Solvent-Site Prediction for Fragment Docking and Its Implication on Fragment-Based Drug Discovery

溶剂位点预测在片段对接中的应用及其对基于片段的药物发现的意义

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Abstract

The accuracy in the posing and scoring of low-affinity fragments is still a main challenge in fragment-based virtual screenings. The positive impact of including structural or predicted water molecules during docking on the docking performance is discussed frequently and is not conclusive so far. We present a comprehensive statistical evaluation of the effect of including crystallographic or predicted water molecules on the docking performance of fragment redocking. Further, cross-docking fragments into binding sites occupied by larger ligands and vice versa were elucidated. These cross-dockings imitate realistic use cases of fragment hit identification and fragment growing or synthon-based virtual screenings, respectively. Therefore, a new benchmark data set, called Frag2Lead containing 103 fragment-protein and corresponding lead-protein complexes, was compiled. Inclusion of water molecules during docking had a general positive impact on docking performance, but the preferred combination of the docking tool and water model varied across the different targets. A consensus approach over multiple solvent models and docking tools turned out to be beneficial for both re- and cross-dockings. Implementing constraints by template docking or pharmacophore features is advantageous for pose prediction for fragment growing approaches.

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