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Computational prediction of native protein ligand-binding and enzyme active site sequences

机译:天然蛋白质配体结合和酶活性位点序列的计算预测

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Recent studies reveal that the core sequences of many proteins were nearly optimized for stability by natural evolution. Surface residues, by contrast, are not so optimized, presumably because protein function is mediated through surface interactions with other molecules. Here, we sought to determine the extent to which the sequences of protein ligand-binding and enzyme active sites could be predicted by optimization of scoring functions based on protein ligand-binding affinity rather than structural stability. Optimization of binding affinity under constraints on the folding free energy correctly predicted 83% of amino acid residues (94% similar) in the binding sites of two model receptor-ligand complexes, streptavidin-biotin and glucose-binding protein. To explore the applicability of this methodology to enzymes, we applied an identical algorithm to the active sites of diverse enzymes from the peptidase, β-gal, and nucleotide synthase families. Although simple optimization of binding affinity reproduced the sequences of some enzyme active sites with high precision, imposition of additional, geometric constraints on side-chain conformations based on the catalytic mechanism was required in other cases. With these modifications, our sequence optimization algorithm correctly predicted 78% of residues from all of the enzymes, with 83% similar to native (90% correct, with 95% similar, excluding residues with high variability in multiple sequence alignments). Furthermore, the conformations of the selected side chains were often correctly predicted within crystallographic error. These findings suggest that simple selection pressures may have played a predominant role in determining the sequences of ligand-binding and active sites in proteins.
机译:最近的研究表明,许多蛋白质的核心序列几乎都可以通过自然进化来优化稳定性。相比之下,表面残基并未如此优化,大概是因为蛋白质功能是通过与其他分子的表面相互作用来介导的。在这里,我们试图确定基于蛋白质配体结合亲和力而非结构稳定性的评分功能的优化,可以预测蛋白质配体结合和酶活性位点序列的程度。在折叠自由能的约束条件下优化结合亲和力可以正确预测两个模型受体-配体复合物,链霉亲和素-生物素和葡萄糖结合蛋白的结合位点中83%的氨基酸残基(94%相似)。为了探索该方法对酶的适用性,我们对来自肽酶,β-gal和核苷酸合酶家族的多种酶的活性位点应用了相同的算法。尽管对结合亲和力的简单优化可以高精度再现某些酶活性位点的序列,但在其他情况下,还需要基于催化机理在侧链构象上施加其他几何约束。通过这些修改,我们的序列优化算法可以正确预测所有酶的78%残基,其中83%与天然相似(90%正确,95%类似,但不包括多个序列比对中的高变异性残基)。此外,所选侧链的构型通常在结晶学误差内可正确预测。这些发现表明,简单的选择压力可能在确定蛋白质中配体结合和活性位点的序列中起了主要作用。

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