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Article Abstract

: Sleep is essential for athletes. However, the impact of dietary habits on sleep quality in female endurance athletes at risk for low energy availability (LEA) is underexplored. This was a pilot study to examine the correlation between dietary patterns and sleep quality in healthy female endurance athletes. : Twenty-four female endurance athletes recorded their dietary intake and sleeping habits for 6 days. Dietary intake data were collected via meal logs and photos. Sleep parameters were tracked using the Fitbit Charge 3 device. Correlation analyses were performed to explore the associations between macronutrient intake and sleep. : The athletes' mean consumption was 2049.3 ± 396.9 kcal/day (52.9% carbohydrates, 28.2% fat, and 17.2% protein). One-third of the athletes had poor sleep quality, and thirty-eight percent experienced high daytime sleepiness. A higher protein intake was correlated with a lower awake time (R = -0.491; = 0.015), and fat intake was related to a lower duration of deep sleep (R = -0.477; = 0.019). Deep sleep was negatively correlated with fat intake during dinner (R = -0.417; = 0.042) and was positively correlated with carbohydrate intake (R = 0.417; = 0.042). : In healthy female endurance athletes without LEA, dietary fat intake, especially at dinner, negatively affects deep sleep. Meanwhile, carbohydrates promote deep sleep. Therefore, optimizing macronutrient balance during evening meals may enhance sleep quality and, consequently, athletic performance.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12030440PMC
http://dx.doi.org/10.3390/nu17081368DOI Listing

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