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主成分分析在减少女子职业足球运动员睡眠质量和数量数据中的应用

The Use of Principal Component Analysis for Reduction in Sleep Quality and Quantity Data in Female Professional Soccer.

作者信息

Barba Eider, Casamichana David, Figueiredo Pedro, Nakamura Fábio Yuzo, Castellano Julen

机构信息

Real Sociedad Institute, Real Sociedad de Fútbol S.A.D., 20170 Donostia-San Sebastian, Spain.

GIKAFIT Research Group, University of the Basque Country (UPV/EHU), 01007 Vitoria-Gasteiz, Spain.

出版信息

Sensors (Basel). 2024 Dec 30;25(1):148. doi: 10.3390/s25010148.

Abstract

The main aim of the present study was to uncover multivariate relationships between sleep quantity and quality using principal component analysis (PCA) in professional female soccer players. A second aim was to examine the extent to which objective sleep quantity and quality variables can discriminate between perceived sleep. Ten objective sleep variables from the multisensory sleep-tracker were analyzed. PCA was conducted on the sleep variables, and meaningful principal components (PCs) were identified (eigenvalue > 2). Two sleep PCs were identified, representing the 'quantity of sleep' (quantity PC: eigenvalue = 4.1 and variance explained = 45.1%) and the 'quality of sleep' (quality PC: eigenvalue = 2.4 and variance explained = 24.1%). Cluster analysis grouped the players' sleep into three types: long and efficient, short and efficient, and long and inefficient; however, no association was found between the perceived sleep and the sleep clusters. In conclusion, a combination of both quantity and quality sleep metrics is recommended for sleep monitoring of professional female soccer players. Players should undergo a training process to improve self-assessment of sleep quality recorded from a subjective questionnaire, contrasting the perceived information with the sleep quality recorded objectively during a defined period in order to optimize the validity of their perceptions. The aim is to optimize the validity of their perceptions of sleep quality.

摘要

本研究的主要目的是通过主成分分析(PCA)揭示职业女子足球运动员睡眠数量和质量之间的多变量关系。第二个目的是检验客观睡眠数量和质量变量在区分感知睡眠方面的程度。对来自多感官睡眠追踪器的10个客观睡眠变量进行了分析。对睡眠变量进行了主成分分析,并确定了有意义的主成分(PCs)(特征值>2)。确定了两个睡眠主成分,分别代表“睡眠数量”(数量主成分:特征值=4.1,解释方差=45.1%)和“睡眠质量”(质量主成分:特征值=2.4,解释方差=24.1%)。聚类分析将球员的睡眠分为三种类型:长且高效、短且高效、长且低效;然而,在感知睡眠和睡眠聚类之间未发现关联。总之,建议结合睡眠数量和质量指标对职业女子足球运动员进行睡眠监测。球员应经历一个训练过程,以提高从主观问卷记录的睡眠质量的自我评估,将感知信息与在规定时间段内客观记录的睡眠质量进行对比,以优化其感知的有效性。目的是优化他们对睡眠质量感知的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1de2/11722753/26507d96da9d/sensors-25-00148-g001.jpg

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