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Correction of bias in self-reported sitting time among office workers – a study based on compositional data analysis

机译:办公室工作人员自我报告的随身时间偏差纠正 - 基于组建数据分析的研究

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摘要

OBJECTIVE: Emerging evidence suggests that excessive sitting has negative health effects. However, this evidence largely relies on research using self-reported sitting time, which is known to be biased. To correct this bias, we aimed at developing a calibration model estimating "true" sitting from self-reported sitting. METHODS: Occupational sitting time was estimated by self-reports (the International Physical Activity Questionnaire) and objective measurements (thigh-worn accelerometer) among 99 Swedish office workers at a governmental agency, at baseline and 3 and 12 months afterwards. Following compositional data analysis procedures, both sitting estimates were transformed into isometric log-ratios (ILR). This effectively addresses that times spent in various activities are inherently dependent and can be presented as values of only 0−100%. Linear regression was used to develop a simple calibration model estimating objectively measured "true" sitting ILR (dependent variable) from self-reported sitting ILR (independent variable). Additional self-reported variables were then added to construct a full calibration model. Performance of the models was assessed by root-mean-square (RMS) differences between estimated and objectively measured values. Models developed on baseline data were validated using the follow-up datasets. RESULTS: Uncalibrated self-reported sitting ILR showed an RMS error of 0.767. Simple and full calibration models (incorporating body mass index, office type, and gender) reduced this error to 0.422 (55%) and 0.398 (52%), respectively. In the validations, model performance decreased to 57%/62% (simple models) and 57%/62% (full models) for the two follow-up data sets, respectively. CONCLUSIONS: Calibration adjusting for errors in self-reported sitting led to substantially more correct estimates of "true" sitting than uncalibrated self-reports. Validation indicated that model performance would change somewhat in new datasets and that full models perform no better than simple models, but calibration remained effective.
机译:目的:新兴的证据表明,过度坐着的健康影响。然而,这种证据在很大程度上依赖于使用自我报告的随身时间的研究,这已知是偏见的。为了纠正这种偏见,我们旨在开发估算从自我报告的坐姿估算“真实”的校准模型。方法:通过在政府机构的99名瑞典办公室工作人员,在基线和3和12个月之后,通过自我报告(国际体力调查问卷)和客观测量(Thigh-Worn加速度计)估计职业休息时间。在组成数据分析过程中,将坐姿估计转化为等距数量(ILR)。这有效地解决了各种活动所花费的时间本质上是依赖性的,并且可以呈现为仅0-100%的值。线性回归用于开发一种简单的校准模型,估计从自我报告的坐ILR(独立变量)的客观测量的“真实”坐ILR(因变量)。然后添加其他自我报告的变量以构建完整的校准模型。通过估计和客观测量值之间的根均方(RMS)差异评估模型的性能。使用后续数据集验证基线数据上开发的模型。结果:未校准的自我报告的坐在ILR显示为0.767的RMS误差。简单且完全校准模型(集体质量指数,办公型和性别)分别将该误差减少至0.422(55%)和0.398(52%)。在验证中,模型性能分别减少到57%/ 62%(简单模型)和57%/ 62%(完整型号),分别为两个后续数据集。结论:在自我报告的坐骑中校准调整误差导致的误差基本上比未校准的自我报告的“真实”估计更正确。验证表明,模型性能会在新数据集中有所改变,并且完整型号不会比简单模型更好,但校准仍然有效。

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