Weed Lara, Lok Renske, Chawra Dwijen, Zeitzer Jamie
Department of Bioengineering, Stanford University, Stanford, CA 94305, USA.
Department of Psychiatry and Behavioral Sciences, Stanford University, Stanford, CA 94305, USA.
Clocks Sleep. 2022 Sep 27;4(4):497-507. doi: 10.3390/clockssleep4040039.
The purpose of this study is to characterize the impact of the timing and duration of missing actigraphy data on interdaily stability (IS) and intradaily variability (IV) calculation. The performance of three missing data imputation methods (linear interpolation, mean time of day (ToD), and median ToD imputation) for estimating IV and IS was also tested. Week-long actigraphy records with no non-wear or missing timeseries data were masked with zeros or 'Not a Number' (NaN) across a range of timings and durations for single and multiple missing data bouts. IV and IS were calculated for true, masked, and imputed (i.e., linear interpolation, mean ToD and, median ToD imputation) timeseries data and used to generate Bland-Alman plots for each condition. Heatmaps were used to analyze the impact of timings and durations of and between bouts. Simulated missing data produced deviations in IV and IS for longer durations, midday crossings, and during similar timing on consecutive days. Median ToD imputation produced the least deviation among the imputation methods. Median ToD imputation is recommended to recapitulate IV and IS under missing data conditions for less than 24 h.
本研究的目的是描述缺失活动记录仪数据的时间和持续时间对日间稳定性(IS)和日内变异性(IV)计算的影响。还测试了三种缺失数据插补方法(线性插值、日平均时间(ToD)和ToD中位数插补)在估计IV和IS方面的性能。对于单组和多组缺失数据时段,在一系列时间和持续时间内,将无非佩戴或无缺失时间序列数据的为期一周的活动记录仪记录用零或“非数字”(NaN)进行掩盖。针对真实、掩盖和插补(即线性插值、平均ToD和ToD中位数插补)的时间序列数据计算IV和IS,并用于为每种情况生成布兰德-奥特曼图。热图用于分析缺失时段及其之间的时间和持续时间的影响。模拟的缺失数据在较长持续时间、中午时段以及连续几天的相似时间产生了IV和IS的偏差。在插补方法中,ToD中位数插补产生的偏差最小。建议使用ToD中位数插补来重现缺失数据条件下小于24小时的IV和IS。