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Graph theoretical approach to study eQTL: a case study of Plasmodium falciparum.

机译:图理论方法研究eQTL:以恶性疟原虫为例。

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Motivation: Analysis of expression quantitative trait loci (eQTL) significantly contributes to the determination of gene regulation programs. However, the discovery and analysis of associations of gene expression levels and their underlying sequence polymorphisms continue to pose many challenges. Methods are limited in their ability to illuminate the full structure of the eQTL data. Most rely on an exhaustive, genome scale search that considers all possible locus-gene pairs and tests the linkage between each locus and gene. Result: To analyze eQTLs in a more comprehensive and efficient way, we developed the Graph based eQTL Decomposition method (GeD) that allows us to model genotype and expression data using an eQTL association graph. Through graph-based heuristics, GeD identifies dense subgraphs in the eQTL association graph. By identifying eQTL association cliques that expose the hidden structure of genotype and expression data, GeD effectively filters out most locus-gene pairs that are unlikely to have significant linkage. We apply GeD on eQTL data from Plasmodium falciparum, the human malaria parasite, and show that GeD reveals the structure of the relationship between all loci and all genes on a whole genome level. Furthermore, GeD allows us to uncover additional eQTLs with lower FDR, providing an important complement to traditional eQTL analysis methods.
机译:动机:表达定量性状基因座(eQTL)的分析显着有助于确定基因调控程序。然而,基因表达水平及其潜在序列多态性的关联的发现和分析继续带来许多挑战。方法阐明eQTL数据的完整结构的能力有限。大多数依赖于详尽的基因组规模搜索,该搜索考虑所有可能的基因座对基因并测试每个基因座与基因之间的联系。结果:为了以更全面,更有效的方式分析eQTL,我们开发了基于图的eQTL分解方法(GeD),该方法允许我们使用eQTL关联图对基因型和表达数据进行建模。通过基于图的启发式方法,GeD可以识别eQTL关联图中的密集子图。通过识别暴露基因型和表达数据隐藏结构的eQTL关联集团,GeD有效地筛选出了大多数不太可能具有显着连锁关系的基因座基因对。我们将GeD应用于人类疟疾寄生虫恶性疟原虫的eQTL数据,并显示GeD揭示了整个基因组水平上所有基因座和所有基因之间关系的结构。此外,GeD使我们能够发现具有较低FDR的其他eQTL,从而为传统eQTL分析方法提供了重要的补充。

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