Department of Electrical Engineering, Stanford University , Stanford, CA , USA.
Department of Medicine, Stanford University School of Medicine , Stanford, CA , USA.
Front Public Health. 2014 Nov 27;2:249. doi: 10.3389/fpubh.2014.00249. eCollection 2014.
Daily dietary intake data derived from self-reported dietary recall surveys are widely considered inaccurate. In this study, methods were developed for adjusting these dietary recalls to more plausible values. In a simulation model of two National Health and Nutrition Examination Surveys (NHANES), NHANES I and NHANES 2007-2008, a predicted one-third of raw data fell outside a range of physiologically plausible bounds for dietary intake (designated a 33% failure rate baseline). To explore the nature and magnitude of this bias, primary data obtained from an observational study were used to derive models that predicted more plausible dietary intake. Two models were then applied for correcting dietary recall bias in the NHANES datasets: (a) a linear regression to model percent under-reporting as a function of subject characteristics and (b) a shift of dietary intake reports to align with experimental data on energy expenditure. After adjustment, the failure rates improved to <2% with the regression model and 4-9% with the intake shift model - both substantial improvements over the raw data. Both methods gave more reliable estimates of plausible dietary intake based on dietary recall and have the potential for more far-reaching application in correction of self-reported exposures.
日常饮食摄入数据来源于自我报告的饮食回忆调查,被广泛认为是不准确的。在这项研究中,开发了一些方法来调整这些饮食回忆,使其更合理。在两个国家健康和营养检查调查(NHANES),NHANES I 和 NHANES 2007-2008 的模拟模型中,预测有三分之一的原始数据落在饮食摄入的生理合理范围内之外(指定为 33%的失败率基线)。为了探索这种偏差的性质和程度,从观察性研究中获得的原始数据被用来建立预测更合理饮食摄入的模型。然后,在 NHANES 数据集上应用了两种模型来纠正饮食回忆偏差:(a)线性回归模型,将报告的不足比例作为受试者特征的函数;(b)通过将饮食摄入量报告与能量消耗的实验数据进行对齐来调整。调整后,回归模型的失败率提高到<2%,摄入量调整模型的失败率提高到 4-9%,与原始数据相比有了显著的改善。这两种方法都基于饮食回忆给出了更可靠的合理饮食摄入估计值,并有可能在自我报告的暴露量校正方面有更广泛的应用。