利用小波变换对心电信号进行分类

Zafer Cömert, A. F. Kocamaz
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引用次数: 14

摘要

作为一种胎儿监测技术,心脏造影(CTG)包括胎儿心率(FHR)、子宫收缩活动和胎儿运动。在世界各地,CTG被作为一种主要的诊断测试来识别妊娠和分娩期间可能对胎儿构成风险的事件。本研究采用Haar (Haar)、Daubechies (db5)和Symlets (sym5)母小波族1 ~ 12级对携带胎儿重要信息的FHR信号进行分析。传统的形态学和线性特征是由FHR获得的。另外,利用从每个小波分量中分别得到的p范数、Frobenius形式、无穷范数和负无穷范数作为特征来支持分类。将获得的特征作为k近邻(kNN)和人工神经网络(ANN)分类器的输入,用于区分正常胎儿和缺氧胎儿。实验结果表明,利用4级haar和kNN对正常胎儿和缺氧胎儿的分类成功率分别为90.51%和90.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using wavelet transform for cardiotocography signals classification
As a fetal surveillance technique, cardiotocography (CTG) involves fetal heart rate (FHR), uterine contraction activities, and fetal movements. CTG is practiced as a primary diagnostic test throughout the world to identify events that may pose a risk to the fetus during pregnancy and delivery. In this work, FHR signals carrying vital information on fetus were analyzed by using Haar (haar), Daubechies (db5), and Symlets (sym5) mother wavelet families between levels 1 and 12. The traditionally used morphological and linear features are obtained from FHR. Also, p-norm, Frobenius form, infinity, and negative infinity norms which are obtained separately from the each of the wavelet components were used as a feature to support the classification. The obtained features were applied as an input to k-nearest neighbors (kNN) and artificial neural network (ANN) classifiers in order to discriminate the normal and hypoxic fetuses. According to experimental results, 90.51% and 90.21% classification success on the discrimination of normal and hypoxic fetuses were achieved by using haar at level 4 and kNN.
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