Ye-Lin Yiyao, Garcia-Casado Javier, Prats-Boluda Gema, Alberola-Rubio José, Perales Alfredo
Grupo de Bioelectrónica (I3BH), Universitat Politècnica de València, Camino de Vera s/n Ed.8B, 46022 Valencia, Spain.
Servicio de Obstetricia, H. U. La Fe, Valencia, Spain.
Comput Math Methods Med. 2014;2014:470786. doi: 10.1155/2014/470786. Epub 2014 Jan 9.
Electrohysterography (EHG) is a noninvasive technique for monitoring uterine electrical activity. However, the presence of artifacts in the EHG signal may give rise to erroneous interpretations and make it difficult to extract useful information from these recordings. The aim of this work was to develop an automatic system of segmenting EHG recordings that distinguishes between uterine contractions and artifacts. Firstly, the segmentation is performed using an algorithm that generates the TOCO-like signal derived from the EHG and detects windows with significant changes in amplitude. After that, these segments are classified in two groups: artifacted and nonartifacted signals. To develop a classifier, a total of eleven spectral, temporal, and nonlinear features were calculated from EHG signal windows from 12 women in the first stage of labor that had previously been classified by experts. The combination of characteristics that led to the highest degree of accuracy in detecting artifacts was then determined. The results showed that it is possible to obtain automatic detection of motion artifacts in segmented EHG recordings with a precision of 92.2% using only seven features. The proposed algorithm and classifier together compose a useful tool for analyzing EHG signals and would help to promote clinical applications of this technique.
子宫电描记术(EHG)是一种用于监测子宫电活动的非侵入性技术。然而,EHG信号中伪迹的存在可能会导致错误的解读,并使得从这些记录中提取有用信息变得困难。这项工作的目的是开发一个自动分割EHG记录的系统,以区分子宫收缩和伪迹。首先,使用一种算法进行分割,该算法生成从EHG导出的类似TOCO的信号,并检测幅度有显著变化的窗口。之后,将这些片段分为两组:有伪迹信号和无伪迹信号。为了开发一个分类器,从12名处于分娩第一阶段的女性的EHG信号窗口中总共计算了11个频谱、时间和非线性特征,这些窗口此前已由专家进行了分类。然后确定导致检测伪迹时准确率最高的特征组合。结果表明,仅使用七个特征就可以在分割的EHG记录中自动检测运动伪迹,精度达到92.2%。所提出的算法和分类器共同构成了一个分析EHG信号的有用工具,并将有助于推动该技术的临床应用。