College of Medicine, Chang Gung University, Taoyuan, Taiwan.
Department of Family Medicine, Chang Gung Memorial Hospital, Linkou Main Branch, Taoyuan, Taiwan.
J Med Internet Res. 2024 Jun 5;26:e50149. doi: 10.2196/50149.
This study aimed to investigate the relationships between adiposity and circadian rhythm and compare the measurement of circadian rhythm using both actigraphy and a smartphone app that tracks human-smartphone interactions.
We hypothesized that the app-based measurement may provide more comprehensive information, including light-sensitive melatonin secretion and social rhythm, and have stronger correlations with adiposity indicators.
We enrolled a total of 78 participants (mean age 41.5, SD 9.9 years; 46/78, 59% women) from both an obesity outpatient clinic and a workplace health promotion program. All participants (n=29 with obesity, n=16 overweight, and n=33 controls) were required to wear a wrist actigraphy device and install the Rhythm app for a minimum of 4 weeks, contributing to a total of 2182 person-days of data collection. The Rhythm app estimates sleep and circadian rhythm indicators by tracking human-smartphone interactions, which correspond to actigraphy. We examined the correlations between adiposity indices and sleep and circadian rhythm indicators, including sleep time, chronotype, and regularity of circadian rhythm, while controlling for physical activity level, age, and gender.
Sleep onset and wake time measurements did not differ significantly between the app and actigraphy; however, wake after sleep onset was longer (13.5, SD 19.5 minutes) with the app, resulting in a longer actigraphy-measured total sleep time (TST) of 20.2 (SD 66.7) minutes. The obesity group had a significantly longer TST with both methods. App-measured circadian rhythm indicators were significantly lower than their actigraphy-measured counterparts. The obesity group had significantly lower interdaily stability (IS) than the control group with both methods. The multivariable-adjusted model revealed a negative correlation between BMI and app-measured IS (P=.007). Body fat percentage (BF%) and visceral adipose tissue area (VAT) showed significant correlations with both app-measured IS and actigraphy-measured IS. The app-measured midpoint of sleep showed a positive correlation with both BF% and VAT. Actigraphy-measured TST exhibited a positive correlation with BMI, VAT, and BF%, while no significant correlation was found between app-measured TST and either BMI, VAT, or BF%.
Our findings suggest that IS is strongly correlated with various adiposity indicators. Further exploration of the role of circadian rhythm, particularly measured through human-smartphone interactions, in obesity prevention could be warranted.
本研究旨在探讨肥胖与昼夜节律的关系,并比较使用活动记录仪和跟踪人机交互的智能手机应用程序测量昼夜节律的效果。
我们假设基于应用程序的测量可能会提供更全面的信息,包括光敏感褪黑素分泌和社交节律,并与肥胖指标有更强的相关性。
我们共招募了 78 名参与者(平均年龄 41.5 岁,标准差 9.9 岁;46/78,59%为女性),分别来自肥胖门诊和工作场所健康促进计划。所有参与者(29 名肥胖者、16 名超重者和 33 名对照组)均需佩戴腕部活动记录仪并安装 Rhythm 应用程序至少 4 周,总共采集了 2182 个人日的数据。Rhythm 应用程序通过跟踪人机交互来估计睡眠和昼夜节律指标,这些指标与活动记录仪相对应。我们在控制了身体活动水平、年龄和性别后,研究了肥胖指数与睡眠和昼夜节律指标(包括睡眠时间、睡眠时型和昼夜节律规律)之间的相关性。
应用程序和活动记录仪的睡眠起始和醒来时间测量值没有显著差异;然而,应用程序的睡眠后醒来时间较长(13.5 分钟,标准差 19.5 分钟),导致活动记录仪测量的总睡眠时间(TST)长 20.2(标准差 66.7)分钟。肥胖组两种方法测量的 TST 均显著更长。应用程序测量的昼夜节律指标明显低于活动记录仪测量的指标。肥胖组应用程序和活动记录仪测量的日间时间变异性(IS)均显著低于对照组。多变量调整模型显示,BMI 与应用程序测量的 IS 呈负相关(P=.007)。体脂肪百分比(BF%)和内脏脂肪组织面积(VAT)与应用程序和活动记录仪测量的 IS 均呈显著相关。应用程序测量的睡眠中点与 BF%和 VAT 均呈正相关。活动记录仪测量的 TST 与 BMI、VAT 和 BF%呈正相关,而应用程序测量的 TST 与 BMI、VAT 或 BF%均无显著相关性。
我们的研究结果表明,IS 与各种肥胖指标密切相关。进一步探索昼夜节律,特别是通过人机交互测量的昼夜节律在肥胖预防中的作用可能是有必要的。