| Item type: | Article | ||||
|---|---|---|---|---|---|
| Journal or Publication Title: | International Journal of Epidemiology | ||||
| Publisher: | Oxford Univ. Press | ||||
| Place of Publication: | OXFORD | ||||
| Volume: | 45 | ||||
| Number of Issue or Book Chapter: | 5 | ||||
| Page Range: | pp. 1433-1444 | ||||
| Date: | 2016 | ||||
| Institutions: | Medicine > Institut für Epidemiologie und Präventivmedizin | ||||
| Identification Number: |
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| Keywords: | GAMMA-GLUTAMYL-TRANSFERASE; CHAIN AMINO-ACIDS; INSULIN SENSITIVITY; PROSPECTIVE COHORT; POTENTIAL ROLE; UNITED-STATES; RISK; METAANALYSIS; ADULTS; ACCELEROMETER; sleep timing; chronotype; sleep duration; metabolomics | ||||
| Dewey Decimal Classification: | 600 Technology > 610 Medical sciences Medicine | ||||
| Status: | Published | ||||
| Refereed: | Yes, this version has been refereed | ||||
| Created at the University of Regensburg: | Yes | ||||
| Item ID: | 42923 |
Abstract
Background: Physical activity is associated with a variety of health benefits, but the biological mechanisms that explain these associations remain unclear. Metabolomics is a powerful tool to comprehensively evaluate global metabolic signature associated with physical activity and helps to pinpoint the pathways that mediate the health effects of physical activity. There has been limited research ...

Abstract
Background: Physical activity is associated with a variety of health benefits, but the biological mechanisms that explain these associations remain unclear. Metabolomics is a powerful tool to comprehensively evaluate global metabolic signature associated with physical activity and helps to pinpoint the pathways that mediate the health effects of physical activity. There has been limited research on metabolomics and habitual physical activity, and no metabolomics study has examined sedentary behaviour and physical activity of different intensities. Methods: In a group of Chinese adults (N = 277), we used an untargeted approach to examine 328 plasma metabolites in relation to accelerometer-measured physical activity, including overall volume of physical activity (physical activity energy expenditure (PAEE) and duration of physically active time) and sedentary time, and measures related to different intensities of physical activity (moderate-to-vigorous activity (MVPA), light activity, average physical activity intensity). Results: We identified 11 metabolites that were associated with total activity, with a false discovery rate of 0.2 or lower. Notably, we observed generally lower levels of amino acids in the valine, leucine and isoleucine metabolism pathway and of carbohydrates in sugar metabolism among participants with higher activity levels. Moreover, we found that PAEE, time spent in light activity and duration of physically active time were associated with a similar metabolic pattern, whereas the metabolic signature associated with sedentary time mirrored this pattern. In contrast, average activity intensity and time spent in MVPA appeared to be associated with somewhat different metabolic patterns. Conclusions: Overall, the metabolomics patterns support a beneficial role of higher volume of physical activity in cardiometabolic health. Our findings identified candidate pathways and provide insight into the mechanisms underlying the health effects of physical activity.
Metadata last modified: 25 Feb 2021 07:11

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