Center for General Education, National Central University, Taoyuan City, Taiwan; Cognitive Intelligence and Precision Healthcare Research Center, National Central University, Taoyuan City, Taiwan.
Cognitive Intelligence and Precision Healthcare Research Center, National Central University, Taoyuan City, Taiwan; Institute of Cognitive Neuroscience, National Central University, Taoyuan City, Taiwan.
Prog Brain Res. 2024;286:1-31. doi: 10.1016/bs.pbr.2024.04.002. Epub 2024 May 11.
Recent development of information technology and wearable devices has led to the analysis of multidimensional sports information and the enhancement of athletes' sports performance convenient and potentially more efficient. In this study, we present a novel data platform tailored for capturing athletes' cognitive, physiological, and body composition data. This platform incorporates diverse visualization modes, enabling athletes and coaches to access data seamlessly. Fourteen elite female football players (average age=20.6±1.3years; 3 forwards, 5 midfielders, 4 defenders, and 2 goalkeepers) were recruited from National Taiwan Normal University, Taiwan, as the primary observational group, and 12 female university students without regular sport/exercise habits (average age=21.6±1.3years) were recruited as control group. Through multidimensional data analysis, we identified significant differences in limb muscle mass and several cognitive function scores (e.g., reaction times of attention and working memory) between elite female football varsity team and general female university students. Furthermore, 1-month heart rate data obtained from wearable devices revealed a significant negative correlation between average heart rate median and cognitive function scores. Overall, this study demonstrates the potential of this platform as an efficient multidimensional data collection and analysis platform. Therefore, valuable insights between cognitive functions, physiological signals and body composition can be obtained via this multidimensional platform for facilitating sports performance.
近年来,信息技术和可穿戴设备的发展使得多维运动信息的分析和运动员运动表现的提升变得更加便捷和高效。在本研究中,我们提出了一个新的数据平台,旨在捕捉运动员的认知、生理和身体成分数据。该平台结合了多种可视化模式,使运动员和教练能够无缝访问数据。我们招募了来自台湾师范大学的 14 名优秀女足球员(平均年龄=20.6±1.3 岁;3 名前锋、5 名中场、4 名后卫和 2 名守门员)作为主要观察组,以及 12 名没有定期运动/锻炼习惯的女大学生(平均年龄=21.6±1.3 岁)作为对照组。通过多维数据分析,我们发现优秀女足球员和普通女大学生在肢体肌肉质量和一些认知功能评分(例如注意力和工作记忆的反应时间)方面存在显著差异。此外,从可穿戴设备获得的 1 个月心率数据显示,平均心率中位数与认知功能评分之间存在显著负相关。总的来说,这项研究表明了该平台作为一种高效的多维数据收集和分析平台的潜力。因此,通过这个多维平台可以获得认知功能、生理信号和身体成分之间的有价值的见解,从而促进运动表现。