Computational Prediction of Intrinsic Disorder in Proteins.

Q1 Biochemistry, Genetics and Molecular Biology
Fanchi Meng, Vladimir Uversky, Lukasz Kurgan
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引用次数: 53

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.

蛋白质内在紊乱的计算预测。
内在无序蛋白(IDPs)的计算预测是一个成熟的研究领域。这些方法预测输入蛋白链中的无序残基和区域。已经开发了60多种国内流离失所者预测指标。本单元定义了内在无序的计算预测,总结了无序预测的主要类型,并详细介绍了最近发布的三种准确的方法。我们演示了使用这些方法来预测几种说明性蛋白质的内在紊乱,提供了如何解释预测的见解,并量化和讨论预测性能。使用web服务器可以自由方便地获得预测结果。我们指出了数据库的可用性,这些数据库提供了通过结构研究确定的内在无序和通过计算方法预先计算的假定内在无序的注释。最后,我们还总结了可用于验证计算预测的实验方法。©2017 by John Wiley & Sons, Inc。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Protocols in Protein Science
Current Protocols in Protein Science Biochemistry, Genetics and Molecular Biology-Biochemistry
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期刊介绍: With the mapping of the human genome, more and more researchers are exploring protein structures and functions in living organisms. Current Protocols in Protein Science provides protein scientists, biochemists, molecular biologists, geneticists, and others with the first comprehensive suite of protocols for this growing field.
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