Machine Learning Techniques for Identifying Fetal Risk During Pregnancy

S. Ravikumar, E. Kannan
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引用次数: 1

Abstract

Cardiotocography (CTG) is a biophysical method for assessing fetal condition that primarily relies on the recording and automated analysis of fetal heart activity. The quantitative description of the CTG signals is provided by computerized fetal monitoring systems. Even though effective conclusion generation methods for decision process support are still required to find out the fetal risk such as premature embryo, this proposed method and outcome data can confirm the assessment of the fetal state after birth. Low birth weight is quite possibly the main attribute that significantly depicts an unusual fetal result. These expectations are assessed in a constant experimental decision support system, providing valuable information that can be used to obtain additional information about the fetal state using machine learning techniques. The advancements in modern obstetric practice enabled the use of numerous reliable and robust machine learning approaches in classifying fetal heart rate signals. The Naïve Bayes (NB) classifier, support vector machine (SVM), decision trees (DT), and random forest (RF) are used in the proposed method. To assess these outcomes in the proposed method, some of the metrics such as precision, accuracy, F1 score, recall, sensitivity, logarithmic loss and mean absolute error have been taken. The above mentioned metrics will be helpful to predict the fetal risk.
孕期胎儿风险识别的机器学习技术
心脏造影(CTG)是一种评估胎儿状况的生物物理方法,主要依赖于胎儿心脏活动的记录和自动分析。计算机胎儿监测系统提供CTG信号的定量描述。尽管尚需要有效的结论生成方法来支持决策过程,以发现早产等胎儿风险,但本文提出的方法和结局数据可以证实胎儿出生后状态的评估。低出生体重很可能是显著描述不寻常胎儿结果的主要属性。这些期望在一个恒定的实验决策支持系统中进行评估,提供有价值的信息,可用于使用机器学习技术获得有关胎儿状态的额外信息。现代产科实践的进步使得使用许多可靠和强大的机器学习方法来分类胎儿心率信号成为可能。该方法使用了Naïve贝叶斯(NB)分类器、支持向量机(SVM)、决策树(DT)和随机森林(RF)。为了评估所提出方法的这些结果,采用了一些指标,如精密度、准确度、F1分数、召回率、灵敏度、对数损失和平均绝对误差。上述指标将有助于预测胎儿风险。
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