Chelvanayagam G, Knecht L, Jenny T, Benner S A, Gonnet G H
Computational Chemistry Group, Universitätstrasse 16, ETH Zentrum, Zürich, CH 8092, Switzerland.
Fold Des. 1998;3(3):149-60. doi: 10.1016/S1359-0278(98)00023-6.
Distance geometry methods allow protein structures to be constructed using a large number of distance constraints, which can be elucidated by experimental techniques such as NMR. New methods for gleaning tertiary structural information from multiple sequence alignments make it possible for distance constraints to be predicted from sequence information alone. The basic distance geometry method can thus be applied using these empirically derived distance constraints. Such an approach, which incorporates a novel combinatoric procedure, is reported here.
Given the correct sheet topology and disulfide formations, the fully automated procedure is generally able to construct native-like Calpha models for eight small beta-protein structures. When the sheet topology was unknown but disulfide connectivities were included, all sheet topologies were explored by the combinatorial procedure. Using a simple geometric evaluation scheme, models with the correct sheet topology were ranked first in four of the eight example cases, second in three examples and third in one example. If neither the sheet topology nor the disulfide connectivities were given a priori, all combinations of sheet topologies and disulfides were explored by the combinatorial procedure. The evaluation scheme ranked the correct topology within the top five folds for half the example cases.
The combinatorial procedure is a useful technique for identifying a limited number of low-resolution candidate folds for small, disulfide-rich, beta-protein structures. Better results are obtained, however, if correct disulfide connectivities are known in advance. Combinatorial distance constraints can be applied whenever there are a sufficiently small number of finite connectivities.
距离几何方法允许利用大量距离约束构建蛋白质结构,这些约束可通过诸如核磁共振等实验技术得以阐明。从多序列比对中获取三级结构信息的新方法使得仅从序列信息预测距离约束成为可能。因此,基本的距离几何方法可使用这些凭经验得出的距离约束来应用。本文报道了一种包含新颖组合程序的方法。
在给定正确的β折叠拓扑结构和二硫键形成情况时,该全自动程序通常能够为八个小β蛋白结构构建类似天然构象的α碳原子模型。当β折叠拓扑结构未知但包含二硫键连接性时,组合程序会探索所有的β折叠拓扑结构。使用一种简单的几何评估方案,在八个示例中的四个案例里,具有正确β折叠拓扑结构的模型排名第一,三个案例中排名第二,一个案例中排名第三。如果既没有预先给定β折叠拓扑结构也没有给定二硫键连接性,组合程序会探索β折叠拓扑结构和二硫键的所有组合。该评估方案在一半的示例案例中,将正确的拓扑结构排在前五名之内。
组合程序是一种有用的技术,可用于识别少量低分辨率的富含二硫键的小β蛋白结构的候选折叠构象。然而,如果预先知道正确的二硫键连接性,则能获得更好的结果。只要有限连接性的数量足够少,组合距离约束就可以应用。