Verswijveren Simone J J M, Dingle Sara, Donnelly Alan E, Dowd Kieran P, Ridgers Nicola D, Carson Brian P, Kearney Patricia M, Harrington Janas M, Chappel Stephanie E, Powell Cormac
Institute of Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, Geelong, 221 Burwood Highway, Burwood, VIC, 3125, Australia.
Physical Activity for Health Cluster, Health Research Institute, University of Limerick, Limerick, Ireland.
J Act Sedentary Sleep Behav. 2023 Aug 1;2(1):16. doi: 10.1186/s44167-023-00025-5.
Studies to date that investigate combined impacts of health behaviors, have rarely examined device-based movement behaviors alongside other health behaviors, such as smoking, alcohol, and sleep, on cardiometabolic health markers. The aim of this study was to identify distinct classes based on device-assessed movement behaviors (prolonged sitting, standing, stepping, and sleeping) and self-reported health behaviors (diet quality, alcohol consumption, and smoking status), and assess associations with cardiometabolic health markers in older adults.
The present study is a cross-sectional secondary analysis of data from the Mitchelstown Cohort Rescreen (MCR) Study (2015-2017). In total, 1,378 older adults (aged 55-74 years) participated in the study, of whom 355 with valid activPAL3 Micro data were included in the analytical sample. Seven health behaviors (prolonged sitting, standing, stepping, sleep, diet quality, alcohol consumption, and smoking status) were included in a latent class analysis to identify groups of participants based on their distinct health behaviors. One-class through to six-class solutions were obtained and the best fit solution (i.e., optimal number of classes) was identified using a combination of best fit statistics (e.g., log likelihood, Akaike's information criteria) and interpretability of classes. Linear regression models were used to test associations of the derived classes with cardiometabolic health markers, including body mass index, body fat, fat mass, fat-free mass, glycated hemoglobin, fasting glucose, total cholesterol, triglycerides, high-density lipoprotein cholesterol, low-density lipoprotein cholesterol, very-low-density lipoprotein cholesterol, systolic and diastolic blood pressure.
In total, 355 participants (89% of participants who were given the activPAL3 Micro) were included in the latent class analysis. Mean participant ages was 64.7 years and 45% were female. Two distinct classes were identified: "Healthy time-users" and "Unhealthy time-users". These groups differed in their movement behaviors, including physical activity, prolonged sitting, and sleep. However, smoking, nutrition, and alcohol intake habits among both groups were similar. Overall, no clear associations were observed between the derived classes and cardiometabolic risk markers.
Despite having similar cardiometabolic health, two distinct clusters were identified, with differences in key behaviors such as prolonged sitting, stepping, and sleeping. This is suggestive of a complex interplay between many lifestyle behaviors, whereby one specific behavior alone cannot determine an individual's health status. Improving the identification of the relation of multiple risk factors with health is imperative, so that effective and targeted interventions for improving health in older adults can be designed and implemented.
迄今为止,研究健康行为综合影响的研究很少将基于设备的运动行为与其他健康行为(如吸烟、饮酒和睡眠)一起,考察其对心脏代谢健康指标的影响。本研究的目的是根据设备评估的运动行为(久坐、站立、行走和睡眠)和自我报告的健康行为(饮食质量、饮酒量和吸烟状况)确定不同的类别,并评估与老年人心脏代谢健康指标的关联。
本研究是对米切尔斯敦队列再筛查(MCR)研究(2015 - 2017年)数据的横断面二次分析。共有1378名老年人(年龄在55 - 74岁之间)参与了该研究,其中355名拥有有效activPAL3 Micro数据的参与者被纳入分析样本。将七种健康行为(久坐、站立、行走、睡眠、饮食质量、饮酒量和吸烟状况)纳入潜在类别分析,以根据参与者不同的健康行为确定分组。获得了从一类到六类的解决方案,并结合最佳拟合统计量(如对数似然、赤池信息准则)和类别可解释性确定最佳拟合解决方案(即最佳类别数)。使用线性回归模型检验派生类别与心脏代谢健康指标之间的关联,这些指标包括体重指数、体脂、脂肪量、去脂体重、糖化血红蛋白、空腹血糖、总胆固醇、甘油三酯、高密度脂蛋白胆固醇、低密度脂蛋白胆固醇、极低密度脂蛋白胆固醇、收缩压和舒张压。
共有355名参与者(占获得activPAL3 Micro的参与者的89%)被纳入潜在类别分析。参与者的平均年龄为64.7岁,45%为女性。确定了两个不同的类别:“健康时间使用者”和“不健康时间使用者”。这些组在运动行为方面存在差异,包括身体活动、久坐和睡眠。然而,两组之间的吸烟、营养和饮酒习惯相似。总体而言,在派生类别与心脏代谢风险指标之间未观察到明显关联。
尽管心脏代谢健康状况相似,但确定了两个不同的类别,在久坐、行走和睡眠等关键行为方面存在差异。这表明许多生活方式行为之间存在复杂的相互作用,仅一种特定行为无法决定个体的健康状况。必须改进对多种风险因素与健康关系的识别,以便能够设计和实施有效的针对性干预措施来改善老年人的健康状况。