Clustering Accelerometer Activity Patterns from the UK Biobank Cohort
Abstract
:1. Introduction
2. Materials and Methods
2.1. Activity Profile Selection
2.2. Clustering Algorithm Choice
2.3. Model Specification and Validation
2.4. Application of Activity Profiles to Health Outcomes
3. Results
3.1. Selection of Profiles
3.2. Comparison of Distance Metrics
3.3. K-Medoids Clustering
3.4. Nine Cluster Solution Verification
3.5. Nine Cluster Solution Validation
3.6. Obesity Outcomes
3.7. COVID-19 Test Outcomes
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Characteristic | Clustering Sample | Accelerometer Sample | UK Biobank |
---|---|---|---|
Female | 56.5% | 56.2% | 54.4% |
Younger, 40 to 54 | 39.6% | 39.1% | 38.8% |
White/British | 96.6% | 96.4% | 94.1% |
In paid employment or self-employed | 61.8% | 62.3% | 57.4% |
Non-Car/motor vehicle commute | 39.9% | 40.0% | 63.0% |
College/University | 42.9% | 43.1% | 32.1% |
School qualifications | 37.5% | 37.4% | 37.3% |
Income of more than £31,000 | 54.8% | 55.1% | 43.9% |
Least 20% deprived | 44.5% | 44.2% | 39.9% |
Healthy BMI | 38.7% | 38.6% | 32.3% |
Excellent/good health | 81.5% | 81.3% | 73.8% |
No Long standing illness | 70.1% | 70.1% | 65.6% |
Very/Fairly easy to get up | 82.2% | 82.1% | 81.0% |
Definitely/more a ‘morning’ person | 56.5% | 56.2% | 55.3% |
Spring/summer accelerometer wear | 48.8% | 49.2% | NA |
N | 91,533 | 103,332 | 500,028 |
Characteristic | Active 9 to 5 | Active | Morning Movers | Get Up and Active | Live for the Weekend | Moderates | Leisurely 9 to 5 | Sedate | Inactive | Clustering Sample |
---|---|---|---|---|---|---|---|---|---|---|
Female | 61.1% | 60.2% | 59.5% | 61.2% | 56.0% | 58.2% | 49.5% | 52.8% | 45.3% | 56.5% |
Younger, 40 to 54 | 67.8% | 46.4% | 32.6% | 31.6% | 49.6% | 35.8% | 66.1% | 18.0% | 26.2% | 39.6% |
White/British | 95.4% | 97.2% | 97.5% | 97.2% | 96.3% | 95.9% | 94.1% | 98.0% | 96.5% | 96.6% |
In paid employment or self-employed | 81.6% | 65.3% | 55.8% | 56.3% | 71.1% | 59.2% | 85.8% | 44.7% | 47.8% | 61.8% |
Non-car/motor vehicle commute | 46.6% | 40.6% | 36.5% | 41.3% | 39.2% | 39.3% | 41.9% | 34.4% | 36.3% | 39.9% |
Attended college/university | 46.9% | 41.9% | 39.2% | 44.3% | 46.1% | 44.8% | 46.5% | 37.4% | 39.6% | 42.9% |
School qualifications | 39.3% | 40.6% | 38.8% | 36.2% | 37.6% | 36.7% | 38.0% | 36.8% | 35.2% | 37.5% |
Income of more than GBP 31,000/year | 66.0% | 56.3% | 52.3% | 52.9% | 62.4% | 51.7% | 67.2% | 44.7% | 43.6% | 54.8% |
Lives in east 20% deprived neighbourhood | 43.4% | 46.5% | 47.7% | 47.3% | 45.2% | 41.6% | 39.1% | 46.8% | 38.1% | 44.5% |
Healthy BMI | 55.8% | 54.1% | 43.5% | 42.5% | 41.1% | 33.6% | 33.7% | 27.2% | 20.1% | 38.7% |
Excellent/good health | 89.8% | 88.7% | 86.5% | 84.9% | 85.0% | 77.4% | 80.4% | 76.6% | 60.9% | 81.5% |
No long standing illness | 81.5% | 77.7% | 74.6% | 71.4% | 74.9% | 66.3% | 72.7% | 62.5% | 48.1% | 70.1% |
Very/fairly easy to get up | 84.9% | 81.1% | 85.4% | 85.1% | 84.6% | 72.5% | 82.7% | 84.4% | 75.1% | 82.2% |
Definitely/more a morning person | 65.7% | 52.5% | 60.2% | 60.5% | 61.7% | 38.8% | 63.1% | 56.6% | 44.6% | 56.5% |
Spring/summer accelerometer wear | 54.4% | 52.3% | 49.5% | 48.4% | 51.0% | 47.0% | 49.7% | 44.4% | 44.9% | 48.8% |
N (%) | 8313 (9.1%) | 5975 (6.5%) | 10,758 (11.8%) | 15,154 (16.6%) | 12,395 (13.5%) | 11,037 (12.1%) | 8064 (8.8%) | 13,050 (14.3%) | 6787 (7.4%) | 91,533 (100%) |
Active 9 to 5 | Active | Morning Movers | Get Up and Active | Live for the Weekend | Moderates | Leisurely 9 to 5 | Sedate | Inactive | |
---|---|---|---|---|---|---|---|---|---|
Healthy | 13.1% (+4.0%) | 9.1% (+2.6%) | 13.2% (+1.5%) | 18.2% (+1.6%) | 14.4% (+0.8%) | 10.5% (−1.6%) | 7.7% (−1.1%) | 10.0% (−4.2%) | 3.8% (−3.6%) |
Overweight | 7.6% (−1.5%) | 5.8% (−0.7%) | 12.0% (+0.3%) | 16.8% (+0.3%) | 13.8% (+0.2%) | 12.6% (+0.6%) | 8.8% (0.0%) | 15.6% (+1.4%) | 7.0% (−0.4%) |
Obese | 4.0% (−5.0%) | 2.8% (−3.7%) | 8.4% (−3.4%) | 12.9% (−3.7%) | 11.4% (−2.1%) | 14.1% (+2.1%) | 11.1% (+2.3%) | 19.9% (+5.7%) | 15.3% (+7.9%) |
All | 9.1% | 6.5% | 11.8% | 16.6% | 13.5% | 12.1% | 8.8% | 14.3% | 7.4% |
COVID-19 Outcomes | Active 9 to 5 | Active | Morning Movers | Get Up and Active | Live for the Weekend | Moderates | Leisurely 9 to 5 | Sedate | Inactive | Clustering Sample | Wearable Sample | UK Biobank |
---|---|---|---|---|---|---|---|---|---|---|---|---|
Alive on 23 March 2021 | 8215 | 5891 | 10,534 | 14,801 | 12,153 | 10,696 | 7897 | 12,455 | 6205 | 88,847 | 100,292 | 465,472 |
% Participants alive | 98.8% | 98.6% | 97.9% | 97.7% | 98.0% | 96.9% | 97.9% | 95.4% | 91.4% | 97.1% | 97.1% | 93.1% |
% Participants alive and tested | 16.1% | 14.4% | 16.1% | 16.6% | 17.3% | 17.9% | 17.1% | 18.0% | 20.8% | 17.1% | 17.2% | 18.6% |
% Participants alive and tested positive | 3.7% | 2.9% | 2.8% | 2.4% | 3.1% | 2.8% | 4.0% | 2.3% | 3.0% | 2.9% | 3.0% | 3.7% |
Positive rate | 23.20% | 20.4% | 17.2% | 14.6% | 17.8% | 15.7% | 23.19% | 12.8% | 14.4% | 17.0% | 17.2% | 20.1% |
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Clark, S.; Lomax, N.; Morris, M.; Pontin, F.; Birkin, M. Clustering Accelerometer Activity Patterns from the UK Biobank Cohort. Sensors 2021, 21, 8220. https://doi.org/10.3390/s21248220
Clark S, Lomax N, Morris M, Pontin F, Birkin M. Clustering Accelerometer Activity Patterns from the UK Biobank Cohort. Sensors. 2021; 21(24):8220. https://doi.org/10.3390/s21248220
Chicago/Turabian StyleClark, Stephen, Nik Lomax, Michelle Morris, Francesca Pontin, and Mark Birkin. 2021. "Clustering Accelerometer Activity Patterns from the UK Biobank Cohort" Sensors 21, no. 24: 8220. https://doi.org/10.3390/s21248220
APA StyleClark, S., Lomax, N., Morris, M., Pontin, F., & Birkin, M. (2021). Clustering Accelerometer Activity Patterns from the UK Biobank Cohort. Sensors, 21(24), 8220. https://doi.org/10.3390/s21248220