California State University, Chico

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California State University, Chico Examining the Association of Sleep Quality and Timing with Dietary Choices Danielle Salomon California State University, Chico ABSTRACT The objective of this study was to investigate the relationship between sleep quality and timing with dietary choices among Americans. A retrospective review of data from the Add Health Cross-Sectional study (Wave IV) was done. Descriptive statistics were done for all variables analyzed. A little over half of the sample were female (51.6%), and over half (55.9%) of the sample reported having trouble staying asleep in the past week. One-Way ANOVA found no significant differences in fast food consumption among trouble staying asleep groups (p=.793, F-.421). Independent T-Test significant differences in sugar-sweetened beverage consumption between those who went to bed in the AM versus PM. The mean difference in sugar-sweetened consumption groups going to bed in the AM and PM is 2.25 (CI: 1.5-3.0) (p<0.001). Future studies should investigate the relationship between sleep quality and dietary choices to examine causality and further support the association between sleep and nutrition. INTRODUCTION The US population is experiencing two phenomena- an increase in body mass index and a decline in the average time spent sleeping. About 65% of Americans are overweight or obese. Consumption of high calorie, low nutrient foods is a critical factor in the cause of nutrition-related chronic diseases. Research has also found that inadequate and insufficient sleep is associated with increased caloric consumption and poor dietary habits, thus contributing further to risk of obesity (Chaput, 2013). It is important to investigate the relationship between sleep and weight because studies have shown that sleep duration alone cannot explain the variation in weight status. Sleep timing and quality are also important factors to consider when establishing the relationship. RESULTS Sleep Quality and Dietary Intake The mean consumption of fast food was compared across trouble staying asleep categories One-ANOVA test found no significant differences in fast food consumption among trouble staying asleep groups (p=.793, F=.421). N MEAN (SD) P-VALUE NEVER 2217 2.4 (2.8) P= .793 F= .421 LESS THAN ONCE 863 2.2 (3.0) 1 OR 2 TIMES 860 2.3 (2.7) 3 OR 4 TIMES 494 5 OR MORE TIMES 596 2.41 (3.1) Figure 1 (left): Box Plot of fast food consumption among trouble falling asleep categories Table 2 (right): One-Way ANOVA comparing frequency of fast food consumption among trouble falling asleep categories Sleep Timing and Dietary Intake The mean consumption of sugar-sweetened beverages were compared between two groups of time going to sleep Independent T-Test found that Levene’s Test for Equality of Variance was significant (p<0.001). Equal variances cannot be assumed On average, the AM group consumed sugar sweetened drinks at a significantly higher frequency per week compared to the PM group. The mean difference in sugar-sweetened consumption groups going to bed in the AM and PM is 2.25 (CI: 1.5-3.0) (p<0.001) METHODS Data Collection Retrospective study of data collected from a cross-sectional study of United States young adults ranging from 24 to 32 years old Wave IV of the ADD Health study included in-home interviews designed to investigate health trajectories among the participants Variables Gender Age H4BMI- Body Mass Index [weight (kg) / height (m2)] H4SP1T- “On the days you go to work, school, or similar activities, what time do you usually wake up?” [AM/PM] H4SP2T-“On those days, what time do you usually go to sleep the day before?”[AM/PM] H4SP6- “Over the past four weeks: How often did you have trouble staying asleep throughout the night?” H4GH8- “How many times in the past seven days did you eat food from a fast food restaurant… ?” H4GH9- “In the past 7 days, how many regular (non-diet) sweetened drinks did you have?...” Statistical Analysis Descriptive Statistics to explain demographic variables One-way Analysis of Variance (ANOVA) and Independent T-Tests to measure mean differences between categorical variables Multiple Linear Regression to measure the association between continuous variables and control for categorical predictors N MEAN (SD) P-VALUE AM 1657 12.8 (13.4) P< 0.001* F= 53.9 PM 3400 10.6 (11.2) Figure 2: Box Plot of sugar-sweetened beverage consumption across time to sleep categories Table 3: Independent T-Test comparing sugar sweetened beverage consumption between going to sleep in the AM and PM CONCLUSION Discussion We fail to reject the null hypothesis that fast food consumption was the same across trouble staying asleep categories. We reject the null hypothesis that there is no difference in sugar-sweetened beverage consumption between AM and PM groups. We are 95% confident that the average difference in sugar-sweetened beverage consumption between AM and PM groups is between 1.5 and 3.0 times per week. The results support evidence that there is a significant association with sleep timing and dietary consumption of sugar-sweetened beverages. Previously, the literature has shown that amount of sleep can contribute to physical health, but evidence was lacking for sleep timing in terms of when someone goes to bed and when they wake up. Baron et al found similar results, where people who went to bed later were at higher risk for obesity. It is important to investigate these aspects of sleep because of the growing issue of Americans not getting adequate sleep and making poorer dietary habits. Implications The current study provides evidence that sleep timing is an important predictor of dietary consumption habits. Further research is warranted to examine the association of going to bed before or after midnight, and whether nutrition-related behavior can change as a result. SAMPLE CHARACTERISTICS Variable N (%) Gender Male Female Frequency of Trouble Staying Asleep Never Less than once/week 1 or 2 times/ week 3 or 4 times/week 5 or more times/week Time going to sleep AM PM Time Waking up 3147 (48.4) 3356 (51.6) 2237 (44.1) 866 (17.1) 500 (9.9) 598 (11.8) 1681 (32.9) 3421 (67.1) 4834 (94.9%) 358 (5.1%) Variable Mean (SD) Age Body Mass Index (BMI) Frequency of Sugar Sweetened Beverage Consumption (in past 7 days) Frequency of Fast Food Consumption (in past 7 days) 29 (1.8) 29.1 (7.5) 11.32 (12) 2.34 (2.9) Table 1: A total of n=6503 participants were analyzed. There was a nearly equal representation of males and females. The majority of participants did not have trouble staying asleep, went to bed in the PM, woke up in the AM, and had a normal BMI. REFERENCES Baron, K. G., Reid, K. J., Kern, A. S., & Zee, P. C. (2011). Role of Sleep Timing in Caloric Intake and BMI. Obesity, 19(7), 1374-1381. Chaput, J. (2013) Sleep patterns, diet quality and energy balance. Physiology & Behavior, 134, 86-91. Markwald, R. R., Melanson, E. L., Smith, M. R., Higgins, J., Perreault, L., Eckel, R. H., & Wright, K. P. (2013). Impact of insufficient sleep on total daily energy expenditure, food intake, and weight gain. Proceedings of the National Academy of Sciences, 110(14), 5695-5700. Weiss, A., Xu, F., Storfer-Isser, A., Thomas, A., Ievers-Landis, C. E., & Redline, S. (2010). The Association of Sleep Duration with Adolescents Fat and Carbohydrate Consumption. Sleep, 33(9), 1201-1209.