首页> 外文期刊>Perspectives in Drug Discovery and Design >Predicting binding modes, binding affinities and 'hot spots' for protein-ligand complexes using a knowledge-based scoring function
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Predicting binding modes, binding affinities and 'hot spots' for protein-ligand complexes using a knowledge-based scoring function

机译:使用基于知识的评分功能预测蛋白质-配体复合物的结合模式,结合亲和力和“热点”

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The development of a new knowledge-based scoring function (DrugScore) and its power to recognize binding modes close to experiment, to predict binding affinities, and to identify 'hot spots' in binding pockets is presented. Structural information is extracted form crystallographically determined protein-ligand complexes using ReLiBase and converted into distance-dependent pairpreferences and solvent-accessible surface (SAS) dependent singlet preferences of protein and ligand atoms. The sum of the pair preferences and the singlet pref-erences is calculated using the 3D structure of protein-ligand complexes either taken directly from the X-ray structure or generated by the docking tool FlexX. DrugScore discriminates efficiently between well-docked ligand binding modes (root-mean-square deviation < 2 A with respect to a crystallographically determined reference complex) and computer-generated ones largely deviating from the native structure. For two test sets (91 and 68 protein-ligand complexes, taken from the PDB) the calculated score recognizes poses deviating < 2 A from the crystal structure on rank 1 in three quarters of all possible cases. Compared to the scoring function in FlexX, this a substantial improvement. For five test sets of crystallographically determined protein-ligand complexes as well as for two sets of ligand geometries generated by FlexX, the calculated score is correlated with experimentally determined binding affinities. For a set of 16 crystllographically determined serine protease inhibitor complexes, a R~2 value of 0.86 and a standard deviation of 0.95 log units is achieved as best resu for a set of 64 thrombin and trypsin inhibitors docked into their target proteins, a R~2 value of 0.48 and a standard deviation of 0.7 log units is calculated. DrugScore performs better than other state-of-the-art scoring functions. To assess DrugScore's capability to reproduce the geometry of directional interactions correctly, 'hot spots' are identified and visualized in terms of isocon-tour surfaces inside the binding pocket. A data set of 159 X-ray protein-ligand complexes is used to reproduce and highlight the actually observed ligand atom positions. In 74% of all cases, the actually observed atom type corresponds to an atom type predicted by the most favorable score at the nearest grid point. The prediction rate increases to 85% if at least an atom type of the same class of interaction is suggested. DrugScore is fast to compute and includes implicitly solvation and entropy contributions. Small deviations in the 3D structure are tolerated and, since only contacts to non-hydrogen atoms are regarded, it does not require any assumptions on protonation states.
机译:介绍了新的基于知识的评分功能(DrugScore)的开发及其识别接近实验的结合模式,预测结合亲和力和识别结合口袋中“热点”的功能。使用ReLiBase从晶体学确定的蛋白质-配体复合物中提取结构信息,并将其转换为蛋白质和配体原子的距离相关对偏好和溶剂可及表面(SAS)依赖的单重态偏好。使用蛋白质-配体复合物的3D结构或直接从X射线结构获取或由对接工具FlexX生成的对首选项和单线态偏好的总和。 DrugScore可以有效地区分良好的配体结合模式(相对于晶体学确定的参考络合物,均方根偏差<2 A)与计算机生成的很大程度上偏离天然结构的结合模式。对于两个测试集(分别来自PDB的91和68个蛋白质-配体复合物),计算出的分数可识别出在所有可能情况的四分之三中,位阶1的晶体结构偏离<2 A的姿势。与FlexX中的评分功能相比,这是一个很大的改进。对于晶体学上确定的五个蛋白质-配体复合物测试集以及FlexX生成的两组配体几何形状,计算得分与实验确定的结合亲和力相关。对于一组由晶体学确定的16种丝氨酸蛋白酶抑制剂复合物,最佳结果为R〜2值为0.86,标准差为0.95 log个单位。对于一组停靠在其靶蛋白中的64种凝血酶和胰蛋白酶抑制剂,R〜2值为0.48,标准差为0.7 log个单位。 DrugScore的性能优于其他最新评分功能。为了评估DrugScore正确再现方向相互作用的几何形状的能力,根据结合袋内部的等值线表面识别并可视化了“热点”。 159个X射线蛋白质-配体复合物的数据集用于复制并突出显示实际观察到的配体原子位置。在所有案例的74%中,实际观察到的原子类型与最接近网格点的最有利分数预测的原子类型相对应。如果建议至少使用同一类型相互作用的原子类型,则预测率将提高到85%。 DrugScore的计算速度很快,并且包含隐含的溶剂化和熵贡献。可以容忍3D结构中的小偏差,并且由于仅考虑与非氢原子的接触,因此不需要对质子化态进行任何假设。

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