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首页> 外文期刊>The journal of obstetrics and gynaecology research >An unsupervised classification method of uterine electromyography signals: classification for detection of preterm deliveries.
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An unsupervised classification method of uterine electromyography signals: classification for detection of preterm deliveries.

机译:子宫肌电信号的无监督分类方法:用于检测早产的分类。

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AIM: This article proposes an unsupervised classification method that can be applied to the electromyography signal of uterine contractions for the detection of preterm birth. METHODS: The frequency content of the electromyography changes from one woman to another, and during pregnancy, so wavelet decomposition is first used to extract the parameters of each contraction, and an unsupervised statistical classification method based on Fisher's test is used to classify the events. A principal component analysis projection is then used as evidence of the groups resulting from this classification. Another method of classification based on a competitive neural network is also applied on the same signals. Both methods are compared. RESULTS: Results show that uterine contractions may be classified into independent groups according to their frequency content and according to term (either at recording or at delivery).
机译:目的:本文提出了一种无监督分类方法,可将其应用于子宫收缩的肌电信号以检测早产。方法:肌电图的频率内容从一个女人到另一个女人在怀孕期间变化,因此首先使用小波分解来提取每个收缩的参数,然后使用基于Fisher检验的无监督统计分类方法对事件进行分类。然后将主成分分析预测用作此分类所产生的组的证据。基于竞争神经网络的另一种分类方法也应用于相同的信号。比较两种方法。结果:结果表明,子宫收缩可根据其频率含量和术语(记录或分娩时)分为独立的组。

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