Huang E S, Koehl P, Levitt M, Pappu R V, Ponder J W
Department of Biochemistry and Molecular Biophysics, Washington University School of Medicine, St. Louis, Missouri 63110, USA.
Proteins. 1998 Nov 1;33(2):204-17. doi: 10.1002/(sici)1097-0134(19981101)33:2<204::aid-prot5>3.0.co;2-i.
The ab initio folding problem can be divided into two sequential tasks of approximately equal computational complexity: the generation of native-like backbone folds and the positioning of side chains upon these backbones. The prediction of side-chain conformation in this context is challenging, because at best only the near-native global fold of the protein is known. To test the effect of displacements in the protein backbones on side-chain prediction for folds generated ab initio, sets of near-native backbones (< or = 4 A C alpha RMS error) for four small proteins were generated by two methods. The steric environment surrounding each residue was probed by placing the side chains in the native conformation on each of these decoys, followed by torsion-space optimization to remove steric clashes on a rigid backbone. We observe that on average 40% of the chi1 angles were displaced by 40 degrees or more, effectively setting the limits in accuracy for side-chain modeling under these conditions. Three different algorithms were subsequently used for prediction of side-chain conformation. The average prediction accuracy for the three methods was remarkably similar: 49% to 51% of the chi1 angles were predicted correctly overall (33% to 36% of the chi1+2 angles). Interestingly, when the inter-side-chain interactions were disregarded, the mean accuracy increased. A consensus approach is described, in which side-chain conformations are defined based on the most frequently predicted chi angles for a given method upon each set of near-native backbones. We find that consensus modeling, which de facto includes backbone flexibility, improves side-chain prediction: chi1 accuracy improved to 51-54% (36-42% of chi1+2). Implications of a consensus method for ab initio protein structure prediction are discussed.
生成类似天然的主链折叠以及在这些主链上定位侧链。在此背景下预测侧链构象具有挑战性,因为充其量仅知道蛋白质近乎天然的全局折叠。为了测试蛋白质主链位移对从头生成折叠的侧链预测的影响,通过两种方法生成了四种小蛋白质的近乎天然主链集合(Cα均方根误差≤4 Å)。通过将侧链置于这些诱饵中每个的天然构象来探测每个残基周围的空间环境,随后进行扭转空间优化以消除刚性主链上的空间冲突。我们观察到,平均而言,40%的χ1角位移了40度或更多,有效地设定了这些条件下侧链建模准确性的极限。随后使用三种不同算法预测侧链构象。这三种方法的平均预测准确性非常相似:总体上49%至51%的χ1角预测正确(χ1 + 2角的33%至36%)。有趣的是,当忽略侧链间相互作用时,平均准确性提高。描述了一种共识方法,其中基于给定方法在每组近乎天然主链上最常预测的χ角来定义侧链构象。我们发现,事实上包括主链灵活性的共识建模提高了侧链预测:χ1准确性提高到51 - 54%(χ1 + 2的36 - 42%)。讨论了共识方法对从头蛋白质结构预测的影响。