从而反映了现实世界的复杂性。值得注意的是,在机器学习领域,该研究采用了集合算法和软投票分类器来提高分类的准确性和稳健性。本文有助于推动自动心电图分类的发展,为精确可靠的心血管健康评估提供了一条前景广阔的途径。
ECG signal classification via ensemble learning: addressing intra and inter-patient variations
Electrocardiogram (ECG) signal classification is a cornerstone of automated heart abnormality detection. Unlike the limitations of human interpretation, AI techniques can effectively identify subtle patterns in ECG signals. This makes ECG a powerful non-invasive tool for assessing cardiovascular health. Existing methods for classifying ECG signals while valuable, they still struggle to achieve both high sensitivity and specificity. This limitation hinders their ability to deliver accurate and timely diagnoses for cardiac conditions. These shortcomings emphasize the need for more effective techniques to improve the precision of ECG signal classification. In response to these challenges, this study introduces a novel approach, using an ensemble methodology, a machine learning technique to enhance the precision of ECG classification through the fusion of signal and wave features. The proposed methodology addresses two key challenges: the transformation of paper ECG recordings into one-dimensional digital signals amenable to machine learning algorithms and the automated extraction of diagnostically significant features including the P wave, QRS complex, and T wave. Validation of the proposed methodology encompasses a comprehensive evaluation on a heterogeneous dataset comprising real-world and publicly available online resources. Noteworthy aspects of the evaluation include considerations of both intra-patient variations and inter-patient discrepancies, thus reflecting real-world complexities. Notably, in the realm of machine learning, the study employs ensemble algorithms and a soft voting classifier to enhance classification accuracy and robustness. This paper contributes to the advancement of automated ECG classification, offering a promising avenue for precise and reliable cardiovascular health assessment.