Moyano-Gómez Paola, Lehtonen Jukka V, Pentikäinen Olli T, Postila Pekka A
MedChem.fi, Institute of Biomedicine, Integrative Physiology and Pharmacology, University of Turku, 20014, Turku, Finland.
InFLAMES Research Flagship, University of Turku, 20014, Turku, Finland.
J Cheminform. 2024 Aug 9;16(1):97. doi: 10.1186/s13321-024-00857-6.
The performance of molecular docking can be improved by comparing the shape similarity of the flexibly sampled poses against the target proteins' inverted binding cavities. The effectiveness of these pseudo-ligands or negative image-based models in docking rescoring is boosted further by performing enrichment-driven optimization. Here, we introduce a novel shape-focused pharmacophore modeling algorithm O-LAP that generates a new class of cavity-filling models by clumping together overlapping atomic content via pairwise distance graph clustering. Top-ranked poses of flexibly docked active ligands were used as the modeling input and multiple alternative clustering settings were benchmark-tested thoroughly with five demanding drug targets using random training/test divisions. In docking rescoring, the O-LAP modeling typically improved massively on the default docking enrichment; furthermore, the results indicate that the clustered models work well in rigid docking. The C+ +/Qt5-based algorithm O-LAP is released under the GNU General Public License v3.0 via GitHub ( https://github.com/jvlehtonen/overlap-toolkit ). SCIENTIFIC CONTRIBUTION: This study introduces O-LAP, a C++/Qt5-based graph clustering software for generating new type of shape-focused pharmacophore models. In the O-LAP modeling, the target protein cavity is filled with flexibly docked active ligands, the overlapping ligand atoms are clustered, and the shape/electrostatic potential of the resulting model is compared against the flexibly sampled molecular docking poses. The O-LAP modeling is shown to ensure high enrichment in both docking rescoring and rigid docking based on comprehensive benchmark-testing.
通过比较灵活采样构象与目标蛋白反向结合腔的形状相似性,可以提高分子对接的性能。通过进行富集驱动的优化,这些伪配体或基于负像的模型在对接重评分中的有效性得到进一步提升。在此,我们引入一种新颖的聚焦形状的药效团建模算法O-LAP,该算法通过成对距离图聚类将重叠的原子内容聚集在一起,生成一类新的填充腔模型。灵活对接的活性配体的排名靠前的构象用作建模输入,并使用随机训练/测试划分对五个具有挑战性的药物靶点彻底进行了多种替代聚类设置的基准测试。在对接重评分中,O-LAP建模通常比默认对接富集有大幅改进;此外,结果表明聚类模型在刚性对接中效果良好。基于C++/Qt5的算法O-LAP通过GitHub(https://github.com/jvlehtonen/overlap-toolkit)在GNU通用公共许可证v3.0下发布。科学贡献:本研究介绍了O-LAP,一种基于C++/Qt5的图形聚类软件,用于生成新型的聚焦形状的药效团模型。在O-LAP建模中,目标蛋白腔用灵活对接的活性配体填充,对重叠的配体原子进行聚类,并将所得模型的形状/静电势与灵活采样的分子对接构象进行比较。基于全面的基准测试,O-LAP建模在对接重评分和刚性对接中均显示出高富集性。