Int J Sports Physiol Perform. 2021 Jan 1;16(1):59-65. doi: 10.1123/ijspp.2020-0083. Epub 2020 Nov 4.
To apply data reduction methods to athlete-monitoring measures to address the issue of data overload for practitioners of professional Australian football teams.
Data were collected from 45 professional Australian footballers from 1 club during the 2018 Australian Football League season. External load was measured in training and matches by 10-Hz OptimEye S5 and ClearSky T6 GPS units. Internal load was measured via the session rate of perceived exertion method. Perceptual wellness was measured via questionnaires completed before training sessions with players providing a rating (1-5 Likert scale) of muscle soreness, sleep quality, fatigue, stress, and motivation. Percentage of maximum speed was calculated relative to individual maximum velocity recorded during preseason testing. Derivative external training load measures (total daily, weekly, and monthly) were calculated. Principal-component analyses (PCAs) were conducted for Daily and Chronic measures, and components were identified via scree plot inspection (eigenvalue > 1). Components underwent orthogonal rotation with a factor loading redundancy threshold of 0.70.
The Daily PCA identified components representing external load, perceived wellness, and internal load. The Chronic PCA identified components representing 28-d speed exposure, 28-d external load, 7-d external load, and 28-d internal load. Perceived soreness did not meet the redundancy threshold.
Monitoring player exposure to maximum speed is more appropriate over chronic than short time frames to capture variations in between-matches training-cycle duration. Perceived soreness represents a distinct element of a player's perception of wellness. Summed-variable and single-variable approaches are novel methods of data reduction following PCA of athlete monitoring data.
应用数据降维方法对运动员监测指标进行处理,以解决职业澳式足球俱乐部教练面临的数据过载问题。
从 2018 年澳式足球联赛赛季的 1 家俱乐部的 45 名职业澳式足球运动员中收集数据。外部负荷通过 10-Hz OptimEye S5 和 ClearSky T6 GPS 单元在训练和比赛中进行测量。内部负荷通过赛中感知用力率法进行测量。通过在训练课前完成的问卷对运动员的心理幸福感进行测量,球员对肌肉酸痛、睡眠质量、疲劳、压力和动力进行 1-5 分(Likert 量表)的评分。最大速度百分比是相对于个体在季前测试中记录的最大速度计算得出的。计算了衍生的外部训练负荷指标(每日、每周和每月的总和)。对每日和慢性指标进行主成分分析(PCA),并通过特征值图检查(特征值>1)识别成分。成分进行正交旋转,因子负荷冗余阈值为 0.70。
每日 PCA 确定了代表外部负荷、感知健康和内部负荷的成分。慢性 PCA 确定了代表 28 天速度暴露、28 天外部负荷、7 天外部负荷和 28 天内部负荷的成分。感知酸痛未达到冗余阈值。
与短期相比,在慢性时间框架内监测运动员达到最大速度的情况更适合,以捕捉比赛间训练周期长度的变化。感知酸痛代表了运动员对健康感知的一个独特因素。基于 PCA 对运动员监测数据进行的变量求和和单变量方法是数据降维的新方法。