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Evaluation of a two-part regression calibration to adjust for dietary exposure measurement error in the Cox proportional hazards model: A simulation study

机译:两部分回归校准的评估,以调整Cox比例风险模型中的饮食暴露测量误差:模拟研究

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摘要

Dietary questionnaires are prone to measurement error, which bias the perceived association between dietary intake and risk of disease. Short-term measurements are required to adjust for the bias in the association. For foods that are not consumed daily, the short-term measurements are often characterized by excess zeroes. Via a simulation study, the performance of a two-part calibration model that was developed for a single-replicate study design was assessed by mimicking leafy vegetable intake reports from the multicenter European Prospective Investigation into Cancer and Nutrition (EPIC) study. In part I of the fitted two-part calibration model, a logistic distribution was assumed; in part II, a gamma distribution was assumed. The model was assessed with respect to the magnitude of the correlation between the consumption probability and the consumed amount (hereafter, cross-part correlation), the number and form of covariates in the calibration model, the percentage of zero response values, and the magnitude of the measurement error in the dietary intake. From the simulation study results, transforming the dietary variable in the regression calibration to an appropriate scale was found to be the most important factor for the model performance. Reducing the number of covariates in the model could be beneficial, but was not critical in large-sample studies. The performance was remarkably robust when fitting a one-part rather than a two-part model. The model performance was minimally affected by the cross-part correlation.
机译:饮食调查表容易出现测量误差,这会使人们对饮食摄入和疾病风险之间的关联感产生偏见。需要短期测量以调整关联中的偏差。对于每天不食用的食物,短期测量通常以零为特征。通过模拟研究,通过模仿多中心欧洲癌症与营养前瞻性调查(EPIC)研究中的多叶蔬菜摄入量报告,评估了为单重复研究设计开发的由两部分组成的校准模型的性能。在拟合的两部分校准模型的第一部分中,假设了逻辑分布;在第二部分中,假设伽玛分布。根据消耗概率和消耗量之间的相关性的大小(以下称为跨部门相关性),校准模型中协变量的数量和形式,零响应值的百分比以及大小对模型进行评估。饮食摄入量的测量误差。从模拟研究结果中,发现将回归校准中的饮食变量转换为适当的比例是模型性能的最重要因素。减少模型中协变量的数量可能是有益的,但在大样本研究中并不关键。当拟合一个零件而不是两个零件的模型时,性能非常强大。模型性能受截面相关性的影响最小。

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