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dc.contributor.author Ulloa-Díaz, David
dc.contributor.author Fábrica-Barrios, Gabriel
dc.contributor.author Jorquera-Aguilera, Carlos
dc.contributor.author Guede-Rojas, Francisco
dc.contributor.author Pérez-Contreras, Jorge
dc.contributor.author Lozano-Jarque, Demetrio
dc.contributor.author Carvajal-Parodi, Claudio
dc.contributor.author Romero-Vera, Luis
dc.date.accessioned 2026-02-08T03:35:43Z
dc.date.available 2026-02-08T03:35:43Z
dc.date.issued 2025
dc.identifier.issn 1664-042X
dc.identifier.other ORCID: /0000-0003-4271-9657/work/193932616
dc.identifier.other Mendeley: a13732bd-2d36-3e2c-9ae9-851329b2d47e
dc.identifier.uri https://repositorio.uss.cl/handle/uss/20777
dc.description Publisher Copyright: Copyright © 2025 Ulloa-Díaz, Fábrica-Barrios, Jorquera-Aguilera, Guede-Rojas, Pérez-Contreras, Lozano-Jarque, Carvajal-Parodi and Romero-Vera.
dc.description.abstract Background: This study aimed to explore whether a predictive model based on body composition and physical condition could estimate seasonal playing time in professional soccer players. Methods: 24 professional soccer players with 5–7 years of professional experience participated. Body composition and physical condition variables were assessed, and total minutes played during the season were recorded as the dependent variable. Correlations between variables were examined to reduce multicollinearity, followed by a principal component analysis (PCA) of the selected predictors. The first three components were used as inputs in a Gradient Boosting model. Model performance was evaluated using 5-fold cross-validation and leave-one-out cross-validation (LOOCV). Results: High intercorrelations among independent variables (r > 0.70) justified dimensionality reduction through PCA. The first three components explained 70% of the total variance. However, no direct correlations were observed between individual variables and minutes played, and the Gradient Boosting model did not achieve positive predictive performance under cross-validation (5-fold CV: R2 = −0.04; LOOCV: R2 < 0). Conclusion: In this small dataset, a multivariate approach combining PCA and Gradient Boosting did not yield predictive accuracy for playing time. Nonetheless, the PCA revealed meaningful structures in the players’ physical and body composition profiles, which may inform future research. Larger and more heterogeneous samples are required to determine whether component-based predictors can reliably estimate playing time in professional soccer. en
dc.description.abstract Background: This study aimed to explore whether a predictive model based on body composition and physical condition could estimate seasonal playing time in professional soccer players. Methods: 24 professional soccer players with 5–7 years of professional experience participated. Body composition and physical condition variables were assessed, and total minutes played during the season were recorded as the dependent variable. Correlations between variables were examined to reduce multicollinearity, followed by a principal component analysis (PCA) of the selected predictors. The first three components were used as inputs in a Gradient Boosting model. Model performance was evaluated using 5-fold cross-validation and leave-one-out cross-validation (LOOCV). Results: High intercorrelations among independent variables (r > 0.70) justified dimensionality reduction through PCA. The first three components explained 70% of the total variance. However, no direct correlations were observed between individual variables and minutes played, and the Gradient Boosting model did not achieve positive predictive performance under cross-validation (5-fold CV: R2 = −0.04; LOOCV: R2 < 0). Conclusion: In this small dataset, a multivariate approach combining PCA and Gradient Boosting did not yield predictive accuracy for playing time. Nonetheless, the PCA revealed meaningful structures in the players’ physical and body composition profiles, which may inform future research. Larger and more heterogeneous samples are required to determine whether component-based predictors can reliably estimate playing time in professional soccer. es
dc.language.iso eng
dc.relation.ispartof vol. 16 Issue: Pages:
dc.source Frontiers in Physiology
dc.title Exploring body composition and physical condition profiles in relation to playing time in professional soccer : a principal components analysis and Gradient Boosting approach en
dc.type Artículo
dc.identifier.doi 10.3389/fphys.2025.1659313
dc.publisher.department Facultad de Ciencias de la Rehabilitación y Calidad de Vida


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