| Literature DB >> 34854059 |
Sean Williams1, Charli Robertson2, Lindsay Starling2, Carly McKay2, Stephen West3,4, James Brown5,6, Keith Stokes2,7.
Abstract
BACKGROUND: The most recent meta-analytic review of injuries in elite senior men's Rugby Union was published in 2013. The demands of the game at the elite level are continually changing alongside law amendments and developments in player preparation. As such, an updated meta-analysis of injury data in this setting is necessary.Entities:
Mesh:
Year: 2021 PMID: 34854059 PMCID: PMC9023408 DOI: 10.1007/s40279-021-01603-w
Source DB: PubMed Journal: Sports Med ISSN: 0112-1642 Impact factor: 11.928
Fig. 1PRISMA flow diagram of the study selection process
Study characteristics, injury data and STROBE-SIIS reporting quality of included studies
| References | Setting | Level of play | Surveillance period | Activity | Injury count | Exposure time (h) | Incidence (no./1,000 h) | Mean days missed | Injury burden (days/1,000 h) | STROBE-SIIS rating [/23] |
|---|---|---|---|---|---|---|---|---|---|---|
| Bitchell et al. [ | Wales | Level 1 | 2012–2016 | Match | 1086 | 10,960 | 99.1 | 26 | 2570 | 17 |
| Match (concussion) | 168 | 10,960 | 15.3 | |||||||
| Cosgrave & Williams [ | Ireland | Level 1 | 2016–2017 | Match (concussion) | 46 | 2590 | 17.8 | 18 | ||
| Ireland | International | 2016–2017 | Match (concussion) | 5 | 180 | 27.8 | ||||
| Cousins et al. [ | England | Level 2 | 2017–2018 | Match | 125 | 728 | 171.7 | 12 | ||
| Training | 76 | 12,233 | 6.2 | |||||||
| Cruz-Ferreira et al. [ | Portugal | Level 2 | 2014–2015 | Match | 28 | 420 | 66.7 | 23 | 1501 | 12 |
| Fuller et al. [ | World Cup | International | 2015 | Match | 173 | 1920 | 90.1 | 30 | 2685 | 19 |
| Match (concussion) | 24 | 1920 | 12.5 | |||||||
| Training | 20 | 17,403 | 1.1 | |||||||
| Fuller et al. [ | World Cup | U20s (Level 2) | 2012–2016 | Match | 273 | 5800 | 47.1 | 38 | 1720 | 21 |
| Match (concussion) | 21 | 5800 | 3.6 | |||||||
| Fuller et al. [ | World Cup | International | 2019 | Match | 143 | 1800 | 79.4 | 29 | 2296 | 21 |
| Match (concussion) | 22 | 1800 | 12.2 | |||||||
| Training | 25 | 16,667 | 1.5 | |||||||
| Kemp et al. [ | England | International | 2012–2019 | Match | 189 | 1695 | 111.5 | 21 | 2308 | 17 |
| Training | 173 | 27,453 | 6.3 | |||||||
| Lanzetti et al. [ | Italy | Level 2 | 2014–2015 | Match | 40 | 360 | 111.1 | 9 | ||
| Training | 37 | 12,320 | 3.0 | |||||||
| Moore et al. [ | Wales | International | 2012–2014 | Training | 41 | 8737 | 4.7 | 19 | ||
| Match (concussion) | 11 | 800 | 13.8 | |||||||
| Rafferty et al. [ | Wales | International | 2012–2016 | Match | 177 | 1000 | 177 | 20 | ||
| Schwellnus et al. [ | South Africa | Level 1 | 2012–2016 | Match | 802 | 8032 | 99.9 | 18 | 1796 | 20 |
| Match (concussion) | 60 | 8032 | 7.5 | |||||||
| Training | 134 | 85,609 | 1.6 | |||||||
| Starling et al. [ | South Africa | Level 1 | 2014–2017 | Match | 502 | 6160 | 81.5 | 15 | ||
| 2016–2017 | Match | 33 | ||||||||
| 2014–2017 | Match (concussion) | 42 | 6160 | 6.8 | ||||||
| Starling et al. [ | South Africa | Level 1 | 2018 | Match | 77 | 940 | 81.9 | 31 | 15 | |
| Match (concussion) | 14 | 940 | 14.9 | |||||||
| Starling et al. [ | South Africa | Level 1 | 2019 | Match | 90 | 957 | 94 | 13 | 1222 | 15 |
| Match (concussion) | 11 | 957 | 11.5 | |||||||
| Stokes et al. [ | England | Level 2 | 2019 | Match | 256 | 3600 | 71.1 | 15 | ||
| Match (concussion) | 61 | 3600 | 16.9 | |||||||
| West et al. [ | England | Level 1 | 2012–2019 | Match | 4747 | 55,642 | 85.3 | 30 | 2602 | 19 |
| Match (concussion) | 838 | 55,642 | 15.1 | |||||||
| West et al. [ | England | Level 1 | 2012–2018 | Training | 2245 | 872,823 | 2.6 | 17 | ||
| Whitehouse et al. [ | Australia | Level 1 | 2014 | Match | 111 | 1680 | 66.1 | 40 | 2630 | 18 |
| Training | 50 | 21,459 | 2.3 |
STROBE-SIIS Strengthening the Reporting of Observational studies in Epidemiology—Sports Injury and Illness Surveillance extension
aData for seasons pre-2012 were not extracted
bInjury severity data were only captured from 2016 onwards
cOnly control period data were extracted
Fig. 2Incidence of match injuries (with 95% confidence intervals) by level of play. Study reference, study setting and total number of injury events are provided for each study. The location of the diamond represents the estimated incidence rate and the width of the diamond reflects the precision of the estimate. The dashed line represents the prediction interval, which shows the range of the true effect in 95% of study settings
Fig. 3Mean days missed for match injuries (with 95% confidence intervals) by level of play. Study reference, study setting and total number of injury events are provided for each study. The location of the diamond represents the estimated mean days missed and the width of the diamond reflects the precision of the estimate. The dashed line represents the prediction interval, which shows the range of the true effect in 95% of study settings
Fig. 4Incidence of match concussion injuries (with 95% confidence intervals) by level of play. Study reference, study setting and total number of injury events are provided for each study. The location of the diamond represents the estimated incidence rate and the width of the diamond reflects the precision of the estimate. The dashed line represents the prediction interval, which shows the range of the true effect in 95% of study settings
Match injuries as a function of injury location. Injury location incidence rate data were summarised as a proportion of all injuries in the given individual study; proportions from each study were then combined in the meta-analysis
| Injury location | Number of studies | Total injury count | Meta-analysed proportion (95% CI) |
|---|---|---|---|
| Head | 10 | 1439 | 16.7% (13.5–19.9) |
| Knee | 10 | 1034 | 12.9% (12.1–13.6) |
| Shoulder | 10 | 933 | 11.7% (9.6–13.8) |
| Ankle | 9 | 312 | 9.3% (7.9–10.7) |
| Posterior thigh | 8 | 447 | 6.5% (5.3–7.7) |
| Lower leg | 10 | 570 | 6.5% (5.5–7.5) |
| Anterior thigh | 8 | 338 | 6.0% (4.4–7.6) |
| Chest | 6 | 311 | 4.0% (1.9–6.1) |
| Hip/groin | 10 | 330 | 3.8% (2.6–5.1) |
| Wrist/hand | 10 | 177 | 3.6% (2.4–4.7) |
| Upper back | 4 | 28 | 3.1% (0.7–5.6) |
| Neck | 9 | 338 | 2.9% (1.7–4.1) |
| Foot | 9 | 84 | 2.4% (1.8–3.0) |
| Lower back | 10 | 161 | 1.8% (1.5–2.2) |
| Elbow | 7 | 33 | 1.2% (0.7–1.7) |
| Pelvis/sacrum | 4 | 22 | 1.2% (0.2–1.9) |
| Upper arm | 6 | 47 | 0.7% (0.5–0.9) |
| Abdomen | 4 | 38 | 0.7% (0.5–0.9) |
| Forearm | 6 | 49 | 0.7% (0.5–0.9) |
Match injuries as a function of match event. Match-event incidence-rate data were summarised as a proportion of all injuries in the given individual study; proportions from each study were then combined in the meta-analysis
| Match event | Number of studies | Total injury count | Meta-analysed proportion (95% CI) |
|---|---|---|---|
| Tackling | 9 | 1497 | 23.0% (20.7–25.2) |
| Tackled | 9 | 1633 | 22.8% (20.7–24.9) |
| Collision | 7 | 737 | 14.2% (10.2–18.2) |
| Running | 9 | 713 | 10.4% (7.5–13.3) |
| Ruck | 9 | 627 | 8.9% (6.8–11.0) |
| Scrum | 9 | 257 | 4.3% (3.1–5.4) |
| Maul | 5 | 131 | 2.2% (1.9–2.6) |
| Lineout | 5 | 77 | 1.3% (1.0–1.6) |
| Kicking | 6 | 30 | 0.6% (0.2–1.0) |
Fig. 5Incidence of training injuries (with 95% confidence intervals) by level of play. Study reference, study setting and total number of injury events are provided for each study. The location of the diamond represents the estimated incidence rate and the width of the diamond reflects the precision of the estimate. The dashed line represents the prediction interval, which shows the range of the true effect in 95% of study settings
| The incidence rate for match injuries in elite senior men’s Rugby Union is high in comparison to most team sports (91 per 1000 h), though the training injury incidence rate compares favourably (2.8 per 1000 h). |
| The mean days missed per match injury was 27 days. |
| Playing level was not a significant effect modifier for any injury outcome. |
| The tackle event and concussion injuries should continue to be the focus of future preventative efforts. |