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Evaluation of Advanced Artificial Neural Network Classification and Feature Extraction Techniques for Detecting Preterm Births Using EHG Records

机译:高级人工神经网络分类评价,采用EHG记录检测早产出生的特征提取技术

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Globally, the rate of preterm births is increasing and this is resulting in significant health, development and economic problems. Current methods for the early detection of such births are inadequate. However, there has been some evidence to suggest that the analysis of uterine electrical signals, collected from the abdominal surface, could provide an independent and easier way to diagnose true labour and detect when preterm delivery is about to occur. Using advanced machine learning algorithms, in conjunction with electrohysterography signal processing, numerous studies have focused on detecting true labour several days prior to the event. In this paper however, the electrohysterography signals have been used to detect preterm births. This has been achieved using an open dataset that contains 262 records for women who delivered at term and 38 who delivered prematurely. Several new features from Electromyography studies have been utilized, as well as feature-ranking techniques to determine their discriminative capabilities in detecting term and preterm records. Seven artificial neural network algorithms are considered with the results showing that the Radial Basis Function Neural Network classifier performs the best, with 85% sensitivity, 80% specificity, 90% area under the curve and a 17% mean error rate.
机译:在全球范围内,早产出生率正在增加,这导致了重大的健康,发展和经济问题。目前用于早期检测此类产出的方​​法是不充分的。然而,有一些证据表明,从腹表面收集的子宫电信号的分析可以提供独立和更简单的方法来诊断真正的劳动力,并且当早产输送即将发生时检测。使用先进的机器学习算法与驻极术信号处理结合,许多研究都集中在事件前几天检测真正的劳动力。然而,在本文中,驻极术信号已被用于检测早产出生物。这已经通过一个公开数据集实现,该数据集包含在术语和38次交付的妇女的262条记录。已经利用了来自肌动画研究的几个新特征,以及特征排名技术,以确定检测术语和早产记录中的鉴别能力。考虑了七个人工神经网络算法,结果表明径向基函数神经网络分类器表现最佳,具有85%的灵敏度,80%特异性,90%面积,曲线下的90%和17%的误差率。

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