Correlates of physical activity behavior in adults: a data mining approach

Abstract Purpose A data mining approach was applied to establish a multilevel hierarchy predicting physical activity (PA) behavior, and to methodologically identify the correlates of PA behavior. Methods Cross-sectional data from the population-based Northern Finland Birth Cohort 1966 study, collect...

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Published in:International Journal of Behavioral Nutrition and Physical Activity
Main Authors: Farrahi, Vahid, Niemelä, Maisa, Kärmeniemi, Mikko, Puhakka, Soile, Kangas, Maarit, Korpelainen, Raija, Jämsä, Timo
Other Authors: the European Union’s Horizon 2020 research and innovation programme under the Marie Skłodowska–Curie, the Ministry of Education and Culture in Finland
Format: Article in Journal/Newspaper
Language:English
Published: Springer Science and Business Media LLC 2020
Subjects:
Online Access:http://dx.doi.org/10.1186/s12966-020-00996-7
https://link.springer.com/content/pdf/10.1186/s12966-020-00996-7.pdf
https://link.springer.com/article/10.1186/s12966-020-00996-7/fulltext.html
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spelling crspringernat:10.1186/s12966-020-00996-7 2023-05-15T17:42:57+02:00 Correlates of physical activity behavior in adults: a data mining approach Farrahi, Vahid Niemelä, Maisa Kärmeniemi, Mikko Puhakka, Soile Kangas, Maarit Korpelainen, Raija Jämsä, Timo the European Union’s Horizon 2020 research and innovation programme under the Marie Skłodowska–Curie the Ministry of Education and Culture in Finland 2020 http://dx.doi.org/10.1186/s12966-020-00996-7 https://link.springer.com/content/pdf/10.1186/s12966-020-00996-7.pdf https://link.springer.com/article/10.1186/s12966-020-00996-7/fulltext.html en eng Springer Science and Business Media LLC https://creativecommons.org/licenses/by/4.0 https://creativecommons.org/licenses/by/4.0 CC-BY International Journal of Behavioral Nutrition and Physical Activity volume 17, issue 1 ISSN 1479-5868 Nutrition and Dietetics Physical Therapy, Sports Therapy and Rehabilitation Medicine (miscellaneous) journal-article 2020 crspringernat https://doi.org/10.1186/s12966-020-00996-7 2022-01-14T15:36:47Z Abstract Purpose A data mining approach was applied to establish a multilevel hierarchy predicting physical activity (PA) behavior, and to methodologically identify the correlates of PA behavior. Methods Cross-sectional data from the population-based Northern Finland Birth Cohort 1966 study, collected in the most recent follow-up at age 46, were used to create a hierarchy using the chi-square automatic interaction detection (CHAID) decision tree technique for predicting PA behavior. PA behavior is defined as active or inactive based on machine-learned activity profiles, which were previously created through a multidimensional (clustering) approach on continuous accelerometer-measured activity intensities in one week. The input variables (predictors) used for decision tree fitting consisted of individual, demographical, psychological, behavioral, environmental, and physical factors. Using generalized linear mixed models, we also analyzed how factors emerging from the model were associated with three PA metrics, including daily time (minutes per day) in sedentary (SED), light PA (LPA), and moderate-to-vigorous PA (MVPA), to assure the relative importance of methodologically identified factors. Results Of the 4582 participants with valid accelerometer data at the latest follow-up, 2701 and 1881 had active and inactive profiles, respectively. We used a total of 168 factors as input variables to classify these two PA behaviors. Out of these 168 factors, the decision tree selected 36 factors of different domains from which 54 subgroups of participants were formed. The emerging factors from the model explained minutes per day in SED, LPA, and/or MVPA, including body fat percentage (SED: B = 26.5, LPA: B = − 16.1, and MVPA: B = − 11.7), normalized heart rate recovery 60 s after exercise (SED: B = -16.1, LPA: B = 9.9, and MVPA: B = 9.6), average weekday total sitting time (SED: B = 34.1, LPA: B = -25.3, and MVPA: B = -5.8), and extravagance score (SED: B = 6.3 and LPA: B = − 3.7). Conclusions Using data mining, we established a data-driven model composed of 36 different factors of relative importance from empirical data. This model may be used to identify subgroups for multilevel intervention allocation and design. Additionally, this study methodologically discovered an extensive set of factors that can be a basis for additional hypothesis testing in PA correlates research. Article in Journal/Newspaper Northern Finland Springer Nature (via Crossref) International Journal of Behavioral Nutrition and Physical Activity 17 1
institution Open Polar
collection Springer Nature (via Crossref)
op_collection_id crspringernat
language English
topic Nutrition and Dietetics
Physical Therapy, Sports Therapy and Rehabilitation
Medicine (miscellaneous)
spellingShingle Nutrition and Dietetics
Physical Therapy, Sports Therapy and Rehabilitation
Medicine (miscellaneous)
Farrahi, Vahid
Niemelä, Maisa
Kärmeniemi, Mikko
Puhakka, Soile
Kangas, Maarit
Korpelainen, Raija
Jämsä, Timo
Correlates of physical activity behavior in adults: a data mining approach
topic_facet Nutrition and Dietetics
Physical Therapy, Sports Therapy and Rehabilitation
Medicine (miscellaneous)
description Abstract Purpose A data mining approach was applied to establish a multilevel hierarchy predicting physical activity (PA) behavior, and to methodologically identify the correlates of PA behavior. Methods Cross-sectional data from the population-based Northern Finland Birth Cohort 1966 study, collected in the most recent follow-up at age 46, were used to create a hierarchy using the chi-square automatic interaction detection (CHAID) decision tree technique for predicting PA behavior. PA behavior is defined as active or inactive based on machine-learned activity profiles, which were previously created through a multidimensional (clustering) approach on continuous accelerometer-measured activity intensities in one week. The input variables (predictors) used for decision tree fitting consisted of individual, demographical, psychological, behavioral, environmental, and physical factors. Using generalized linear mixed models, we also analyzed how factors emerging from the model were associated with three PA metrics, including daily time (minutes per day) in sedentary (SED), light PA (LPA), and moderate-to-vigorous PA (MVPA), to assure the relative importance of methodologically identified factors. Results Of the 4582 participants with valid accelerometer data at the latest follow-up, 2701 and 1881 had active and inactive profiles, respectively. We used a total of 168 factors as input variables to classify these two PA behaviors. Out of these 168 factors, the decision tree selected 36 factors of different domains from which 54 subgroups of participants were formed. The emerging factors from the model explained minutes per day in SED, LPA, and/or MVPA, including body fat percentage (SED: B = 26.5, LPA: B = − 16.1, and MVPA: B = − 11.7), normalized heart rate recovery 60 s after exercise (SED: B = -16.1, LPA: B = 9.9, and MVPA: B = 9.6), average weekday total sitting time (SED: B = 34.1, LPA: B = -25.3, and MVPA: B = -5.8), and extravagance score (SED: B = 6.3 and LPA: B = − 3.7). Conclusions Using data mining, we established a data-driven model composed of 36 different factors of relative importance from empirical data. This model may be used to identify subgroups for multilevel intervention allocation and design. Additionally, this study methodologically discovered an extensive set of factors that can be a basis for additional hypothesis testing in PA correlates research.
author2 the European Union’s Horizon 2020 research and innovation programme under the Marie Skłodowska–Curie
the Ministry of Education and Culture in Finland
format Article in Journal/Newspaper
author Farrahi, Vahid
Niemelä, Maisa
Kärmeniemi, Mikko
Puhakka, Soile
Kangas, Maarit
Korpelainen, Raija
Jämsä, Timo
author_facet Farrahi, Vahid
Niemelä, Maisa
Kärmeniemi, Mikko
Puhakka, Soile
Kangas, Maarit
Korpelainen, Raija
Jämsä, Timo
author_sort Farrahi, Vahid
title Correlates of physical activity behavior in adults: a data mining approach
title_short Correlates of physical activity behavior in adults: a data mining approach
title_full Correlates of physical activity behavior in adults: a data mining approach
title_fullStr Correlates of physical activity behavior in adults: a data mining approach
title_full_unstemmed Correlates of physical activity behavior in adults: a data mining approach
title_sort correlates of physical activity behavior in adults: a data mining approach
publisher Springer Science and Business Media LLC
publishDate 2020
url http://dx.doi.org/10.1186/s12966-020-00996-7
https://link.springer.com/content/pdf/10.1186/s12966-020-00996-7.pdf
https://link.springer.com/article/10.1186/s12966-020-00996-7/fulltext.html
genre Northern Finland
genre_facet Northern Finland
op_source International Journal of Behavioral Nutrition and Physical Activity
volume 17, issue 1
ISSN 1479-5868
op_rights https://creativecommons.org/licenses/by/4.0
https://creativecommons.org/licenses/by/4.0
op_rightsnorm CC-BY
op_doi https://doi.org/10.1186/s12966-020-00996-7
container_title International Journal of Behavioral Nutrition and Physical Activity
container_volume 17
container_issue 1
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