Investigating the Construct Validity and Reliability of the Test of Motor Competence Across Iranians’ Lifespan

Motor competence (MC) has been extensively examined in children and adolescents, but has not been studied among adults nor across the lifespan. The Test of Motor Competence (TMC) assesses MC in people aged 5–85 years. Among Iranians, aged 5–85 years, we aimed to determine the construct validity and...

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Veröffentlicht in:Perceptual and motor skills 2023-04, Vol.130 (2), p.658-679
Hauptverfasser: Salami, Sedigheh, Ribeiro Bandeira, Paulo Felipe, Dehkordi, Parvaneh Shamsipour, Sohrabi, Fatemeh, Martins, Clarice, Duncan, Michael J., Hardy, Louise L., Shams, Amir
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Sprache:eng
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Zusammenfassung:Motor competence (MC) has been extensively examined in children and adolescents, but has not been studied among adults nor across the lifespan. The Test of Motor Competence (TMC) assesses MC in people aged 5–85 years. Among Iranians, aged 5–85 years, we aimed to determine the construct validity and reliability of the TMC and to examine associations between TMC test items and the participants’ age, sex, and body mass index (BMI). We conducted confirmatory factor analysis (CFA) to evaluate the TMC’s factorial structure by age group and for the whole sample. We explored associations between the TMC test items and participant age, sex, and BMI using a network analysis machine learning technique (Rstudio and qgraph). CFA supported the construct validity of a unidimensional model for motor competence for the whole sample (RMSEA = 0.003; CFI = 0.998; TLI = 0.993) and for three age groups (RMSEA 0.95). Network analyses showed fine motor skills to be the most critical centrality skills, reinforcing the importance of fine motor skills for performing and participating in many daily activities across the lifespan. We found the TMC to be a valid and reliable test to measure MC across Iranians’ lifespan. We also demonstrated the advantages of using a machine learning approach via network analysis to evaluate associations between skills in a complex system.
ISSN:0031-5125
1558-688X
DOI:10.1177/00315125231152669