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Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model

(1) Background: Size at birth is an important early determinant of health later in life. The prevalence of small for gestational age (SGA) newborns is high worldwide and may be associated with maternal nutritional and metabolic factors. Thus, estimation of fetal growth is warranted. (2) Methods: In...

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Autores principales: Perichart-Perera, Otilia, Avila-Sosa, Valeria, Solis-Paredes, Juan Mario, Montoya-Estrada, Araceli, Reyes-Muñoz, Enrique, Rodríguez-Cano, Ameyalli M., González-Leyva, Carla P., Sánchez-Martínez, Maribel, Estrada-Gutierrez, Guadalupe, Irles, Claudine
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8944993/
https://www.ncbi.nlm.nih.gov/pubmed/35326224
http://dx.doi.org/10.3390/antiox11030574
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author Perichart-Perera, Otilia
Avila-Sosa, Valeria
Solis-Paredes, Juan Mario
Montoya-Estrada, Araceli
Reyes-Muñoz, Enrique
Rodríguez-Cano, Ameyalli M.
González-Leyva, Carla P.
Sánchez-Martínez, Maribel
Estrada-Gutierrez, Guadalupe
Irles, Claudine
author_facet Perichart-Perera, Otilia
Avila-Sosa, Valeria
Solis-Paredes, Juan Mario
Montoya-Estrada, Araceli
Reyes-Muñoz, Enrique
Rodríguez-Cano, Ameyalli M.
González-Leyva, Carla P.
Sánchez-Martínez, Maribel
Estrada-Gutierrez, Guadalupe
Irles, Claudine
author_sort Perichart-Perera, Otilia
collection PubMed
description (1) Background: Size at birth is an important early determinant of health later in life. The prevalence of small for gestational age (SGA) newborns is high worldwide and may be associated with maternal nutritional and metabolic factors. Thus, estimation of fetal growth is warranted. (2) Methods: In this work, we developed an artificial neural network (ANN) model based on first-trimester maternal body fat composition, biochemical and oxidative stress biomarkers, and gestational weight gain (GWG) to predict an SGA newborn in pregnancies with or without obesity. A sensibility analysis to classify maternal features was conducted, and a simulator based on the ANN algorithm was constructed to predict the SGA outcome. Several predictions were performed by varying the most critical maternal features attained by the model to obtain different scenarios leading to SGA. (3) Results: The ANN model showed good performance between the actual and simulated data (R(2) = 0.938) and an AUROC of 0.8 on an independent dataset. The top-five maternal predictors in the first trimester were protein and lipid oxidation biomarkers (carbonylated proteins and malondialdehyde), GWG, vitamin D, and total antioxidant capacity. Finally, excessive GWG and redox imbalance predicted SGA newborns in the implemented simulator. Significantly, vitamin D deficiency also predicted simulated SGA independently of GWG or redox status. (4) Conclusions: The study provided a computational model for the early prediction of SGA, in addition to a promising simulator that facilitates hypothesis-driven constructions, to be further validated as an application.
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spelling pubmed-89449932022-03-25 Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model Perichart-Perera, Otilia Avila-Sosa, Valeria Solis-Paredes, Juan Mario Montoya-Estrada, Araceli Reyes-Muñoz, Enrique Rodríguez-Cano, Ameyalli M. González-Leyva, Carla P. Sánchez-Martínez, Maribel Estrada-Gutierrez, Guadalupe Irles, Claudine Antioxidants (Basel) Article (1) Background: Size at birth is an important early determinant of health later in life. The prevalence of small for gestational age (SGA) newborns is high worldwide and may be associated with maternal nutritional and metabolic factors. Thus, estimation of fetal growth is warranted. (2) Methods: In this work, we developed an artificial neural network (ANN) model based on first-trimester maternal body fat composition, biochemical and oxidative stress biomarkers, and gestational weight gain (GWG) to predict an SGA newborn in pregnancies with or without obesity. A sensibility analysis to classify maternal features was conducted, and a simulator based on the ANN algorithm was constructed to predict the SGA outcome. Several predictions were performed by varying the most critical maternal features attained by the model to obtain different scenarios leading to SGA. (3) Results: The ANN model showed good performance between the actual and simulated data (R(2) = 0.938) and an AUROC of 0.8 on an independent dataset. The top-five maternal predictors in the first trimester were protein and lipid oxidation biomarkers (carbonylated proteins and malondialdehyde), GWG, vitamin D, and total antioxidant capacity. Finally, excessive GWG and redox imbalance predicted SGA newborns in the implemented simulator. Significantly, vitamin D deficiency also predicted simulated SGA independently of GWG or redox status. (4) Conclusions: The study provided a computational model for the early prediction of SGA, in addition to a promising simulator that facilitates hypothesis-driven constructions, to be further validated as an application. MDPI 2022-03-17 /pmc/articles/PMC8944993/ /pubmed/35326224 http://dx.doi.org/10.3390/antiox11030574 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Perichart-Perera, Otilia
Avila-Sosa, Valeria
Solis-Paredes, Juan Mario
Montoya-Estrada, Araceli
Reyes-Muñoz, Enrique
Rodríguez-Cano, Ameyalli M.
González-Leyva, Carla P.
Sánchez-Martínez, Maribel
Estrada-Gutierrez, Guadalupe
Irles, Claudine
Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title_full Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title_fullStr Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title_full_unstemmed Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title_short Vitamin D Deficiency, Excessive Gestational Weight Gain, and Oxidative Stress Predict Small for Gestational Age Newborns Using an Artificial Neural Network Model
title_sort vitamin d deficiency, excessive gestational weight gain, and oxidative stress predict small for gestational age newborns using an artificial neural network model
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8944993/
https://www.ncbi.nlm.nih.gov/pubmed/35326224
http://dx.doi.org/10.3390/antiox11030574
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