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Tissue-Specific Functional Networks for Prioritizing Phenotype and Disease Genes

机译:特定于表型和疾病基因的组织特定功能网络

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摘要

Integrated analyses of functional genomics data have enormous potential for identifying phenotype-associated genes. Tissue-specificity is an important aspect of many genetic diseases, reflecting the potentially different roles of proteins and pathways in diverse cell lineages. Accounting for tissue specificity in global integration of functional genomics data is challenging, as “functionality” and “functional relationships” are often not resolved for specific tissue types. We address this challenge by generating tissue-specific functional networks, which can effectively represent the diversity of protein function for more accurate identification of phenotype-associated genes in the laboratory mouse. Specifically, we created 107 tissue-specific functional relationship networks through integration of genomic data utilizing knowledge of tissue-specific gene expression patterns. Cross-network comparison revealed significantly changed genes enriched for functions related to specific tissue development. We then utilized these tissue-specific networks to predict genes associated with different phenotypes. Our results demonstrate that prediction performance is significantly improved through using the tissue-specific networks as compared to the global functional network. We used a testis-specific functional relationship network to predict genes associated with male fertility and spermatogenesis phenotypes, and experimentally confirmed one top prediction, Mbyl1. We then focused on a less-common genetic disease, ataxia, and identified candidates uniquely predicted by the cerebellum network, which are supported by both literature and experimental evidence. Our systems-level, tissue-specific scheme advances over traditional global integration and analyses and establishes a prototype to address the tissue-specific effects of genetic perturbations, diseases and drugs.
机译:功能基因组学数据的综合分析具有识别表型相关基因的巨大潜力。组织特异性是许多遗传疾病的重要方面,反映了蛋白质和途径在不同细胞谱系中的潜在不同作用。在功能基因组学数据的全球整合中考虑组织特异性具有挑战性,因为对于特定的组织类型通常无法解析“功能性”和“功能关系”。我们通过产生组织特异性功能网络来应对这一挑战,该功能网络可以有效代表蛋白质功能的多样性,以便在实验室小鼠中更准确地鉴定与表型相关的基因。具体而言,我们利用组织特异性基因表达模式的知识,通过整合基因组数据创建了107个组织特异性功能关系网络。跨网络比较显示,显着改变的基因富含与特定组织发育相关的功能。然后,我们利用这些组织特异性网络来预测与不同表型相关的基因。我们的结果表明,与全局功能网络相比,通过使用组织特定的网络可以显着提高预测性能。我们使用睾丸特异性功能关系网络来预测与雄性育性和精子生成表型相关的基因,并通过实验证实了一项最高的预测,即Mbyl1。然后,我们集中研究了一种不太常见的遗传疾病,共济失调,并确定了由小脑网络唯一预测的候选物,这些文献均受到文献和实验证据的支持。我们的系统级组织特定方案优于传统的全球整合和分析,并建立了原型,以解决遗传扰动,疾病和药物对组织的影响。

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