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Dose-response modelling of resistance exercise across outcome domains in strength and conditioning: a meta-analysis.

Swinton, Paul Alan; Schoenfeld, Brad J.; Murphy, Andrew

Authors

Brad J. Schoenfeld



Abstract

Resistance exercise is the most common training modality included within strength and conditioning (S&C) practice. Understanding dose-response relationships between resistance training and a range of outcomes relevant to physical and sporting performance is of primary importance for quality S&C prescription. The aim of this meta-analysis was to use contemporary modelling techniques to investigate resistance-only and resistance-dominant training interventions, and explore relationships between training variables (frequency, volume, intensity), participant characteristics (training status, sex) and improvements across a range of outcome domains including maximum strength, power, vertical jump, change of direction, and sprinting performance. Data were obtained from a database of training studies conducted between 1962-2018, which comprised healthy trained or untrained adults engaged in resistance-only or resistance-dominant interventions. Studies were not required to include a control group. Standardized mean difference effect sizes were calculated and interventions categorized according to a range of training variables describing frequency (number of sessions per week), volume (number of sets and repetitions performed), overall intensity (intensity of effort and load, categorised as low, medium, or high), and intensity of load (represented as % 1RM prescribed). Contemporary modelling techniques including Bayesian mixed effects meta-analytic models were fitted to investigate linear and non-linear dose-responses with models compared based on predictive accuracy. Data from a total of 295 studies comprising 535 groups and 6710 participants were included with analyses conducted on time points ≤26 weeks. The best performing model included: duration from baseline, average number of sets, and the main and interaction effects between outcome domain and intensity of load (%1RM) expressed non-linearly. Model performance was not improved by the inclusion of participant training status or sex. The current meta-analysis represents the most comprehensive investigation of dose-response relationships across a range of outcome domains commonly targeted within strength and conditioning to date. Results demonstrate the magnitude of improvements are predominantly influenced by training intensity of load and the outcome measured. When considering the effects of intensity as a %1RM, profiles differ across outcome domains with maximum strength likely to be maximised with the heaviest loads, vertical jump performance likely to be maximised with relatively light loads (~30%1RM), and power likely to be maximised with low to moderate loads (40-70% 1RM).

Citation

SWINTON, P.A., SCHOENFELD, B.J. and MURPHY, A. 2024. Dose-response modelling of resistance exercise across outcome domains in strength and conditioning: a meta-analysis. Sports medicine [online], 54(6), pages 1579-1594. Available at: https://doi.org/10.1007/s40279-024-02006-3

Journal Article Type Article
Acceptance Date Feb 14, 2024
Online Publication Date Apr 23, 2024
Publication Date Jun 30, 2024
Deposit Date Feb 15, 2024
Publicly Available Date Feb 15, 2024
Journal Sports medicine
Print ISSN 0112-1642
Electronic ISSN 1179-2035
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 54
Issue 6
Pages 1579-1594
DOI https://doi.org/10.1007/s40279-024-02006-3
Keywords Training; Resistance training; Resistance exercise; Strength and conditioning (S&C) practice; Physical performance
Public URL https://rgu-repository.worktribe.com/output/2243105
Additional Information This article has been published with separate supporting information. This supporting information has been incorporated into a single file on this repository and can be found at the end of the file associated with this output.

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