AI-driven personalized exercise prescription: effects on university students’ fitness adaptation and exercise adherence
DOI:
https://doi.org/10.55040/qxgr9967Keywords:
artificial intelligence, personalized exercise prescription, fitness adaptation, exercise adherenceAbstract
Artificial intelligence has increasingly been used to support personalized health and fitness interventions, particularly in designing exercise programs that respond to individual fitness levels and training needs. This study examined the effects of AI-driven personalized exercise prescription on fitness adaptation and exercise adherence among university students. A quasi-experimental pretest-posttest control group design was employed, involving 120 undergraduate students randomly assigned to an experimental group receiving AI-driven personalized exercise prescriptions or a control group following a standard physical education exercise program. The intervention lasted eight weeks, with three exercise sessions per week. Results showed that both groups significantly improved in health-related fitness after the intervention; however, the experimental group demonstrated greater improvements in cardiovascular endurance, muscular endurance, muscular strength, and flexibility compared with the control group. Posttest comparisons significantly favored the experimental group in cardiovascular endurance, muscular endurance, muscular strength, and flexibility, while exercise adherence was also higher in the experimental group than in the control group, with adherence rates of 90.0% and 75.4%, respectively. These findings indicate that AI-driven personalized exercise prescription can improve students’ fitness adaptation and exercise adherence more effectively than a standard physical education exercise program. The integration of AI-based personalized exercise technologies may help strengthen university physical education by promoting health-related fitness and sustained participation in physical activity.
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