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An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data

BACKGROUND: Increases in physical activity through active travel have the potential to have large beneficial effects on populations, through both better health outcomes and reduced motorized traffic. However accurately identifying travel mode in large datasets is problematic. Here we provide an open...

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Autores principales: Procter, Duncan S., Page, Angie S., Cooper, Ashley R., Nightingale, Claire M., Ram, Bina, Rudnicka, Alicja R., Whincup, Peter H., Clary, Christelle, Lewis, Daniel, Cummins, Steven, Ellaway, Anne, Giles-Corti, Billie, Cook, Derek G., Owen, Christopher G.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6150970/
https://www.ncbi.nlm.nih.gov/pubmed/30241483
http://dx.doi.org/10.1186/s12966-018-0724-y
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author Procter, Duncan S.
Page, Angie S.
Cooper, Ashley R.
Nightingale, Claire M.
Ram, Bina
Rudnicka, Alicja R.
Whincup, Peter H.
Clary, Christelle
Lewis, Daniel
Cummins, Steven
Ellaway, Anne
Giles-Corti, Billie
Cook, Derek G.
Owen, Christopher G.
author_facet Procter, Duncan S.
Page, Angie S.
Cooper, Ashley R.
Nightingale, Claire M.
Ram, Bina
Rudnicka, Alicja R.
Whincup, Peter H.
Clary, Christelle
Lewis, Daniel
Cummins, Steven
Ellaway, Anne
Giles-Corti, Billie
Cook, Derek G.
Owen, Christopher G.
author_sort Procter, Duncan S.
collection PubMed
description BACKGROUND: Increases in physical activity through active travel have the potential to have large beneficial effects on populations, through both better health outcomes and reduced motorized traffic. However accurately identifying travel mode in large datasets is problematic. Here we provide an open source tool to quantify time spent stationary and in four travel modes(walking, cycling, train, motorised vehicle) from accelerometer measured physical activity data, combined with GPS and GIS data. METHODS: The Examining Neighbourhood Activities in Built Living Environments in London study evaluates the effect of the built environment on health behaviours, including physical activity. Participants wore accelerometers and GPS receivers on the hip for 7 days. We time-matched accelerometer and GPS, and then extracted data from the commutes of 326 adult participants, using stated commute times and modes, which were manually checked to confirm stated travel mode. This yielded examples of five travel modes: walking, cycling, motorised vehicle, train and stationary. We used this example data to train a gradient boosted tree, a form of supervised machine learning algorithm, on each data point (131,537 points), rather than on journeys. Accuracy during training was assessed using five-fold cross-validation. We also manually identified the travel behaviour of both 21 participants from ENABLE London (402,749 points), and 10 participants from a separate study (STAMP-2, 210,936 points), who were not included in the training data. We compared our predictions against this manual identification to further test accuracy and test generalisability. RESULTS: Applying the algorithm, we correctly identified travel mode 97.3% of the time in cross-validation (mean sensitivity 96.3%, mean active travel sensitivity 94.6%). We showed 96.0% agreement between manual identification and prediction of 21 individuals’ travel modes (mean sensitivity 92.3%, mean active travel sensitivity 84.9%) and 96.5% agreement between the STAMP-2 study and predictions (mean sensitivity 85.5%, mean active travel sensitivity 78.9%). CONCLUSION: We present a generalizable tool that identifies time spent stationary and time spent walking with very high precision, time spent in trains or vehicles with good precision, and time spent cycling with moderate precisionIn studies where both accelerometer and GPS data are available this tool complements analyses of physical activity, showing whether differences in PA may be explained by differences in travel mode. All code necessary to replicate, fit and predict to other datasets is provided to facilitate use by other researchers. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12966-018-0724-y) contains supplementary material, which is available to authorized users.
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spelling pubmed-61509702018-09-26 An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data Procter, Duncan S. Page, Angie S. Cooper, Ashley R. Nightingale, Claire M. Ram, Bina Rudnicka, Alicja R. Whincup, Peter H. Clary, Christelle Lewis, Daniel Cummins, Steven Ellaway, Anne Giles-Corti, Billie Cook, Derek G. Owen, Christopher G. Int J Behav Nutr Phys Act Methodology BACKGROUND: Increases in physical activity through active travel have the potential to have large beneficial effects on populations, through both better health outcomes and reduced motorized traffic. However accurately identifying travel mode in large datasets is problematic. Here we provide an open source tool to quantify time spent stationary and in four travel modes(walking, cycling, train, motorised vehicle) from accelerometer measured physical activity data, combined with GPS and GIS data. METHODS: The Examining Neighbourhood Activities in Built Living Environments in London study evaluates the effect of the built environment on health behaviours, including physical activity. Participants wore accelerometers and GPS receivers on the hip for 7 days. We time-matched accelerometer and GPS, and then extracted data from the commutes of 326 adult participants, using stated commute times and modes, which were manually checked to confirm stated travel mode. This yielded examples of five travel modes: walking, cycling, motorised vehicle, train and stationary. We used this example data to train a gradient boosted tree, a form of supervised machine learning algorithm, on each data point (131,537 points), rather than on journeys. Accuracy during training was assessed using five-fold cross-validation. We also manually identified the travel behaviour of both 21 participants from ENABLE London (402,749 points), and 10 participants from a separate study (STAMP-2, 210,936 points), who were not included in the training data. We compared our predictions against this manual identification to further test accuracy and test generalisability. RESULTS: Applying the algorithm, we correctly identified travel mode 97.3% of the time in cross-validation (mean sensitivity 96.3%, mean active travel sensitivity 94.6%). We showed 96.0% agreement between manual identification and prediction of 21 individuals’ travel modes (mean sensitivity 92.3%, mean active travel sensitivity 84.9%) and 96.5% agreement between the STAMP-2 study and predictions (mean sensitivity 85.5%, mean active travel sensitivity 78.9%). CONCLUSION: We present a generalizable tool that identifies time spent stationary and time spent walking with very high precision, time spent in trains or vehicles with good precision, and time spent cycling with moderate precisionIn studies where both accelerometer and GPS data are available this tool complements analyses of physical activity, showing whether differences in PA may be explained by differences in travel mode. All code necessary to replicate, fit and predict to other datasets is provided to facilitate use by other researchers. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12966-018-0724-y) contains supplementary material, which is available to authorized users. BioMed Central 2018-09-21 /pmc/articles/PMC6150970/ /pubmed/30241483 http://dx.doi.org/10.1186/s12966-018-0724-y Text en © The Author(s). 2018 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Methodology
Procter, Duncan S.
Page, Angie S.
Cooper, Ashley R.
Nightingale, Claire M.
Ram, Bina
Rudnicka, Alicja R.
Whincup, Peter H.
Clary, Christelle
Lewis, Daniel
Cummins, Steven
Ellaway, Anne
Giles-Corti, Billie
Cook, Derek G.
Owen, Christopher G.
An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title_full An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title_fullStr An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title_full_unstemmed An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title_short An open-source tool to identify active travel from hip-worn accelerometer, GPS and GIS data
title_sort open-source tool to identify active travel from hip-worn accelerometer, gps and gis data
topic Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6150970/
https://www.ncbi.nlm.nih.gov/pubmed/30241483
http://dx.doi.org/10.1186/s12966-018-0724-y
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