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A probabilistic method for identifying rare variants underlying complex traits

机译:一种识别复杂特征潜在稀有变异的概率方法

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BackgroundIdentifying the genetic variants that contribute to disease susceptibilities is important both for developing methodologies and for studying complex diseases in molecular biology. It has been demonstrated that the spectrum of minor allelic frequencies (MAFs) of risk genetic variants ranges from common to rare. Although association studies are shifting to incorporate rare variants (RVs) affecting complex traits, existing approaches do not show a high degree of success, and more efforts should be considered.ResultsIn this article, we focus on detecting associations between multiple rare variants and traits. Similar to RareCover, a widely used approach, we assume that variants located close to each other tend to have similar impacts on traits. Therefore, we introduce elevated regions and background regions, where the elevated regions are considered to have a higher chance of harboring causal variants. We propose a hidden Markov random field (HMRF) model to select a set of rare variants that potentially underlie the phenotype, and then, a statistical test is applied. Thus, the association analysis can be achieved without pre-selection by experts. In our model, each variant has two hidden states that represent the causalon-causal status and the region status. In addition, two Bayesian processes are used to compare and estimate the genotype, phenotype and model parameters. We compare our approach to the three current methods using different types of datasets, and though these are simulation experiments, our approach has higher statistical power than the other methods. The software package, RareProb and the simulation datasets are available at: http://www.engr.uconn.edu/~jiw09003.
机译:背景技术识别导致疾病易感性的遗传变异对于开发方法论和研究分子生物学中的复杂疾病都非常重要。已经证明,风险遗传变异的次要等位基因频率(MAF)的范围从普通到稀有。尽管关联研究正在转移以纳入影响复杂性状的稀有变异(RV),但现有方法并未显示出很高的成功率,应考虑更多的努力。结果在本文中,我们着重于检测多个稀有变异与性状之间的关联。与广泛使用的方法RareCover相似,我们假设彼此靠近的变体往往会对性状产生相似的影响。因此,我们介绍了升高的区域和背景区域,其中升高的区域被认为具有因果变异的更高机会。我们提出了一个隐马尔可夫随机场(HMRF)模型来选择一组潜在的潜在表型稀有变体,然后应用统计检验。因此,无需专家预先选择就可以实现关联分析。在我们的模型中,每个变量都有两个隐藏状态,分别表示因果/非因果状态和区域状态。另外,使用两个贝叶斯过程来比较和估计基因型,表型和模型参数。我们将我们的方法与使用不同类型数据集的三种当前方法进行了比较,尽管这些是模拟实验,但我们的方法具有比其他方法更高的统计能力。软件包RareProb和仿真数据集可从以下网站获得:http://www.engr.uconn.edu/~jiw09003。

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