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基于图论分析的妊娠和分娩宫缩分类

Classification of pregnancy and labor contractions using a graph theory based analysis.

作者信息

Nader N, Hassan M, Falou W, Diab A, Al-Omar S, Khalil M, Marque C

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:2876-9. doi: 10.1109/EMBC.2015.7318992.

Abstract

In this paper, we propose a new framework to characterize the electrohysterographic (EHG) signals recorded during pregnancy and labor. The approach is based on the analysis of the propagation of the uterine electrical activity. The processing pipeline includes i) the estimation of the statistical dependencies between the different recorded EHG signals, ii) the characterization of the obtained connectivity matrices using network measures and iii) the use of these measures in clinical application: the classification between pregnancy and labor. Due to its robustness to volume conductor, we used the imaginary part of coherence in order to produce the connectivity matrix which is then transformed into a graph. We evaluate the performance of several graph measures. We also compare the results with the parameter mostly used in the literature: the peak frequency combined with the propagation velocity (PV +PF). Our results show that the use of the network measures is a promising tool to classify labor and pregnancy contractions with a small superiority of the graph strength over PV+PF.

摘要

在本文中,我们提出了一种新的框架来表征孕期和分娩期间记录的子宫电图(EHG)信号。该方法基于对子宫电活动传播的分析。处理流程包括:i)估计不同记录的EHG信号之间的统计依赖性;ii)使用网络度量对获得的连通性矩阵进行表征;iii)在临床应用中使用这些度量:区分孕期和分娩。由于其对容积导体的鲁棒性,我们使用相干性的虚部来生成连通性矩阵,然后将其转换为一个图。我们评估了几种图度量的性能。我们还将结果与文献中最常用的参数:峰值频率与传播速度(PV+PF)进行了比较。我们的结果表明,使用网络度量是一种很有前景的工具,可用于区分分娩和孕期宫缩,图强度比PV+PF略具优势。

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