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Nonparametric time series summary statistics for high-frequency accelerometry data from individuals with advanced dementia

机译:非参数时间序列概述高频加速度数据具有高级痴呆症的高频加速度数据

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Accelerometry data has been widely used to measure activity and the circadian rhythm of individuals across the health sciences, in particular with people with advanced dementia. Modern accelerometers can record continuous observations on a single individual for several days at a sampling frequency of the order of one hertz. Such rich and lengthy data sets provide new opportunities for statistical insight, but also pose challenges in selecting from a wide range of possible summary statistics, and how the calculation of such statistics should be optimally tuned and implemented. In this paper, we build on existing approaches, as well as propose new summary statistics, and detail how these should be implemented with high frequency accelerometry data. We test and validate our methods on an observed data set from 26 recordings from individuals with advanced dementia and 14 recordings from individuals without dementia. We study four metrics: Interdaily stability (IS), intradaily variability (IV), the scaling exponent from detrended fluctuation analysis (DFA), and a novel nonparametric estimator which we call the proportion of variance (PoV), which calculates the strength of the circadian rhythm using spectral density estimation. We perform a detailed analysis indicating how the time series should be optimally subsampled to calculate IV, and recommend a subsampling rate of approximately 5 minutes for the dataset that has been studied. In addition, we propose the use of the DFA scaling exponent separately for daytime and nighttime, to further separate effects between individuals. We compare the relationships between all these methods and show that they effectively capture different features of the time series.
机译:加速度数据已被广泛用于衡量跨境健康科学的个人的活动和昼夜节律,特别是与具有晚期痴呆症的人。现代加速度计可以以一个赫兹的顺序的采样频率在单个单独的单个单个上记录连续观察。如此丰富和冗长的数据集提供了新的统计洞察力的机会,而且还可以从各种可能的概要统计中选择挑战,以及如何最佳地调整和实施此类统计数据的计算。在本文中,我们建立了现有的方法,以及提出新的简要统计数据,详细介绍了如何用高频加速度数据实现。我们在观察到的数据上测试并验证从具有高级痴呆症的26个录制的观察数据和没有痴呆症的人的14个录音。我们研究了四个度量:互通稳定性(IV),内部变异性(IV),来自减法的波动分析(DFA)的缩放指数,以及我们称之为方差比例(POV)的新型非参数估算,计算昼夜节律使用光谱密度估计。我们执行详细分析,表明时间序列应该如何最佳地访问以计算IV,并为已经研究的数据集推荐大约5分钟的回顾率。此外,我们提出了单独使用DFA缩放指数进行白天和夜间,以进一步分离个人之间的效果。我们比较所有这些方法之间的关系,并表明它们有效地捕获了时间序列的不同特征。

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