Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.

<h4>Background</h4>There have been few published studies on spirometric reference values for healthy children in China. We hypothesize that there would have been changes in lung function that would not have been precisely predicted by the existing spirometric reference equations. The obj...

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Main Authors: Ya-Nan Ma, Jing Wang, Guang-Hui Dong, Miao-Miao Liu, Da Wang, Yu-Qin Liu, Yang Zhao, Wan-Hui Ren, Yungling Leo Lee, Ya-Dong Zhao, Qin-Cheng He
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23667682/pdf/?tool=EBI
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spelling doaj-3d371f1d071643bea7a0a451b6b41b862021-03-03T23:23:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0185e6387510.1371/journal.pone.0063875Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.Ya-Nan MaJing WangGuang-Hui DongMiao-Miao LiuDa WangYu-Qin LiuYang ZhaoWan-Hui RenYungling Leo LeeYa-Dong ZhaoQin-Cheng He<h4>Background</h4>There have been few published studies on spirometric reference values for healthy children in China. We hypothesize that there would have been changes in lung function that would not have been precisely predicted by the existing spirometric reference equations. The objective of the study was to develop more accurate predictive equations for spirometric reference values for children aged 9 to 15 years in Northeast China.<h4>Methodology/principal findings</h4>Spirometric measurements were obtained from 3,922 children, including 1,974 boys and 1,948 girls, who were randomly selected from five cities of Liaoning province, Northeast China, using the ATS (American Thoracic Society) and ERS (European Respiratory Society) standards. The data was then randomly split into a training subset containing 2078 cases and a validation subset containing 1844 cases. Predictive equations used multiple linear regression techniques with three predictor variables: height, age and weight. Model goodness of fit was examined using the coefficient of determination or the R(2) and adjusted R(2). The predicted values were compared with those obtained from the existing spirometric reference equations. The results showed the prediction equations using linear regression analysis performed well for most spirometric parameters. Paired t-tests were used to compare the predicted values obtained from the developed and existing spirometric reference equations based on the validation subset. The t-test for males was not statistically significant (p>0.01). The predictive accuracy of the developed equations was higher than the existing equations and the predictive ability of the model was also validated.<h4>Conclusion/significance</h4>We developed prediction equations using linear regression analysis of spirometric parameters for children aged 9-15 years in Northeast China. These equations represent the first attempt at predicting lung function for Chinese children following the ATS/ERS Task Force 2005 guidelines on spirometry standardization.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23667682/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Ya-Nan Ma
Jing Wang
Guang-Hui Dong
Miao-Miao Liu
Da Wang
Yu-Qin Liu
Yang Zhao
Wan-Hui Ren
Yungling Leo Lee
Ya-Dong Zhao
Qin-Cheng He
spellingShingle Ya-Nan Ma
Jing Wang
Guang-Hui Dong
Miao-Miao Liu
Da Wang
Yu-Qin Liu
Yang Zhao
Wan-Hui Ren
Yungling Leo Lee
Ya-Dong Zhao
Qin-Cheng He
Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
PLoS ONE
author_facet Ya-Nan Ma
Jing Wang
Guang-Hui Dong
Miao-Miao Liu
Da Wang
Yu-Qin Liu
Yang Zhao
Wan-Hui Ren
Yungling Leo Lee
Ya-Dong Zhao
Qin-Cheng He
author_sort Ya-Nan Ma
title Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
title_short Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
title_full Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
title_fullStr Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
title_full_unstemmed Predictive equations using regression analysis of pulmonary function for healthy children in Northeast China.
title_sort predictive equations using regression analysis of pulmonary function for healthy children in northeast china.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description <h4>Background</h4>There have been few published studies on spirometric reference values for healthy children in China. We hypothesize that there would have been changes in lung function that would not have been precisely predicted by the existing spirometric reference equations. The objective of the study was to develop more accurate predictive equations for spirometric reference values for children aged 9 to 15 years in Northeast China.<h4>Methodology/principal findings</h4>Spirometric measurements were obtained from 3,922 children, including 1,974 boys and 1,948 girls, who were randomly selected from five cities of Liaoning province, Northeast China, using the ATS (American Thoracic Society) and ERS (European Respiratory Society) standards. The data was then randomly split into a training subset containing 2078 cases and a validation subset containing 1844 cases. Predictive equations used multiple linear regression techniques with three predictor variables: height, age and weight. Model goodness of fit was examined using the coefficient of determination or the R(2) and adjusted R(2). The predicted values were compared with those obtained from the existing spirometric reference equations. The results showed the prediction equations using linear regression analysis performed well for most spirometric parameters. Paired t-tests were used to compare the predicted values obtained from the developed and existing spirometric reference equations based on the validation subset. The t-test for males was not statistically significant (p>0.01). The predictive accuracy of the developed equations was higher than the existing equations and the predictive ability of the model was also validated.<h4>Conclusion/significance</h4>We developed prediction equations using linear regression analysis of spirometric parameters for children aged 9-15 years in Northeast China. These equations represent the first attempt at predicting lung function for Chinese children following the ATS/ERS Task Force 2005 guidelines on spirometry standardization.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23667682/pdf/?tool=EBI
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