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Iva Šeflová; Josef Chudoba; Michael Duncan; Aleš Suchomel; Václav Bunc – Journal of Motor Learning and Development, 2025
This study aimed to understand the motor competence (MC) level of Czech school-age children determined using the product-oriented Bruininks--Oseretsky Test of Motor Proficiency (second edition) and to analyze the gender and age differences. The MC level in n = 637 children aged 6.0--11.0 years (46.6% girls) was evaluated using total motor…
Descriptors: Foreign Countries, Psychomotor Skills, Children, Preadolescents
Monica Nelson – Sport, Education and Society, 2025
The differences in strength development processes and maximum strength levels between cisgender men and women -- i.e. the 'strength gap' -- are considerably fraught topics, with significant implications for our broader understandings of sex and gender. The polarization of exercise science and sociocultural research about the relationships between…
Descriptors: Muscular Strength, Gender Differences, Training, Human Body
Hannah R. Thompson; Joni Ladawn Ricks-Oddie; Margaret Schneider; Sophia Day; Kira Argenio; Kevin Konty; Shlomit Radom-Aizik; Yawen Guo; Dan M. Cooper – Journal of School Health, 2025
Background: Data missingness can bias interpretation and outcomes resulting from data use. We describe data missingness in the longest-standing US-based youth fitness surveillance system (2006/07-2019/20). Methods: This observational study uses the New York City FITNESSGRAM (NYCFG) database from 1,983,629 unique 4th-12th grade students (9,147,873…
Descriptors: Physical Fitness, Data Interpretation, Statistical Bias, Youth