Prediction of fetal weight at varying gestational age in the absence of ultrasound examination using ensemble learning.

Journal: Artificial intelligence in medicine
Published Date:

Abstract

Obstetric ultrasound examination of physiological parameters has been mainly used to estimate the fetal weight during pregnancy and baby weight before labour to monitor fetal growth and reduce prenatal morbidity and mortality. However, the problem is that ultrasound estimation of fetal weight is subject to population's difference, strict operating requirements for sonographers, and poor access to ultrasound in low-resource areas. Inaccurate estimations may lead to negative perinatal outcomes. This study aims to predict fetal weight at varying gestational age in the absence of ultrasound examination within a certain accuracy. We consider that machine learning can provide an accurate estimation for obstetricians alongside traditional clinical practices, as well as an efficient and effective support tool for pregnant women for self-monitoring. We present a robust methodology using a data set comprising 4212 intrapartum recordings. The cubic spline function is used to fit the curves of several key characteristics that are extracted from ultrasound reports. A number of simple and powerful machine learning algorithms are trained, and their performance is evaluated with real test data. We also propose a novel evaluation performance index called the intersection-over-union (loU) for our study. The results are encouraging using an ensemble model consisting of Random Forest, XGBoost, and LightGBM algorithms. The experimental results show the loU between predicted range of fetal weight at any gestational age that is given by the ensemble model and ultrasound respectively. The machine learning based approach applied in our study is able to predict, with a high accuracy, fetal weight at varying gestational age in the absence of ultrasound examination.

Authors

  • Yu Lu
    Faw-volkswagen Automative Co., Changchun, China.
  • Xianghua Fu
    College of Big Data and Internet, Shenzhen Technology University, Shenzhen, China. Electronic address: fuxianghua@sztu.edu.cn.
  • Fangxiong Chen
    School of Automaton, Guangdong University of Technology, Guangzhou, China. Electronic address: 2111604199@gdut.edu.cn.
  • Kelvin K L Wong
    School of Medicine, Western Sydney University, Sydney, Australia. Electronic address: kelvin.wong@westernsydney.edu.au.