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Network-Based Functional Prediction Augments Genetic Association To Predict Candidate Genes for Histamine Hypersensitivity in Mice

机译:基于网络的功能预测增强遗传协会以预测小鼠组胺超敏反应的候选基因

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摘要

Genetic mapping is a primary tool of genetics in model organisms; however, many quantitative trait loci (QTL) contain tens or hundreds of positional candidate genes. Prioritizing these genes for validation is often and biased by previous findings. Here we present a technique for prioritizing positional candidates based on computationally inferred gene function. Our method uses machine learning with functional genomic networks, whose links encode functional associations among genes, to identify network-based signatures of functional association to a trait of interest. We demonstrate the method by functionally ranking positional candidates in a large locus on mouse Chr 6 (45.9 Mb to 127.8 Mb) associated with histamine hypersensitivity (Histh). Histh is characterized by systemic vascular leakage and edema in response to histamine challenge, which can lead to multiple organ failure and death. Although Histh risk is strongly influenced by genetics, little is known about its underlying molecular or genetic causes, due to genetic and physiological complexity of the trait. To dissect this complexity, we ranked genes in the locus by predicting functional association with multiple Histh-related processes. We integrated these predictions with new single nucleotide polymorphism (SNP) association data derived from a survey of 23 inbred mouse strains and congenic mapping data. The top-ranked genes included , , , and , all of which had strong functional associations and were proximal to SNPs segregating with Histh. These results demonstrate the power of network-based computational methods to nominate highly plausible quantitative trait genes even in challenging cases involving large QTL and extreme trait complexity.
机译:遗传作图是模型生物遗传学的主要工具。但是,许多数量性状基因座(QTL)包含数十个或数百个位置候选基因。优先考虑这些基因以进行验证经常受到先前发现的偏见。在这里,我们提出了一种基于计算推断的基因功能对位置候选进行优先排序的技术。我们的方法使用具有功能基因组网络的机器学习功能,该功能基因组网络的链接对基因之间的功能关联进行编码,以识别基于网络的功能关联特征。我们通过在功能上对与组胺超敏性(组氨酸)相关的小鼠Chr 6(45.9 Mb至127.8 Mb)的大型基因座中的位置候选者进行功能排名来证明该方法。组氨酸的特点是对组胺的反应引起全身性血管渗漏和水肿,可导致多器官功能衰竭和死亡。尽管组氨酸的风险受到遗传学的强烈影响,但由于该性状的遗传和生理复杂性,对其潜在的分子或遗传原因知之甚少。为了剖析这种复杂性,我们通过预测与多个与Histh相关的过程的功能关联,在基因座中对基因进行了排名。我们将这些预测与新的单核苷酸多态性(SNP)关联数据相结合,该关联数据来自对23个近交小鼠品系的调查以及同基因作图数据。排名靠前的基因包括,,和,所有这些基因都具有强大的功能关联,并且最接近与Histh分离的SNP。这些结果表明,即使在涉及大量QTL和极端性状复杂性的挑战性案例中,基于网络的计算方法也可以提名高度可信的数量性状基因。

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