A Machine Learning Approach for an Early Prediction of Preterm Delivery

Danica Despotovic, Aleksandra Zec, K. Mladenović, N. Radin, T. Lončar-Turukalo
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引用次数: 19

Abstract

The preterm birth presents a major cause of the infants' deaths, or the consequent health impairments globally, with an increasing trend of the preterm rate. The enormous global burden on both families and society calls for the preventive and predictive measures. The electrohysterogram (EHG), electrical activity of uterus as measured by surface electrodes, is a noninvasive and affordable tool for effective monitoring of both pregnancy and labour. In this study, the possibility of an early prediction of preterm delivery from the EHG recordings made between 22nd and 25th week of the gestation is explored. A set of novel features, including those exploiting signal's nonstationarity, based on the predictive modelling, and empirical mode decomposition, was evaluated on 15min long EHG recordings from the publicly available Term-Preterm EHG (TPEHG) database. On average, Random Forest classifier combined with artificial sampling, tested using 10-fold cross-validation on 322 samples (38 preterm) provided for 99.23% accuracy, with 98.40%sensitivity, and area under curve of 99%. The proposed approach has an additional advantage achieving the classification improvement over shorter, 15min long EHG recordings.
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早产早期预测的机器学习方法
早产是全球婴儿死亡或由此造成的健康损害的一个主要原因,早产率呈上升趋势。家庭和社会的巨大全球负担要求采取预防和预测措施。子宫电图(EHG)是通过表面电极测量的子宫电活动,是一种无创且经济实惠的有效监测妊娠和分娩的工具。在这项研究中,探讨了从妊娠22至25周的EHG记录中早期预测早产的可能性。在公开的Term-Preterm EHG (TPEHG)数据库中,对15分钟长的EHG记录进行了评估,包括基于预测建模和经验模式分解的利用信号非平稳性的一组新特征。随机森林分类器与人工抽样相结合,对322个样本(38个早产儿)进行10倍交叉验证,平均准确率为99.23%,灵敏度为98.40%,曲线下面积为99%。该方法还有一个额外的优势,即在较短的15分钟长的EHG记录中实现分类改进。
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