Paola Moyano-Gómez, Jukka V. Lehtonen, Olli T. Pentikäinen, Pekka A. Postila
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引用次数: 0
摘要
通过比较灵活采样姿势与目标蛋白质倒置结合腔的形状相似性,可以提高分子对接的性能。通过进行富集驱动优化,这些伪配体或基于负像的模型在对接重构中的有效性会进一步提高。在这里,我们介绍了一种新颖的以形状为重点的药理模型算法 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,从而生成一类新的空腔填充模型。灵活对接的活性配体的排名靠前的姿势被用作建模输入,并使用随机训练/测试分区对五个要求苛刻的药物靶点进行了全面的基准测试。在对接重构中,O-LAP 建模通常比默认对接富集模型有很大改进;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 在 GNU General Public License v3.0 下通过 GitHub ( https://github.com/jvlehtonen/overlap-toolkit ) 发布。本研究介绍了一种基于 C++/Qt5 的图聚类软件 O-LAP,用于生成新型的以形状为中心的药代动力学模型。在 O-LAP 建模中,目标蛋白质空腔被灵活对接的活性配体填充,重叠的配体原子被聚类,生成模型的形状/静电势与灵活采样的分子对接姿势进行比较。综合基准测试表明,O-LAP 建模确保了对接重构和刚性对接的高富集性。
Building shape-focused pharmacophore models for effective docking screening
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).
期刊介绍:
Journal of Cheminformatics is an open access journal publishing original peer-reviewed research in all aspects of cheminformatics and molecular modelling.
Coverage includes, but is not limited to:
chemical information systems, software and databases, and molecular modelling,
chemical structure representations and their use in structure, substructure, and similarity searching of chemical substance and chemical reaction databases,
computer and molecular graphics, computer-aided molecular design, expert systems, QSAR, and data mining techniques.