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LErNet: characterization of lncRNAs via context-aware network expansion and enrichment analysis

机译:Lernet:通过上下文知识网络扩展和浓缩分析表征LNCRNA

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Long non-coding RNAs (lncRNAs) have recently acquired a boost of interest for their implication in several biological conditions. However, many of these elements are not yet characterized. LErNet is a method to in silico define and predict the roles of IncRNAs. The core of the approach is a network expansion algorithm which enriches the genomic context of IncRNAs. The context is built by integrating the genes encoding proteins that are found next to the non-coding elements both at genomic and system level. The pipeline is particularly useful in situations where the functions of discovered IncRNAs are not yet known. The results show both the outperformance of LErNet compared to enrichment approaches in literature and its robustness in case of partially missing context information. LErNet is provided as an R package. It is available at https://github.com/InfOmics/LErNet.
机译:长期非编码RNA(LNCRNA)最近获得了对若干生物条件的含义的兴趣增强。但是,许多这些元素尚未表征。 Lernet是一种在Silico的方法定义并预测Incrnas的角色。该方法的核心是一种网络扩展算法,它丰富了Incrnas的基因组背景。通过对编码在基因组和系统级别旁边的编码蛋白质的基因集成了编码蛋白质的基因来构建上下文。管道在发现Incrnas尚未知道的情况下特别有用。结果表明,在部分缺少上下文信息的情况下,与文学中的富集方法和其鲁棒性的富集方法相比,单位的表现均表现出。 Lernet作为R包提供。它可以在https://github.com/infomics/lernet上获得。

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