Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis

 

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dc.contributor.author Naughton, Mitchell
dc.contributor.author Jones, Ben
dc.contributor.author Hendricks, Sharief
dc.contributor.author King, Doug
dc.contributor.author Murphy, Aron
dc.contributor.author Cummins, Cloe
dc.date.accessioned 2020-01-28T09:10:22Z
dc.date.available 2020-01-28T09:10:22Z
dc.date.issued 2020-01-22
dc.identifier.citation Sports Medicine - Open. 2020 Jan 22;6(1):6
dc.identifier.uri https://doi.org/10.1186/s40798-019-0233-9
dc.identifier.uri http://hdl.handle.net/11427/30826
dc.description.abstract Abstract Background Collisions (i.e. tackles, ball carries, and collisions) in the rugby league have the potential to increase injury risk, delay recovery, and influence individual and team performance. Understanding the collision demands of the rugby league may enable practitioners to optimise player health, recovery, and performance. Objective The aim of this review was to (1) characterise the dose of collisions experienced within senior male rugby league match-play and training, (2) systematically and critically evaluate the methods used to describe the relative and absolute frequency and intensity of collisions, and (3) provide recommendations on collision monitoring. Methods A systematic search of electronic databases (PubMed, SPORTDiscus, Scopus, and Web of Science) using keywords was undertaken. A meta-analysis provided a pooled mean of collision frequency or intensity metrics on comparable data sets from at least two studies. Results Forty-three articles addressing the absolute (n) or relative collision frequency (n min−1) or intensity of senior male rugby league collisions were included. Meta-analysis of video-based studies identified that forwards completed approximately twice the number of tackles per game than backs (n = 24.6 vs 12.8), whilst ball carry frequency remained similar between backs and forwards (n = 11.4 vs 11.2). Variable findings were observed at the subgroup level with a limited number of studies suggesting wide-running forwards, outside backs, and hit-up forwards complete similar ball carries whilst tackling frequency differed. For microtechnology, at the team level, players complete an average of 32.7 collisions per match. Limited data suggested hit-up and wide-running forwards complete the most collisions per match, when compared to adjustables and outside backs. Relative to playing time, forwards (n min−1 = 0.44) complete a far greater frequency of collision than backs (n min−1 = 0.16), with data suggesting hit-up forwards undertake more than adjustables, and outside backs. Studies investigating g force intensity zones utilised five unique intensity schemes with zones ranging from 2–3 g to 13–16 g. Given the disparity between device setups and zone classification systems between studies, further analyses were inappropriate. It is recommended that practitioners independently validate microtechnology against video to establish criterion validity. Conclusions Video- and microtechnology-based methods have been utilised to quantify collisions in the rugby league with differential collision profiles observed between forward and back positional groups, and their distinct subgroups. The ball carry demands of forwards and backs were similar, whilst tackle demands were greater for forwards than backs. Microtechnology has been used inconsistently to quantify collision frequency and intensity. Despite widespread popularity, a number of the microtechnology devices have yet to be appropriately validated. Limitations exist in using microtechnology to quantify collision intensity, including the lack of consistency and limited validation. Future directions include application of machine learning approaches to differentiate types of collisions in microtechnology datasets.
dc.subject Global Positioning system
dc.subject Microtechnology
dc.subject Rugby
dc.subject Tackle
dc.title Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis
dc.type Journal Article
dc.date.updated 2020-01-26T04:12:25Z
dc.language.rfc3066 en
dc.rights.holder The Author(s).
dc.identifier.apacitation Naughton, M., Jones, B., Hendricks, S., King, D., Murphy, A., & Cummins, C. (2020). Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis. http://hdl.handle.net/11427/30826 en_ZA
dc.identifier.chicagocitation Naughton, Mitchell, Ben Jones, Sharief Hendricks, Doug King, Aron Murphy, and Cloe Cummins "Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis." (2020) http://hdl.handle.net/11427/30826 en_ZA
dc.identifier.vancouvercitation Naughton M, Jones B, Hendricks S, King D, Murphy A, Cummins C. Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis. 2020; http://hdl.handle.net/11427/30826. en_ZA
dc.identifier.ris TY - Journal Article AU - Naughton, Mitchell AU - Jones, Ben AU - Hendricks, Sharief AU - King, Doug AU - Murphy, Aron AU - Cummins, Cloe AB - Abstract Background Collisions (i.e. tackles, ball carries, and collisions) in the rugby league have the potential to increase injury risk, delay recovery, and influence individual and team performance. Understanding the collision demands of the rugby league may enable practitioners to optimise player health, recovery, and performance. Objective The aim of this review was to (1) characterise the dose of collisions experienced within senior male rugby league match-play and training, (2) systematically and critically evaluate the methods used to describe the relative and absolute frequency and intensity of collisions, and (3) provide recommendations on collision monitoring. Methods A systematic search of electronic databases (PubMed, SPORTDiscus, Scopus, and Web of Science) using keywords was undertaken. A meta-analysis provided a pooled mean of collision frequency or intensity metrics on comparable data sets from at least two studies. Results Forty-three articles addressing the absolute (n) or relative collision frequency (n min−1) or intensity of senior male rugby league collisions were included. Meta-analysis of video-based studies identified that forwards completed approximately twice the number of tackles per game than backs (n = 24.6 vs 12.8), whilst ball carry frequency remained similar between backs and forwards (n = 11.4 vs 11.2). Variable findings were observed at the subgroup level with a limited number of studies suggesting wide-running forwards, outside backs, and hit-up forwards complete similar ball carries whilst tackling frequency differed. For microtechnology, at the team level, players complete an average of 32.7 collisions per match. Limited data suggested hit-up and wide-running forwards complete the most collisions per match, when compared to adjustables and outside backs. Relative to playing time, forwards (n min−1 = 0.44) complete a far greater frequency of collision than backs (n min−1 = 0.16), with data suggesting hit-up forwards undertake more than adjustables, and outside backs. Studies investigating g force intensity zones utilised five unique intensity schemes with zones ranging from 2–3 g to 13–16 g. Given the disparity between device setups and zone classification systems between studies, further analyses were inappropriate. It is recommended that practitioners independently validate microtechnology against video to establish criterion validity. Conclusions Video- and microtechnology-based methods have been utilised to quantify collisions in the rugby league with differential collision profiles observed between forward and back positional groups, and their distinct subgroups. The ball carry demands of forwards and backs were similar, whilst tackle demands were greater for forwards than backs. Microtechnology has been used inconsistently to quantify collision frequency and intensity. Despite widespread popularity, a number of the microtechnology devices have yet to be appropriately validated. Limitations exist in using microtechnology to quantify collision intensity, including the lack of consistency and limited validation. Future directions include application of machine learning approaches to differentiate types of collisions in microtechnology datasets. DA - 2020-01-22 DB - OpenUCT DP - University of Cape Town KW - Global Positioning system KW - Microtechnology KW - Rugby KW - Tackle LK - https://open.uct.ac.za PY - 2020 T1 - Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis TI - Quantifying the Collision Dose in Rugby League: A Systematic Review, Meta-analysis, and Critical Analysis UR - http://hdl.handle.net/11427/30826 ER - en_ZA


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