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Articles

Predicting Motor Skills From Strengths and Difficulties Questionnaire Scores, Language Ability, and Other Features of New Zealand Children Entering Primary School

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Pages 32-46 | Received 12 Nov 2013, Accepted 12 Mar 2014, Published online: 19 Oct 2020
 

Abstract

The motor and language skills, emotional and behavioural problems of 245 children were measured at school entry. Fine motor scores were significantly predicted by hyperactivity, phonetic awareness, prosocial behaviour, and the presence of medical problems. Gross motor scores were significantly predicted by the presence of medical problems. The fine motor scores of Māori children were poorer than those of Pākekā or children of other ethnicities, and right-handed children had better fine motor scores than left-handed children. There was some evidence that left-handed boys performed particularly poorly on tasks requiring fine motor skills. Children with medical problems had poorer gross motor scores than children without medical problems. Implications for the identification of problems at school entry are discussed.

Acknowledgments

This research was funded through grants from the Ministry of Education and the Faculty of Arts and Social Sciences at the University of Waikato (grant number E006). We especially thank Glen Gear for designing the motor assessment, Lynne Bennett for designing the language assessment, and the collaborative work of a great number of other people.

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