Peng Jin, Hao Dongmei, Yang Lin, Du Mengqing, Song Xiaoxiao, Jiang Hongqing, Zhang Yunhan, Zheng Dingchang
College of Life Science and Bioengineering, Beijing University of Technology, Intelligent Physiological Measurement and Clinical Translation, Beijing International Platform for Scientific and Technological Cooperation, Beijing, China.
Beijing Haidian Maternal and Children Health Hospital, Beijing, China.
Biocybern Biomed Eng. 2020 Jan-Mar;40(1):352-362. doi: 10.1016/j.bbe.2019.12.003.
Developing a computational method for recognizing preterm delivery is important for timely diagnosis and treatment of preterm delivery. The main aim of this study was to evaluate electrohysterogram (EHG) signals recorded at different gestational weeks for recognizing the preterm delivery using random forest (RF). EHG signals from 300 pregnant women were divided into two groups depending on when the signals were recorded: i) preterm and term delivery with EHG recorded before the 26 week of gestation (denoted by PE and TE group), and ii) preterm and term delivery with EHG recorded during or after the 26 week of gestation (denoted by PL and TL group). 31 linear features and nonlinear features were derived from each EHG signal, and then compared comprehensively within PE and TE group, and PL and TL group. After employing the adaptive synthetic sampling approach and six-fold cross-validation, the accuracy (ACC), sensitivity, specificity and area under the curve (AUC) were applied to evaluate RF classification. For PL and TL group, RF achieved the ACC of 0.93, sensitivity of 0.89, specificity of 0.97, and AUC of 0.80. Similarly, their corresponding values were 0.92, 0.88, 0.96 and 0.88 for PE and TE group, indicating that RF could be used to recognize preterm delivery effectively with EHG signals recorded before the 26 week of gestation.
开发一种用于识别早产的计算方法对于早产的及时诊断和治疗至关重要。本研究的主要目的是评估在不同孕周记录的子宫电图(EHG)信号,以使用随机森林(RF)识别早产。根据信号记录时间,将300名孕妇的EHG信号分为两组:i)在妊娠26周之前记录EHG的早产和足月分娩(分别记为PE组和TE组),以及ii)在妊娠26周期间或之后记录EHG的早产和足月分娩(分别记为PL组和TL组)。从每个EHG信号中提取31个线性特征和非线性特征,然后在PE组和TE组以及PL组和TL组内进行综合比较。在采用自适应合成采样方法和六折交叉验证后,应用准确率(ACC)、灵敏度、特异性和曲线下面积(AUC)来评估随机森林分类。对于PL组和TL组,随机森林的ACC为0.93,灵敏度为0.89,特异性为0.97,AUC为0.80。同样,PE组和TE组的相应值分别为0.92、0.88、0.96和0.88,这表明随机森林可以有效地利用妊娠26周之前记录的EHG信号来识别早产。