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Predicting gene ontology annotations of orphan GWAS genes using protein-protein interactions

机译:使用蛋白质-蛋白质相互作用预测孤儿GWAS基因的基因本体注释

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摘要

Background: The number of genome-wide association studies (GWAS) has increased rapidly in the past couple of years, resulting in the identification of genes associated with different diseases. The next step in translating these findings into biomedically useful information is to find out the mechanism of the action of these genes. However, GWAS studies often implicate genes whose functions are currently unknown; for example, MYEOV, ANKLE1, TMEM45B and ORAOV1 are found to be associated with breast cancer, but their molecular function is unknown. Results: We carried out Bayesian inference of Gene Ontology (GO) term annotations of genes by employing the directed acyclic graph structure of GO and the network of protein-protein interactions (PPIs). The approach is designed based on the fact that two proteins that interact biophysically would be in physical proximity of each other, would possess complementary molecular function, and play role in related biological processes. Predicted GO terms were ranked according to their relative association scores and the approach was evaluated quantitatively by plotting the precision versus recall values and F-scores (the harmonic mean of precision and recall) versus varying thresholds. Precisions of similar to 58% and similar to 40% for localization and functions respectively of proteins were determined at a threshold of similar to 30 (top 30 GO terms in the ranked list). Comparison with function prediction based on semantic similarity among nodes in an ontology and incorporation of those similarities in a k nearest neighbor classifier confirmed that our results compared favorably. Conclusions: This approach was applied to predict the cellular component and molecular function GO terms of all human proteins that have interacting partners possessing at least one known GO annotation. The list of predictions is available at http://severus.dbmi.pitt.edu/engo/GOPRED.html. We present the algorithm, evaluations and the results of the computational predictions, especially for genes identified in GWAS studies to be associated with diseases, which are of translational interest.
机译:背景:在过去的几年中,全基因组关联研究(GWAS)的数量迅速增加,从而确定了与不同疾病相关的基因。将这些发现转化为生物医学有用信息的下一步是找出这些基因作用的机制。但是,GWAS研究通常牵涉目前功能未知的基因。例如,发现MYEOV,ANKLE1,TMEM45B和ORAOV1与乳腺癌有关,但其分子功能尚不清楚。结果:我们利用GO的有向无环图结构和蛋白质-蛋白质相互作用(PPI)网络对基因进行了本体论(GO)术语注释的贝叶斯推断。该方法是基于以下事实设计的:两个在生物物理上相互作用的蛋白质将彼此物理接近,将具有互补的分子功能,并在相关的生物过程中发挥作用。根据预测的GO术语的相对关联得分对其进行排名,并通过绘制精度与查全率值和F分数(精度和查全率的谐波平均值)与变化的阈值作图,对方法进行定量评估。确定蛋白质的定位和功能的精度分别接近58%和40%(在排名表中排名前30位的GO术语)。与基于本体中节点间语义相似性的功能预测进行比较,以及将这些相似性纳入k最近邻分类器中,证实了我们的结果具有可比性。结论:该方法被用于预测具有相互作用的伙伴的所有人类蛋白质的细胞成分和分子功能GO术语,所述伙伴具有至少一个已知的GO注释。有关预测的列表,请访问http://severus.dbmi.pitt.edu/engo/GOPRED.html。我们介绍了算法,评估和计算预测的结果,特别是对于在GWAS研究中确定的与疾病相关的基因,这些疾病具有翻译意义。

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