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Concordance of gene expression in human protein complexes reveals tissue specificity and pathology

机译:人类蛋白质复合物中基因表达的一致性揭示了组织特异性和病理学

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Disease-causing variants in human genes usually lead to phenotypes specific to only a few tissues. Here, we present a method for predicting tissue specificity based on quantitative deregulation of protein complexes. The underlying assumption is that the degree of coordinated expression among proteins in a complex within a given tissue may pinpoint tissues that will be affected by a mutation in the complex and coordinated expression may reveal the complex to be active in the tissue. We identified known disease genes and their protein complex partners in a high-quality human interactome. Each susceptibility gene's tissue involvement was ranked based on coordinated expression with its interaction partners in a non-disease global map of human tissue-specific expression. The approach demonstrated high overall area under the curve (0.78) and was very successfully benchmarked against a random model and an approach not using protein complexes. This was illustrated by correct tissue predictions for three case studies on leptin, insulin-like-growth-factor 2 and the inhibitor of NF-kappa B kinase subunit gamma that show high concordant expression in biologically relevant tissues. Our method identifies novel gene-phenotype associations in human diseases and predicts the tissues where associated phenotypic effects may arise.
机译:人类基因中的致病变异通常会导致仅对少数组织具有特异性的表型。在这里,我们提出了一种基于蛋白质复合物定量失调预测组织特异性的方法。基本假设是,给定组织内复合物中蛋白质之间的协调表达程度可能会确定将受到复合物中突变影响的组织,而协调表达则可能表明复合物在组织中具有活性。我们在高质量的人类交互组中确定了已知的疾病基因及其蛋白复合物伴侣。在人类组织特异性表达的非疾病全局图中,基于与它的相互作用伙伴的协同表达,对每个易感基因的组织参与程度进行排名。该方法显示出曲线下的高总面积(0.78),并且非常成功地针对随机模型和不使用蛋白质复合物的方法进行了基准测试。对瘦素,胰岛素样生长因子2和NF-κB激酶亚单位γ抑制剂的三个案例研究进行了正确的组织预测,证明了这一点,它们在生物学相关组织中显示出高度一致的表达。我们的方法确定了人类疾病中新的基因表型关联,并预测了可能产生相关表型效应的组织。

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