利用主成分分析法纵向监测大学女子篮球运动员的生物力学和心理状态

IF 1.2 Q3 SPORT SCIENCES
J. Keogh, M. Ruder, Kaylee White, Momchil G. Gavrilov, Stuart M Phillips, Jennifer J. Heisz, Matthew J Jordan, Dylan Kobsar
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引用次数: 0

摘要

背景 大学田径运动参与人数的增长伴随着运动相关损伤的增加。运动损伤具有复杂性和多因素性,这突出了采用新颖的综合生物心理社会方法对运动员进行前瞻性监测的重要性,而不是采用将这些健康因素割裂开来的现代做法。方法 将两个篮球赛季收集的数据用于主成分分析(PCA)模型,目的如下:(i) 研究生物力学主成分(即场上和反向运动跳跃(CMJ)指标)是否与整个赛季的心理状态相关;(ii) 利用最小可检测变化统计量探讨是否可以检测到特定受试者的显著波动。在大学女子篮球队中收集了两个赛季的每周 CMJ(力板)和场上数据(惯性测量单位)以及心理状态(问卷)数据。结果 虽然在生物力学 PC 和心理状态指标之间发现了一些关系(n = 2),但这些关系的程度很弱(r = |0.18-0.19|,p < 0.05),而且在群体水平上没有发现其他总体关系。不过,事后个案研究分析显示了特定受试者之间的关系,这凸显了从正常生物力学和心理模式中红旗标出有意义波动的潜在作用。结论 总体而言,这项研究表明,先进的分析建模有可能描述学生运动员成绩、健康和幸福的组成部分,并检测出与统计和临床相关的波动,同时也表明有必要采取更有针对性的、以运动员为中心的监测措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Longitudinal Monitoring of Biomechanical and Psychological State in Collegiate Female Basketball Athletes Using Principal Component Analysis
Background The growth in participation in collegiate athletics has been accompanied by increased sport-related injuries. The complex and multifactorial nature of sports injuries highlights the importance of monitoring athletes prospectively using a novel and integrated biopsychosocial approach, as opposed to contemporary practices that silo these facets of health. Methods Data collected over two competitive basketball seasons were used in a principal component analysis (PCA) model with the following objectives: (i) investigate whether biomechanical PCs (i.e., on-court and countermovement jump (CMJ) metrics) were correlated with psychological state across a season and (ii) explore whether subject-specific significant fluctuations could be detected using minimum detectable change statistics. Weekly CMJ (force plates) and on-court data (inertial measurement units), as well as psychological state (questionnaire) data, were collected on the female collegiate basketball team for two seasons. Results While some relationships (n = 2) were identified between biomechanical PCs and psychological state metrics, the magnitude of these associations was weak (r = |0.18-0.19|, p < 0.05), and no other overarching associations were identified at the group level. However, post-hoc case study analysis showed subject-specific relationships that highlight the potential utility of red-flagging meaningful fluctuations from normative biomechanical and psychological patterns. Conclusion Overall, this work demonstrates the potential of advanced analytical modeling to characterize components of and detect statistically and clinically relevant fluctuations in student-athlete performance, health, and well-being and the need for more tailored and athlete-centered monitoring practices.
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