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Oxford University Press, Bioinformatics, 11(34), p. 1850-1858, 2018

DOI: 10.1093/bioinformatics/bty032

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OPAL: prediction of MoRF regions in intrinsically disordered protein sequences

Journal article published in 2018 by Ronesh Sharma, Gaurav Raicar, Tatsuhiko Tsunoda, Ashwini Patil ORCID, Alok Sharma
This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Abstract Motivation Intrinsically disordered proteins lack stable 3-dimensional structure and play a crucial role in performing various biological functions. Key to their biological function are the molecular recognition features (MoRFs) located within long disordered regions. Computationally identifying these MoRFs from disordered protein sequences is a challenging task. In this study, we present a new MoRF predictor, OPAL, to identify MoRFs in disordered protein sequences. OPAL utilizes two independent sources of information computed using different component predictors. The scores are processed and combined using common averaging method. The first score is computed using a component MoRF predictor which utilizes composition and sequence similarity of MoRF and non-MoRF regions to detect MoRFs. The second score is calculated using half-sphere exposure (HSE), solvent accessible surface area (ASA) and backbone angle information of the disordered protein sequence, using information from the amino acid properties of flanks surrounding the MoRFs to distinguish MoRF and non-MoRF residues. Results OPAL is evaluated using test sets that were previously used to evaluate MoRF predictors, MoRFpred, MoRFchibi and MoRFchibi-web. The results demonstrate that OPAL outperforms all the available MoRF predictors and is the most accurate predictor available for MoRF prediction. It is available at http://www.alok-ai-lab.com/tools/opal/. Supplementary information Supplementary data are available at Bioinformatics online.