Bate Paul, Warwicker Jim
Biomolecular Sciences Department, University of Manchester Institute of Science and Technology, Sackville Street, Manchester M60 1QD, UK.
J Mol Biol. 2004 Jul 2;340(2):263-76. doi: 10.1016/j.jmb.2004.04.070.
Calculations of charge interactions complement analysis of a characterised active site, rationalising pH-dependence of activity and transition state stabilisation. Prediction of active site location through large DeltapK(a)s or electrostatic strain is relevant for structural genomics. We report a study of ionisable groups in a set of 20 enzymes, finding that false positives obscure predictive potential. In a larger set of 156 enzymes, peaks in solvent-space electrostatic properties are calculated. Both electric field and potential match well to active site location. The best correlation is found with electrostatic potential calculated from uniform charge density over enzyme volume, rather than from assignment of a standard atom-specific charge set. Studying a shell around each molecule, for 77% of enzymes the potential peak is within that 5% of the shell closest to the active site centre, and 86% within 10%. Active site identification by largest cleft, also with projection onto a shell, gives 58% of enzymes for which the centre of the largest cleft lies within 5% of the active site, and 70% within 10%. Dielectric boundary conditions emphasise clefts in the uniform charge density method, which is suited to recognition of binding pockets embedded within larger clefts. The variation of peak potential with distance from active site, and comparison between enzyme and non-enzyme sets, gives an optimal threshold distinguishing enzyme from non-enzyme. We find that 87% of the enzyme set exceeds the threshold as compared to 29% of the non-enzyme set. Enzyme/non-enzyme homologues, "structural genomics" annotated proteins and catalytic/non-catalytic RNAs are studied in this context.
电荷相互作用的计算补充了对已表征活性位点的分析,解释了活性的pH依赖性和过渡态稳定性。通过大的ΔpK(a)值或静电应变预测活性位点位置与结构基因组学相关。我们报告了对一组20种酶中可电离基团的研究,发现假阳性结果掩盖了预测潜力。在一组更大的156种酶中,计算了溶剂空间静电性质的峰值。电场和电势都与活性位点位置匹配良好。与根据酶体积上的均匀电荷密度计算的静电势相关性最佳,而不是根据标准原子特异性电荷集的分配。研究每个分子周围的一层,对于77%的酶,电势峰值在最靠近活性位点中心的那5%的层内,86%在10%的层内。通过最大裂隙识别活性位点,同样投影到一层上,对于58%的酶,最大裂隙的中心位于活性位点的5%范围内,70%位于10%范围内。介电边界条件在均匀电荷密度方法中突出了裂隙,该方法适用于识别嵌入较大裂隙内的结合口袋。峰值电势随距活性位点距离的变化以及酶和非酶组之间的比较给出了区分酶和非酶组的最佳阈值。我们发现,与29%的非酶组相比,87%的酶组超过了该阈值。在这种背景下研究了酶/非酶同源物、“结构基因组学”注释的蛋白质和催化/非催化RNA。