Correction to: Reliability of Field‑Based Fitness Tests in Adults: A Systematic Review.

Sports Med

GALENO Research Group, Department of Physical Education, Faculty of Education Sciences, School of Education, University of Cádiz, Puerto Real, Avenida República Saharaui S/N, 11519, Puerto Real, Cádiz, Spain.

Published: August 2022

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http://dx.doi.org/10.1007/s40279-022-01654-7DOI Listing

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