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Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR

A variety of models are available for the estimation of parameters of the human growth curve. Several have been widely and successfully used with longitudinal data that are reasonably complete. On the other hand, the modeling of data for a limited number of observation points is problematic and requ...

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Autores principales: Králík, Miroslav, Klíma, Ondřej, Čuta, Martin, Malina, Robert M., Kozieł, Sławomir, Polcerová, Lenka, Škultétyová, Anna, Španěl, Michal, Kukla, Lubomír, Zemčík, Pavel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8535004/
https://www.ncbi.nlm.nih.gov/pubmed/34682199
http://dx.doi.org/10.3390/children8100934
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author Králík, Miroslav
Klíma, Ondřej
Čuta, Martin
Malina, Robert M.
Kozieł, Sławomir
Polcerová, Lenka
Škultétyová, Anna
Španěl, Michal
Kukla, Lubomír
Zemčík, Pavel
author_facet Králík, Miroslav
Klíma, Ondřej
Čuta, Martin
Malina, Robert M.
Kozieł, Sławomir
Polcerová, Lenka
Škultétyová, Anna
Španěl, Michal
Kukla, Lubomír
Zemčík, Pavel
author_sort Králík, Miroslav
collection PubMed
description A variety of models are available for the estimation of parameters of the human growth curve. Several have been widely and successfully used with longitudinal data that are reasonably complete. On the other hand, the modeling of data for a limited number of observation points is problematic and requires the interpolation of the interval between points and often an extrapolation of the growth trajectory beyond the range of empirical limits (prediction). This study tested a new approach for fitting a relatively limited number of longitudinal data using the normal variation of human empirical growth curves. First, functional principal components analysis was done for curve phase and amplitude using complete and dense data sets for a reference sample (Brno Growth Study). Subsequently, artificial curves were generated with a combination of 12 of the principal components and applied for fitting to the newly analyzed data with the Levenberg–Marquardt optimization algorithm. The approach was tested on seven 5-points/year longitudinal data samples of adolescents extracted from the reference sample. The samples differed in their distance from the mean age at peak velocity for the sample and were tested by a permutation leave-one-out approach. The results indicated the potential of this method for growth modeling as a user-friendly application for practical applications in pediatrics, auxology and youth sport.
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spelling pubmed-85350042021-10-23 Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR Králík, Miroslav Klíma, Ondřej Čuta, Martin Malina, Robert M. Kozieł, Sławomir Polcerová, Lenka Škultétyová, Anna Španěl, Michal Kukla, Lubomír Zemčík, Pavel Children (Basel) Article A variety of models are available for the estimation of parameters of the human growth curve. Several have been widely and successfully used with longitudinal data that are reasonably complete. On the other hand, the modeling of data for a limited number of observation points is problematic and requires the interpolation of the interval between points and often an extrapolation of the growth trajectory beyond the range of empirical limits (prediction). This study tested a new approach for fitting a relatively limited number of longitudinal data using the normal variation of human empirical growth curves. First, functional principal components analysis was done for curve phase and amplitude using complete and dense data sets for a reference sample (Brno Growth Study). Subsequently, artificial curves were generated with a combination of 12 of the principal components and applied for fitting to the newly analyzed data with the Levenberg–Marquardt optimization algorithm. The approach was tested on seven 5-points/year longitudinal data samples of adolescents extracted from the reference sample. The samples differed in their distance from the mean age at peak velocity for the sample and were tested by a permutation leave-one-out approach. The results indicated the potential of this method for growth modeling as a user-friendly application for practical applications in pediatrics, auxology and youth sport. MDPI 2021-10-18 /pmc/articles/PMC8535004/ /pubmed/34682199 http://dx.doi.org/10.3390/children8100934 Text en © 2021 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
Králík, Miroslav
Klíma, Ondřej
Čuta, Martin
Malina, Robert M.
Kozieł, Sławomir
Polcerová, Lenka
Škultétyová, Anna
Španěl, Michal
Kukla, Lubomír
Zemčík, Pavel
Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title_full Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title_fullStr Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title_full_unstemmed Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title_short Estimating Growth in Height from Limited Longitudinal Growth Data Using Full-Curves Training Dataset: A Comparison of Two Procedures of Curve Optimization—Functional Principal Component Analysis and SITAR
title_sort estimating growth in height from limited longitudinal growth data using full-curves training dataset: a comparison of two procedures of curve optimization—functional principal component analysis and sitar
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8535004/
https://www.ncbi.nlm.nih.gov/pubmed/34682199
http://dx.doi.org/10.3390/children8100934
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