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膜蛋白的计算建模

Computational modeling of membrane proteins.

作者信息

Koehler Leman Julia, Ulmschneider Martin B, Gray Jeffrey J

机构信息

Department of Chemical and Biomolecular Engineering, Johns Hopkins University, Baltimore, Maryland, 21218.

出版信息

Proteins. 2015 Jan;83(1):1-24. doi: 10.1002/prot.24703. Epub 2014 Nov 19.

Abstract

The determination of membrane protein (MP) structures has always trailed that of soluble proteins due to difficulties in their overexpression, reconstitution into membrane mimetics, and subsequent structure determination. The percentage of MP structures in the protein databank (PDB) has been at a constant 1-2% for the last decade. In contrast, over half of all drugs target MPs, only highlighting how little we understand about drug-specific effects in the human body. To reduce this gap, researchers have attempted to predict structural features of MPs even before the first structure was experimentally elucidated. In this review, we present current computational methods to predict MP structure, starting with secondary structure prediction, prediction of trans-membrane spans, and topology. Even though these methods generate reliable predictions, challenges such as predicting kinks or precise beginnings and ends of secondary structure elements are still waiting to be addressed. We describe recent developments in the prediction of 3D structures of both α-helical MPs as well as β-barrels using comparative modeling techniques, de novo methods, and molecular dynamics (MD) simulations. The increase of MP structures has (1) facilitated comparative modeling due to availability of more and better templates, and (2) improved the statistics for knowledge-based scoring functions. Moreover, de novo methods have benefited from the use of correlated mutations as restraints. Finally, we outline current advances that will likely shape the field in the forthcoming decade.

摘要

由于膜蛋白(MP)在过表达、重构到膜模拟物以及后续结构测定方面存在困难,其结构测定一直落后于可溶性蛋白。在过去十年中,蛋白质数据库(PDB)中MP结构的占比一直维持在1%-2%。相比之下,超过一半的药物以MP为靶点,这凸显了我们对药物在人体中的特异性作用了解甚少。为了缩小这一差距,研究人员甚至在首个MP结构通过实验阐明之前就尝试预测其结构特征。在本综述中,我们介绍了当前预测MP结构的计算方法,首先是二级结构预测、跨膜跨度预测和拓扑结构预测。尽管这些方法能产生可靠的预测结果,但诸如预测二级结构元件的扭结或精确起止点等挑战仍有待解决。我们描述了利用比较建模技术、从头预测方法和分子动力学(MD)模拟预测α-螺旋MP以及β-桶状结构三维结构的最新进展。MP结构数量的增加:(1)由于有更多更好的模板,促进了比较建模;(2)改进了基于知识的评分函数的统计数据。此外,从头预测方法受益于将相关突变用作约束条件。最后,我们概述了当前的进展,这些进展可能会在未来十年塑造该领域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9554/4270820/ab7d0405f3ac/nihms639477f1.jpg

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