Ipek Ensari, Billy A Caceres, Kasey B Jackman, Jeff Goldsmith, Niurka M Suero-Tejeda, Michelle L Odlum, Suzanne Bakken
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We evaluated step counts, moderate-intensity PA (MOD), total activity and sedentary minutes as potential model variables. Bayesian Information Criterion (BIC) index was used to select the model that provided the best fit for the data. A 4-cluster resolution provided the best fit for the data (i.e., BIC=-3257, improvements of Δ = 13 and Δ = 7 from 3- and 5-cluster models, respectively). MOD provided the greatest between-cluster discrimination. Phenotype 1 (N = 61) was characterized by a morning peak in PA that declined until bedtime. Later bedtimes and the highest daily PA volume were distinct for phenotype 2 (N = 18), along with a similar peak pattern. Phenotype 3 (N = 29) membership was associated with the lowest PA levels throughout the day. Phenotype 4 was characterized by a more evenly distributed PA during the day, and later waking/bedtimes. Our findings point to distinct, interpretable PA phenotypes based on temporal patterns. 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引用次数: 0
摘要
缺乏运动是一个重大的公共健康问题。考虑体育锻炼(PA)趋势的个体间差异可以提供有关研究群体的更多信息,从而帮助设计干预措施。本研究旨在根据生活在美国的成年人的日常体育锻炼趋势来识别潜在特征("表型")。这是对 133 名居住在城市的成年人(89% 为拉丁裔,年龄 = 19-77 岁)的 724 人天加速度数据进行的二次分析。我们使用 Actigraph 加速计和 Actilife 软件来收集和处理 24 小时 PA 数据。我们采用了基于功能混合模型的概率聚类技术。将每人多天的数据平均后输入模型。我们将步数、中等强度活动量(MOD)、总活动量和久坐分钟数作为潜在的模型变量进行了评估。贝叶斯信息标准(BIC)指数用于选择最适合数据的模型。4 个簇的分辨率为数据提供了最佳拟合(即 BIC=-3257,与 3 簇和 5 簇模型相比分别提高了 Δ = 13 和 Δ = 7)。MOD 提供了最大的簇间区分度。表型 1(N = 61)的特点是 PA 在早晨达到峰值,然后下降,直到就寝时间。表型 2(N = 18)的就寝时间较晚,每日 PA 量最高,同时具有类似的峰值模式。表型 3(N = 29)成员的全天 PA 水平最低。表型 4 的特点是一天中 PA 的分布更均匀,且起床/就寝时间更晚。我们的研究结果表明了基于时间模式的不同的、可解释的 PA 表型。PA数据的功能聚类可为定制行为干预提供更多可操作的要点。
Characterizing daily physical activity patterns with unsupervised learning via functional mixture models.
Physical inactivity is a significant public health concern. Consideration of inter-individual variations in physical activity (PA) trends can provide additional information about the groups under study to aid intervention design. This study aims to identify latent profiles ("phenotypes") based on daily PA trends among adults living in. This was a secondary analysis of 724 person-level days of accelerometry data from 133 urban-dwelling adults (89% Latinx, age = 19-77 years). We used Actigraph accelerometers and the Actilife software to collect and process 24-hour PA data. We implemented a probabilistic clustering technique based on functional mixture models. Multiple days of data per person were averaged for entry into the models. We evaluated step counts, moderate-intensity PA (MOD), total activity and sedentary minutes as potential model variables. Bayesian Information Criterion (BIC) index was used to select the model that provided the best fit for the data. A 4-cluster resolution provided the best fit for the data (i.e., BIC=-3257, improvements of Δ = 13 and Δ = 7 from 3- and 5-cluster models, respectively). MOD provided the greatest between-cluster discrimination. Phenotype 1 (N = 61) was characterized by a morning peak in PA that declined until bedtime. Later bedtimes and the highest daily PA volume were distinct for phenotype 2 (N = 18), along with a similar peak pattern. Phenotype 3 (N = 29) membership was associated with the lowest PA levels throughout the day. Phenotype 4 was characterized by a more evenly distributed PA during the day, and later waking/bedtimes. Our findings point to distinct, interpretable PA phenotypes based on temporal patterns. Functional clustering of PA data could provide additional actionable points for tailoring behavioral interventions.
期刊介绍:
The Journal of Behavioral Medicine is a broadly conceived interdisciplinary publication devoted to furthering understanding of physical health and illness through the knowledge, methods, and techniques of behavioral science. A significant function of the journal is the application of this knowledge to prevention, treatment, and rehabilitation and to the promotion of health at the individual, community, and population levels.The content of the journal spans all areas of basic and applied behavioral medicine research, conducted in and informed by all related disciplines including but not limited to: psychology, medicine, the public health sciences, sociology, anthropology, health economics, nursing, and biostatistics. Topics welcomed include but are not limited to: prevention of disease and health promotion; the effects of psychological stress on physical and psychological functioning; sociocultural influences on health and illness; adherence to medical regimens; the study of health related behaviors including tobacco use, substance use, sexual behavior, physical activity, and obesity; health services research; and behavioral factors in the prevention and treatment of somatic disorders. Reports of interdisciplinary approaches to research are particularly welcomed.