Suppr超能文献

蛋白质结构离散状态模型的复杂性和准确性。

The complexity and accuracy of discrete state models of protein structure.

作者信息

Park B H, Levitt M

机构信息

Department of Structural Biology, Stanford University Medical School 94305, USA.

出版信息

J Mol Biol. 1995 Jun 2;249(2):493-507. doi: 10.1006/jmbi.1995.0311.

Abstract

The prediction of protein structure depends on the quality of the models used. In this paper, we examine the relationship between the complexity and accuracy of representation of various models of protein alpha-carbon backbone structure. First, we develop an efficient algorithm for the near optimal fitting of arbitrary lattice and off-lattice models of polypeptide chains to their true X-ray structures. Using this, we show that the relationship between the complexity of a model, taken as the number of possible conformational states per residue, and the simplest measure of accuracy, the root-mean-square deviation from the X-ray structure, is approximately (Accuracy) varies; is directly proportional to (Complexity)-1/2. This relationship is insensitive to the particularities of individual models, i.e. lattice and off-lattice models of the same complexity tend to have similar average root-mean-square deviations, and this also implies that improvements in model accuracy with increasing complexity are very small. However, other measures of model accuracy, such as the preservation of X-ray residue-residue contacts and the alpha-helix, do distinguish among models. In addition, we show that low complexity models, which take into account the uneven distribution of residue conformations in real proteins, can represent X-ray structures as accurately as more complex models, which do not: a selected 6-state model can represent protein structures almost as accurately (1.7 A root-mean-square) as a 17-state lattice model (1.6 A root-mean-square). Finally, we use a novel optimization procedure to generate eight 4-state models, which fit native proteins to an average of 2.4 A, and preserve 85% of native residue-residue contacts. We discuss the implications of these findings for protein folding and the prediction of protein conformation.

摘要

蛋白质结构的预测取决于所使用模型的质量。在本文中,我们研究了蛋白质α-碳主链结构各种模型的表示复杂性与准确性之间的关系。首先,我们开发了一种高效算法,用于将多肽链的任意晶格模型和非晶格模型近乎最优地拟合到其真实的X射线结构上。利用这一算法,我们表明,将模型复杂性视为每个残基可能构象状态的数量,与最简单的准确性度量(即与X射线结构的均方根偏差)之间的关系大致为(准确性)变化;与(复杂性)的-1/2次方成正比。这种关系对单个模型的特殊性不敏感,即相同复杂性的晶格模型和非晶格模型往往具有相似的平均均方根偏差,这也意味着随着复杂性增加,模型准确性的提高非常小。然而,模型准确性的其他度量,如X射线残基-残基接触和α-螺旋的保留情况,确实能区分不同模型。此外,我们表明,考虑到真实蛋白质中残基构象不均匀分布的低复杂性模型,能够与不考虑这一点的更复杂模型一样准确地表示X射线结构:一个选定的6状态模型能够几乎与17状态晶格模型(均方根偏差为1.6 Å)一样准确地表示蛋白质结构(均方根偏差为1.7 Å)。最后,我们使用一种新颖的优化程序生成了八个4状态模型,这些模型将天然蛋白质拟合到平均2.4 Å的精度,并保留了85%的天然残基-残基接触。我们讨论了这些发现对蛋白质折叠和蛋白质构象预测的意义。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验