Identification of similar regions of protein structures using integrated sequence and structure analysis tools |
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Authors: | Brandon Peters Charles Moad Eunseog Youn Kris Buffington Randy Heiland Sean Mooney |
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Affiliation: | (1) Center for Computational Biology and Bioinformatics, Indiana University School of Medicine, Indianapolis, IN 46202, USA;(2) Scientific Data Analysis Lab, Pervasive Technology Labs, Indiana University, Indianapolis, IN 46202, USA |
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Abstract: | Background Understanding protein function from its structure is a challenging problem. Sequence based approaches for finding homology have broad use for annotation of both structure and function. 3D structural information of protein domains and their interactions provide a complementary view to structure function relationships to sequence information. We have developed a web site and an API of web services that enables users to submit protein structures and identify statistically significant neighbors and the underlying structural environments that make that match using a suite of sequence and structure analysis tools. To do this, we have integrated S-BLEST, PSI-BLAST and HMMer based superfamily predictions to give a unique integrated view to prediction of SCOP superfamilies, EC number, and GO term, as well as identification of the protein structural environments that are associated with that prediction. Additionally, we have extended UCSF Chimera and PyMOL to support our web services, so that users can characterize their own proteins of interest. |
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