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首页> 外文期刊>Journal of molecular cell biology >Simultaneous inference of phenotype-associated genes and relevant tissues from GWAS data via Bayesian integration of multiple tissue-specific gene networks
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Simultaneous inference of phenotype-associated genes and relevant tissues from GWAS data via Bayesian integration of multiple tissue-specific gene networks

机译:通过多个组织特异性基因网络的贝叶斯整合,从GWAS数据同时推断表型相关基因和相关组织

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Although genome-wide association studies (GWAS) have successfully identified thousands of genomic loci associated with hundreds of complex traits in the past decade, the debate about such problems as missing heritability and weak interpretability has been appealing for effective computational methods to facilitate the advanced analysis of the vast volume of existing and anticipated genetic data. Towards this goal, gene-level integrative GWAS analysis with the assumption that genes associated with a phenotype tend to be enriched in biological gene sets or gene networks has recently attracted much attention, due to such advantages as straightforward interpretation, less multiple testing burdens, and robustness across studies. However, existing methods in this category usually exploit non-tissue-specific gene networks and thus lack the ability to utilize informative tissue-specific characteristics. To overcome this limitation, we proposed a Bayesian approach called SIGNET ( S imultaneously I nference of G e NE s and T issues) to integrate GWAS data and multiple tissue-specific gene networks for the simultaneous inference of phenotype-associated genes and relevant tissues. Through extensive simulation studies, we showed the effectiveness of our method in finding both associated genes and relevant tissues for a phenotype. In applications to real GWAS data of 14 complex phenotypes, we demonstrated the power of our method in both deciphering genetic basis and discovering biological insights of a phenotype. With this understanding, we expect to see SIGNET as a valuable tool for integrative GWAS analysis, thereby boosting the prevention, diagnosis, and treatment of human inherited diseases and eventually facilitating precision medicine.
机译:尽管在过去的十年中,全基因组关联研究(GWAS)已成功鉴定出与数百个复杂性状相关的数千个基因组位点,但有关遗传力缺失和解释力弱等问题的争论吸引了有效的计算方法以促进高级分析大量现有和预期的遗传数据。为了实现这一目标,基于表型的相关基因倾向于在生物基因组或基因网络中富集的假设进行基因水平的综合GWAS分析近来引起了人们的广泛关注,这是因为它们具有解释简便,可减少多重检测负担以及跨研究的鲁棒性。然而,该类别中的现有方法通常利用非组织特异性基因网络,因此缺乏利用信息性组织特异性特征的能力。为了克服此限制,我们提出了一种称为SIGNET的贝叶斯方法(同时对G e NE和T问题进行推断),以整合GWAS数据和多个组织特异性基因网络,以便同时推断与表型相关的基因和相关组织。通过广泛的模拟研究,我们证明了我们的方法在寻找表型的相关基因和相关组织方面的有效性。在对14种复杂表型的真实GWAS数据的应用中,我们证明了我们的方法在破译遗传基础和发现表型的生物学见解方面的作用。基于这种理解,我们希望将SIGNET视为进行GWAS综合分析的有价值的工具,从而促进人类遗传病的预防,诊断和治疗,并最终促进精准医学的发展。

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