Cargando…
Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models
BACKGROUND: While previous studies identified risk factors for diverse pregnancy outcomes, traditional statistical methods had limited ability to quantify their impacts on birth outcomes precisely. We aimed to use a novel approach that applied different machine learning models to not only predict bi...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8586450/ https://www.ncbi.nlm.nih.gov/pubmed/34777251 http://dx.doi.org/10.3389/fendo.2021.755364 |
_version_ | 1784597890538143744 |
---|---|
author | Sun, Yuantong Zheng, Weiwei Zhang, Ling Zhao, Huijuan Li, Xun Zhang, Chao Ma, Wuren Tian, Dajun Yu, Kun-Hsing Xiao, Shuo Jin, Liping Hua, Jing |
author_facet | Sun, Yuantong Zheng, Weiwei Zhang, Ling Zhao, Huijuan Li, Xun Zhang, Chao Ma, Wuren Tian, Dajun Yu, Kun-Hsing Xiao, Shuo Jin, Liping Hua, Jing |
author_sort | Sun, Yuantong |
collection | PubMed |
description | BACKGROUND: While previous studies identified risk factors for diverse pregnancy outcomes, traditional statistical methods had limited ability to quantify their impacts on birth outcomes precisely. We aimed to use a novel approach that applied different machine learning models to not only predict birth outcomes but systematically quantify the impacts of pre- and post-conception serum thyroid-stimulating hormone (TSH) levels and other predictive characteristics on birth outcomes. METHODS: We used data from women who gave birth in Shanghai First Maternal and Infant Hospital from 2014 to 2015. We included 14,110 women with the measurement of preconception TSH in the first analysis and 3,428 out of 14,110 women with both pre- and post-conception TSH measurement in the second analysis. Synthetic Minority Over-sampling Technique (SMOTE) was applied to adjust the imbalance of outcomes. We randomly split (7:3) the data into a training set and a test set in both analyses. We compared Area Under Curve (AUC) for dichotomous outcomes and macro F1 score for categorical outcomes among four machine learning models, including logistic model, random forest model, XGBoost model, and multilayer neural network models to assess model performance. The model with the highest AUC or macro F1 score was used to quantify the importance of predictive features for adverse birth outcomes with the loss function algorithm. RESULTS: The XGBoost model provided prominent advantages in terms of improved performance and prediction of polytomous variables. Predictive models with abnormal preconception TSH or not-well-controlled TSH, a novel indicator with pre- and post-conception TSH levels combined, provided the similar robust prediction for birth outcomes. The highest AUC of 98.7% happened in XGBoost model for predicting low Apgar score with not-well-controlled TSH adjusted. By loss function algorithm, we found that not-well-controlled TSH ranked 4(th), 6(th), and 7(th) among 14 features, respectively, in predicting birthweight, induction, and preterm birth, and 3(rd) among 19 features in predicting low Apgar score. CONCLUSIONS: Our four machine learning models offered valid predictions of birth outcomes in women during pre- and post-conception. The predictive features panel suggested the combined TSH indicator (not-well-controlled TSH) could be a potentially competitive biomarker to predict adverse birth outcomes. |
format | Online Article Text |
id | pubmed-8586450 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-85864502021-11-13 Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models Sun, Yuantong Zheng, Weiwei Zhang, Ling Zhao, Huijuan Li, Xun Zhang, Chao Ma, Wuren Tian, Dajun Yu, Kun-Hsing Xiao, Shuo Jin, Liping Hua, Jing Front Endocrinol (Lausanne) Endocrinology BACKGROUND: While previous studies identified risk factors for diverse pregnancy outcomes, traditional statistical methods had limited ability to quantify their impacts on birth outcomes precisely. We aimed to use a novel approach that applied different machine learning models to not only predict birth outcomes but systematically quantify the impacts of pre- and post-conception serum thyroid-stimulating hormone (TSH) levels and other predictive characteristics on birth outcomes. METHODS: We used data from women who gave birth in Shanghai First Maternal and Infant Hospital from 2014 to 2015. We included 14,110 women with the measurement of preconception TSH in the first analysis and 3,428 out of 14,110 women with both pre- and post-conception TSH measurement in the second analysis. Synthetic Minority Over-sampling Technique (SMOTE) was applied to adjust the imbalance of outcomes. We randomly split (7:3) the data into a training set and a test set in both analyses. We compared Area Under Curve (AUC) for dichotomous outcomes and macro F1 score for categorical outcomes among four machine learning models, including logistic model, random forest model, XGBoost model, and multilayer neural network models to assess model performance. The model with the highest AUC or macro F1 score was used to quantify the importance of predictive features for adverse birth outcomes with the loss function algorithm. RESULTS: The XGBoost model provided prominent advantages in terms of improved performance and prediction of polytomous variables. Predictive models with abnormal preconception TSH or not-well-controlled TSH, a novel indicator with pre- and post-conception TSH levels combined, provided the similar robust prediction for birth outcomes. The highest AUC of 98.7% happened in XGBoost model for predicting low Apgar score with not-well-controlled TSH adjusted. By loss function algorithm, we found that not-well-controlled TSH ranked 4(th), 6(th), and 7(th) among 14 features, respectively, in predicting birthweight, induction, and preterm birth, and 3(rd) among 19 features in predicting low Apgar score. CONCLUSIONS: Our four machine learning models offered valid predictions of birth outcomes in women during pre- and post-conception. The predictive features panel suggested the combined TSH indicator (not-well-controlled TSH) could be a potentially competitive biomarker to predict adverse birth outcomes. Frontiers Media S.A. 2021-10-29 /pmc/articles/PMC8586450/ /pubmed/34777251 http://dx.doi.org/10.3389/fendo.2021.755364 Text en Copyright © 2021 Sun, Zheng, Zhang, Zhao, Li, Zhang, Ma, Tian, Yu, Xiao, Jin and Hua 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). 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 | Endocrinology Sun, Yuantong Zheng, Weiwei Zhang, Ling Zhao, Huijuan Li, Xun Zhang, Chao Ma, Wuren Tian, Dajun Yu, Kun-Hsing Xiao, Shuo Jin, Liping Hua, Jing Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title | Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title_full | Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title_fullStr | Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title_full_unstemmed | Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title_short | Quantifying the Impacts of Pre- and Post-Conception TSH Levels on Birth Outcomes: An Examination of Different Machine Learning Models |
title_sort | quantifying the impacts of pre- and post-conception tsh levels on birth outcomes: an examination of different machine learning models |
topic | Endocrinology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8586450/ https://www.ncbi.nlm.nih.gov/pubmed/34777251 http://dx.doi.org/10.3389/fendo.2021.755364 |
work_keys_str_mv | AT sunyuantong quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT zhengweiwei quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT zhangling quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT zhaohuijuan quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT lixun quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT zhangchao quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT mawuren quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT tiandajun quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT yukunhsing quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT xiaoshuo quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT jinliping quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels AT huajing quantifyingtheimpactsofpreandpostconceptiontshlevelsonbirthoutcomesanexaminationofdifferentmachinelearningmodels |