Using Controlled Feeding Study for Biomarker Development in Regression Calibration for Disease Association Estimation.

Pub Date : 2023-04-01 DOI:10.1007/s12561-022-09349-3
Cheng Zheng, Yiwen Zhang, Ying Huang, Ross Prentice
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引用次数: 2

Abstract

Correction for systematic measurement error in self-reported data is an important challenge in association studies of dietary intake and chronic disease risk. The regression calibration method has been used for this purpose when an objectively measured biomarker is available. However, a big limitation of the regression calibration method is that biomarkers have only been developed for a few dietary components. We propose new methods to use controlled feeding studies to develop valid biomarkers for many more dietary components and to estimate the diet disease associations. Asymptotic distribution theory for the proposed estimators is derived. Extensive simulation is performed to study the finite sample performance of the proposed estimators. We applied our method to examine the associations between the sodium/potassium intake ratio and cardiovascular disease incidence using the Women's Health Initiative cohort data. We discovered positive associations between sodium/potassium ratio and the risks of coronary heart disease, nonfatal myocardial infarction, coronary death, ischemic stroke, and total cardiovascular disease.

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疾病关联估计回归校准中生物标志物发展的控制饲养研究。
在膳食摄入与慢性疾病风险相关性研究中,对自我报告数据中的系统测量误差进行校正是一项重要挑战。当客观测量的生物标志物可用时,回归校准方法已用于此目的。然而,回归校准方法的一个很大的局限性是,生物标志物只针对少数饮食成分开发。我们提出了新的方法,利用控制喂养研究来开发更多膳食成分的有效生物标志物,并估计饮食疾病的相关性。给出了所提估计量的渐近分布理论。通过广泛的仿真研究了所提估计器的有限样本性能。我们利用妇女健康倡议队列数据,应用我们的方法来检验钠/钾摄入比例与心血管疾病发病率之间的关系。我们发现钠钾比与冠心病、非致死性心肌梗死、冠状动脉死亡、缺血性中风和总心血管疾病的风险呈正相关。
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