Cargando…

Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study

BACKGROUND: Predicting birth weight and identifying its risk factors are clinically important. This study aims to use interpretable machine learning to predict birth weight and identity important predictors. METHODS: This prospective cohort study was conducted in Tongzhou Maternal and Child Health C...

Descripción completa

Detalles Bibliográficos
Autores principales: Liu, Zheng, Han, Na, Su, Tao, Ji, Yuelong, Bao, Heling, Zhou, Shuang, Luo, Shusheng, Wang, Hui, Liu, Jue, Wang, Hai-Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9691849/
https://www.ncbi.nlm.nih.gov/pubmed/36440327
http://dx.doi.org/10.3389/fped.2022.899954
_version_ 1784837120344457216
author Liu, Zheng
Han, Na
Su, Tao
Ji, Yuelong
Bao, Heling
Zhou, Shuang
Luo, Shusheng
Wang, Hui
Liu, Jue
Wang, Hai-Jun
author_facet Liu, Zheng
Han, Na
Su, Tao
Ji, Yuelong
Bao, Heling
Zhou, Shuang
Luo, Shusheng
Wang, Hui
Liu, Jue
Wang, Hai-Jun
author_sort Liu, Zheng
collection PubMed
description BACKGROUND: Predicting birth weight and identifying its risk factors are clinically important. This study aims to use interpretable machine learning to predict birth weight and identity important predictors. METHODS: This prospective cohort study was conducted in Tongzhou Maternal and Child Health Care Hospital of Beijing, China, recruiting pregnant women between June 2018 and February 2019. We used 24 features to predict infant birth weight, including gestational age, mother's age, parity, history of macrosomia delivery, pre-pregnancy body mass index (BMI), height, father's BMI, lifestyle (diet, physical activity, smoking), and biomarker (fasting glucose and lipids) features. Study outcome was birth weight of infant. We used 8 supervised learning models including 4 individual [linear regression, ridge regression, lasso regression, support vector machines regression (SVR)], and 4 ensemble estimators (random forest, AdaBoost, gradient boosted trees, and voting ensemble for regression) to predict birth weight. Model accuracy was measured by root mean squared error (RMSE) of 10-fold cross validation on the training set and RMSE of prediction on the test set. We used permutation importance algorithm to understand the prediction from the models and what affected them. RESULT: This study included 4,754 mother-child dyads. RMSEs were lower in voting ensemble for regression, linear regression, and SVR than random forest, AdaBoost, and gradient boosted tree. The 5 most important predictors for infant birth weight were gestational age, fetal sex, preterm birth, mother's height, and pre-pregnancy BMI. After adding ultrasound-measured indicators of fetal growth into predictors, mother's height and pre-pregnancy BMI remained the most important predictors in predicting the outcome. CONCLUSION: Mother's height and pre-pregnancy BMI were identified as important predictors for infant birth weight. Interpretable machine learning is a promising tool in the prediction of birth weight.
format Online
Article
Text
id pubmed-9691849
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-96918492022-11-26 Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study Liu, Zheng Han, Na Su, Tao Ji, Yuelong Bao, Heling Zhou, Shuang Luo, Shusheng Wang, Hui Liu, Jue Wang, Hai-Jun Front Pediatr Pediatrics BACKGROUND: Predicting birth weight and identifying its risk factors are clinically important. This study aims to use interpretable machine learning to predict birth weight and identity important predictors. METHODS: This prospective cohort study was conducted in Tongzhou Maternal and Child Health Care Hospital of Beijing, China, recruiting pregnant women between June 2018 and February 2019. We used 24 features to predict infant birth weight, including gestational age, mother's age, parity, history of macrosomia delivery, pre-pregnancy body mass index (BMI), height, father's BMI, lifestyle (diet, physical activity, smoking), and biomarker (fasting glucose and lipids) features. Study outcome was birth weight of infant. We used 8 supervised learning models including 4 individual [linear regression, ridge regression, lasso regression, support vector machines regression (SVR)], and 4 ensemble estimators (random forest, AdaBoost, gradient boosted trees, and voting ensemble for regression) to predict birth weight. Model accuracy was measured by root mean squared error (RMSE) of 10-fold cross validation on the training set and RMSE of prediction on the test set. We used permutation importance algorithm to understand the prediction from the models and what affected them. RESULT: This study included 4,754 mother-child dyads. RMSEs were lower in voting ensemble for regression, linear regression, and SVR than random forest, AdaBoost, and gradient boosted tree. The 5 most important predictors for infant birth weight were gestational age, fetal sex, preterm birth, mother's height, and pre-pregnancy BMI. After adding ultrasound-measured indicators of fetal growth into predictors, mother's height and pre-pregnancy BMI remained the most important predictors in predicting the outcome. CONCLUSION: Mother's height and pre-pregnancy BMI were identified as important predictors for infant birth weight. Interpretable machine learning is a promising tool in the prediction of birth weight. Frontiers Media S.A. 2022-11-11 /pmc/articles/PMC9691849/ /pubmed/36440327 http://dx.doi.org/10.3389/fped.2022.899954 Text en © 2022 Liu, Han, Su, Ji, Bao, Zhou, Luo, Wang, Liu and Wang. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY) (https://creativecommons.org/licenses/by/4.0/) . The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Pediatrics
Liu, Zheng
Han, Na
Su, Tao
Ji, Yuelong
Bao, Heling
Zhou, Shuang
Luo, Shusheng
Wang, Hui
Liu, Jue
Wang, Hai-Jun
Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title_full Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title_fullStr Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title_full_unstemmed Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title_short Interpretable machine learning to identify important predictors of birth weight: A prospective cohort study
title_sort interpretable machine learning to identify important predictors of birth weight: a prospective cohort study
topic Pediatrics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9691849/
https://www.ncbi.nlm.nih.gov/pubmed/36440327
http://dx.doi.org/10.3389/fped.2022.899954
work_keys_str_mv AT liuzheng interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT hanna interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT sutao interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT jiyuelong interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT baoheling interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT zhoushuang interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT luoshusheng interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT wanghui interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT liujue interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy
AT wanghaijun interpretablemachinelearningtoidentifyimportantpredictorsofbirthweightaprospectivecohortstudy