Effect of Defensive Pressure on Movement Behaviour During an Under-18 Basketball Game

The aim of this study was to examine the effect of defensive pressure on movement behaviour during an under-18 basketball game. 20 international male players (age: M=16.05, SD=2.09 years old; weekly practice: M=10.9, SD=1.94 h; playing experience: M=7.1, SD=1.1 years) played two 10-min basketball quarters, using man-to-man ¼-court for the first 4 min (F¼), man-to-man full court defence for the next 3 min (FULL), and man-to-man ¼-court defence for the last 3 min (S¼). The positional data were captured by the Ubisense Real Time Location System and analysed with non-linear signal processing methods (approximate entropy) and repeated measures ANOVA. There were differences in the regularity values between F¼ and FULL in distance to the basket and to the opponents' basket. A stronger in-phase attraction in both lateral and longitudinal directions was identified; however, the centroids (i. e., the mean position from all team players) were closer and revealed higher values of irregularity in lateral displacements for all defensive systems. The individual speed displacements became more coordinated with teammates, particularly in the offensive court. Overall, this study provided evidence on how changing the level of defensive pressure promotes different collective behaviours.

[1]  R. Bartlett,et al.  Movement systems as dynamical systems : The functional role of variability and its implications for sports medicine , 2003 .

[2]  Pier-Giorgio Zanone,et al.  A dynamical analysis of tennis: Concepts and data , 2005, Journal of sports sciences.

[3]  Paul S Glazier,et al.  Game, Set and Match? Substantive Issues and Future Directions in Performance Analysis , 2010, Sports medicine.

[4]  D. Pyne,et al.  Online Video–Based Resistance Training Improves the Physical Capacity of Junior Basketball Athletes , 2012, Journal of strength and conditioning research.

[5]  Brian Dawson,et al.  The reproducibility of physiological responses and performance profiles of youth soccer players in small-sided games. , 2008, International journal of sports physiology and performance.

[6]  Ian Renshaw,et al.  Interactive Processes Link the Multiple Symptoms of Fatigue in Sport Competition , 2011, Sports medicine.

[7]  C. Sève,et al.  Space–time coordination dynamics in basketball: Part 1. Intra- and inter-couplings among player dyads , 2010, Journal of sports sciences.

[8]  Keith Davids,et al.  Interpersonal dynamics in sport: The role of artificial neural networks and 3-D analysis , 2006, Behavior research methods.

[9]  Keith Davids,et al.  Interpersonal coordination tendencies supporting the creation/prevention of goal scoring opportunities in futsal , 2014, European journal of sport science.

[10]  Tsamourtzis Evangelos,et al.  Defensive systems in basketball ball possessions. , 2006 .

[11]  Jaime Sampaio,et al.  Identifying Basketball Performance Indicators in Regular Season and Playoff Games , 2013, Journal of human kinetics.

[12]  K. Davids,et al.  Constraints-induced emergence of functional novelty in complex neurobiological systems: a basis for creativity in sport. , 2011, Nonlinear dynamics, psychology, and life sciences.

[13]  Keith Davids,et al.  Sports teams as superorganisms: implications of sociobiological models of behaviour for research and practice in team sports performance analysis. , 2012, Sports medicine.

[14]  Tim McGarry,et al.  Space–time coordination dynamics in basketball: Part 2. The interaction between the two teams , 2010, Journal of sports sciences.

[15]  Justin Kubatko,et al.  A Starting Point for Analyzing Basketball Statistics , 2007 .

[16]  Jaime Sampaio,et al.  Exploring how basketball players’ tactical performances can be affected by activity workload , 2014 .

[17]  Carlo Castagna,et al.  The Effect of Players' Standard and Tactical Strategy on Game Demands in Men's Basketball , 2010, Journal of strength and conditioning research.

[18]  Keith Davids,et al.  Interpersonal dynamics and relative positioning to scoring target of performers in 1 vs. 1 sub-phases of team sports , 2012, Journal of sports sciences.

[19]  Wouter Frencken,et al.  Oscillations of centroid position and surface area of soccer teams in small-sided games , 2011 .

[20]  J. Richman,et al.  Physiological time-series analysis using approximate entropy and sample entropy. , 2000, American journal of physiology. Heart and circulatory physiology.

[21]  Jaime Sampaio,et al.  Effects of season period, team quality, and playing time on basketball players' game-related statistics , 2010 .

[22]  Jaime Sampaio,et al.  Ball possession effectiveness in men's and women's elite basketball according to situational variables in different game periods , 2013, Journal of sports sciences.

[23]  J. Sampaio,et al.  Measuring Tactical Behaviour in Football , 2012, International Journal of Sports Medicine.

[24]  angesichts der Corona-Pandemie,et al.  UPDATE , 1973, The Lancet.

[25]  Keith Davids,et al.  How Small-Sided and Conditioned Games Enhance Acquisition of Movement and Decision-Making Skills , 2013, Exercise and sport sciences reviews.

[26]  Keith Davids,et al.  Intra- and inter-group coordination patterns reveal collective behaviors of football players near the scoring zone. , 2012, Human movement science.

[27]  Keith Davids,et al.  Constraints on competitive performance of attacker–defender dyads in team sports , 2012, Journal of sports sciences.

[28]  R Kannekens,et al.  Positioning and deciding: key factors for talent development in soccer , 2011, Scandinavian journal of medicine & science in sports.

[29]  Jaime E Sampaio,et al.  Effects of pacing, status and unbalance in time motion variables, heart rate and tactical behaviour when playing 5-a-side football small-sided games. , 2014, Journal of science and medicine in sport.

[30]  B. Travassos,et al.  Spatiotemporal coordination behaviors in futsal (indoor football) are guided by informational game constraints. , 2012, Human movement science.

[31]  C. Galazoulas,et al.  The post-activation potentiation effect on sprint performance after combined resistance/sprint training in junior basketball players , 2013, Journal of sports sciences.

[32]  Jaime Sampaio,et al.  Statistical analyses of basketball team performance: understanding teams’ wins and losses according to a different index of ball possessions , 2003 .

[33]  Wouter Frencken,et al.  Variability of inter-team distances associated with match events in elite-standard soccer , 2012, Journal of sports sciences.

[34]  S M Pincus,et al.  Approximate entropy as a measure of system complexity. , 1991, Proceedings of the National Academy of Sciences of the United States of America.

[35]  Jaime Sampaio,et al.  Effect of player position on movement behaviour, physical and physiological performances during an 11-a-side football game , 2014, Journal of sports sciences.

[36]  Keith Davids,et al.  The Role of Ecological Dynamics in Analysing Performance in Team Sports , 2012, Sports Medicine.

[37]  Keith Davids,et al.  Interpersonal coordination tendencies shape 1-vs-1 sub-phase performance outcomes in youth soccer , 2012, Journal of sports sciences.