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利用子宫肌电图连接矩阵的图论方法检测分娩。

Detecting labor using graph theory on connectivity matrices of uterine EMG.

作者信息

Al-Omar S, Diab A, Nader N, Khalil M, Karlsson B, Marque C

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:2195-8. doi: 10.1109/EMBC.2015.7318826.

Abstract

Premature labor is one of the most serious health problems in the developed world. One of the main reasons for this is that no good way exists to distinguish true labor from normal pregnancy contractions. The aim of this paper is to investigate if the application of graph theory techniques to multi-electrode uterine EMG signals can improve the discrimination between pregnancy contractions and labor. To test our methods we first applied them to synthetic graphs where we detected some differences in the parameters results and changes in the graph model from pregnancy-like graphs to labor-like graphs. Then, we applied the same methods to real signals. We obtained the best differentiation between pregnancy and labor through the same parameters. Major improvements in differentiating between pregnancy and labor were obtained using a low pass windowing preprocessing step. Results show that real graphs generally became more organized when moving from pregnancy, where the graph showed random characteristics, to labor where the graph became a more small-world like graph.

摘要

早产是发达国家最严重的健康问题之一。造成这种情况的主要原因之一是,目前尚无有效的方法来区分真正的分娩与正常的孕期宫缩。本文旨在研究将图论技术应用于多电极子宫肌电信号是否能提高对孕期宫缩和分娩的区分能力。为了测试我们的方法,我们首先将其应用于合成图,在这些合成图中,我们检测到了参数结果的一些差异以及图模型从类似孕期的图到类似分娩的图的变化。然后,我们将相同的方法应用于真实信号。通过相同的参数,我们实现了孕期和分娩之间的最佳区分。使用低通加窗预处理步骤,在区分孕期和分娩方面取得了重大改进。结果表明,从孕期(此时图呈现随机特征)到分娩(此时图变得更像小世界网络),真实的图通常会变得更有组织性。

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