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PROSHIFT:使用人工神经网络进行蛋白质化学位移预测

PROSHIFT: protein chemical shift prediction using artificial neural networks.

作者信息

Meiler Jens

机构信息

University of Washington, Department of Biochemistry, Box 357350, Seattle, Washington 98195-7350, USA.

出版信息

J Biomol NMR. 2003 May;26(1):25-37. doi: 10.1023/a:1023060720156.

DOI:10.1023/a:1023060720156
PMID:12766400
Abstract

The importance of protein chemical shift values for the determination of three-dimensional protein structure has increased in recent years because of the large databases of protein structures with assigned chemical shift data. These databases have allowed the investigation of the quantitative relationship between chemical shift values obtained by liquid state NMR spectroscopy and the three-dimensional structure of proteins. A neural network was trained to predict the (1)H, (13)C, and (15)N of proteins using their three-dimensional structure as well as experimental conditions as input parameters. It achieves root mean square deviations of 0.3 ppm for hydrogen, 1.3 ppm for carbon, and 2.6 ppm for nitrogen chemical shifts. The model reflects important influences of the covalent structure as well as of the conformation not only for backbone atoms (as, e.g., the chemical shift index) but also for side-chain nuclei. For protein models with a RMSD smaller than 5 A a correlation of the RMSD and the r.m.s. deviation between the predicted and the experimental chemical shift is obtained. Thus the method has the potential to not only support the assignment process of proteins but also help with the validation and the refinement of three-dimensional structural proposals. It is freely available for academic users at the PROSHIFT server: www.jens-meiler.de/proshift.html

摘要

近年来,由于存在大量带有已指定化学位移数据的蛋白质结构数据库,蛋白质化学位移值对于确定蛋白质三维结构的重要性日益增加。这些数据库使得人们能够研究通过液态核磁共振光谱法获得的化学位移值与蛋白质三维结构之间的定量关系。训练了一个神经网络,以蛋白质的三维结构以及实验条件作为输入参数来预测蛋白质的氢(¹H)、碳(¹³C)和氮(¹⁵N)化学位移。对于氢化学位移,其均方根偏差为0.3 ppm,碳化学位移为1.3 ppm,氮化学位移为2.6 ppm。该模型不仅反映了共价结构以及构象对主链原子(例如化学位移指数)的重要影响,还反映了对侧链原子核的影响。对于均方根偏差(RMSD)小于5 Å的蛋白质模型,可得到RMSD与预测化学位移和实验化学位移之间的均方根偏差的相关性。因此,该方法不仅有可能支持蛋白质的归属过程,还能帮助验证和完善三维结构提议。学术用户可在PROSHIFT服务器上免费使用该方法:www.jens-meiler.de/proshift.html

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