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Automated Identification and Localization of Premature Ventricle Contractions in Standard 12-Lead ECGs

机译:自动识别和定位标准12导联心电图中的室性早搏

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It can take up to twelve hours to identify and precisely localize the origin of a premature ventricle contraction (PVC). This work is investigating a neural network (NN) as an automated alternative to a human expert for detecting and locating the arrhythmogenic zone-with the goal of accelerating the PVC detection process. The proposed shallow neural network contains one hidden layer with multiple hidden units. Three data sets consisting of a total of 328 samples of 12 lead resting ECGs were used to train as well as to evaluate the NN. After performing several iteration tests with different training sets, the most promising configuration was established. The first cohort consisted of a ratio of 1:1, the second cohort of a ratio of 25:4 (NO PVC:PVC). The study has resulted in high sensitivity and specificity values in NN's performance given uniformly distributed training data. The proposed NN was shown to perform at a level comparable to that of a human expert.
机译:识别和精确定位早发性心室收缩(PVC)的过程最多可能需要十二个小时。这项工作正在研究一种神经网络(NN),作为人类专家的一种自动替代方法,用于检测和定位心律失常区域-目的是加快PVC检测过程。所提出的浅层神经网络包含一个具有多个隐藏单元的隐藏层。使用三个数据集(共328个样本,包括12个含铅的静息ECG)来训练和评估NN。在使用不同的训练集执行了几次迭代测试之后,建立了最有前途的配置。第一组的比例为1:1,第二组的比例为25:4(无PVC:PVC)。这项研究在给定均匀分布的训练数据的情况下,对NN的表现具有很高的敏感性和特异性。拟议的神经网络表现出与人类专家相当的水平。

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