Channel combination selection for EHG bivariate analysis

D. Alamedine, M. Khalil, C. Marque
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引用次数: 3

Abstract

The EHG signals are recorded using a multichannel system positioned on the woman's abdomen for the simultaneous recording of 16 channels of EHG. Several studies calculated the features related to EHG propagation by studying the coupling between all possible channels (bivariate analysis). Using all the possible features extracted to characterize propagation, from all possible combinations of channels, lead to a very large dimension of search and to a complex classification. Therefore, the aim of this paper is the selection of the most relevant channel combinations (using Fscore method), that provide the most useful information to discriminate between pregnancy and labor classes. This channel combination selection step is then followed by a feature selection method named genetic algorithm that is used to select the best features (from the propagation features used in this study) from the selected channel combinations. Additionally, we applied these selection steps on bipolar and monopolar EHG signals in order to see which is the best to use for the bivariate analysis.
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EHG双变量分析的通道组合选择
EHG信号通过放置在女性腹部的多通道系统记录,同时记录16个通道的EHG。一些研究通过研究所有可能通道之间的耦合来计算与EHG传播相关的特征(双变量分析)。使用从所有可能的通道组合中提取的所有可能的特征来表征传播,导致搜索维度非常大并且分类非常复杂。因此,本文的目的是选择最相关的渠道组合(使用Fscore方法),提供最有用的信息来区分怀孕和劳动阶层。该信道组合选择步骤之后是一种称为遗传算法的特征选择方法,用于从所选信道组合中选择最佳特征(从本研究中使用的传播特征中)。此外,我们将这些选择步骤应用于双极和单极EHG信号,以查看哪一个最适合用于双变量分析。
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