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Major Articles

Assessment of nutrition knowledge in division I college athletes

, MS, RD, , Student & , PhD, FACSM
Pages 248-255 | Received 23 Sep 2019, Accepted 29 Feb 2020, Published online: 02 Apr 2020
 

Abstract

Objective

Assess nutrition knowledge of Division I college athletes.

Participants

128 student-athletes (n = 70 female) from eight sports completed the survey in June 2018. METHODS: The survey by Calella et al (2017) was used to assess both general and sport nutrition knowledge.

Results

Cases with more than 20% of responses missing were excluded (n = 3). Overall average score was 57.6% ± 18.6%. Females scored significantly (p < 0.001) better than the males (66.5% ± 16.4% versus 46.2% ± 14.7%). Participants were divided into revenue (football, ice hockey, male’s basketball, women’s basketball; n = 63) and non-revenue sports (field hockey, golf, rowing, soccer; n = 62) to address differences in knowledge between sports with greater versus lesser nutrition resource access. Revenue sports scored significantly (p < 0.001) worse than non-revenue sports (45.7% ± 15.2% versus 69.7% ± 13.1%).

Conclusions

Athletes appear to have low nutrition knowledge, putting them at risk for inappropriate dietary choices that could decrease ability to optimally perform and increase risk of injury.

Additional information

Funding

This work was supported by the Michigan State University College of Education through a Summer Research Development Fellowship.

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