A discriminative method for family-based protein remote homology detection that combines inductive logic programming and propositional models |
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Authors: | Juliana S Bernardes Alessandra Carbone Gerson Zaverucha |
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Affiliation: | 1.COPPE, Programa de Engenharia de Sistemas e Computa??o,Universidade Federal do Rio de Janeiro,Rio de Janeiro,Brazil;2.Université Pierre et Marie Curie,UMR7238,Paris,France;3.CNRS, UMR7238,Laboratoire de Génomique des Microorganismes,Paris,France |
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Abstract: | ![]()
Background Remote homology detection is a hard computational problem. Most approaches have trained computational models by using either full protein sequences or multiple sequence alignments (MSA), including all positions. However, when we deal with proteins in the "twilight zone" we can observe that only some segments of sequences (motifs) are conserved. We introduce a novel logical representation that allows us to represent physico-chemical properties of sequences, conserved amino acid positions and conserved physico-chemical positions in the MSA. From this, Inductive Logic Programming (ILP) finds the most frequent patterns (motifs) and uses them to train propositional models, such as decision trees and support vector machines (SVM). |
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