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在加速度计研究中缺少地理定位系统数据是个问题吗?插补是解决办法吗?

Is missing geographic positioning system data in accelerometry studies a problem, and is imputation the solution?

作者信息

Meseck Kristin, Jankowska Marta M, Schipperijn Jasper, Natarajan Loki, Godbole Suneeta, Carlson Jordan, Takemoto Michelle, Crist Katie, Kerr Jacqueline

机构信息

Department of Family Medicine and Public Health, University of California, La Jolla, CA.

出版信息

Geospat Health. 2016 May 31;11(2):403. doi: 10.4081/gh.2016.403.

Abstract

The main purpose of the present study was to assess the impact of global positioning system (GPS) signal lapse on physical activity analyses, discover any existing associations between missing GPS data and environmental and demographics attributes, and to determine whether imputation is an accurate and viable method for correcting GPS data loss. Accelerometer and GPS data of 782 participants from 8 studies were pooled to represent a range of lifestyles and interactions with the built environment. Periods of GPS signal lapse were identified and extracted. Generalised linear mixed models were run with the number of lapses and the length of lapses as outcomes. The signal lapses were imputed using a simple ruleset, and imputation was validated against person-worn camera imagery. A final generalised linear mixed model was used to identify the difference between the amount of GPS minutes pre- and post-imputation for the activity categories of sedentary, light, and moderate-to-vigorous physical activity. Over 17% of the dataset was comprised of GPS data lapses. No strong associations were found between increasing lapse length and number of lapses and the demographic and built environment variables. A significant difference was found between the pre- and postimputation minutes for each activity category. No demographic or environmental bias was found for length or number of lapses, but imputation of GPS data may make a significant difference for inclusion of physical activity data that occurred during a lapse. Imputing GPS data lapses is a viable technique for returning spatial context to accelerometer data and improving the completeness of the dataset.

摘要

本研究的主要目的是评估全球定位系统(GPS)信号中断对身体活动分析的影响,发现缺失的GPS数据与环境和人口统计学属性之间的任何现有关联,并确定插补是否是纠正GPS数据丢失的准确且可行的方法。汇总了来自8项研究的782名参与者的加速度计和GPS数据,以代表一系列生活方式以及与建成环境的相互作用。识别并提取了GPS信号中断的时间段。以中断次数和中断时长为结果运行广义线性混合模型。使用简单规则集对信号中断进行插补,并根据佩戴式摄像头图像对插补进行验证。最后使用广义线性混合模型来确定久坐、轻度以及中度至剧烈身体活动等活动类别在插补前后GPS分钟数的差异。超过17%的数据集中包含GPS数据中断。在增加的中断时长和次数与人口统计学及建成环境变量之间未发现强关联。在每个活动类别的插补前后分钟数之间发现了显著差异。在中断时长或次数方面未发现人口统计学或环境偏差,但插补GPS数据可能会对纳入中断期间发生的身体活动数据产生显著影响。插补GPS数据中断是一种可行的技术,可将空间背景恢复到加速度计数据并提高数据集的完整性。

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