School of Behavioural and Health Sciences, Australian Catholic University, Melbourne, Victoria, Australia.
Sports Performance, Recovery, Injury and New Technologies (SPRINT) Research Centre, Australian Catholic University, Melbourne, Victoria, Australia.
Am J Sports Med. 2021 Nov;49(13):3687-3695. doi: 10.1177/03635465211041686. Epub 2021 Sep 30.
Hamstring strain injuries are the most common injuries in team sports. Biceps femoris long head architecture is associated with the risk of hamstring injury in soccer. To assess the overall predictive ability of architectural variables, risk factors need to be applied to and validated across different cohorts.
To assess the generalizability of previously established risk factors for a hamstring strain injury (HSI), including demographics, injury history, and biceps femoris long head (BFlh) architecture to predict HSIs in a cohort of elite Australian football players.
Cohort study; Level of evidence, 3.
Demographic, injury history, and BFlh architectural data were collected from elite soccer (n = 152) and Australian football (n = 169) players at the beginning of the preseason for their respective competitions. Any prospectively occurring HSIs were reported to the research team. Optimal cut points for continuous variables used to determine an association with the HSI risk were established from previously published data in soccer and subsequently applied to the Australian football cohort to derive the relative risk (RR) for these variables. Logistic regression models were built using data from the soccer cohort and utilized to estimate the probability of an injury in the Australian football cohort. The area under the curve (AUC) and Brier score were the primary outcome measures to assess the performance of the logistic regression models.
A total of 27 and 30 prospective HSIs occurred in the soccer and Australian football cohorts, respectively. When using cut points derived from the soccer cohort and applying these to the Australian football cohort, only older athletes (aged ≥25.4 years; RR, 2.7 [95% CI, 1.4-5.2]) and those with a prior HSI (RR, 2.5 [95% CI, 1.3-4.8]) were at an increased risk of HSIs. Using the same approach, height, weight, fascicle length, muscle thickness, pennation angle, and relative fascicle length were not significantly associated with an increased risk of HSIs in Australian football players. The logistic regression model constructed using age and prior HSIs performed the best (AUC = 0.67; Brier score = 0.14), with the worst performing model being the one that was constructed using pennation angle (AUC = 0.53; Brier score = 0.18).
Applying cut points derived from previously published data in soccer to a dataset from Australian football identified older age and prior HSIs, but none of the modifiable HSI risk factors, to be associated with an injury. The transference of HSI risk factor data between soccer and Australian football appears limited and suggests that cohort-specific cut points must be established.
腘绳肌拉伤是团队运动中最常见的损伤。股二头肌长头结构与足球中腘绳肌拉伤的风险有关。为了评估结构变量的整体预测能力,需要将风险因素应用于并验证不同队列。
评估先前确定的腘绳肌拉伤 (HSI) 风险因素(包括人口统计学、损伤史和股二头肌长头 (BFlh) 结构)在澳大利亚精英足球运动员队列中的普遍性,以预测 HSI。
队列研究;证据水平,3 级。
在各自比赛的季前赛开始时,从精英足球(n=152)和澳大利亚足球(n=169)运动员那里收集人口统计学、损伤史和 BFlh 结构数据。向研究小组报告任何前瞻性的 HSI。使用先前在足球中发表的数据确定与 HSI 风险相关的连续变量的最佳切点,并将其应用于澳大利亚足球队列,以得出这些变量的相对风险 (RR)。使用来自足球队列的数据构建逻辑回归模型,并利用这些模型来估计澳大利亚足球队列中损伤的概率。曲线下面积 (AUC) 和 Brier 评分是评估逻辑回归模型性能的主要指标。
在足球和澳大利亚足球队列中分别发生了 27 例和 30 例前瞻性 HSI。当使用从足球队列中得出的切点并将其应用于澳大利亚足球队列时,只有年龄较大的运动员(年龄≥25.4 岁;RR,2.7 [95%CI,1.4-5.2])和有既往 HSI 的运动员(RR,2.5 [95%CI,1.3-4.8])受伤风险增加。同样的方法,身高、体重、肌束长度、肌肉厚度、肌纤维角度和相对肌束长度与澳大利亚足球运动员的 HSI 风险增加无关。使用年龄和既往 HSI 构建的逻辑回归模型表现最佳(AUC=0.67;Brier 评分=0.14),表现最差的模型是使用肌纤维角度构建的模型(AUC=0.53;Brier 评分=0.18)。
将从先前发表的足球数据中得出的切点应用于来自澳大利亚足球的数据,确定了年龄较大和既往 HSI,但没有任何可改变的 HSI 风险因素与受伤有关。将 HSI 风险因素数据从足球转移到澳大利亚足球似乎受到限制,这表明必须建立特定队列的切点。