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Major Articles

Predictors of Cycling in College Students

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Pages 274-284 | Received 14 Sep 2012, Accepted 22 Apr 2013, Published online: 14 Jun 2013
 

Abstract

Objectives: To (1) assess cycling-related questions that have been added to the electronic version of the American College Health Association National College Health Assessment II (ACHA-NCHA), (2) examine cycling prevalence, and (3) identify predictors of cycling in college students. Participants: Predominately female (69%), undergraduate (89%), and white (85%) students (N = 949) from a large, urban, northwestern, bicycle-friendly university completed the electronic version of the ACHA-NCHA II. Methods: Thirty cycling-related questions were added to the ACHA-NCHA II and a subsample of questions was analyzed. Results: Cycling questions added to the ACHA-NCHA II scale were reliable and valid, based on the psychometric data analysis. More than half (59%) of this sample cycled; of those, 58% cycled for transportation and 44% for recreation. Facilitators and barriers to cycling were different for cycling in general and cycling for transportation. Conclusions: Cycling questions added to the ACHA-NCHA II can be utilized to enhance knowledge relative to cycling on college campuses.

ACKNOWLEDGMENTS

The authors would like to thank Rhiannon Avery of the Health and Wellness Program for assisting us in placing cycling questions on the ACHA-NCHA II that was conducted at a large northwestern university (name removed for review purposes).

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