VariFunNet,一个集成的多尺度建模框架,用于研究全基因组关联研究中罕见非编码变异的影响:应用于阿尔茨海默病。

Qiao Liu, Chen Chen, Annie Gao, Hang Hang Tong, Lei Xie
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引用次数: 9

摘要

揭示复杂表型中DNA变异的因果效应是一个巨大的挑战。尽管统计技术可以在全基因组关联研究(GWAS)中建立基因型和表型之间的相关性,但当变异很罕见时,它们往往失败。新兴的基于网络的关联研究旨在解决统计分析中的这一缺陷,但主要应用于编码变化。越来越多的证据表明,非编码变异在复杂疾病的病因学中起着关键作用。然而,很少有计算工具可用于研究罕见的非编码变异对表型的影响。在这里,我们开发了一个多尺度建模变体到功能到网络框架VariFunNet来解决这些挑战。VariFunNet首先预测了分子相互作用的功能变化,这是由非编码变异引起的。然后,我们将与功能变异相关的基因整合到组织特异性基因网络中,并确定将功能变异传递到分子表型的子网络。最后,我们量化了子网络的功能含义,并优先考虑了非编码变体与表型的关联。我们应用VariFunNet来研究罕见的非编码变异对阿尔茨海默病(AD)的因果影响。在排名前21位的因果非编码变异中,有16个是有直接证据支持的。剩下的5个新变异调节了多个下游生物过程,这些过程都与AD的病理有关。此外,我们提出了潜在的新药物靶点,可能调节负责阿尔茨海默病的多种途径。这些发现可能为发现新的生物标志物和预防、诊断和治疗阿尔茨海默病的治疗方法提供新的线索。我们的研究结果表明,多尺度建模是研究基因型-表型因果关系的潜在有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

VariFunNet, an integrated multiscale modeling framework to study the effects of rare non-coding variants in Genome-Wide Association Studies: applied to Alzheimer's Disease.

VariFunNet, an integrated multiscale modeling framework to study the effects of rare non-coding variants in Genome-Wide Association Studies: applied to Alzheimer's Disease.

VariFunNet, an integrated multiscale modeling framework to study the effects of rare non-coding variants in Genome-Wide Association Studies: applied to Alzheimer's Disease.

It is a grand challenge to reveal the causal effects of DNA variants in complex phenotypes. Although statistical techniques can establish correlations between genotypes and phenotypes in Genome-Wide Association Studies (GWAS), they often fail when the variant is rare. The emerging Network-based Association Studies aim to address this shortcoming in statistical analysis, but are mainly applied to coding variations. Increasing evidences suggest that non-coding variants play critical roles in the etiology of complex diseases. However, few computational tools are available to study the effect of rare non-coding variants on phenotypes. Here we have developed a multiscale modeling variant-to-function-to-network framework VariFunNet to address these challenges. VariFunNet first predict the functional variations of molecular interactions, which result from the non-coding variants. Then we incorporate the genes associated with the functional variation into a tissue-specific gene network, and identify subnetworks that transmit the functional variation to molecular phenotypes. Finally, we quantify the functional implication of the subnetwork, and prioritize the association of the non-coding variants with the phenotype. We have applied VariFunNet to investigating the causal effect of rare non-coding variants on Alzheimer's disease (AD). Among top 21 ranked causal non-coding variants, 16 of them are directly supported by existing evidences. The remaining 5 novel variants dysregulate multiple downstream biological processes, all of which are associated with the pathology of AD. Furthermore, we propose potential new drug targets that may modulate diverse pathways responsible for AD. These findings may shed new light on discovering new biomarkers and therapies for the prevention, diagnosis, and treatment of AD. Our results suggest that multiscale modeling is a potentially powerful approach to studying causal genotype-phenotype associations.

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