Protein annotation as term categorization in the gene ontology using word proximity networks
Open Access
- 24 May 2005
- journal article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 6 (S1) , S20
- https://doi.org/10.1186/1471-2105-6-s1-s20
Abstract
Background: We participated in the BioCreAtIvE Task 2, which addressed the annotation of proteins into the Gene Ontology (GO) based on the text of a given document and the selection of evidence text from the document justifying that annotation. We approached the task utilizing several combinations of two distinct methods: an unsupervised algorithm for expanding words associated with GO nodes, and an annotation methodology which treats annotation as categorization of terms from a protein's document neighborhood into the GO. Results: The evaluation results indicate that the method for expanding words associated with GO nodes is quite powerful; we were able to successfully select appropriate evidence text for a given annotation in 38% of Task 2.1 queries by building on this method. The term categorization methodology achieved a precision of 16% for annotation within the correct extended family in Task 2.2, though we show through subsequent analysis that this can be improved with a different parameter setting. Our architecture proved not to be very successful on the evidence text component of the task, in the configuration used to generate the submitted results. Conclusion: The initial results show promise for both of the methods we explored, and we are planning to integrate the methods more closely to achieve better results overall.Keywords
This publication has 7 references indexed in Scilit:
- The Gene Ontology CategorizerBioinformatics, 2004
- Mapping gene ontology to proteins based on protein–protein interaction dataBioinformatics, 2004
- Poset Ontologies and Concept Lattices as Semantic HierarchiesPublished by Springer Nature ,2004
- Ordered SetsPublished by Springer Nature ,2003
- Gene Ontology: tool for the unification of biologyNature Genetics, 2000
- Genes, themes and microarrays: using information retrieval for large-scale gene analysis.2000
- Fuzzy Graphs and Fuzzy HypergraphsPublished by Springer Nature ,2000