Department of Epidemiology, University of Pittsburgh School of Public Health, Pittsburgh, PA, USA.
Department of Epidemiology, University of Pittsburgh School of Public Health, Pittsburgh, PA, USA.
Sleep Health. 2023 Oct;9(5):767-773. doi: 10.1016/j.sleh.2023.03.006. Epub 2023 Jun 1.
To examine cross-sectional and longitudinal associations of individual sleep domains and multidimensional sleep health with current overweight or obesity and 5-year weight change in adults.
We estimated sleep regularity, quality, timing, onset latency, sleep interruptions, duration, and napping using validated questionnaires. We calculated multidimensional sleep health using a composite score (total number of "good" sleep health indicators) and sleep phenotypes derived from latent class analysis. Logistic regression was used to examine associations between sleep and overweight or obesity. Multinomial regression was used to examine associations between sleep and weight change (gain, loss, or maintenance) over a median of 1.66 years.
The sample included 1016 participants with a median age of 52 (IQR = 37-65), who primarily identified as female (78%), White (79%), and college-educated (74%). We identified 3 phenotypes: good, moderate, and poor sleep. More regularity of sleep, sleep quality, and shorter sleep onset latency were associated with 37%, 38%, and 45% lower odds of overweight or obesity, respectively. The addition of each good sleep health dimension was associated with 16% lower adjusted odds of having overweight or obesity. The adjusted odds of overweight or obesity were similar between sleep phenotypes. Sleep, individual or multidimensional sleep health, was not associated with weight change.
Multidimensional sleep health showed cross-sectional, but not longitudinal, associations with overweight or obesity. Future research should advance our understanding of how to assess multidimensional sleep health to understand the relationship between all aspects of sleep health and weight over time.
研究个体睡眠领域和多维睡眠健康与成年人当前超重或肥胖以及 5 年体重变化的横断面和纵向关联。
我们使用经过验证的问卷评估睡眠规律性、睡眠质量、睡眠时间、入睡潜伏期、睡眠中断、睡眠时间和午睡。我们使用多维睡眠健康的综合评分(“良好”睡眠健康指标的总数)和潜在类别分析得出的睡眠表型来计算多维睡眠健康。使用逻辑回归来检查睡眠与超重或肥胖之间的关联。使用多项回归来检查睡眠与体重变化(增加、减少或维持)之间的关联,中位随访时间为 1.66 年。
样本包括 1016 名中位年龄为 52(IQR=37-65)岁的参与者,主要为女性(78%)、白人(79%)和大学学历(74%)。我们确定了 3 种表型:良好、中等和较差睡眠。睡眠更规律、睡眠质量更高和入睡潜伏期更短,分别与超重或肥胖的几率降低 37%、38%和 45%相关。每个良好睡眠健康维度的增加与超重或肥胖的调整后几率降低 16%相关。睡眠表型之间超重或肥胖的调整后几率相似。睡眠、个体或多维睡眠健康与体重变化无关。
多维睡眠健康与超重或肥胖呈横断面关联,但与纵向关联无关。未来的研究应该增进我们对如何评估多维睡眠健康的理解,以了解睡眠健康的各个方面与体重随时间的关系。