Automatic classification of enzyme family in protein annotation
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Data
2009-09-14
Orientador
Coorientador
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Resumo
Most of the tasks in genome annotation can be at least partially automated. Since this annotation is time-consuming, facilitating some parts of the process - thus freeing the specialist to carry out more valuable tasks - has been the motivation of many tools and annotation environments. In particular, annotation of protein function can benefit from knowledge about enzymatic processes. The use of sequence homology alone is not a good approach to derive this knowledge when there are only a few homologues of the sequence to be annotated. The alternative is to use motifs. This paper uses a symbolic machine learning approach to derive rules for the classification of enzymes according to the Enzyme Commission (EC). Our results show that, for the top class, the average global classification error is 3.13%. Our technique also produces a set of rules relating structural to functional information, which is important to understand the protein tridimensional structure and determine its biological function. © 2009 Springer Berlin Heidelberg.
Descrição
Palavras-chave
Automatic classification, Biological functions, Classification errors, Enzymatic process, Enzyme commissions, Functional information, Genome annotation, Protein annotation, Protein functions, Sequence homology, Set of rules, Symbolic machine learning, Tri-dimensional structure, Automatic indexing, Biology, Enzymes, Bioinformatics
Idioma
Inglês
Como citar
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), v. 5676 LNBI, p. 86-96.