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Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats

BACKGROUND: In developing countries, maternal undernutrition is the major intrauterine environmental factor contributing to fetal development and adverse pregnancy outcomes. Maternal nutrition restriction (MNR) in gestation has proven to impact overall growth, bone development, and proliferation and...

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Autores principales: Liu, Yong, Munteanu, Cristian R., Yan, Qiongxian, Pedreira, Nieves, Kang, Jinhe, Tang, Shaoxun, Zhou, Chuanshe, He, Zhixiong, Tan, Zhiliang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6802673/
https://www.ncbi.nlm.nih.gov/pubmed/31649832
http://dx.doi.org/10.7717/peerj.7840
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author Liu, Yong
Munteanu, Cristian R.
Yan, Qiongxian
Pedreira, Nieves
Kang, Jinhe
Tang, Shaoxun
Zhou, Chuanshe
He, Zhixiong
Tan, Zhiliang
author_facet Liu, Yong
Munteanu, Cristian R.
Yan, Qiongxian
Pedreira, Nieves
Kang, Jinhe
Tang, Shaoxun
Zhou, Chuanshe
He, Zhixiong
Tan, Zhiliang
author_sort Liu, Yong
collection PubMed
description BACKGROUND: In developing countries, maternal undernutrition is the major intrauterine environmental factor contributing to fetal development and adverse pregnancy outcomes. Maternal nutrition restriction (MNR) in gestation has proven to impact overall growth, bone development, and proliferation and metabolism of mesenchymal stem cells in offspring. However, the efficient method for elucidation of fetal bone development performance through maternal bone metabolic biochemical markers remains elusive. METHODS: We adapted goats to elucidate fetal bone development state with maternal serum bone metabolic proteins under malnutrition conditions in mid- and late-gestation stages. We used the experimental data to create 72 datasets by mixing different input features such as one-hot encoding of experimental conditions, metabolic original data, experimental-centered features and experimental condition probabilities. Seven Machine Learning methods have been used to predict six fetal bone parameters (weight, length, and diameter of femur/humerus). RESULTS: The results indicated that MNR influences fetal bone development (femur and humerus) and fetal bone metabolic protein levels (C-terminal telopeptides of collagen I, CTx, in middle-gestation and N-terminal telopeptides of collagen I, NTx, in late-gestation), and maternal bone metabolites (low bone alkaline phosphatase, BALP, in middle-gestation and high BALP in late-gestation). The results show the importance of experimental conditions (ECs) encoding by mixing the information with the serum metabolic data. The best classification models obtained for femur weight (Fw) and length (FI), and humerus weight (Hw) are Support Vector Machines classifiers with the leave-one-out cross-validation accuracy of 1. The rest of the accuracies are 0.98, 0.946 and 0.696 for the diameter of femur (Fd), diameter and length of humerus (Hd, Hl), respectively. With the feature importance analysis, the moving averages mixed ECs are generally more important for the majority of the models. The moving average of parathyroid hormone (PTH) within nutritional conditions (MA-PTH-experim) is important for Fd, Hd and Hl prediction models but its removal for enhancing the Fw, Fl and Hw model performance. Further, using one feature models, it is possible to obtain even more accurate models compared with the feature importance analysis models. In conclusion, the machine learning is an efficient method to confirm the important role of PTH and BALP mixed with nutritional conditions for fetal bone growth performance of goats. All the Python scripts including results and comments are available into an open repository at https://gitlab.com/muntisa/goat-bones-machine-learning.
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spelling pubmed-68026732019-10-24 Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats Liu, Yong Munteanu, Cristian R. Yan, Qiongxian Pedreira, Nieves Kang, Jinhe Tang, Shaoxun Zhou, Chuanshe He, Zhixiong Tan, Zhiliang PeerJ Computational Biology BACKGROUND: In developing countries, maternal undernutrition is the major intrauterine environmental factor contributing to fetal development and adverse pregnancy outcomes. Maternal nutrition restriction (MNR) in gestation has proven to impact overall growth, bone development, and proliferation and metabolism of mesenchymal stem cells in offspring. However, the efficient method for elucidation of fetal bone development performance through maternal bone metabolic biochemical markers remains elusive. METHODS: We adapted goats to elucidate fetal bone development state with maternal serum bone metabolic proteins under malnutrition conditions in mid- and late-gestation stages. We used the experimental data to create 72 datasets by mixing different input features such as one-hot encoding of experimental conditions, metabolic original data, experimental-centered features and experimental condition probabilities. Seven Machine Learning methods have been used to predict six fetal bone parameters (weight, length, and diameter of femur/humerus). RESULTS: The results indicated that MNR influences fetal bone development (femur and humerus) and fetal bone metabolic protein levels (C-terminal telopeptides of collagen I, CTx, in middle-gestation and N-terminal telopeptides of collagen I, NTx, in late-gestation), and maternal bone metabolites (low bone alkaline phosphatase, BALP, in middle-gestation and high BALP in late-gestation). The results show the importance of experimental conditions (ECs) encoding by mixing the information with the serum metabolic data. The best classification models obtained for femur weight (Fw) and length (FI), and humerus weight (Hw) are Support Vector Machines classifiers with the leave-one-out cross-validation accuracy of 1. The rest of the accuracies are 0.98, 0.946 and 0.696 for the diameter of femur (Fd), diameter and length of humerus (Hd, Hl), respectively. With the feature importance analysis, the moving averages mixed ECs are generally more important for the majority of the models. The moving average of parathyroid hormone (PTH) within nutritional conditions (MA-PTH-experim) is important for Fd, Hd and Hl prediction models but its removal for enhancing the Fw, Fl and Hw model performance. Further, using one feature models, it is possible to obtain even more accurate models compared with the feature importance analysis models. In conclusion, the machine learning is an efficient method to confirm the important role of PTH and BALP mixed with nutritional conditions for fetal bone growth performance of goats. All the Python scripts including results and comments are available into an open repository at https://gitlab.com/muntisa/goat-bones-machine-learning. PeerJ Inc. 2019-10-18 /pmc/articles/PMC6802673/ /pubmed/31649832 http://dx.doi.org/10.7717/peerj.7840 Text en ©2019 Liu et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publpublicationication source (PeerJ) and either DOI or URL of the article must be cited.
spellingShingle Computational Biology
Liu, Yong
Munteanu, Cristian R.
Yan, Qiongxian
Pedreira, Nieves
Kang, Jinhe
Tang, Shaoxun
Zhou, Chuanshe
He, Zhixiong
Tan, Zhiliang
Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title_full Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title_fullStr Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title_full_unstemmed Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title_short Machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
title_sort machine learning classification models for fetal skeletal development performance prediction using maternal bone metabolic proteins in goats
topic Computational Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6802673/
https://www.ncbi.nlm.nih.gov/pubmed/31649832
http://dx.doi.org/10.7717/peerj.7840
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