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A novel approach to 1RM prediction using the load-velocity profile: a comparison of models.

Thompson, Steve W.; Rogerson, David; Ruddock, Alan; Greig, Leon; Dorrell, Harry F.; Barnes, Andrew

Authors

Steve W. Thompson

David Rogerson

Alan Ruddock

Harry F. Dorrell

Andrew Barnes



Abstract

The study aim was to compare different predictive models in one repetition maximum (1RM) estimation from load-velocity profile (LVP) data. Fourteen strength-trained men underwent initial 1RMs in the free-weight back squat, followed by two LVPs, over three sessions. Profiles were constructed via a combined method (jump squat (0 load, 30-60% 1RM) + back squat (70-100% 1RM)) or back squat only (0 load, 30-100% 1RM) in 10% increments. Quadratic and linear regression modeling was applied to the data to estimate 80% 1RM (kg) using 80% 1RM mean velocity identified in LVP one as the reference point, with load (kg), then extrapolated to predict 1RM. The 1RM prediction was based on LVP two data and analyzed via analysis of variance, effect size (g/η2p), Pearson correlation coefficients (r), paired t-tests, standard error of the estimate (SEE), and limits of agreement (LOA). p [less than] 0.05. All models reported systematic bias [less than] 10 kg, r > 0.97, and SEE [less than] 5 kg, however, all linear models were significantly different from measured 1RM (p = 0.015 [less than] 0.001). Significant differences were observed between quadratic and linear models for combined (p [less than] 0.001; ηp 2 = 0.90) and back squat (p = 0.004, ηp 2 = 0.35) methods. Significant differences were observed between exercises when applying linear modeling (p [less than] 0.001, ηp 2 = 0.67-0.80), but not quadratic (p = 0.632-0.929, ηp 2 = 0.001-0.18). Quadratic modeling employing the combined method rendered the greatest predictive validity. Practitioners should therefore utilize this method when looking to predict daily 1RMs as a means of load autoregulation.

Citation

THOMPSON, S.W., ROGERSON, D., RUDDOCK, A., GREIG, L. DORRELL, H.F. and BARNES, A. 2021. A novel approach to 1RM prediction using the load-velocity profile: a comparison of models. Sports [online], 9(7), article 88. Available from: https://doi.org/10.3390/sports9070088

Journal Article Type Article
Acceptance Date Jun 17, 2021
Online Publication Date Jun 22, 2021
Publication Date Jul 31, 2021
Deposit Date Jul 30, 2021
Publicly Available Date Mar 29, 2024
Journal Sports
Electronic ISSN 2075-4663
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 9
Issue 7
Article Number 88
DOI https://doi.org/10.3390/sports9070088
Keywords Load-velocity profiling; 1RM prediction; 1RM estimation; Maximal strength; Linear regression
Public URL https://rgu-repository.worktribe.com/output/1395890

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