Miguens Nathan, Brocherie Franck, Moulié Loïc, Milhet Patrick, Bon Mathieu, Lassus Pierre, Toussaint Jean-François, Sedeaud Adrien
IRMES - URP 7329, Institut de Recherche Médicale Et d'Epidémiologie du Sport, Université de Paris Cité, 11 Avenue du Tremblay, 75012, Paris, France.
Institut National du Sport, de l'Expertise Et de La Performance (INSEP), Paris, France.
Sports Med Open. 2024 Jan 11;10(1):6. doi: 10.1186/s40798-023-00672-7.
Recently a proof-of-concept was proposed to derive the soccer players' individual in-situ acceleration-speed (AS) profile from global positioning system (GPS) data collected over several sessions and games. The present study aimed to propose an automatized method of individual GPS-derived in-situ AS profiling in a professional rugby union setting.
AS profiles of forty-nine male professional rugby union players representing 61.5 million positions, from which acceleration was derived from speed during 51 training sessions and 11 official games, were analyzed. A density-based clustering algorithm was applied to identify outlier points. Multiple AS linear relationships were modeled for each player and session, generating numerous theoretical maximal acceleration (A), theoretical maximal running speed (S) and AS slope (AS, i.e., overall orientation of the AS profile). Each average provides information on the most relevant value while the standard deviation denotes the method accuracy. In order to assess the reliability of the AS profile within the data collection period, data were compared over two 2-week phases by the inter-class correlation coefficient. A and S between positions and type of sessions (trainings and games) were compared using ANOVA and post hoc tests when the significant threshold had been reached.
All AS individual profiles show linear trends with high coefficient of determination (r > 0.81). Good reliability (Inter-class Correlation Coefficient ranging from 0.92 to 0.72) was observed between AS profiles, when determined 2 weeks apart for each player. AS profiles depend on players' positions, types of training and games. Training and games data highlight that highest A are obtained during games, while greatest S are attained during speed sessions.
This study provides individual in-situ GPS-derived AS profiles with automatization capability. The method calculates an error of measurement for A and S, of paramount importance in order to improve their daily use. The AS profile differences between training, games and playing positions open several perspectives for performance testing, training monitoring, injury prevention and return-to-sport sequences in professional rugby union, with possible transferability to other sprint-based sports.
AS profiles computed from rugby union GPS data provide positional benchmarks during training and competition. This study provides automatic detection of atypical data and the computation of error measurement of theoretical maximal acceleration and speed components. This refinement constitutes a step forward for a daily use of ecological data by considering data collection and method reliabilities. This easy-to-implement approach may facilitate its use to the performance management process (talent identification, training monitoring and individualization, return-to-sport).
最近有人提出了一个概念验证,即从多个训练课程和比赛中收集的全球定位系统(GPS)数据中得出足球运动员的个人原地加速度-速度(AS)曲线。本研究旨在提出一种在职业橄榄球联盟环境中通过GPS自动生成个人原地AS曲线的方法。
分析了49名男性职业橄榄球联盟球员的AS曲线,这些曲线代表了6150万个位置,从中得出了51次训练课程和11场正式比赛期间的加速度。应用基于密度的聚类算法来识别异常点。为每个球员和训练课程建立了多个AS线性关系模型,生成了许多理论最大加速度(A)、理论最大跑步速度(S)和AS斜率(AS,即AS曲线的总体方向)。每个平均值提供了关于最相关值的信息,而标准差表示方法的准确性。为了评估数据收集期间AS曲线的可靠性,通过组内相关系数对两个为期两周的阶段的数据进行了比较。当达到显著阈值时,使用方差分析和事后检验比较了不同位置和训练课程类型(训练和比赛)之间的A和S。
所有AS个人曲线均呈现线性趋势,决定系数较高(r>0.81)。当为每个球员相隔两周确定AS曲线时,观察到良好的可靠性(组内相关系数范围为0.92至0.72)。AS曲线取决于球员的位置、训练类型和比赛类型。训练和比赛数据表明,比赛期间获得的A最高,而速度训练期间达到的S最大。
本研究提供了具有自动化能力的个人原地GPS衍生AS曲线。该方法计算了A和S的测量误差,这对于改善它们的日常使用至关重要。训练、比赛和比赛位置之间的AS曲线差异为职业橄榄球联盟的性能测试、训练监测、 injury预防和恢复运动顺序开辟了几个视角,并且可能可转移到其他基于短跑的运动中。
从橄榄球联盟GPS数据计算得出的AS曲线在训练和比赛期间提供了位置基准。本研究提供了非典型数据的自动检测以及理论最大加速度和速度分量的测量误差计算。通过考虑数据收集和方法可靠性,这种改进是日常使用生态数据的一个进步。这种易于实施的方法可能有助于将其用于绩效管理过程(人才识别、训练监测和个性化、恢复运动)。