蛋白质环(LIP)-一个用于同源建模的综合环数据库。

E Michalsky, A Goede, R Preissner
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引用次数: 111

摘要

蛋白质建模中最重要和最具挑战性的任务之一是环路的预测,这可以从各种现有方法中看出。蛋白质环(LIP)是一个包含蛋白质数据库(PDB)中长度不超过15个残基的所有蛋白质片段的数据库。在本研究中,探讨了LIP在同源建模框架下环路预测的适用性。在桌面PC上搜索数据库中的候选循环只需要不到15秒,而对候选循环进行排序则需要几分钟。这比大多数现有的程序快了一个数量级。准确度的量度是目标环与预测环局部叠加后主链原子的均方根偏差(RMSD)。最多9个残基长度的环用局部RMSD建模
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Loops In Proteins (LIP)--a comprehensive loop database for homology modelling.

One of the most important and challenging tasks in protein modelling is the prediction of loops, as can be seen in the large variety of existing approaches. Loops In Proteins (LIP) is a database that includes all protein segments of a length up to 15 residues contained in the Protein Data Bank (PDB). In this study, the applicability of LIP to loop prediction in the framework of homology modelling is investigated. Searching the database for loop candidates takes less than 1 s on a desktop PC, and ranking them takes a few minutes. This is an order of magnitude faster than most existing procedures. The measure of accuracy is the root mean square deviation (RMSD) with respect to the main-chain atoms after local superposition of target loop and predicted loop. Loops of up to nine residues length were modelled with a local RMSD <1 A and those of length up to 14 residues with an accuracy better than 2 A. The results were compared in detail with a thoroughly evaluated and tested ab initio method published recently and additionally with two further methods for a small loop test set. The LIP method produced very good predictions. In particular for longer loops it outperformed other methods.

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