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A Bayesian Multi-level model for estimating the diet/disease relationship in a multicenter study with exposures measured with error: the EPIC study

机译:贝叶斯多层次模型用于估计多中心研究中饮食/疾病之间的关系其中暴露量带有误差:EPIC研究

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摘要

In a multicenter study, the overall relationship between diet and cancer risk can be broken down into: [a] within-center relationships, which reflect the relationships at the individual level in each of the centers, and [b] a between-center relationship, which captures the association between exposure and disease risk at the aggregate level. In this work, we propose the use of a Bayesian multilevel model that takes into account the within- and between-center levels of evidence, using information at the individual and aggregate level. Correction for measurement error is performed in order to correct for systematic between-center measurement error in dietary exposure, and for attenuation biases in relative risk estimates within centers. The estimation of the parameters is carried out in a Bayesian framework using Gibbs sampling. The model entails a measurement, an exposure, and a disease component. Within the European Prospective Investigation into Cancer and Nutrition (EPIC) the association between lipid intake, assessed through dietary questionnaire and 24-hour dietary recall, and breast cancer incidence was evaluated. This analysis involved 21,534 women and 334 incident breast cancer cases from the EPIC calibration study. In this study, total energy intake was positively associated to breast cancer incidence at the aggregate level, while no effect was observed for fat. At the individual level, height was positively related to breast cancer incidence, while a weaker association was observed for fat. The use of multilevel models, which constitute a very powerful approach to estimating individual vs. aggregate levels of evidence should be considered in multicenter studies.
机译:在多中心研究中,饮食与癌症风险之间的总体关系可以分解为:[a]中心内关系,其反映每个中心中各个个体的关系,以及[b]中心间关系。 ,从总体上捕获了暴露与疾病风险之间的关联。在这项工作中,我们建议使用贝叶斯多层次模型,该模型考虑了证据的中心内部和中心之间的水平,并使用了个体和总体水平上的信息。进行测量误差的校正是为了校正饮食暴露中系统的中心间测量误差,以及中心内相对风险估计中的衰减偏差。参数的估计是在使用Gibbs采样的贝叶斯框架中进行的。该模型需要测量,暴露和疾病成分。在欧洲癌症与营养前瞻性调查(EPIC)中,通过饮食问卷和24小时饮食回想评估了脂质摄入与乳腺癌发病率之间的关联。该分析涉及EPIC校准研究中的21,534名妇女和334例乳腺癌事件。在这项研究中,总能量摄入与乳腺癌总水平呈正相关,而对脂肪没有影响。在个体水平上,身高与乳腺癌的发病率呈正相关,而与脂肪的关联则较弱。在多中心研究中,应考虑使用多级模型,这是估计个体证据水平与总体证据水平的非常有力的方法。

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