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ABSTRACT: Background
Similarity search in protein databases is one of the most essential issues in computational proteomics. With the growing number of experimentally resolved protein structures, the focus shifted from sequences to structures. The area of structure similarity forms a big challenge since even no standard definition of optimal structure similarity exists in the field.Results
We propose a protein structure similarity measure called SProt. SProt concentrates on high-quality modeling of local similarity in the process of feature extraction. SProt's features are based on spherical spatial neighborhood of amino acids where similarity can be well-defined. On top of the partial local similarities, global measure assessing similarity to a pair of protein structures is built. Finally, indexing is applied making the search process by an order of magnitude faster.Conclusions
The proposed method outperforms other methods in classification accuracy on SCOP superfamily and fold level, while it is at least comparable to the best existing solutions in terms of precision-recall or quality of alignment.
SUBMITTER: Galgonek J
PROVIDER: S-EPMC3289081 | biostudies-literature | 2011 Oct
REPOSITORIES: biostudies-literature
Galgonek Jakub J Hoksza David D Skopal Tomáš T
Proteome science 20111014
<h4>Background</h4>Similarity search in protein databases is one of the most essential issues in computational proteomics. With the growing number of experimentally resolved protein structures, the focus shifted from sequences to structures. The area of structure similarity forms a big challenge since even no standard definition of optimal structure similarity exists in the field.<h4>Results</h4>We propose a protein structure similarity measure called SProt. SProt concentrates on high-quality mo ...[more]