An in-depth association analysis of genetic variants within nicotine-related loci: Meeting in middle of GWAS and genetic fine-mapping

IF 2.6 3区 医学 Q3 NEUROSCIENCES
Chen Mo , Zhenyao Ye , Yezhi Pan , Yuan Zhang , Qiong Wu , Chuan Bi , Song Liu , Braxton Mitchell , Peter Kochunov , L. Elliot Hong , Tianzhou Ma , Shuo Chen
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引用次数: 0

Abstract

In the last two decades of Genome-wide association studies (GWAS), nicotine-dependence-related genetic loci (e.g., nicotinic acetylcholine receptor – nAChR subunit genes) are among the most replicable genetic findings. Although GWAS results have reported tens of thousands of SNPs within these loci, further analysis (e.g., fine-mapping) is required to identify the causal variants. However, it is computationally challenging for existing fine-mapping methods to reliably identify causal variants from thousands of candidate SNPs based on the posterior inclusion probability. To address this challenge, we propose a new method to select SNPs by jointly modeling the SNP-wise inference results and the underlying structured network patterns of the linkage disequilibrium (LD) matrix. We use adaptive dense subgraph extraction method to recognize the latent network patterns of the LD matrix and then apply group LASSO to select causal variant candidates. We applied this new method to the UK biobank data to identify the causal variant candidates for nicotine addiction. Eighty-one nicotine addiction-related SNPs (i.e.,-log(p) > 50) of nAChR were selected, which are highly correlated (average r2>0.8) although they are physically distant (e.g., >200 kilobase away) and from various genes. These findings revealed that distant SNPs from different genes can show higher LD r2 than their neighboring SNPs, and jointly contribute to a complex trait like nicotine addiction.

尼古丁相关基因座遗传变异的深度关联分析:GWAS中期相遇和遗传精细定位
在过去二十年的全基因组关联研究(GWAS)中,尼古丁依赖相关的遗传基因座(如烟碱乙酰胆碱受体-nAChR亚基基因)是最可复制的遗传发现之一。尽管GWAS结果报告了这些基因座内数万个SNP,但还需要进一步的分析(如精细定位)来确定因果变异。然而,现有的精细映射方法在计算上具有挑战性,无法根据后验包含概率从数千个候选SNPs中可靠地识别因果变异。为了应对这一挑战,我们提出了一种新的方法,通过联合建模SNP推理结果和连锁不平衡(LD)矩阵的潜在结构化网络模式来选择SNP。我们使用自适应密集子图提取方法来识别LD矩阵的潜在网络模式,然后应用组LASSO来选择因果变量候选者。我们将这一新方法应用于英国生物库数据,以确定尼古丁成瘾的因果变异候选者。81个与尼古丁成瘾相关的SNPs(即-log(p)>;50)的nAChR,它们是高度相关的(平均r2>0.8),尽管它们在物理上是遥远的(例如>200千碱基)并且与各种基因相距甚远。这些发现表明,来自不同基因的遥远SNPs比其相邻SNPs表现出更高的LD r2,并共同导致尼古丁成瘾等复杂特征。
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来源期刊
CiteScore
5.60
自引率
0.00%
发文量
65
审稿时长
37 days
期刊介绍: Molecular and Cellular Neuroscience publishes original research of high significance covering all aspects of neurosciences indicated by the broadest interpretation of the journal''s title. In particular, the journal focuses on synaptic maintenance, de- and re-organization, neuron-glia communication, and de-/regenerative neurobiology. In addition, studies using animal models of disease with translational prospects and experimental approaches with backward validation of disease signatures from human patients are welcome.
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