Cargando…

A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls

Background: Longitudinal or time-dependent activity data are useful to characterize the circadian activity patterns and to identify physical activity differences among multiple samples. Statistical methods designed to analyze multiple activity sample data are desired, and related software is needed...

Descripción completa

Detalles Bibliográficos
Autores principales: Fan, Ruzong, Chen, Victoria, Xie, Yunlong, Yin, Lanlan, Kim, Sungduk, Albert, Paul S, Simons-Morton, Bruce
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ubiquity Press 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4831276/
https://www.ncbi.nlm.nih.gov/pubmed/27103929
http://dx.doi.org/10.5334/jcr.ac
_version_ 1782427041650442240
author Fan, Ruzong
Chen, Victoria
Xie, Yunlong
Yin, Lanlan
Kim, Sungduk
Albert, Paul S
Simons-Morton, Bruce
author_facet Fan, Ruzong
Chen, Victoria
Xie, Yunlong
Yin, Lanlan
Kim, Sungduk
Albert, Paul S
Simons-Morton, Bruce
author_sort Fan, Ruzong
collection PubMed
description Background: Longitudinal or time-dependent activity data are useful to characterize the circadian activity patterns and to identify physical activity differences among multiple samples. Statistical methods designed to analyze multiple activity sample data are desired, and related software is needed to perform data analysis. Methods: This paper introduces a functional data analysis (fda) approach to perform a functional analysis of variance (fANOVA) for longitudinal circadian activity count data and to investigate the association of covariates such as weight or body mass index (BMI) on physical activity. For multiple age group adolescent school girls, the fANOVA approach is developed to study and to characterize activity patterns. The fANOVA is applied to analyze the physical activity data of three grade adolescent girls (i.e., grades 10, 11, and 12) from the NEXT Generation Health Study 2009–2013. To test if there are activity differences among girls of the three grades, a functional version of the univariate F-statistic is used to analyze the data. To investigate if there is a longitudinal (or time-dependent activity count) difference between two samples, functional t-tests are utilized to test: (1) activity differences between grade pairs; (2) activity differences between low-BMI girls and high-BMI girls of the NEXT study. Results: Statistically significant differences existed among the physical activity patterns for adolescent school girls in different grades. Girls in grade 10 tended to be less active than girls in grades 11 & 12 between 5:30 and 9:30. Significant differences in physical activity were detected between low-BMI and high-BMI groups from 8:00 to 11:30 for grade 10 girls, and low-BMI group girls in grade 10 tended to be more active. Conclusions: The fda approach is useful in characterizing time-dependent patterns of actigraphy data. For two-sample data defined by weight or BMI values, fda can identify differences between the two time-dependent samples of activity data. Similarly, fda can identify differences among multiple physical activity time-dependent datasets. These analyses can be performed readily using the fda R program.
format Online
Article
Text
id pubmed-4831276
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Ubiquity Press
record_format MEDLINE/PubMed
spelling pubmed-48312762016-04-21 A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls Fan, Ruzong Chen, Victoria Xie, Yunlong Yin, Lanlan Kim, Sungduk Albert, Paul S Simons-Morton, Bruce J Circadian Rhythms Research Article Background: Longitudinal or time-dependent activity data are useful to characterize the circadian activity patterns and to identify physical activity differences among multiple samples. Statistical methods designed to analyze multiple activity sample data are desired, and related software is needed to perform data analysis. Methods: This paper introduces a functional data analysis (fda) approach to perform a functional analysis of variance (fANOVA) for longitudinal circadian activity count data and to investigate the association of covariates such as weight or body mass index (BMI) on physical activity. For multiple age group adolescent school girls, the fANOVA approach is developed to study and to characterize activity patterns. The fANOVA is applied to analyze the physical activity data of three grade adolescent girls (i.e., grades 10, 11, and 12) from the NEXT Generation Health Study 2009–2013. To test if there are activity differences among girls of the three grades, a functional version of the univariate F-statistic is used to analyze the data. To investigate if there is a longitudinal (or time-dependent activity count) difference between two samples, functional t-tests are utilized to test: (1) activity differences between grade pairs; (2) activity differences between low-BMI girls and high-BMI girls of the NEXT study. Results: Statistically significant differences existed among the physical activity patterns for adolescent school girls in different grades. Girls in grade 10 tended to be less active than girls in grades 11 & 12 between 5:30 and 9:30. Significant differences in physical activity were detected between low-BMI and high-BMI groups from 8:00 to 11:30 for grade 10 girls, and low-BMI group girls in grade 10 tended to be more active. Conclusions: The fda approach is useful in characterizing time-dependent patterns of actigraphy data. For two-sample data defined by weight or BMI values, fda can identify differences between the two time-dependent samples of activity data. Similarly, fda can identify differences among multiple physical activity time-dependent datasets. These analyses can be performed readily using the fda R program. Ubiquity Press 2015-04-08 /pmc/articles/PMC4831276/ /pubmed/27103929 http://dx.doi.org/10.5334/jcr.ac Text en Copyright: © 2015 The Author(s) http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 3.0 Unported License (CC-BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. See http://creativecommons.org/licenses/by/3.0/.
spellingShingle Research Article
Fan, Ruzong
Chen, Victoria
Xie, Yunlong
Yin, Lanlan
Kim, Sungduk
Albert, Paul S
Simons-Morton, Bruce
A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title_full A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title_fullStr A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title_full_unstemmed A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title_short A Functional Data Analysis Approach for Circadian Patterns of Activity of Teenage Girls
title_sort functional data analysis approach for circadian patterns of activity of teenage girls
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4831276/
https://www.ncbi.nlm.nih.gov/pubmed/27103929
http://dx.doi.org/10.5334/jcr.ac
work_keys_str_mv AT fanruzong afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT chenvictoria afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT xieyunlong afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT yinlanlan afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT kimsungduk afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT albertpauls afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT simonsmortonbruce afunctionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT fanruzong functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT chenvictoria functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT xieyunlong functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT yinlanlan functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT kimsungduk functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT albertpauls functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls
AT simonsmortonbruce functionaldataanalysisapproachforcircadianpatternsofactivityofteenagegirls