RR Stress Test Time Series classification using Neural networks

Wilson X. Jaramillo, Fabian Astudillo-Salinas, L. Solano-Quinde, K. Palacio-Baus, Sara Wong
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引用次数: 1

Abstract

The RR time series, obtained from the R waves of the ECG, are a representation of the heart rate. This work presents the use of an artificial neural network (ANN) to classify RR time series from an ECG stress test. Four classes of RR time series were defined: very good, good, low quality and useless. We use a preprocessing stage to split input data vectors into NW data windows for which we compute the standard deviation of the RR interval (SDRR) to generate the input features vector of a multilayer perceptron network architecture. We introduce a saturation value S in order to limit SDRR values. 520 RR time series from 65 records of ECG stress test were analyzed. Experiments were performed to explore the influence of parameters S and NW . 40 subjects records are used in training and the remaining for testing. The classification results show a matching correlation ratio above 71%, which is higher than the correlation between two human experts. The main contribution of this work constitutes the preprocessing stage proposed for a stress test RR time series schema and an acceptable performance which does not depend on parameter NW .
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基于神经网络的RR压力测试时间序列分类
从ECG的R波中得到的RR时间序列是心率的表示。这项工作提出了使用人工神经网络(ANN)从ECG压力测试中分类RR时间序列。定义了四类RR时间序列:非常好、良好、低质量和无用。我们使用预处理阶段将输入数据向量拆分为NW数据窗口,我们计算RR区间(SDRR)的标准差,以生成多层感知器网络架构的输入特征向量。为了限制SDRR值,我们引入了饱和值S。分析了65例心电图应激试验记录的520个RR时间序列。实验探讨了参数S和NW的影响。40名受试者的记录用于培训,其余用于测试。分类结果显示匹配相关率在71%以上,高于两个人类专家之间的相关性。这项工作的主要贡献包括为压力测试RR时间序列模式提出的预处理阶段和不依赖于参数NW的可接受性能。
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