Repeated observations have become increasingly common in biomedical research and longitudinal studies. For instance, wearable sensor devices are deployed to continuously track physiological and biological signals from each individual over multiple days. It remains of great interest to appropriately evaluate how the daily distribution of biosignals might differ across disease groups and demographics. Hence these data could be formulated as multivariate complex object data such as probability densities, histograms, and observations on a tree. Traditional statistical methods would often fail to apply as they are sampled from an arbitrary non-Euclidean metric space. In this paper, we propose novel non-parametric graph-based two-sample tests for object data with repeated measures. A set of test statistics are proposed to capture various possible alternatives. We derive their asymptotic null distributions under the permutation null. These tests exhibit substantial power improvements over the existing methods while controlling the type I errors under finite samples as shown through simulation studies. The proposed tests are demonstrated to provide additional insights on the location, inter- and intra-individual variability of the daily physical activity distributions in a sample of studies for mood disorders.
翻译:在生物医学研究和纵向研究中,重复观测越来越常见。例如,在连续数日中,使用可磨损的传感器装置来不断跟踪每个人的生理和生物信号。仍然非常有兴趣适当评估生物信号的每日分布在各种疾病群体和人口群体之间如何不同。因此,这些数据可以作为多变的复杂物体数据,如概率密度、直方图和对一棵树的观察等。传统的统计方法往往无法应用,因为它们是从任意的非欧洲的尺度空间取样的。在本文件中,我们提议对反复测量的对象数据进行新的非参数的双模样测试。提出一套测试统计数据,以捕捉各种可能的替代方法。我们从这些测试中得出无效果的无效果分布,在模拟研究所显示的有限样本中控制I类误差的同时,这些测试显示对现有方法的功率有了很大的改进。拟议的测试证明,以便在对情绪失调研究的抽样中,对日常物理活动分布的地点、内部和个体之间的变异性提供了更多的洞察。