Efficient Fetal Health Prediction using Machine Learning

L. Mohammed Salman, A. Poongodi
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Abstract

The growth of technology in our day-to-day enterprise with advanced machines are outstanding through machine learning involving both machine learning and deep learning all over the world. Fetal monitoring during pregnancy time is the most important to save the life of the mother as well as the child. In this project, we present a ML technique that is used to measure the fetal heart rate during the time of pregnancy. The major component used for this detection is Fetal Digital stethoscope sensor which is to be placed on the abdomen of the pregnant and the signals are processed by the micro-controller used and the accurate fetal heart rate. This system is very flexible and low cost helps the patient to monitor the fetal heart rate in home. We will use ML method for our project. In this paper Fetal health is predicted by algorithms namely Decision Tree (DT) as existing and Recurrent Neural Network (RNN) as proposed and compared in terms of accuracy. From our work we can prove that our proposed RNN works better than other existing DT algorithm.
利用机器学习进行高效胎儿健康预测
在我们的日常企业中,先进机器通过机器学习和深度学习在全球范围内取得了卓越的发展。怀孕期间的胎儿监测对于挽救母婴生命至关重要。在本项目中,我们介绍了一种用于测量孕期胎儿心率的 ML 技术。用于检测的主要部件是胎儿数字听诊器传感器,它将被放置在孕妇的腹部,信号经微控制器处理后就能得到准确的胎儿心率。该系统非常灵活,成本低廉,可帮助病人在家中监测胎心率。我们将在项目中使用 ML 方法。本文采用现有的决策树(DT)算法和建议的循环神经网络(RNN)算法预测胎儿健康状况,并对准确率进行比较。从我们的工作中可以证明,我们提出的 RNN 比其他现有的 DT 算法效果更好。
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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