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Examining the Joint Effect of Multiple Risk Factors Using Exposure Risk Profiles: Lung Cancer in Nonsmokers

机译:使用暴露风险曲线检查多种风险因素的共同作用:非吸烟者中的肺癌

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Background Profile regression is a Bayesian statistical approach designed for investigating the joint effect of multiple risk factors. It reduces dimensionality by using as its main unit of inference the exposure profiles of the subjects that is, the sequence of covariate values that correspond to each subject. Objectives We applied profile regression to a case–control study of lung cancer in nonsmokers, nested within the European Prospective Investigation into Cancer and Nutrition (EPIC) cohort, to estimate the combined effect of environmental carcinogens and to explore possible gene–environment interactions. Methods We tailored and extended the profile regression approach to the analysis of case–control studies, allowing for the analysis of ordinal data and the computation of posterior odds ratios. We compared and contrasted our results with those obtained using standard logistic regression and classification tree methods, including multifactor dimensionality reduction. Results Profile regression strengthened previous observations in other study populations on the role of air pollutants, particularly particulate matter ≤ 10 μm in aerodynamic diameter (PM10), in lung cancer for nonsmokers. Covariates including living on a main road, exposure to PM10 and nitrogen dioxide, and carrying out manual work characterized high-risk subject profiles. Such combinations of risk factors were consistent with a priori expectations. In contrast, other methods gave less interpretable results. Conclusions We conclude that profile regression is a powerful tool for identifying risk profiles that express the joint effect of etiologically relevant variables in multifactorial diseases.
机译:背景资料回归是一种贝叶斯统计方法,旨在研究多种风险因素的共同影响。它通过使用主体的曝光曲线(即与每个主体相对应的协变量值的序列)作为其主要推断单位来降低维度。目的我们将轮廓回归应用于非吸烟者肺癌的病例对照研究,该研究嵌套在欧洲癌症与营养前瞻性调查(EPIC)队列中,以评估环境致癌物的综合作用并探讨可能的基因与环境的相互作用。方法我们量身定制了回归分析方法,并将其扩展到病例对照研究的分析中,从而可以分析有序数据和计算后验优势比。我们将结果与使用标准逻辑回归和分类树方法(包括多维度降维)获得的结果进行了比较和对比。结果轮廓回归分析加强了其他研究人群先前在非吸烟者肺癌中空气污染物(尤其是空气动力学直径(PM 10 )中≤10μm的颗粒物)的作用的观察结果。协变量包括生活在主要道路上,暴露于PM 10 和二氧化氮,以及进行以高风险主体特征为特征的手工作业。风险因素的这种组合符合先验预期。相反,其他方法给出的结果却较少。结论我们得出的结论是,概况回归是用于识别风险概况的有力工具,该风险概况表达了病因相关变量在多因素疾病中的联合作用。

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