...
首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >A Bayesian Framework for Generalized Linear Mixed Modeling Identifies New Candidate Loci for Late-Onset Alzheimer’s Disease
【24h】

A Bayesian Framework for Generalized Linear Mixed Modeling Identifies New Candidate Loci for Late-Onset Alzheimer’s Disease

机译:广义线性混合建模的贝叶斯框架确定了晚期阿尔茨海默氏病的新候选基因座

获取原文

摘要

Recent technical and methodological advances have greatly enhanced genome-wide association studies (GWAS). The advent of low-cost, whole-genome sequencing facilitates high-resolution variant identification, and the development of linear mixed models (LMM) allows improved identification of putatively causal variants. While essential for correcting false positive associations due to sample relatedness and population stratification, LMMs have commonly been restricted to quantitative variables. However, phenotypic traits in association studies are often categorical, coded as binary case-control or ordered variables describing disease stages. To address these issues, we have devised a method for genomic association studies that implements a generalized LMM (GLMM) in a Bayesian framework, called Bayes-GLMM . Bayes-GLMM has four major features: (1) support of categorical, binary, and quantitative variables; (2) cohesive integration of previous GWAS results for related traits; (3) correction for sample relatedness by mixed modeling; and (4) model estimation by both Markov chain Monte Carlo sampling and maximal likelihood estimation. We applied Bayes-GLMM to the whole-genome sequencing cohort of the Alzheimer’s Disease Sequencing Project. This study contains 570 individuals from 111 families, each with Alzheimer’s disease diagnosed at one of four confidence levels. Using Bayes-GLMM we identified four variants in three loci significantly associated with Alzheimer’s disease. Two variants, rs140233081 and rs149372995, lie between PRKAR1B and PDGFA . The coded proteins are localized to the glial-vascular unit, and PDGFA transcript levels are associated with Alzheimer’s disease-related neuropathology. In summary, this work provides implementation of a flexible, generalized mixed-model approach in a Bayesian framework for association studies.
机译:最近的技术和方法学进步大大增强了全基因组关联研究(GWAS)。低成本,全基因组测序的出现促进了高分辨率变异体的鉴定,线性混合模型(LMM)的发展可以改善对假定的因果变异体的鉴定。尽管由于样本相关性和总体分层而对校正假阳性关联是必不可少的,但LMM通常仅限于定量变量。但是,关联研究中的表型性状通常是分类的,编码为二元病例对照或描述疾病阶段的有序变量。为了解决这些问题,我们设计了一种用于基因组关联研究的方法,该方法在称为贝叶斯(Bayes-GLMM)的贝叶斯框架中实现了广义LMM(GLMM)。 Bayes-GLMM具有四个主要特征:(1)支持分类,二进制和定量变量; (2)将先前的GWAS结果与相关性状紧密结合在一起; (3)通过混合建模校正样本相关性; (4)通过马尔可夫链蒙特卡洛采样和最大似然估计进行模型估计。我们将Bayes-GLMM应用于阿尔茨海默氏病测序项目的全基因组测序队列。这项研究包括来自111个家庭的570个人,每个人被诊断为四个置信度水平之一的阿尔茨海默氏病。使用Bayes-GLMM,我们在三个与阿尔茨海默氏病高度相关的基因座中鉴定出四个变异体。 PRKAR1B和PDGFA之间有两个变体rs140233081和rs149372995。编码的蛋白质定位于神经胶质-血管单元,PDGFA转录水平与阿尔茨海默氏病相关的神经病理学有关。总之,这项工作在贝叶斯关联研究框架中提供了一种灵活的,广义的混合模型方法的实现。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号