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Application of a New Statistical Model for Measurement Error to theEvaluation of Dietary Self-report Instruments

机译:一种新的测量误差统计模型在应用中的应用饮食自我报告工具的评估

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摘要

Most statistical methods that adjust analyses for dietary measurement error treat an individual’s usual intake as a fixed quantity. However, usual intake, if defined as average intake over a few months, varies over time. We describe a model that accounts for such variation and for the proximity of biomarker measurements to self-reports within the framework of a meta-analysis, and apply it to the analysis of data on energy, protein, potassium, and sodium from a set of five large validation studies of dietary self-report instruments using recovery biomarkers as reference instruments. We show that this time-varying usual intake model fits the data better than the fixed usual intake assumption. Using this model, we estimated attenuation factors and correlations with true longer-term usual intake for single and multiple 24-hour dietary recalls (24HRs) and food frequency questionnaires (FFQs) and compared them with those obtained under the “fixed” method. Compared with the fixed method, the estimates using the time-varying model showed slightly larger values of the attenuation factor and correlation coefficient for FFQs and smaller values for 24HRs. In some cases, the difference between the fixed method estimate and the new estimate for multiple 24HRs was substantial. With the newmethod, while four 24HRs had higher estimated correlations with truth than asingle FFQ for absolute intakes of protein, potassium, and sodium, for densitiesthe correlations were approximately equal. Accounting for the time element indietary validation is potentially important, and points toward the need forlonger-term validation studies.
机译:大多数针对饮食测量误差进行分析调整的统计方法都将一个人的正常摄入量视为固定量。但是,通常的摄入量(如果定义为几个月内的平均摄入量)会随时间变化。我们描述了一个模型,该模型说明了这种变化并在荟萃分析的框架内说明了生物标志物测量值与自我报告的接近程度,并将其应用于分析一组能量,蛋白质,钾和钠的数据使用恢复生物标志物作为参考工具的饮食自我报告工具的五项大型验证研究。我们表明,这种时变的通常摄入量模型比固定的通常摄入量假设更适合数据。使用该模型,我们估算了单次或多次24小时饮食召回(24HRs)和食物频率调查表(FFQs)的衰减因子及其与真正的长期正常摄入量的关系,并将其与“固定”方法获得的结果进行了比较。与固定方法相比,使用时变模型进行的估计显示,FFQ的衰减因子和相关系数的值稍大,而24HRs的值较小。在某些情况下,固定方法估算值与多个24HR的新估算值之间的差异是巨大的。随着新方法,而四个24HR与真实性的估计相关性高于单个FFQ用于绝对摄入蛋白质,钾和钠,用于密度相关性近似相等。占时间元素饮食验证可能很重要,并指出长期验证研究。

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