A Systematic Review on The Applications of Machine Learning for Fetal Birth Weight Prediction

Author:

Mane Deepak T.1,Mante Jyoti2,Bakare Anuradha Amar2,Gandhi Yatin3,Khetani Vinit4,Mahajan Rupali Atul1

Affiliation:

1. Vishwakarma Institute of Technology

2. Dr. Vishwanath karad World Peace University

3. Competent Softwares

4. Cybrix Technologies

Abstract

Abstract In order to protect the maternal and infant safety, birth weight is an important indicator during fetal development. A doctor's experience in clinical practice, however, helps estimate birth weight by using empirical formulas based on the experience of the doctors. Recently, birth weights have been predicted using machine learning (ML) technologies. A machine learning model is built on the basis of a collection of attributes learns to predict predefined characteristics or results. Using a machine learning model, input and output are modeled together and then a set of models are trained on the data. It is possible to use machine learning for a variety of tasks such as predicting risks, diagnosing diseases, and classifying objects due to its scalability and flexibility, which are advantages over conventional methods. This research reviews the machine learning classification models used previously by various researchers to predict fetal weight. In this paper 85 studies were reviewed. Machine learning approach was considered as a better option to predict the fetal weight in all the studies included in this paper. The findings of this research show that the accuracy rate of using machine learning applications for fetal birth weight prediction is above 60% in all the studies reviewed.

Publisher

Research Square Platform LLC

Reference85 articles.

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2. Predicting the appropriate mode of childbirth using machine learning algorithm;Kowsher M;Int J Adv Comput Sci Appl,2021

3. The impact of cesarean delivery on infant DNA methylation;Chen Q;BMC Pregnancy Childbirth

4. Fetal birthweight prediction with measured data by a temporal machine learning method;Tao J;MNC Med inform Decision making,2021

5. Fetal growth and gestational age prediction by machine learning;Lancet Digit health,2020

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