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Effects of Lead Position, Cardiac Rhythm Variation and Drug-induced QT Prolongation on Performance of Machine Learning Methods for ECG Processing

机译:导联位置,心律变化和药物诱导的QT延长对ECG加工机器学习方法性能的影响

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Machine learning shows great performance in various problems of electrocardiography (ECG) signal analysis. However, collecting a dataset for biomedical engineering is a very difficult task. Any dataset for ECG processing contains from 100 to 10,000 times fewer cases than datasets for image or text analysis. This issue is especially important because of physiological phenomena that can significantly change the morphology of heartbeats in ECG signals. In this preliminary study, we analyze the effects of lead choice from the standard ECG recordings, variation of ECG during 24-hours, and the effects of QT-prolongation agents on the performance of machine learning methods for ECG processing. We choose the problem of subject identification for analysis, because this problem may be solved for almost any available dataset of ECG data. In a discussion, we compare our findings with observations from other works that use machine learning for ECG processing with different problem statements. Our results show the importance of training dataset enrichment with ECG signals acquired in specific physiological conditions for obtaining good performance of ECG processing for real applications.
机译:机器学习在心电图(ECG)信号分析的各种问题中显示出了出色的性能。然而,收集用于生物医学工程的数据集是非常困难的任务。与用于图像或文本分析的数据集相比,任何用于ECG处理的数据集所包含的案例要少100至10,000倍。由于生理现象会大大改变ECG信号中心跳的形态,因此此问题尤为重要。在这项初步研究中,我们分析了标准ECG记录中铅选择的影响,24小时内ECG的变化以及QT延长剂对ECG处理机器学习方法性能的影响。我们选择主题识别的问题进行分析,因为几乎所有可用的ECG数据集都可以解决此问题。在讨论中,我们将我们的发现与其他研究的观察结果进行比较,这些研究将机器学习用于处理具有不同问题陈述的ECG。我们的结果表明,使用在特定生理条件下采集的ECG信号来训练数据集的重要性对于在实际应用中获得良好的ECG处理性能至关重要。

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