Panter Jenna, Costa Silvia, Dalton Alice, Jones Andy, Ogilvie David
MRC Epidemiology Unit, School of Clinical Medicine, University of Cambridge, Cambridge Biomedical Campus, Cambridge CB2 0QQ, UK.
Int J Behav Nutr Phys Act. 2014 Sep 19;11:116. doi: 10.1186/s12966-014-0116-x.
Active commuting may make an important contribution to population health. Accurate measures of these behaviours are required, but it is unknown how self-reported estimates compare to those derived from objective measures. We sought to develop methods for objectively deriving time spent in specific travel behaviours from a combination of locational and activity data, and to assess the convergent validity of two self-reported estimates.
In 2010 and 2011, a sub-sample of participants from the Commuting and Health in Cambridge study concurrently completed objective monitoring using combined heart rate and movement sensors and global positioning system devices and reported their past-week commuting in a questionnaire (modes used, and usual time spent walking and cycling per trip) and in a day-by-day diary (all modes and durations). Automated and manual approaches were used to objectively identify total time spent using active and motorised modes. Agreement between self-reported and objectively-derived times was assessed using Lin's concordance coefficients, Bland-Altman plots and signed-rank tests.
Compared to objective assessments, day-by-day diary estimates of time spent using active modes on the commute were overestimated by a mean of 1.1 minutes/trip (95% limits of agreement (LOA): -7.7 to 9.9, p < 0.001). The magnitude of overestimation was slightly larger, but not significant (p = 0.247), when walking or cycling was used alone (mean: 2.4 minutes/trip, 95% LOA: -6.8 to 11.5). Total time spent on the commute was overestimated by a mean of 1.9 minutes/trip (95% LOA: -15.3 to 19.0, p < 0.001). The mean differences between self-reported usual time and objective estimates were -1.1 minutes/trip (95% LOA: -8.7 to 6.4) for cycling and +2.4 minutes/trip (95% LOA: -10.9 to 15.7) for walking. Mean differences between usual and daily estimates of time were <1 minute/trip for both walking and cycling.
We developed a novel method of combining objective data to identify time spent using active and motorised modes, and total time spent commuting. Compared to objectively-derived times, self-reported times spent active commuting were slightly overestimated with wide LOA, suggesting that they should be used with caution to infer aggregate weekly quantities of activity on the commute at the individual level.
主动通勤可能对人群健康有重要贡献。需要对这些行为进行准确测量,但尚不清楚自我报告的估计值与客观测量得出的估计值相比如何。我们试图开发方法,通过结合位置和活动数据客观地得出特定出行行为所花费的时间,并评估两种自我报告估计值的收敛效度。
在2010年和2011年,剑桥通勤与健康研究的部分参与者子样本同时使用心率和运动传感器及全球定位系统设备进行客观监测,并在问卷(使用的出行方式以及每次出行步行和骑行的通常时间)和逐日日记(所有出行方式和时长)中报告其过去一周的通勤情况。采用自动和手动方法客观确定使用主动出行方式和机动出行方式所花费的总时间。使用林氏一致性系数、布兰德-奥特曼图和符号秩检验评估自我报告时间与客观得出时间之间的一致性。
与客观评估相比,逐日日记中对通勤时使用主动出行方式所花费时间的估计平均每次出行高估了1.1分钟(95%一致性界限(LOA):-7.7至9.9,p<0.001)。单独使用步行或骑行时,高估幅度略大,但不显著(p = 0.247)(平均:每次出行2.4分钟,95% LOA:-6.8至11.5)。通勤总时间平均每次出行高估了1.9分钟(95% LOA:-15.3至19.0,p<0.001)。自我报告的通常时间与客观估计值之间的平均差异,骑行时为每次出行-1.1分钟(95% LOA:-8.7至6.4),步行时为每次出行+2.4分钟(95% LOA:-10.9至15.7)。步行和骑行的通常时间与每日时间估计值之间的平均差异均<每次出行1分钟。
我们开发了一种结合客观数据的新方法,以确定使用主动出行方式和机动出行方式所花费的时间以及通勤总时间。与客观得出的时间相比,自我报告的主动通勤时间略有高估,一致性界限较宽,这表明在个体层面推断通勤时每周的总体活动量时应谨慎使用这些数据。