Faculty of Science, Palacký University Olomouc, Olomoucký, Czech Republic.
Department of Computer Science, Applied Mathematics and Statistics, University of Girona, Catalunya, Spain.
Stat Methods Med Res. 2023 Oct;32(10):2064-2080. doi: 10.1177/09622802231192949. Epub 2023 Aug 17.
The distribution of time that people spend in physical activity of various intensities has important health implications. Physical activity (commonly categorised by the intensity into light, moderate and vigorous physical activity), sedentary behaviour and sleep, should not be analysed separately, because they are parts of a time-use composition with a natural constraint of h/day. To find out how are relative reallocations of time between physical activity of various intensities associated with health, herewith we describe compositional scalar-on-function regression and a newly developed compositional functional isotemporal substitution analysis. Physical activity intensity data can be considered as probability density functions, which better reflects the continuous character of their measurement using accelerometers. These probability density functions are characterised by specific properties, such as scale invariance and relative scale, and they are geometrically represented using Bayes spaces with the Hilbert space structure. This makes possible to process them using standard methods of functional data analysis in the space, via centred logratio (clr) transformation. The scalar-on-function regression with clr transformation of the explanatory probability density functions and compositional functional isotemporal substitution analysis were applied to a dataset from a cross-sectional study on adiposity conducted among school-aged children in the Czech Republic. Theoretical reallocations of time to physical activity of higher intensities were found to be associated with larger and more progressive expected decreases in adiposity. We obtained a detailed insight into the dose-response relationship between physical activity intensity and adiposity, which was enabled by using the compositional functional approach.
人们在各种强度的身体活动中所花费的时间分布对健康有重要影响。身体活动(通常根据强度分为轻度、中度和剧烈身体活动)、久坐行为和睡眠不应该分开分析,因为它们是时间使用组成的一部分,每天自然限制为 24 小时。为了了解不同强度的身体活动之间的时间相对再分配与健康的关系,在此我们描述了构成标量函数回归和新开发的构成功能等时替代分析。身体活动强度数据可以被视为概率密度函数,这更好地反映了使用加速度计对其测量的连续性特征。这些概率密度函数具有特定的属性,如尺度不变性和相对尺度,并且它们使用具有 Hilbert 空间结构的贝叶斯空间进行几何表示。这使得可以通过 clr 变换在 空间中使用功能数据分析的标准方法来处理它们。解释性概率密度函数的标量函数回归和构成功能等时替代分析应用于捷克共和国进行的一项针对学龄儿童肥胖的横断面研究数据集。理论上,将时间重新分配到更高强度的身体活动中,预计与更大和更渐进的肥胖减少相关。我们通过使用构成功能方法,深入了解了身体活动强度与肥胖之间的剂量反应关系。