A HIDDEN MARKOV MODEL FOR PREDICTING PROTEIN INTERFACES

CAO NGUYEN, KATHELEEN J. GARDINER, KRZYSZTOF J. CIOS
2007 Journal of Bioinformatics and Computational Biology  
Protein-protein interactions play a defining role in protein function. Identifying the sites of interaction in a protein is a critical problem for understanding its functional mechanisms, as well as for drug design. To predict sites within a protein chain that participate in protein complexes, we have developed a novel method based on the Hidden Markov Model, which combines several biological characteristics of the sequences neighboring a target residue: structural information, accessible
more » ... e area, and transition probability among amino acids. We have evaluated the method using 5-fold cross-validation on 139 unique proteins and demonstrated precision of 66% and recall of 61% in identifying interfaces. These results are better than those achieved by other methods used for identification of interfaces.
doi:10.1142/s0219720007002722 pmid:17688314 fatcat:km6s6t3ej5h2hhn6lp36ytzava