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CPR Artifact Reduction in the Human ECG Using Independent Component Analysis

机译:使用独立成分分析的人心电图中的CPR伪影减少

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Currently, automated external defibrillators (AEDs) require interruption of cardiopulmonary resuscitation (CPR) to analyze ECG. To avoid interruptions of chest compressions, which decrease the defibrillation success rate, there are several algorithms available for reducing CPR artifacts from the corrupted ECG, but, based on recent research reports, none of the algorithms checked showed superior sensitivity and specificity.Independent component analysis (ICA) is an established tool for signal extraction. However, as far as the authors know, artifact removal from the CPR corrupted ECG has not been tried with ICA. As a new approach to solve the problem of removing CPR induced noise, the use of ICA is evaluated in this paper. By measuring four ECG channels during CPR on a porcine model, data were obtained for testing ICA algorithms. After applying ICA to corrupted signals with small ECG amplitude (low SNR), the sensitivity increased from 75% (corrupted signal) to 100% using the selected independent component and specificity from 80% to 89%, taking the AEDs decision whether the rhythm is shockable or not. When checking the similarity between the original, the corrupted and the reconstructed signal, the computed correlation values indicated an improvement compared to the corrupted signal. We conclude that ICA was successful in separating the artifacts from the corrupted ECG in our experimental setup. It must be noted that the correct independent component was selected by visual inspection only.
机译:当前,自动体外除颤器(AED)需要中断心肺复苏(CPR)才能分析ECG。为避免中断胸外按压而降低除颤成功率,有几种算法可用于减少损坏的ECG中的CPR伪像,但根据最近的研究报告,所检查的算法均未显示出优异的灵敏度和特异性。 独立分量分析(ICA)是用于信号提取的成熟工具。然而,据作者所知,ICA尚未尝试从损坏的CPR的ECG中去除伪影。作为解决CPR引起的噪声问题的一种新方法,本文对ICA的使用进行了评估。通过在猪模型的CPR过程中测量四个ECG通道,获得了用于测试ICA算法的数据。将ICA应用于ECG幅度较小(SNR低)的损坏信号后,使用选定的独立成分将灵敏度从75%(损坏信号)提高到100%,将特异性从80%提高到89%,并由AED决定是否节律震撼与否。当检查原始信号,损坏信号和重建信号之间的相似性时,计算出的相关值表明与损坏信号相比有所改善。我们得出的结论是,在我们的实验装置中,ICA成功地从了损坏的ECG中分离出了伪像。必须注意的是,正确的独立组件仅通过视觉检查来选择。

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