Department of Public Health and Nursing, Norwegian University of Science and Technology (NTNU), Trondheim, Norway.
Department of Computer Science, Norwegian University of Science and Technology (NTNU), Trondheim, Norway.
Int J Behav Nutr Phys Act. 2023 Nov 27;20(1):139. doi: 10.1186/s12966-023-01541-y.
Despite apparent shortcomings such as measurement error and low precision, self-reported sedentary time is still widely used in surveillance and research. The aim of this study was threefold; (i) to examine the agreement between self-reported and device-measured sitting time in a general adult population; (ii), to examine to what extent demographics, lifestyle factors, long-term health conditions, physical work demands, and educational level is associated with measurement bias; and (iii), to explore whether correcting for factors associated with bias improves the prediction of device-measured sitting time based on self-reported sitting time.
A statistical validation model study based on data from 23 993 adults in the Trøndelag Health Study (HUNT4), Norway. Participants reported usual sitting time on weekdays using a single-item questionnaire and wore two AX3 tri-axial accelerometers on the thigh and low back for an average of 3.8 (standard deviation [SD] 0.7, range 1-5) weekdays to determine their sitting time. Statistical validation was performed by iteratively adding all possible combinations of factors associated with bias between self-reported and device-measured sitting time in a multivariate linear regression. We randomly selected 2/3 of the data (n = 15 995) for model development and used the remaining 1/3 (n = 7 998) to evaluate the model.
Mean (SD) self-reported and device-measured sitting time were 6.8 (2.9) h/day and 8.6 (2.2) h/day, respectively, corresponding to a mean difference of 1.8 (3.1) h/day. Limits of agreement ranged from - 8.0 h/day to 4.4 h/day. The discrepancy between the measurements was characterized by a proportional bias with participants device-measured to sit less overestimating their sitting time and participants device-measured to sit more underestimating their sitting time. The crude explained variance of device-measured sitting time based on self-reported sitting time was 10%. This improved to 24% when adding age, body mass index and physical work demands to the model. Adding sex, lifestyle factors, educational level, and long-term health conditions to the model did not improve the explained variance.
Self-reported sitting time had low validity and including a range of factors associated with bias in self-reported sitting time only marginally improved the prediction of device-measured sitting time.
尽管自我报告的久坐时间存在测量误差和精度低等明显缺陷,但仍广泛用于监测和研究。本研究旨在实现三个目标;(一)在一般成年人群中检验自我报告和设备测量的久坐时间之间的一致性;(二)检验与测量偏差相关的人口统计学、生活方式因素、长期健康状况、体力工作需求和教育水平的程度;(三)探讨针对与偏差相关的因素进行校正是否可以改善基于自我报告的久坐时间对设备测量的久坐时间的预测。
这是一项基于挪威特隆赫姆健康研究(HUNT4)23993 名成年人数据的统计验证模型研究。参与者在工作日使用单项问卷报告通常的坐姿时间,并在大腿和下背部佩戴两个 AX3 三轴加速度计,平均佩戴 3.8(标准差[SD]0.7,范围 1-5)个工作日以确定他们的坐姿时间。通过在多元线性回归中迭代添加与自我报告和设备测量的坐姿时间之间的偏差相关的所有可能组合因素,进行统计验证。我们随机选择数据的 2/3(n=15995)进行模型开发,并使用剩余的 1/3(n=7998)来评估模型。
自我报告和设备测量的平均(SD)坐姿时间分别为 6.8(2.9)小时/天和 8.6(2.2)小时/天,平均差异为 1.8(3.1)小时/天。一致性界限范围为-8.0 小时/天至 4.4 小时/天。测量之间的差异特征为比例偏差,设备测量的坐姿时间较少的参与者会高估他们的坐姿时间,而设备测量的坐姿时间较多的参与者则会低估他们的坐姿时间。基于自我报告的坐姿时间,设备测量的坐姿时间的总解释方差为 10%。当将年龄、体重指数和体力工作需求添加到模型中时,这一比例提高到 24%。向模型中添加性别、生活方式因素、教育水平和长期健康状况并不能提高解释方差。
自我报告的坐姿时间的有效性较低,并且仅包括与自我报告的坐姿时间相关的一系列偏差因素,略微提高了设备测量的坐姿时间的预测能力。