Ayala Francisco, López-Valenciano Alejandro, Gámez Martín Jose Antonio, De Ste Croix Mark, Vera-Garcia Francisco J, García-Vaquero Maria Del Pilar, Ruiz-Pérez Iñaki, Myer Gregory D
Department of Sport Science, Sport Research Centre, Miguel Hernández University of Elche, Elche (Alicante), Spain.
Escuela Superior de Ingeniería Informática, Universidad de Castilla-La Mancha, Albacete, Spain.
Int J Sports Med. 2019 May;40(5):344-353. doi: 10.1055/a-0826-1955. Epub 2019 Mar 14.
Hamstring strain injury (HSI) is one of the most prevalent and severe injury in professional soccer. The purpose was to analyze and compare the predictive ability of a range of machine learning techniques to select the best performing injury risk factor model to identify professional soccer players at high risk of HSIs. A total of 96 male professional soccer players underwent a pre-season screening evaluation that included a large number of individual, psychological and neuromuscular measurements. Injury surveillance was prospectively employed to capture all the HSI occurring in the 2013/2014 season. There were 18 HSIs. Injury distribution was 55.6% dominant leg and 44.4% non-dominant leg. The model generated by the SmooteBoostM1 technique with a cost-sensitive ADTree as the base classifier reported the best evaluation criteria (area under the receiver operating characteristic curve score=0.837, true positive rate=77.8%, true negative rate=83.8%) and hence was considered the best for predicting HSI. The prediction model showed moderate to high accuracy for identifying professional soccer players at risk of HSI during pre-season screenings. Therefore, the model developed might help coaches, physical trainers and medical practitioners in the decision-making process for injury prevention.
腘绳肌拉伤损伤(HSI)是职业足球中最常见且严重的损伤之一。目的是分析和比较一系列机器学习技术的预测能力,以选择表现最佳的损伤风险因素模型,从而识别出有高风险发生HSI的职业足球运动员。共有96名男性职业足球运动员接受了季前筛查评估,其中包括大量个体、心理和神经肌肉测量。前瞻性地采用损伤监测来记录2013/2014赛季发生的所有HSI。共有18例HSI。损伤分布为:优势腿占55.6%,非优势腿占44.4%。以成本敏感型ADTree作为基分类器的SmooteBoostM1技术生成的模型报告了最佳评估标准(受试者工作特征曲线下面积得分=0.837,真阳性率=77.8%,真阴性率=83.8%),因此被认为是预测HSI的最佳模型。该预测模型在季前筛查中识别有HSI风险的职业足球运动员时显示出中等至高的准确性。因此,所开发的模型可能有助于教练、体能教练和医生在预防损伤的决策过程中提供帮助。