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Graph embeddings on gene ontology annotations for protein–protein interaction prediction

机译:植物蛋白质相互作用预测的基因本体注释的图嵌入

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Protein–protein interaction (PPI) prediction is an important task towards the understanding of many bioinformatics functions and applications, such as predicting protein functions, gene-disease associations and disease-drug associations. However, many previous PPI prediction researches do not consider missing and spurious interactions inherent in PPI networks. To address these two issues, we define two corresponding tasks, namely missing PPI prediction and spurious PPI prediction, and propose a method that employs graph embeddings that learn vector representations from constructed Gene Ontology Annotation (GOA) graphs and then use embedded vectors to achieve the two tasks. Our method leverages on information from both term–term relations among GO terms and term-protein annotations between GO terms and proteins, and preserves properties of both local and global structural information of the GO annotation graph. We compare our method with those methods that are based on information content (IC) and one method that is based on word embeddings, with experiments on three PPI datasets from STRING database. Experimental results demonstrate that our method is more effective than those compared methods. Our experimental results demonstrate the effectiveness of using graph embeddings to learn vector representations from undirected GOA graphs for our defined missing and spurious PPI tasks.
机译:蛋白质 - 蛋白质相互作用(PPI)预测是了解许多生物信息学功能和应用的重要任务,例如预测蛋白质功能,基因疾病关联和疾病 - 药物关联。然而,许多以前的PPI预测研究不考虑PPI网络中固有的缺失和杂散的交互。为了解决这两个问题,我们定义了两个相应的任务,即缺少PPI预测和虚假的PPI预测,并提出了一种采用图形嵌入的方法,该方法学习来自构建的基因本体注释(GOA)图的矢量表示,然后使用嵌入的向量来实现两个任务。我们的方法利用来自GO条款和蛋白质之间的GO术语和术语注释之间的术语关系的信息,并保留了GO注释图的本地和全局结构信息的性质。我们将我们的方法与基于信息内容(IC)的方法和基于Word Embeddings的方法进行比较,其中包含来自字符串数据库的三个PPI数据集的实验。实验结果表明,我们的方法比这些比较方法更有效。我们的实验结果展示了使用图形嵌入的有效性,从而为我们定义的丢失和虚假的PPI任务学习来自无向GOA图表的矢量表示。

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