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Evaluating the risks of arrhythmia through big data: Automatic processing and neural networks to classify epicardial electrograms

机译:通过大数据评估心律失常的风险:自动处理和神经网络对心外膜电图进行分类

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Arrhythmic behaviors are a major risk to the population. These are diverse and can have their origin in cellular dynamics that affect the functioning of the heart. When trying to understand the mechanisms behind arrhythmogenesis the epicardial electrograms present themselves as a useful measurement because they reflect the electrical behavior of the cells surrounding the electrodes. Nevertheless, there is a lack of methods in the literature to automatically process and analyze these signals. In this paper, an algorithm to automatically detect the R, S and T wave peaks in epicardial electrogram signals is presented. This algorithm uses the derivative of the signal to find the activation and recovery times, and uses these as fiducial points to find the desired features. These features are then used as inputs to an artificial neural network, trained to classify individual beats into `healthy' and `pathological'. After optimization, both the detector and the neural network showed good performance in their tasks; furthermore, the robustness and amenability to real-time implementation of the methods here presented make them ideal for monitoring patients or experimental platforms when epicardial electrograms can be measured.
机译:心律失常行为是人群的主要风险。这些是多种多样的,可能起源于影响心脏功能的细胞动力学。当试图了解心律不齐的背后机制时,心外膜电描记图本身就是一种有用的测量方法,因为它们反映了电极周围细胞的电学行为。然而,文献中缺少自动处理和分析这些信号的方法。本文提出了一种自动检测心外膜电图信号中R,S和T波峰的算法。该算法使用信号的导数来找到激活和恢复时间,并将它们用作基准点来找到所需的特征。然后将这些特征用作人工神经网络的输入,对它们进行训练以将各个节拍分类为“健康”和“病理性”。经过优化后,检测器和神经网络在其任务中均显示出良好的性能。此外,此处介绍的方法的鲁棒性和实时实施性使其成为可测量心外膜电图时监测患者或实验平台的理想选择。

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