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ECG Rhythm Analysis During Manual Chest Compressions Using an Artefact Removal Filter and Random Forest Classifiers

机译:使用人工切除过滤器和随机林分类器手动胸部压缩期间的ECG节奏分析

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Interruptions in cardiopulmonary resuscitation (CPR) decrease the chances of survival. However, CPR must be interrupted for a reliable rhythm analysis because chest compressions (CCs) induce artifacts in the ECG. This paper introduces a double-stage shock advice algorithm (SAA) for a reliable rhythm analysis during manual CCs. The method used two configurations of the recursive least-squares (RLS) filter to remove CC artifacts from the ECG. For each filtered ECG segment over 200 shock/no-shock decision features were computed and fed into a random forest (RF) classifier to select the most discriminative 25 features. The proposed SAA is an ensemble of two RF classifiers which were trained using the 25 features derived from different filter configurations. Then, the average value of class posterior probabilities was used to make a final shock/no-shock decision. The dataset was comprised of 506 shockable and 1697 non-shockable rhythms which were labelled by expert rhythm resuscitation reviewers in artifact-free intervals. Shock/no-shock diagnoses obtained through the proposed double-stage SAA were compared with the rhythm annotations to obtain the Sensitivity (Se), Specificity (Sp) and balanced accuracy (BAC) of the method. The results were 93.5%, 96.5% and 95.0%, respectively.
机译:心肺复苏(CPR)中断降低了存活的机会。然而,CPR必须被中断以进行可靠的节奏分析,因为胸部按压(CCS)诱导心电图中的伪影。本文介绍了一种双级冲击咨询算法(SAA),可在手动CCS中进行可靠的节奏分析。该方法使用了两种递归最小二乘(RLS)滤波器的配置来从ECG中删除CC伪像。对于每个过滤的ECG段超过200个冲击/无冲击判决,并将其馈入随机林(RF)分类器以选择最判别的25个功能。所提出的SAA是两个RF分类器的集合,其使用来自不同滤波器配置的25个功能训练。然后,使用类后概率的平均值来进行最终的冲击/无冲击决定。数据集由506个可冲的和1697个不可震动的节奏组成,该节奏由专家节奏复苏审稿人以无伪影间隔标记。通过所提出的双级SAA获得的冲击/无冲击诊断与节律注释进行比较,以获得该方法的灵敏度(SE),特异性(SP)和平衡精度(BAC)。结果分别为93.5%,96.5%和95.0%。

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