Understanding Anthropometric Characteristics Associated With Performance in Manual Lifting Tasks.

J Strength Cond Res

Land Division, Defence Science and Technology Group, Victoria, Australia.

Published: March 2019

AI Article Synopsis

  • The study investigated the link between anthropometric characteristics and performance in manual lifting tasks, crucial for military job safety and injury prevention.
  • Findings revealed that upper-arm lean mass was a strong predictor of lifting performance across three different tasks, with leg lean mass also playing a role in pack lifting.
  • Results indicated that factors like sex and height did not significantly impact lifting performance, suggesting that proper training could enhance physical attributes for better lifting outcomes.

Article Abstract

Beck, B, Middleton, KJ, Billing, DC, Caldwell, JN, and Carstairs, GL. Understanding anthropometric characteristics associated with performance in manual lifting tasks. J Strength Cond Res 33(3): 755-761, 2019-Manual lifting is an essential military job task and is commonly linked to occupational injury. Methods to reduce injury risk focus on ensuring that employees have the requisite physical capacity to safely conduct critical job tasks. The aim of this study was to investigate which anthropometric characteristics are associated with lifting performance to inform targeted training programs for job-critical lifting tasks. Sixty-three (42 men and 21 women) participants conducted 3 maximal lifts to a platform (pack lift to 1.5 m, box lift to 1.3 m and box lift to 1.5 m). A dual-energy x-ray absorptiometry scan was used to quantify anthropometric characteristics (body region-specific lean mass and fat mass). Although anthropometric measures were strongly associated with each other, multivariable linear regression revealed that a significant proportion of the total variation in lifting performance in each of the 3 tasks was explained by upper-arm lean mass (pack lift: β = 5.42, p < 0.001; box lift 1.3 m: β = 5.64, p < 0.001; box lift 1.5 m: β = 7.00, p < 0.001). Leg lean mass also significantly contributed to the variation of pack lift performance (β = 0.93, p = 0.01). When controlling for key anthropometric characteristics in these 3 tasks, separate analyses showed no significant effect of sex or stature on lift performance. These results suggest that the perceived limitations of stature and sex may be overcome by targeted training programs to improve specific physical characteristics associated with lifting performance.

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http://dx.doi.org/10.1519/JSC.0000000000002113DOI Listing

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