Welk Gregory J, Beyler Nicholas K, Kim Youngwon, Matthews Charles E
1Department of Kinesiology, Iowa State University, Ames, IA; 2Department of Data Science and Statistics, Mathematica Policy Research, Washington, DC; 3MRC Epidemiology Unit, University of Cambridge School of Clinical Medicine, UNITED KINGDOM; 4Division of Cancer Epidemiology and Genetics, Nutritional Epidemiology Branch, National Cancer Institute, Rockville, MD.
Med Sci Sports Exerc. 2017 Jul;49(7):1473-1481. doi: 10.1249/MSS.0000000000001237.
Calibration equations offer potential to improve the accuracy and utility of self-report measures of physical activity (PA) and sedentary behavior (SB) by rescaling potentially biased estimates. The present study evaluates calibration models designed to estimate PA and SB in a representative sample of adults from the Physical Activity Measurement Study.
Participants in the Physical Activity Measurement Study project completed replicate single-day trials that involved wearing a Sensewear armband (SWA) monitor for 24 h followed by a telephone administered 24-h PA recall (PAR). Comprehensive statistical model selection and validation procedures were used to develop and test separate calibration models designed to predict objectively measured SB and moderate-to-vigorous PA (MVPA) from self-reported PAR data. Equivalence testing was used to evaluate the equivalence of the model-predicted values with the objective measures in a separate holdout sample.
The final prediction model for both SB and MVPA included reported time spent in SB and MVPA, as well as terms capturing sex, age, education, and body mass index. Cross-validation analyses on an independent sample exhibited high correlations with observed SB (r = 0.72) and MVPA (r = 0.75). Equivalence testing demonstrated that the model-predicted values were statistically equivalent to the corresponding objective values for both SB and MVPA.
The results demonstrate that simple regression models can be used to statistically adjust for overestimation or underestimation in self-report measures among different segments of the population. The models produced group estimates from the PAR that were statistically equivalent to the observed time spent in SB and MVPA obtained from the objective SWA monitor; however, additional work is needed to correct for estimates of individual behavior.
校准方程有潜力通过重新调整可能存在偏差的估计值来提高身体活动(PA)和久坐行为(SB)自我报告测量的准确性和实用性。本研究评估了旨在估计身体活动测量研究中具有代表性的成年人样本的PA和SB的校准模型。
身体活动测量研究项目的参与者完成了重复的单日试验,包括佩戴Sensewear臂带(SWA)监测器24小时,随后进行电话询问的24小时PA回忆(PAR)。使用综合统计模型选择和验证程序来开发和测试单独的校准模型,这些模型旨在根据自我报告的PAR数据预测客观测量的SB和中度至剧烈身体活动(MVPA)。在一个单独的保留样本中,使用等效性测试来评估模型预测值与客观测量值的等效性。
SB和MVPA的最终预测模型包括报告的在SB和MVPA中花费的时间,以及反映性别、年龄、教育程度和体重指数的项。对独立样本的交叉验证分析显示与观察到的SB(r = 0.72)和MVPA(r = 0.75)具有高度相关性。等效性测试表明,模型预测值在统计学上与SB和MVPA的相应客观值等效。
结果表明,简单回归模型可用于对不同人群自我报告测量中的高估或低估进行统计调整。这些模型从PAR得出的组估计值在统计学上与从客观SWA监测器获得的观察到的在SB和MVPA中花费的时间等效;然而,需要进一步的工作来校正个体行为的估计值。