Multisensory assessment and machine learning for athlete classification in talent identification

Background Talent identification in elite sport is challenged by maturation confounding and limited objective assessment tools. This preliminary study examined whether visual-vestibular-somatosensory and autonomic (VVS-A) measures distinguished podium-level from entry-level divers using machine learning. Objectives Roberts et al. (2019)1 Identify VVS-A features distinguishing podium-level divers from a Come and Try group using traditional statistical comparisons; Cobley et al. (2009)2 evaluate machine-learning models' ability to classify podium-level athletes; Sweeney et al. (2022)3 examine the distribution of classification probabilities using lift-curve analysis. Design Cross-sectional exploratory study with machine-learning classification. Methods Sixty participants from an Olympic diving talent identification programme underwent VVS-A assessment. Somatosensory function was evaluated via ankle proprioception using the AMEDA device. Visual, vestibular, and autonomic functions were assessed using the Prism-Neuro Eye system. Group differences were examined using independent-samples Student t-tests. Supervised ML models were trained on selected VVS-A measures and evaluated using cross-validation and a held-out test set. Results Podium-level athletes demonstrated superior ankle proprioception (Left: p<0.001, d=1.57; Right: p<0.001, d=1.83) and visual-vestibular smooth pursuit (p=0.001, r=0.51). No group differences were observed for voluntary saccades or autonomic metrics. A calibrated Ridge Logistic Regression model classified podium-level athletes with high accuracy within this sample (94.4%; AUC=0.889). Conclusion Selected VVS-A measures were associated with differences in current performance level in Olympic diving. However, the cross-sectional design, age differences between groups, and limited sample size preclude conclusions regarding predictive validity, necessitating longitudinal sport-specific validation before informing applied practice within talent identification contexts.
© Copyright 2026 Journal of Science and Medicine in Sport. Elsevier. All rights reserved.

Bibliographic Details
Subjects:
Notations:technical and natural sciences technical sports
Tagging:Talentidentifikation maschinelles Lernen
Published in:Journal of Science and Medicine in Sport
Language:English
Published: 2026
Document types:article
Level:advanced