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Non-linear dynamical signal characterization for prediction of defibrillation success through machine learning

机译:通过机器学习预测除颤成功的非线性动态信号表征

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摘要

BackgroundVentricular Fibrillation (VF) is a common presenting dysrhythmia in the setting of cardiac arrest whose main treatment is defibrillation through direct current countershock to achieve return of spontaneous circulation. However, often defibrillation is unsuccessful and may even lead to the transition of VF to more nefarious rhythms such as asystole or pulseless electrical activity. Multiple methods have been proposed for predicting defibrillation success based on examination of the VF waveform. To date, however, no analytical technique has been widely accepted. We developed a unique approach of computational VF waveform analysis, with and without addition of the signal of end-tidal carbon dioxide (PetCO2), using advanced machine learning algorithms. We compare these results with those obtained using the Amplitude Spectral Area (AMSA) technique.
机译:背景心室纤颤(VF)是心脏骤停时常见的心律不齐,其主要治疗方法是通过直流电休克除颤以恢复自发性循环。然而,通常除颤是不成功的,甚至可能导致VF过渡到更有害的心律,例如心搏停止或无脉动电活动。已经提出了基于对VF波形的检查来预测除颤成功的多种方法。然而,迄今为止,没有分析技术被广泛接受。我们使用先进的机器学习算法,开发了一种独特的计算VF波形分析的方法,可以添加或不添加潮气中二氧化碳(PetCO2)信号。我们将这些结果与使用幅度谱区域(AMSA)技术获得的结果进行比较。

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