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一种用于校正协变量测量误差的零增强广义伽马回归校准:以间歇性摄入的饮食摄入量为例。

A zero-augmented generalized gamma regression calibration to adjust for covariate measurement error: A case of an episodically consumed dietary intake.

作者信息

Agogo George O

机构信息

Department of Internal Medicine, Yale University, 300 George St, Suite 775, New Haven, CT, 06511, USA.

出版信息

Biom J. 2017 Jan;59(1):94-109. doi: 10.1002/bimj.201600043. Epub 2016 Oct 5.

Abstract

Measurement error in exposure variables is a serious impediment in epidemiological studies that relate exposures to health outcomes. In nutritional studies, interest could be in the association between long-term dietary intake and disease occurrence. Long-term intake is usually assessed with food frequency questionnaire (FFQ), which is prone to recall bias. Measurement error in FFQ-reported intakes leads to bias in parameter estimate that quantifies the association. To adjust for bias in the association, a calibration study is required to obtain unbiased intake measurements using a short-term instrument such as 24-hour recall (24HR). The 24HR intakes are used as response in regression calibration to adjust for bias in the association. For foods not consumed daily, 24HR-reported intakes are usually characterized by excess zeroes, right skewness, and heteroscedasticity posing serious challenge in regression calibration modeling. We proposed a zero-augmented calibration model to adjust for measurement error in reported intake, while handling excess zeroes, skewness, and heteroscedasticity simultaneously without transforming 24HR intake values. We compared the proposed calibration method with the standard method and with methods that ignore measurement error by estimating long-term intake with 24HR and FFQ-reported intakes. The comparison was done in real and simulated datasets. With the 24HR, the mean increase in mercury level per ounce fish intake was about 0.4; with the FFQ intake, the increase was about 1.2. With both calibration methods, the mean increase was about 2.0. Similar trend was observed in the simulation study. In conclusion, the proposed calibration method performs at least as good as the standard method.

摘要

暴露变量中的测量误差是将暴露与健康结果相关联的流行病学研究中的一个严重障碍。在营养研究中,关注点可能在于长期饮食摄入与疾病发生之间的关联。长期摄入量通常通过食物频率问卷(FFQ)进行评估,而该问卷容易出现回忆偏倚。FFQ报告摄入量中的测量误差会导致量化关联的参数估计产生偏差。为了校正关联中的偏差,需要进行一项校准研究,以使用短期工具(如24小时回忆法(24HR))获得无偏的摄入量测量值。24HR摄入量用作回归校准中的响应变量,以校正关联中的偏差。对于非每日食用的食物,24HR报告的摄入量通常具有过多零值、右偏态和异方差性,这给回归校准建模带来了严峻挑战。我们提出了一种零膨胀校准模型,以校正报告摄入量中的测量误差,同时在不转换24HR摄入量值的情况下,同时处理过多零值、偏态和异方差性。我们将所提出的校准方法与标准方法以及通过用24HR和FFQ报告的摄入量估计长期摄入量而忽略测量误差的方法进行了比较。比较在真实数据集和模拟数据集中进行。使用24HR时,每盎司鱼类摄入量中汞水平的平均增加约为0.4;使用FFQ摄入量时,增加约为1.2。使用两种校准方法时,平均增加约为2.0。在模拟研究中也观察到了类似趋势。总之,所提出的校准方法的性能至少与标准方法一样好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e49e/5612494/1f5ec4c179fb/nihms906365f1.jpg

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