基于尺度图分析的深度学习CTG信号自动分类

S. Nitin Moses, S. Priyadarsine, V. D. Lalitha Ambigai, S. Logavarshini, U. Madhanlal, D. Kanchana
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引用次数: 0

摘要

在这项工作中,我们尝试使用尺度图和深度学习方法对CTG信号进行分类。早产是全世界早产婴儿死亡的主要原因。根据世界卫生组织(WHO)的数据,每年有15%的婴儿早产。预测早产有助于早期产妇和新生儿保健,从而最大限度地减少过早死亡。在这项工作中,CTG信号包括胎儿心率(FHR)和子宫收缩(UC)从一个公开的数据库中获得。利用连续小波变换(CWT)将得到的FHR和UC信号转换成二维尺度图。尺度图图像根据胎龄进行标记,并作为深度学习网络的输入。使用预训练的卷积神经网络(CNN) GoogLeNet对CTG信号进行分类。尺度图图像被调整大小以匹配GoogLeNet的输入大小。为了防止深度神经网络的过拟合,将数据分为训练数据和验证数据。网络训练了80次迭代,对于每次迭代,训练数据和验证数据被相应地分割。训练后的网络在三个不同的妊娠期即早产、足月和足月后进行了测试。该方法能够区分妊娠阶段,FHR信号的分类准确率为88.23%,UC信号的分类准确率为87.50%。因此,该方法可作为预测孕妇早产的诊断工具,并提供相应的保健服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Classification of CTG signals using Deep Learning based Scalogram Analysis
In this work, an attempt has been made to classify Cardiotocograph (CTG) signals using scalogram and deep learning approach. Preterm labor is the leading cause of death in prematurely born babies across the world. According to the World Health Organization (WHO), 15% of babies are born prematurely every year. Prediction of preterm labor could help in early maternal and neonatal healthcare thereby minimizing premature mortalities. In this work, the CTG signals consisting of Fetal Heart Rate (FHR) and Uterine Contraction (UC) are obtained from a publicly available database. The obtained FHR and UC signals are converted into two dimensional scalograms using Continuous Wavelet Transform (CWT). The scalogram images are labeled according to the gestational age and given as input to the deep learning network. GoogLeNet, a pre-trained Convolutional Neural Network (CNN) is used for classification of the CTG signals. The scalogram images are resized to match the input size of the GoogLeNet. The data is split into training and validation data to prevent overfitting of the deep neural network. The network is trained for 80 iterations and for each iteration, the training and validation data are split accordingly. The trained network is tested for three different gestational periods namely preterm, term and post-term labor. The proposed approach is able to differentiate gestational stages and produce classification accuracy of 88.23% for FHR signals and 87.50% for UC signals. Hence, this method could be used as a diagnostic tool for predicting preterm labor in pregnant women and provide appropriate health care services.
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