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Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach

This study aimed to examine countermovement jump (CMJ) kinetic data using logistic regression, in order to distinguish sports-related mechanical profiles. Eighty-one professional basketball and soccer athletes participated, each performing three CMJs on a force platform. Inferential parametric and n...

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Autores principales: Chalitsios, Christos, Nikodelis, Thomas, Panoutsakopoulos, Vassilios, Chassanidis, Christos, Kollias, Iraklis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6681078/
https://www.ncbi.nlm.nih.gov/pubmed/31277434
http://dx.doi.org/10.3390/sports7070163
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author Chalitsios, Christos
Nikodelis, Thomas
Panoutsakopoulos, Vassilios
Chassanidis, Christos
Kollias, Iraklis
author_facet Chalitsios, Christos
Nikodelis, Thomas
Panoutsakopoulos, Vassilios
Chassanidis, Christos
Kollias, Iraklis
author_sort Chalitsios, Christos
collection PubMed
description This study aimed to examine countermovement jump (CMJ) kinetic data using logistic regression, in order to distinguish sports-related mechanical profiles. Eighty-one professional basketball and soccer athletes participated, each performing three CMJs on a force platform. Inferential parametric and nonparametric statistics were performed to explore group differences. Binary logistic regression was used to model the response variable (soccer or not soccer). Statistical significance (p < 0.05) was reached for differences between groups in maximum braking rate of force development (RFD(Dmax), U(79) = 1035), mean braking rate of force development (RFD(Davg), U(79) = 1038), propulsive impulse (IMP(U), t(79) = 2.375), minimum value of vertical displacement for center of mass (S(BCMmin), t(79) = 3.135), and time difference (% of impulse time; Δ(Τ)) between the peak value of maximum force value (F(Umax)) and S(BCMmin) (U(79) = 1188). Logistic regression showed that RFD(Davg), impulse during the downward phase (IMP(D)), IMP(U), and Δ(Τ) were all significant predictors. The model showed that soccer group membership could be strongly related to IMP(U), with the odds ratio being 6.48 times higher from the basketball group, whereas RFD(Davg), IMP(D), and Δ(Τ) were related to basketball group. The results imply that soccer players execute CMJ differently compared to basketball players, exhibiting increased countermovement depth and impulse generation during the propulsive phase.
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spelling pubmed-66810782019-08-09 Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach Chalitsios, Christos Nikodelis, Thomas Panoutsakopoulos, Vassilios Chassanidis, Christos Kollias, Iraklis Sports (Basel) Article This study aimed to examine countermovement jump (CMJ) kinetic data using logistic regression, in order to distinguish sports-related mechanical profiles. Eighty-one professional basketball and soccer athletes participated, each performing three CMJs on a force platform. Inferential parametric and nonparametric statistics were performed to explore group differences. Binary logistic regression was used to model the response variable (soccer or not soccer). Statistical significance (p < 0.05) was reached for differences between groups in maximum braking rate of force development (RFD(Dmax), U(79) = 1035), mean braking rate of force development (RFD(Davg), U(79) = 1038), propulsive impulse (IMP(U), t(79) = 2.375), minimum value of vertical displacement for center of mass (S(BCMmin), t(79) = 3.135), and time difference (% of impulse time; Δ(Τ)) between the peak value of maximum force value (F(Umax)) and S(BCMmin) (U(79) = 1188). Logistic regression showed that RFD(Davg), impulse during the downward phase (IMP(D)), IMP(U), and Δ(Τ) were all significant predictors. The model showed that soccer group membership could be strongly related to IMP(U), with the odds ratio being 6.48 times higher from the basketball group, whereas RFD(Davg), IMP(D), and Δ(Τ) were related to basketball group. The results imply that soccer players execute CMJ differently compared to basketball players, exhibiting increased countermovement depth and impulse generation during the propulsive phase. MDPI 2019-07-04 /pmc/articles/PMC6681078/ /pubmed/31277434 http://dx.doi.org/10.3390/sports7070163 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chalitsios, Christos
Nikodelis, Thomas
Panoutsakopoulos, Vassilios
Chassanidis, Christos
Kollias, Iraklis
Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title_full Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title_fullStr Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title_full_unstemmed Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title_short Classification of Soccer and Basketball Players’ Jumping Performance Characteristics: A Logistic Regression Approach
title_sort classification of soccer and basketball players’ jumping performance characteristics: a logistic regression approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6681078/
https://www.ncbi.nlm.nih.gov/pubmed/31277434
http://dx.doi.org/10.3390/sports7070163
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