加强冠状动脉疾病基因-疾病关联研究的网络驱动框架。

ArXiv Pub Date : 2025-01-31
Gutama Ibrahim Mohammad, Johan Lm Björkegren, Tom Michoel
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引用次数: 0

摘要

在过去的十年中,全基因组关联研究(GWAS)已经成功地确定了与复杂疾病相关的许多遗传变异。这些关联有可能揭示复杂疾病的分子机制,并导致新的药物靶点的鉴定。尽管取得了这些进展,但将遗传变异与复杂疾病联系起来的生物学途径和机制仍未完全了解。大多数性状相关变异存在于非编码区,并被认为通过对基因表达的调节作用来影响表型。然而,人们往往不清楚它们调节哪些基因,以及这种调节发生在哪些细胞类型中。转录组全关联研究(TWAS)旨在通过检测由GWAS变异调节的性状相关组织基因表达来弥补这一空白。然而,传统的TWAS方法往往忽视了跨监管效应的关键贡献,未能整合全面的监管网络。在这里,我们提出了一个新的框架,利用组织特异性基因调控网络(grn)将顺式和转基因调控效应整合到复杂疾病的TWAS框架中。我们使用冠状动脉疾病(CAD)验证我们的方法,利用STARNET项目的数据,该项目提供了大约600名活着的心血管疾病患者的多组织基因表达和遗传数据。初步结果表明,我们的grn驱动框架有潜力揭示更多可能构成CAD的基因和途径。该框架通过利用组织特异性调控见解和推进对复杂疾病遗传结构的理解,扩展了传统的TWAS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。

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A Network-Driven Framework for Enhancing Gene-Disease Association Studies in Coronary Artery Disease.

Motivation: Over the last decade, genome-wide association studies (GWAS) have successfully identified numerous genetic variants associated with complex diseases. These associations have the potential to reveal the molecular mechanisms underlying complex diseases and lead to the identification of novel drug targets. Despite these advancements, the biological pathways and mechanisms linking genetic variants to complex diseases are still not fully understood. Most trait-associated variants reside in non-coding regions and are presumed to influence phenotypes through regulatory effects on gene expression. Yet, it is often unclear which genes they regulate and in which cell types this regulation occurs. Transcriptome-wide association studies (TWAS) aim to bridge this gap by detecting trait-associated tissue gene expression regulated by GWAS variants. However, traditional TWAS approaches frequently overlook the critical contributions of trans-regulatory effects and fail to integrate comprehensive regulatory networks. Here, we present a novel framework that leverages tissue-specific gene regulatory networks (GRNs) to integrate cis- and trans-genetic regulatory effects into the TWAS framework for complex diseases.

Results: We validate our approach using coronary artery disease (CAD), utilizing data from the STARNET project, which provides multi-tissue gene expression and genetic data from around 600 living patients with cardiovascular disease. Preliminary results demonstrate the potential of our GRN-driven framework to uncover more genes and pathways that may underlie CAD. This framework extends traditional TWAS methodologies by utilizing tissue-specific regulatory insights and advancing the understanding of complex disease genetic architecture.

Availability: https://github.com/guutama/GRN-TWAS.

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