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Predicting Increased Blood Pressure Using Machine Learning

The present study investigates the prediction of increased blood pressure by body mass index (BMI), waist (WC) and hip circumference (HC), and waist hip ratio (WHR) using a machine learning technique named classification tree. Data were collected from 400 college students (56.3% women) from 16 to 63...

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Autores principales: Golino, Hudson Fernandes, Amaral, Liliany Souza de Brito, Duarte, Stenio Fernando Pimentel, Gomes, Cristiano Mauro Assis, Soares, Telma de Jesus, dos Reis, Luciana Araujo, Santos, Joselito
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi Publishing Corporation 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3941962/
https://www.ncbi.nlm.nih.gov/pubmed/24669313
http://dx.doi.org/10.1155/2014/637635
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author Golino, Hudson Fernandes
Amaral, Liliany Souza de Brito
Duarte, Stenio Fernando Pimentel
Gomes, Cristiano Mauro Assis
Soares, Telma de Jesus
dos Reis, Luciana Araujo
Santos, Joselito
author_facet Golino, Hudson Fernandes
Amaral, Liliany Souza de Brito
Duarte, Stenio Fernando Pimentel
Gomes, Cristiano Mauro Assis
Soares, Telma de Jesus
dos Reis, Luciana Araujo
Santos, Joselito
author_sort Golino, Hudson Fernandes
collection PubMed
description The present study investigates the prediction of increased blood pressure by body mass index (BMI), waist (WC) and hip circumference (HC), and waist hip ratio (WHR) using a machine learning technique named classification tree. Data were collected from 400 college students (56.3% women) from 16 to 63 years old. Fifteen trees were calculated in the training group for each sex, using different numbers and combinations of predictors. The result shows that for women BMI, WC, and WHR are the combination that produces the best prediction, since it has the lowest deviance (87.42), misclassification (.19), and the higher pseudo R (2) (.43). This model presented a sensitivity of 80.86% and specificity of 81.22% in the training set and, respectively, 45.65% and 65.15% in the test sample. For men BMI, WC, HC, and WHC showed the best prediction with the lowest deviance (57.25), misclassification (.16), and the higher pseudo R (2) (.46). This model had a sensitivity of 72% and specificity of 86.25% in the training set and, respectively, 58.38% and 69.70% in the test set. Finally, the result from the classification tree analysis was compared with traditional logistic regression, indicating that the former outperformed the latter in terms of predictive power.
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spelling pubmed-39419622014-03-25 Predicting Increased Blood Pressure Using Machine Learning Golino, Hudson Fernandes Amaral, Liliany Souza de Brito Duarte, Stenio Fernando Pimentel Gomes, Cristiano Mauro Assis Soares, Telma de Jesus dos Reis, Luciana Araujo Santos, Joselito J Obes Research Article The present study investigates the prediction of increased blood pressure by body mass index (BMI), waist (WC) and hip circumference (HC), and waist hip ratio (WHR) using a machine learning technique named classification tree. Data were collected from 400 college students (56.3% women) from 16 to 63 years old. Fifteen trees were calculated in the training group for each sex, using different numbers and combinations of predictors. The result shows that for women BMI, WC, and WHR are the combination that produces the best prediction, since it has the lowest deviance (87.42), misclassification (.19), and the higher pseudo R (2) (.43). This model presented a sensitivity of 80.86% and specificity of 81.22% in the training set and, respectively, 45.65% and 65.15% in the test sample. For men BMI, WC, HC, and WHC showed the best prediction with the lowest deviance (57.25), misclassification (.16), and the higher pseudo R (2) (.46). This model had a sensitivity of 72% and specificity of 86.25% in the training set and, respectively, 58.38% and 69.70% in the test set. Finally, the result from the classification tree analysis was compared with traditional logistic regression, indicating that the former outperformed the latter in terms of predictive power. Hindawi Publishing Corporation 2014 2014-01-23 /pmc/articles/PMC3941962/ /pubmed/24669313 http://dx.doi.org/10.1155/2014/637635 Text en Copyright © 2014 Hudson Fernandes Golino et al. https://creativecommons.org/licenses/by/3.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Golino, Hudson Fernandes
Amaral, Liliany Souza de Brito
Duarte, Stenio Fernando Pimentel
Gomes, Cristiano Mauro Assis
Soares, Telma de Jesus
dos Reis, Luciana Araujo
Santos, Joselito
Predicting Increased Blood Pressure Using Machine Learning
title Predicting Increased Blood Pressure Using Machine Learning
title_full Predicting Increased Blood Pressure Using Machine Learning
title_fullStr Predicting Increased Blood Pressure Using Machine Learning
title_full_unstemmed Predicting Increased Blood Pressure Using Machine Learning
title_short Predicting Increased Blood Pressure Using Machine Learning
title_sort predicting increased blood pressure using machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3941962/
https://www.ncbi.nlm.nih.gov/pubmed/24669313
http://dx.doi.org/10.1155/2014/637635
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