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A Bayesian Binomial Regression Model with Latent Gaussian Processes for Modelling DNA Methylation

机译:一种贝叶斯二项式回归模型,具有潜伏的DNA甲基化方法

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摘要

Epigenetic observations are represented by the total number of reads from a given pool of cells and the number of methylated reads, making it reasonable to model this data by a binomial distribution. There are numerous factors that can influence the probability of success in a particular region. Moreover, there is a strong spatial (alongside the genome) dependence of these probabilities. We incorporate dependence on the covariates and the spatial dependence of the methylation probability for observations from a pool of cells by means of a binomial regression model with a latent Gaussian field and a logit link function. We apply a Bayesian approach including prior specifications on model configurations. We run a mode jumping Markov chain Monte Carlo algorithm (MJMCMC) across different choices of covariates in order to obtain the joint posterior distribution of parameters and models. This also allows finding the best set of covariates to model methylation probability within the genomic region of interest and individual marginal inclusion probabilities of the covariates.
机译:表观遗传观察由给定细胞库的读数的总数和甲基化读数的数量表示,使其通过二项式分布来建立模拟该数据的合理性。有许多因素可以影响特定区域成功的概率。此外,这些概率存在强烈的空间(以及基因组)依赖性。我们纳入对协变量的依赖性和甲基化概率的空间依赖性通过具有潜在高斯场的二项式回归模型和Logit Link函数的二项式回归模型的观察。我们应用贝叶斯方法,包括关于模型配置的先前规范。我们在协变量的不同选择上运行跳跃的马尔可夫链蒙特卡罗算法(MJMCMC),以获得参数和模型的关节后部分布。这还允许在感兴趣的基因组区域内模拟甲基化概率和协变量的个体边缘夹杂度的最佳协变量。

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