基于反向传播神经网络的实时缺血性心跳分类

M. Mohebbi, H. Moghadam
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引用次数: 3

摘要

本文介绍了一种自适应反向传播神经网络(NN)用于检测心电图(ECG)记录中的缺血性心跳。该方法包括QRS检测预处理阶段、基线漂移去除阶段和噪声抑制阶段。在这个阶段,ST段被提取。在下一阶段,模式长度被减少并从正常模板中减去。在第三阶段,提取的模式用于训练神经网络,并检测缺血性心跳。用于训练神经网络的算法是一种自适应反向传播算法。自适应算法在保持学习稳定的同时尽量保持学习步长,从而减少学习时间。为了评估该方法,使用欧洲心脏病学会ST-T数据库的几个记录构建了心跳数据集。我们的结果在敏感性和正预测性方面都很高。其中灵敏度为97.22%,阳性预测值为97.44%。这些结果比以往任何报道的结果都要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Ischemic Beat Classification Using Backpropagation Neural Network
This paper explains an adaptive backpropagation neural network (NN) for the detection of ischemic beats in electrocardiogram (ECG) recordings. The proposed method consists of a preprocessing stage for QRS detection, baseline wandering removal, and noise suppression. In this stage ST segments are extracted. In the next stage, the pattern length is reduced and subtracted from the normal template. In the third stage the extracted patterns are used for training a neural network and ischemic beats are detected. The algorithm used to train the NN is an adaptive backpropagation algorithm. An adaptive algorithm attempts to keep the learning step size as large as possible while keeping learning stable and then reduces the learning time. To evaluate the methodology, a cardiac beat dataset is constructed using several recordings of the European Society of Cardiology ST-T database. Our results were high both in sensitivity and positive predictivity. Specially, the obtained sensitivity and positive predictivity were 97.22% and 97.44%, respectively. These results are better than other any previously reported ones.
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