Kolodziej Mathias, Groll Andreas, Nolte Kevin, Willwacher Steffen, Alt Tobias, Schmidt Marcus, Jaitner Thomas
Department of Strength and Conditioning and Performance, Borussia Dortmund, Dortmund, Germany.
Institute for Sports and Sports Science, TU Dortmund University, Dortmund, Germany.
Scand J Med Sci Sports. 2023 Jun;33(6):1021-1033. doi: 10.1111/sms.14322. Epub 2023 Feb 3.
To (1) identify neuromuscular and biomechanical injury risk factors in elite youth soccer players and (2) assess the predictive ability of a machine learning approach.
Fifty-six elite male youth soccer players (age: 17.2 ± 1.1 years; height: 179 ± 8 cm; mass: 70.4 ± 9.2 kg) performed a 3D motion analysis, postural control testing, and strength testing. Non-contact lower extremities injuries were documented throughout 10 months. A least absolute shrinkage and selection operator (LASSO) regression model was used to identify the most important injury predictors. Predictive performance of the LASSO model was determined in a leave-one-out (LOO) prediction competition.
Twenty-three non-contact injuries were registered. The LASSO model identified concentric knee extensor peak torque, hip transversal plane moment in the single-leg drop landing task and center of pressure sway in the single-leg stance test as the three most important predictors for injury in that order. The LASSO model was able to predict injury outcomes with a likelihood of 58% and an area under the ROC curve of 0.63 (sensitivity = 35%; specificity = 79%).
The three most important variables for predicting the injury outcome suggest the importance of neuromuscular and biomechanical performance measures in elite youth soccer. These preliminary results may have practical implications for future directions in injury risk screening and planning, as well as for the development of customized training programs to counteract intrinsic injury risk factors. However, the poor predictive performance of the final model confirms the challenge of predicting sports injuries, and the model must therefore be evaluated in larger samples.
(1)确定精英青少年足球运动员的神经肌肉和生物力学损伤风险因素;(2)评估机器学习方法的预测能力。
56名精英男性青少年足球运动员(年龄:17.2±1.1岁;身高:179±8厘米;体重:70.4±9.2千克)进行了三维运动分析、姿势控制测试和力量测试。在10个月内记录非接触性下肢损伤情况。使用最小绝对收缩和选择算子(LASSO)回归模型来确定最重要的损伤预测因素。在留一法(LOO)预测竞赛中确定LASSO模型的预测性能。
记录了23例非接触性损伤。LASSO模型确定,依次为向心膝关节伸肌峰值扭矩、单腿下落着地任务中的髋关节横向平面力矩和单腿站立测试中的压力中心摆动,这三个因素是损伤的最重要预测因素。LASSO模型能够以58%的可能性预测损伤结果,ROC曲线下面积为0.63(敏感性=35%;特异性=79%)。
预测损伤结果的三个最重要变量表明了神经肌肉和生物力学性能指标在精英青少年足球中的重要性。这些初步结果可能对损伤风险筛查和规划的未来方向以及制定定制化训练计划以抵消内在损伤风险因素具有实际意义。然而,最终模型较差的预测性能证实了预测运动损伤的挑战,因此必须在更大样本中对该模型进行评估。