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Adjacent Nucleotide Dependence in ncRNA and Order-1 SCFG for ncRNA Identification
Authors:Thomas K F Wong  Tak-Wah Lam  Wing-Kin Sung  Siu-Ming Yiu
Institution:1. Department of Computer Science, The University of Hong Kong, Hong Kong, Special Administrative Region, People''s Republic of China.; 2. School of Computing, National University of Singapore, Singapore, Singapore.;Aarhus University, Denmark
Abstract:

Background

Non-coding RNAs (ncRNAs) are known to be involved in many critical biological processes, and identification of ncRNAs is an important task in biological research. A popular software, Infernal, is the most successful prediction tool and exhibits high sensitivity. The application of Infernal has been mainly focused on small suspected regions. We tried to apply Infernal on a chromosome level; the results have high sensitivity, yet contain many false positives. Further enhancing Infernal for chromosome level or genome wide study is desirable.

Methodology

Based on the conjecture that adjacent nucleotide dependence affects the stability of the secondary structure of an ncRNA, we first conduct a systematic study on human ncRNAs and find that adjacent nucleotide dependence in human ncRNA should be useful for identifying ncRNAs. We then incorporate this dependence in the SCFG model and develop a new order-1 SCFG model for identifying ncRNAs.

Conclusions

With respect to our experiments on human chromosomes, the proposed new model can eliminate more than 50% false positives reported by Infernal while maintaining the same sensitivity. The executable and the source code of programs are freely available at http://i.cs.hku.hk/~kfwong/order1scfg.
Keywords:
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