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Nearest-manifold classification approach for cardiac arrest rhythm interpretation during resuscitation

机译:最近流形分类法在复苏过程中解释心脏骤停节律

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In order to monitor the cardiac arrest patients response to therapy, there is a need for methods that can reliably interpret the different types of cardiac rhythms that can occur during a resuscitation episode. These rhythms can be categorized to five groups; ventricular tachycardia, ventricular fibrillation, pulseless electrical activity, asystole, and pulse generating rhythm. The objective of this study was to develop machine learning algorithms to automatically recognize these rhythms. We proposed a detection algorithm based on the nearest-manifold classification approach using a group of 8 time-domain features as statistical measures on the signal itself, as well as the first and second differences. The overall accuracy of the cardiac arrest rhythm interpretation is 79% which is 9% better than our prior work. The sensitivity/specificity of shockableon-shockable rhythms is 92/95%.
机译:为了监测心脏骤停患者对治疗的反应,需要可靠地解释在复苏发作期间可以发生的不同类型的心律的方法。这些节奏可以分类为五组;心室心动过速,心室颤动,无紫色电活动,asystole和脉冲产生节奏。本研究的目的是开发机器学习算法以自动识别这些节奏。我们提出了一种基于最近的歧管分类方法的检测算法,使用一组8个时间域特征作为信号本身上的统计测量以及第一和第二差异。心脏滞留节奏解释的整体准确性是79%,比我们的前工作更好。可触扰/不可震动节奏的敏感性/特异性为92/95%。

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