College of Medicine, Chang Gung University, Taoyuan, Taiwan; Department of Family Medicine, Chang Gung Memorial Hospital, Taipei Branch and Linkou Main Branch, Taoyuan, Taiwan; Department of Industrial Engineering and Management, National Taipei University of Technology, Taipei, Taiwan; School of Medicine, National Tsing Hua University, Hsinchu, Taiwan.
Institute of Population Health Sciences, National Health Research Institutes, Miaoli County, Taiwan; Department of Psychiatry, National Taiwan University Hospital, Taipei, Taiwan; Department of Psychiatry, College of Medicine, National Taiwan University, Taipei, Taiwan; Department of Biomedical Sciences and Engineering, National Central University, Taoyuan City, Taiwan.
Sleep Med. 2024 Oct;122:1-7. doi: 10.1016/j.sleep.2024.07.025. Epub 2024 Jul 23.
This study focused on the relationship between adiposity and Rest-Activity Rhythms (RAR), utilizing both parametric cosine-based models and non-parametric algorithms. The emphasis was on the impact of varying measurement periods (7-28 days) on this relationship.
We retrieved actigraphy data from two datasets, encompassing a diverse cohort recruited from an obesity outpatient clinic and a workplace health promotion program. Participants were required to wear a research-grade wrist actigraphy device continuously for a minimum of four weeks. The final dataset included 115 individuals (mean age 40.7 ± 9.5 years, 51 % female). We employed both parametric and non-parametric methods to quantify RAR using six standard variables. Additionally, the study evaluated the correlations between three key adiposity indices - Body Mass Index (BMI), Visceral Adipose Tissue (VAT) area, and Body Fat Percentage (BF%) - and circadian rhythm indicators, controlling for factors like physical activity, age, and gender.
The obesity group displayed a significantly lower relative amplitude (RA) as per non-parametric algorithm findings, with a decreased amplitude noted in the parametric algorithm analysis, in comparison to the overweight and control groups. The relationship between circadian rhythm indicators and adiposity metrics over 7- to 28-day periods was examined. A notable negative correlation was observed between RA and both BMI and VAT, while correlation coefficients between adiposity indicators and non-parametric circadian parameters increased with extended durations of actigraphy data. Specifically, RA over a 28-day period was significantly correlated with BF%, a trend not seen in the 7-day measurement (p = 0.094) in multivariate linear regression. The strength of the correlation between BF% and 28-day RA was more pronounced than that in the 7-day period (p = 0.044). However, replacing RA with amplitude as per parametric cosinor fitting yielded no significant correlations for any of the measurement periods.
The study concludes that a 28-day measurement period more effectively captures the link between disrupted circadian rhythms and adiposity. Non-parametric algorithms, in particular, were more effective in characterizing disrupted circadian rhythms, especially when extending the measurement period beyond the standard 7 days.
本研究聚焦于肥胖与静息-活动节律(RAR)之间的关系,同时采用参数余弦模型和非参数算法。重点在于研究不同的测量周期(7-28 天)对这种关系的影响。
我们从两个数据集检索了活动记录仪数据,这些数据涵盖了从肥胖门诊和工作场所健康促进计划中招募的不同人群。参与者必须佩戴研究级腕部活动记录仪连续至少四周。最终数据集包括 115 人(平均年龄 40.7±9.5 岁,51%为女性)。我们使用参数和非参数方法,使用六个标准变量来量化 RAR。此外,该研究还评估了三个关键肥胖指标(体重指数(BMI)、内脏脂肪组织(VAT)面积和体脂肪百分比(BF%))与昼夜节律指标之间的相关性,同时控制了如体力活动、年龄和性别等因素。
肥胖组的相对振幅(RA)根据非参数算法的结果明显较低,与超重和对照组相比,参数算法分析显示振幅降低。研究还检查了 7-28 天内昼夜节律指标与肥胖指标之间的关系。在 7-28 天的测量中,RA 与 BMI 和 VAT 呈显著负相关,而随着活动记录仪数据持续时间的延长,肥胖指标与非参数昼夜节律参数之间的相关系数增加。具体而言,28 天 RA 与 BF%显著相关,而在多变量线性回归中,7 天测量未见此趋势(p=0.094)。28 天 RA 与 BF%之间的相关性强度比 7 天测量更为显著(p=0.044)。然而,用参数余弦拟合的振幅代替 RA,在任何测量期间都没有产生显著的相关性。
本研究得出的结论是,28 天的测量周期更能有效地捕捉到昼夜节律紊乱与肥胖之间的联系。特别是非参数算法,在表征昼夜节律紊乱方面更为有效,尤其是在将测量周期延长至 7 天以上时。