| Literature DB >> 28774199 |
Rafael Mesquita1,2, Gabriele Spina3,4, Fabio Pitta5, David Donaire-Gonzalez6,7, Brenda M Deering8, Mehul S Patel9, Katy E Mitchell10, Jennifer Alison11,12, Arnoldus Jr van Gestel13,14, Stefanie Zogg15, Philippe Gagnon16, Beatriz Abascal-Bolado17,18, Barbara Vagaggini19, Judith Garcia-Aymerich6,7,20, Sue C Jenkins21, Elisabeth Apm Romme22, Samantha Sc Kon9, Paul S Albert23, Benjamin Waschki24, Dinesh Shrikrishna9,25, Sally J Singh10, Nicholas S Hopkinson9, David Miedinger15, Roberto P Benzo18, François Maltais16, Pierluigi Paggiaro19, Zoe J McKeough11, Michael I Polkey9, Kylie Hill21, William D-C Man9, Christian F Clarenbach13, Nidia A Hernandes5, Daniela Savi26, Sally Wootton11, Karina C Furlanetto5, Li W Cindy Ng21, Anouk W Vaes1,27, Christine Jenkins28, Peter R Eastwood29, Diana Jarreta30, Anne Kirsten24, Dina Brooks31, David R Hillman29, Thaís Sant'Anna5, Kenneth Meijer32, Selina Dürr15, Erica Pa Rutten1, Malcolm Kohler13, Vanessa S Probst5,33, Ruth Tal-Singer34, Esther Garcia Gil30, Albertus C den Brinker4, Jörg D Leuppi15, Peter Ma Calverley23, Frank Wjm Smeenk22, Richard W Costello8, Marco Gramm24, Roger Goldstein31, Miriam Tj Groenen1, Helgo Magnussen24, Emiel Fm Wouters1,2, Richard L ZuWallack35, Oliver Amft3,36, Henrik Watz24, Martijn A Spruit1,2,37.
Abstract
We described physical activity measures and hourly patterns in patients with chronic obstructive pulmonary disease (COPD) after stratification for generic and COPD-specific characteristics and, based on multiple physical activity measures, we identified clusters of patients. In total, 1001 patients with COPD (65% men; age, 67 years; forced expiratory volume in the first second [FEV1], 49% predicted) were studied cross-sectionally. Demographics, anthropometrics, lung function and clinical data were assessed. Daily physical activity measures and hourly patterns were analysed based on data from a multisensor armband. Principal component analysis (PCA) and cluster analysis were applied to physical activity measures to identify clusters. Age, body mass index (BMI), dyspnoea grade and ADO index (including age, dyspnoea and airflow obstruction) were associated with physical activity measures and hourly patterns. Five clusters were identified based on three PCA components, which accounted for 60% of variance of the data. Importantly, couch potatoes (i.e. the most inactive cluster) were characterised by higher BMI, lower FEV1, worse dyspnoea and higher ADO index compared to other clusters ( p < 0.05 for all). Daily physical activity measures and hourly patterns are heterogeneous in COPD. Clusters of patients were identified solely based on physical activity data. These findings may be useful to develop interventions aiming to promote physical activity in COPD.Entities:
Keywords: Chronic obstructive pulmonary disease; cluster analysis; outcome assessment (healthcare); physical activity; principal component analysis
Mesh:
Year: 2017 PMID: 28774199 PMCID: PMC5720232 DOI: 10.1177/1479972316687207
Source DB: PubMed Journal: Chron Respir Dis ISSN: 1479-9723 Impact factor: 2.444