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Semiparametric Bayesian analysis of gene-environment interactions with error in measurement of environmental covariates and missing genetic data

机译:基因-环境相互作用的半参数贝叶斯分析,在测量环境协变量和遗失基因数据时出现错误

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Case-control studies are widely used to detect geneenvironment interactions in the etiology of complex diseases. Many variables that are of interest to biomedical researchers are difficult to measure on an individual level, e.g. nutrient intake, cigarette smoking exposure, long-term toxic exposure. Measurement error causes bias in parameter estimates, thus masking key features of data and leading to loss of power and spurious/masked associations. We develop a Bayesian methodology for analysis of case-control studies for the case when measurement error is present in an environmental covariate and the genetic variable has missing data. This approach offers several advantages. It allows prior information to enter the model to make estimation and inference more precise. The environmental covariates measured exactly are modeled completely nonparametrically. Further, information about the probability of disease can be incorporated in the estimation procedure to improve quality of parameter estimates, what cannot be done in conventional case-control studies. A unique feature of the procedure under investigation is that the analysis is based on a pseudo-likelihood function therefore conventional Bayesian techniques may not be technically correct. We propose an approach using Markov Chain Monte Carlo sampling as well as a computationally simple method based on an asymptotic posterior distribution. Simulation experiments demonstrated that our method produced parameter estimates that are nearly unbiased even for small sample sizes. An application of our method is illustrated using a population-based case-control study of the association between calcium intake with the risk of colorectal adenoma development.
机译:病例对照研究被广泛用于检测复杂疾病的病因中的基因环境相互作用。生物医学研究人员感兴趣的许多变量很难在个体水平上进行衡量,例如营养摄入,吸烟暴露,长期毒性暴露。测量误差会导致参数估计值出现偏差,从而掩盖数据的关键特征并导致功耗降低以及虚假/掩盖的关联。当环境协变量中存在测量误差且遗传变量缺少数据时,我们开发了贝叶斯方法来分析病例对照研究。这种方法具有几个优点。它允许先验信息进入模型,以使估算和推断更加精确。精确测量的环境协变量完全非参数化建模。此外,可以将有关疾病可能性的信息纳入估算程序,以提高参数估算的质量,这是常规病例对照研究无法做到的。正在研究的过程的独特之处在于,分析基于伪似然函数,因此常规的贝叶斯技术可能在技术上不正确。我们提出一种使用马尔可夫链蒙特卡罗采样的方法,以及一种基于渐近后验分布的计算简单方法。仿真实验表明,即使对于小样本量,我们的方法所产生的参数估计值也几乎没有偏差。我们基于人群的病例对照研究说明了我们方法的应用,该病例对照研究涉及钙摄入与大肠腺瘤发生风险之间的关系。

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