More and more evidences demonstrate that the long non-coding RNAs (lncRNAs) play many key roles in diverse biological processes. There is a critical need to annotate the functions of increasing available lncRNAs. In this article, we try to apply a global network-based strategy to tackle this issue for the first time. We develop a bi-colored network based global function predictor, long non-coding RNA global function predictor (‘lnc-GFP’), to predict probable functions for lncRNAs at large scale by integrating gene expression data and protein interaction data. The performance of lnc-GFP is evaluated on protein-coding and lncRNA genes. Cross-validation tests on protein-coding genes with known function annotations indicate that our method can achieve a precision up to 95%, with a suitable parameter setting. Among the 1713 lncRNAs in the bi-colored network, the 1625 (94.9%) lncRNAs in the maximum connected component are all functionally characterized. For the lncRNAs expressed in mouse embryo stem cells and neuronal cells, the inferred putative functions by our method highly match those in the known literature.
Long non-coding RNAs function annotation: a global prediction method based on bi-colored networks
Xingli Guo,Lin Gao,Q. Liao,Hui Xiao,Xiaoke Ma,Xiaofei Yang,Haitao Luo,Guoguang Zhao,Dechao Bu,F. Jiao,Qixiang Shao,Runsheng Chen,Yi Zhao
Published 2012 in Nucleic Acids Research
ABSTRACT
PUBLICATION RECORD
- Publication year
2012
- Venue
Nucleic Acids Research
- Publication date
2012-11-05
- Fields of study
Biology, Medicine, Computer Science
- Identifiers
- External record
- Source metadata
Semantic Scholar, PubMed
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REFERENCES
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