Promoter recognition using dinucleotide features: A case study for E.Coli
Promoter recognition using dinucleotide features: A case study for E.Coli
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Date
2006-01-01
Authors
Rani, T. Sobha
Bhavani, S. Durga
Bapi, Raju S.
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Abstract
Promoter recognition is based upon two complementary methods, a motif based method and a global signal based method. The literature is abound with motif search methods. But as the motifs of a promoter are consensus patterns of very short length and the chance of finding putative promoters is high, global feature methods gain importance. In this paper a simple global feature extraction method is proposed for the recognition of sigma-70 promoters in E.coli. It is shown that a simple feed forward neural network classifier achieves a precision of nearly 80% in contrast to the high end classifiers and heavy features proposed in the literature achieving a similar performance. Additionally, a scheme is proposed for locating promoter regions in a given DNA segment. © 2006 IEEE.
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Keywords
E. Coli promoter recognition,
Global feature extraction,
Machine learning techniques,
Neural networks
Citation
Proceedings - 9th International Conference on Information Technology, ICIT 2006