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Determining criteria to predict repeatability of performance in older adults: Using coefficients of variation for strength and functional measures
Journal article   Peer reviewed

Determining criteria to predict repeatability of performance in older adults: Using coefficients of variation for strength and functional measures

Isaac Selva Raj, Stephen R. Bird, Ben A. Westfold and Anthony J. Shield
Journal of Aging and Physical Activity, Vol.25(1), pp.94-98
2017
PMID: 27404733

Abstract

Geriatrics & Gerontology Gerontology Life Sciences & Biomedicine Science & Technology Sport Sciences
Reliable measures of muscle strength and functional capacity in older adults are essential. The aim of this study was to determine whether coefficients of variation (CVs) of individuals obtained at the first session can infer repeatability of performance in a subsequent session. Forty-eight healthy older adults (mean age 68.6 +/- 6.1 years; age range 60-80 years) completed two assessment sessions, and on each occasion undertook: dynamometry for isometric and isokinetic quadriceps strength, 6 meter fast walk (6MFWT), timed up and go (TUG), stair climb and descent, and vertical jump. Significant linear relationships were observed between CVs in session 1 and the percentage difference between sessions 1 and 2 for torque at 60, 120, 240 and 360 degrees/s, 6MFWT, TUG, stair climb, and stair descent. The results of this study could be used to establish criteria for determining an acceptably reliable performance in strength and functional tests.

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Source: InCites

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Collaboration types
Domestic collaboration
Citation topics
1 Clinical & Life Sciences
1.44 Nutrition & Dietetics
1.44.330 Geriatric Nutrition
Web Of Science research areas
Geriatrics & Gerontology
Gerontology
Sport Sciences
ESI research areas
Social Sciences, general
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