Institute for Applied Human Physiology, School of Human and Behavioural Sciences, Bangor University, Bangor, United Kingdom.
School of Health and Sport Sciences, Liverpool Hope University, Liverpool, United Kingdom.
PLoS One. 2024 Oct 24;19(10):e0307287. doi: 10.1371/journal.pone.0307287. eCollection 2024.
The cause of sport injuries are multifactorial and necessitate sophisticated statistical approaches for accurate identification of risk factors predisposing athletes to injury. Pattern recognition analyses have been adopted across sporting disciplines due to their ability to account for repeated measures and non-linear interactions of datasets, however there are limited examples of their use in injury risk prediction. This study incorporated two-years of rigorous monitoring of athletes with 1740 individual weekly data points across domains of training load, performance testing, musculoskeletal screening, and injury history parameters, to be one of the first to employ a pattern recognition approach to predict the risk factors of specific non-contact lower limb injuries in Rugby Union. Predictive models (injured vs. non-injured) were generated for non-contact lower limb, non-contact ankle, and severe non-contact injuries using Bayesian pattern recognition from a pool of 36 Senior Academy Rugby Union athletes. Predictors for non-contact lower limb injuries included dorsiflexion angle, adductor strength, and previous injury history (area under the receiver operating characteristic (ROC) = 0.70) Dorsiflexion angle parameters were also predictive of non-contact ankle injuries, along with slower sprint times, greater body mass, previous concussion, and previous ankle injury (ROC = 0.76). Predictors of severe non-contact lower limb injuries included greater differences in mean training load, slower sprint times, reduced hamstring and adductor strength, reduced dorsiflexion angle, greater perceived muscle soreness, and playing as a forward (ROC = 0.72). The identification of specific injury risk factors and useable thresholds for non-contact injury risk detection in sport holds great potential for coaches and medical staff to modify training prescriptions and inform injury prevention strategies, ultimately increasing player availability, a key indicator of team success.
运动损伤的原因是多因素的,需要复杂的统计方法来准确识别导致运动员受伤的危险因素。由于模式识别分析能够解释数据集的重复测量和非线性相互作用,因此已在各个运动学科中采用。然而,将其用于损伤风险预测的例子有限。本研究对运动员进行了两年的严格监测,共获得了 1740 个个体每周数据点,涵盖了训练负荷、性能测试、肌肉骨骼筛查和损伤史参数等领域,是首批采用模式识别方法预测橄榄球联盟特定非接触下肢损伤危险因素的研究之一。使用来自 36 名高级学院橄榄球联盟运动员的贝叶斯模式识别,为非接触下肢、非接触踝关节和严重非接触损伤生成了预测模型(受伤与未受伤)。非接触下肢损伤的预测因子包括背屈角度、内收肌力量和既往损伤史(接收者操作特征曲线下的面积(ROC)= 0.70)。背屈角度参数也可预测非接触踝关节损伤,以及冲刺速度较慢、体重较大、既往脑震荡和既往踝关节损伤(ROC = 0.76)。严重非接触下肢损伤的预测因子包括平均训练负荷差异较大、冲刺速度较慢、腘绳肌和内收肌力量降低、背屈角度降低、肌肉酸痛感增加以及作为前锋(ROC = 0.72)。识别特定的损伤危险因素和可用于检测运动中非接触损伤风险的阈值,为教练和医务人员提供了很大的潜力,可以修改训练方案并为损伤预防策略提供信息,最终增加球员的可用性,这是团队成功的关键指标。