A machine learning system for automatic detection of preterm activity using artificial neural networks and uterine electromyography data

P. Fergus, A. Hussain, D. Al-Jumeily, H. Hamdan
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引用次数: 2

Abstract

Preterm births are babies born before 37 weeks of gestation. The premature delivery of babies is a major global health issue with those affected at greater risk of developing short and long-term complications. Therefore, a better understanding of why preterm births occur is needed. Electromyography is used to capture electrical activity in the uterus to help treat and understand the condition, which is time consuming and expensive. This has led to a recent interest in automated detection of the electromyography correlates of preterm activity. This paper explores this idea further using artificial neural networks to classify term and preterm records, using an open dataset containing 300 records of uterine electromyography signals. Our approach shows an improvement on existing studies with 94.56% for sensitivity, 87.83% for specificity, and 94% for the area under the curve with 9% global error when using the multilayer perceptron neural network trained using the Levenberg-Marquardt algorithm.
使用人工神经网络和子宫肌电图数据自动检测早产活动的机器学习系统
早产是指怀孕37周前出生的婴儿。婴儿早产是一个重大的全球健康问题,早产儿患短期和长期并发症的风险更大。因此,有必要更好地了解早产发生的原因。肌电图用于捕捉子宫内的电活动,以帮助治疗和了解这种情况,这既耗时又昂贵。这导致了最近对早产儿活动相关的肌电图自动检测的兴趣。本文利用一个包含300条子宫肌电信号记录的开放数据集,进一步利用人工神经网络对足月和早产记录进行分类。当使用Levenberg-Marquardt算法训练的多层感知器神经网络时,我们的方法显示出对现有研究的改进,灵敏度为94.56%,特异性为87.83%,曲线下面积为94%,全局误差为9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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