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DeepFunNet: Deep Learning for Gene Functional Similarity Network Construction

机译:DeepFunNet:用于基因功能相似性网络构建的深度学习

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The problem to be addressed in this paper is to construct a gene functional similarity network using Gene Ontology (GO) annotation data and gene expression data. GO annotation data include functional information of genes, and they are a reliable source to measure gene functional similarity. However, a significant portion, about 25% and 58%, of the human and Arabidopsis genes have no GO term assigned so far. On the other hand, gene expression data consist of levels of gene activation within a cell at a specific moment for all genes. From gene expression data, a co-expression network can be built and used to infer gene function similarity network for GO unknown genes. However, the predicted network based on the co-expression network contains many false positives. DeepFunNet is a new computational method to construct gene functional similarity network for GO unknown genes by strategically utilizing the gene co-expression network. The principle of DeepFunNet is to induce the network construction to select true functional-similarity-edges by propagating known function of a gene to other genes through the co-expression network. To make the propagation step robust, we use level-wise propagation from (GO) known-to-known, known-to-unknown, and unknown-to-unknown gene pairs. DeepFunNet includes a deep learning model for estimating the gene functional similarity of GO unknown genes from neighboring genes. In several experiments, our deep learning model performed better than existing methods.
机译:本文要解决的问题是使用基因本体论(GO)注释数据和基因表达数据构建基因功能相似性网络。 GO注释数据包括基因的功能信息,它们是测量基因功能相似性的可靠来源。但是,到目前为止,人类和拟南芥基因中有很大一部分(约25%和58%)尚未分配GO术语。另一方面,基因表达数据包括所有基因在特定时刻细胞内基因激活水平。根据基因表达数据,可以构建共表达网络,并用于推断GO未知基因的基因功能相似性网络。但是,基于共表达网络的预测网络包含许多误报。 DeepFunNet是一种通过策略性地利用基因共表达网络为GO未知基因构建基因功能相似性网络的新计算方法。 DeepFunNet的原理是通过将基因的已知功能通过共表达网络传播到其他基因,从而诱导网络构建以选择真正的功能相似性边缘。为了使传播步骤更可靠,我们使用了从(GO)已知,已知,未知和未知到未知基因对的逐级传播。 DeepFunNet包括一个深度学习模型,用于估计来自邻近基因的GO未知基因的基因功能相似性。在一些实验中,我们的深度学习模型比现有方法表现更好。

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