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MotViz: a tool for sequence motif prediction in parallel to structural visualization and analyses. | LitMetric

MotViz: a tool for sequence motif prediction in parallel to structural visualization and analyses.

Genomics Proteomics Bioinformatics

National Center for Bioinformatics, Quaid-i-Azam University, Islamabad 44000, Pakistan.

Published: February 2012

AI Article Synopsis

  • Linking similar proteins is tough but crucial for discovering new protein family members, and identifying conserved sequences helps classify their roles.
  • The new desktop app, MotViz, allows users to explore conserved sequence segments in protein structures, providing a list of motifs, structural annotations, and physiochemical analysis.
  • MotViz outperformed other online tools in motif prediction for various protein families, features a user-friendly interface with optimized performance, and is available for download online.

Article Abstract

Linking similar proteins structurally is a challenging task that may help in finding the novel members of a protein family. In this respect, identification of conserved sequence can facilitate understanding and classifying the exact role of proteins. However, the exact role of these conserved elements cannot be elucidated without structural and physiochemical information. In this work, we present a novel desktop application MotViz designed for searching and analyzing the conserved sequence segments within protein structure. With MotViz, the user can extract a complete list of sequence motifs from loaded 3D structures, annotate the motifs structurally and analyze their physiochemical properties. The conservation value calculated for an individual motif can be visualized graphically. To check the efficiency, predicted motifs from the data sets of 9 protein families were analyzed and MotViz algorithm was more efficient in comparison to other online motif prediction tools. Furthermore, a database was also integrated for storing, retrieving and performing the detailed functional annotation studies. In summary, MotViz effectively predicts motifs with high sensitivity and simultaneously visualizes them into 3D strucures. Moreover, MotViz is user-friendly with optimized graphical parameters and better processing speed due to the inclusion of a database at the back end. MotViz is available at http://www.fi-pk.com/motviz.html.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5054496PMC
http://dx.doi.org/10.1016/S1672-0229(11)60031-4DOI Listing

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