This non-randomised controlled-trial aimed to examine the effects of a ChatGPT-generated eccentric training (ET) programme, which was subsequently validated by human experts before implementation, on physical fitness in U14 tennis players. Twenty-four youth players were recruited and assigned to either the ET-group (n = 13; 7 females; age = 13.19 ± 0.98 years) or the active control-group (CG; n = 11; 6 females; age = 13.13 ± 0.52 years). The AI-designed ET programme was implemented over 8 weeks, during which the CG continued their regular tennis training without additional ET. Participants were tested on linear-sprint-speed (5- and 10-m sprints), change-of-direction (CoD) speed (505-CoD), vertical-jump (countermovement-jump, CMJ), horizontal-jump (standing-long-jump, SLJ), and drop-jump (20-cm drop-jump, DJ-20) performances. Significant group-by-time interactions were found for 5-m sprint, 505-CoD, and Y-Agility performances (p 0.2) threshold across all tests, compared to the CG (18-63%). The present findings support the effectiveness and practicality of the ChatGPT-designed ET programmes for improving physical fitness in U14 tennis players.
Building similarity graph...
Analyzing shared references across papers
Loading...
Yassine Negra
Senda Sammoud
Raja Bouguezzi
Journal of Sports Sciences
Université de Caen Normandie
University Hospital Magdeburg
Foro Italico University of Rome
Building similarity graph...
Analyzing shared references across papers
Loading...
Negra et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69d893eb6c1944d70ce04dea — DOI: https://doi.org/10.1080/02640414.2026.2653295