Representing Protein Sequence with Low Number of Dimensions
Author(s) -
Nazar Zaki,
Safaai Deris
Publication year - 2005
Publication title -
journal of biological sciences
Language(s) - English
Resource type - Journals
eISSN - 1812-5719
pISSN - 1727-3048
DOI - 10.3923/jbs.2005.795.800
Subject(s) - sequence (biology) , computational biology , computer science , biology , genetics
This research work introduces a simple method based on representing protein sequence by fix dimensions of the length three. We present hidden Markov model combining scores method. Three scoring algorithms are combined to represent protein sequence of amino acids for better remote homology detection. We tested the method on the SCOP version 1.37 dataset. The results show that, with such a simple representation, we are able to achieve superior performance to previously presented protein homology detection methods while achieving better computational efficiency.
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