首页 | 本学科首页   官方微博 | 高级检索  
     检索      


Adjusting athletes' body mass index to better reflect adiposity in epidemiological research
Authors:Alan M Nevill  Edward M Winter  Steve Ingham  Adam Watts  Georgios S Metsios  Arthur D Stewart
Institution:1. Research Institute of Healthcare Sciences, University of Wolverhampton , Walsalla.m.nevill@wlv.ac.uk;3. Centre for Sport and Exercise Science , Sheffield Hallam University , Sheffield;4. EIS Performance Centre, English Institute of Sport , Loughborough University , Loughborough;5. School of Applied Sciences, University of Wolverhampton , Wolverhampton;6. Rheumatology , Russells Hall Hospital , Dudley, West Midlands;7. Centre for Obesity Research and Epidemiology , Robert Gordon University , Aberdeen, UK
Abstract:Abstract

The aim of the present study was to identify when body mass index (BMI) is unlikely to be a valid measure of adiposity in athletic populations and to propose a simple adjustment that will allow the BMI of athletes to reflect the adiposity normally associated with non-athletic populations. Using data from three previously published studies containing 236 athletes from seven sports and 293 age-matched controls, the association between adiposity (sum of 4 skinfold thicknesses, in millimetres) and BMI was explored using correlation, linear regression, and analysis of covariance (ANCOVA). As anticipated, there were strong positive correlations (r = 0.83 for both men and women) and slope parameters between adiposity and BMI in age-matched controls from Study 1 (all P < 0.001). The standard of sport participation reduced these associations. Of the correlations and linear-regression slope parameters between adiposity and BMI in the sports from Studies 2 and 3, although still positive in most groups, less than half of the correlations and slope parameters were statistically significant. When data from the three studies were combined, the ANCOVA identified that the BMI slope parameter of controls (5.81 mm · (kg · m?2)?1) was greater than the BMI slope parameter for sports (2.62 mm · (kg · m?2)?1) and middle-distance runners (0.94 mm · (kg · m?2)?1) (P < 0.001). Based on these contrasting associations, we calculated how the BMI of athletes can be adjusted to reflect the same adiposity associated with age-matched controls. This simple adjustment allows the BMI of athletes and non-athletes to be used with greater confidence when investigating the effect of BMI as a risk factor in epidemiological research.
Keywords:Adiposity  obesity  body mass index  body composition  sport  athletes  slope parameters  skinfold thickness
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号