A Strategy to Inform Athlete Sleep Support From Questionnaire Data and Its Application in an Elite Athlete Cohort
Purpose: Information from the Pittsburgh Sleep Quality Index (PSQI) and Athlete Sleep Behavior Questionnaire (ASBQ) provide the ability to identify the sleep disturbances experienced by athletes and their associated athlete-specific challenges that cause these disturbances. However, determining the...
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Veröffentlicht in: | International journal of sports physiology and performance 2022-10, Vol.17 (10), p.1532-1536 |
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Hauptverfasser: | , , |
Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Purpose:
Information from the Pittsburgh Sleep Quality Index (PSQI) and Athlete Sleep Behavior Questionnaire (ASBQ) provide the ability to identify the sleep disturbances experienced by athletes and their associated athlete-specific challenges that cause these disturbances. However, determining the appropriate support strategy to optimize the sleep habits and characteristics of large groups of athletes can be time-consuming and resource-intensive. The purpose of this study was to characterize the sleep profiles of elite athletes to optimize sleep-support strategies and present a novel R package,
AthSlpBehaviouR
, to aid practitioners with athlete sleep monitoring and support efforts.
Methods:
PSQI and ASBQ data were collected from a cohort of 412 elite athletes across 27 sports through an electronic survey. A
k
-means cluster analysis was employed to characterize the unique sleep-characteristic typologies based on PSQI and ASBQ component scores.
Results:
Three unique clusters were identified and qualitatively labeled based on the
z
scores of the PSQI components and ASBQ components: cluster 1, “high-priority; poor overall sleep characteristics + behavioral-focused support”; cluster 2, “medium-priority, sleep disturbances + routine/environment-focused support”; and cluster 3, “low-priority; acceptable sleep characteristics + general support.”
Conclusions:
The findings of this study highlight the practical utility of an unsupervised learning approach to perform clustering on questionnaire data to inform athlete sleep-support recommendations. Practitioners can consider using the
AthSlpBehaviouR
package to adopt a similar approach in athlete sleep screening and support provision. |
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ISSN: | 1555-0265 1555-0273 |
DOI: | 10.1123/ijspp.2021-0561 |