Unit
UNIT 2.16 Computational Prediction of Intrinsic Disorder in Proteins
Published Online: 3 APR 2017
DOI: 10.1002/cpps.28
Copyright © 2013 John Wiley & Sons, Inc. All rights reserved.
Lab Protocol Title

Current Protocols in Protein Science
Additional Information
How to Cite
, , & (2017). Computational prediction of intrinsic disorder in proteins. Current Protocols in Protein Science, 88, 2.16.1–2.16.14. doi: 10.1002/cpps.28
Publication History
- Published Online: 3 APR 2017
- Abstract
- Article
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- References
Abstract
Computational prediction of intrinsically disordered proteins (IDPs) is a mature research field. These methods predict disordered residues and regions in an input protein chain. More than 60 predictors of IDPs have been developed. This unit defines computational prediction of intrinsic disorder, summarizes major types of predictors of disorder, and provides details about three accurate and recently released methods. We demonstrate the use of these methods to predict intrinsic disorder for several illustrative proteins, provide insights into how predictions should be interpreted, and quantify and discuss predictive performance. Predictions can be freely and conveniently obtained using webservers. We point to the availability of databases that provide access to annotations of intrinsic disorder determined by structural studies and putative intrinsic disorder pre-computed by computational methods. Lastly, we also summarize experimental methods that can be used to validate computational predictions. © 2017 by John Wiley & Sons, Inc.
Keywords:
- intrinsic disorder;
- intrinsically disordered protein;
- prediction
