AbstractD3R 2016 Grand Challenge 2 focused on predictions of binding modes and affinities for 102 compounds agai'/> Lessons learned from participating in D3R 2016 Grand Challenge 2: compounds targeting the farnesoid X receptor
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Lessons learned from participating in D3R 2016 Grand Challenge 2: compounds targeting the farnesoid X receptor

机译:从参加D3R 2016 Grand Challenge 2的经验教训2:瞄准法内码X受体的化合物

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AbstractD3R 2016 Grand Challenge 2 focused on predictions of binding modes and affinities for 102 compounds against the farnesoid X receptor (FXR). In this challenge, two distinct methods, a docking-based method and a template-based method, were employed by our team for the binding mode prediction. For the new template-based method, 3D ligand similarities were calculated for each query compound against the ligands in the co-crystal structures of FXR available in Protein Data Bank. The binding mode was predicted based on the co-crystal protein structure containing the ligand with the best ligand similarity score against the query compound. For the FXR dataset, the template-based method achieved a better performance than the docking-based method on the binding mode prediction. For the binding affinity prediction, an in-house knowledge-based scoring function ITScore2 and MM/PBSA approach were employed. Good performance was achieved for MM/PBSA, whereas the performance of ITScore2 was sensitive to ligand composition, e.g. the percentage of carbon atoms in the compounds. The sensitivity to ligand composition could be a clue for the further improvement of our knowledge-based scoring function.]]>
机译:<![cdata [ <标题>抽象 ara> d3r 2016大挑战2专注于102种化合物的结合模式和亲和力的预测对法干扰机X受体(FXR)。在这一挑战中,我们的团队为绑定模式预测采用了两个不同的方法,基于对接的方法和基于模板的方法。对于新的基于模板的方法,针对蛋白质数据库中可用的FXR的共晶结构中的每个查询化合物计算3D配体相似性。基于含有配体的共晶蛋白质结构预测结合模式,该配体具有抵抗查询化合物的最佳配体相似分数。对于FXR数据集,基于模板的方法实现了比绑定模式预测上的基于对接的方法更好的性能。对于绑定亲和预测,采用内部知识的评分功能ITSCORE2和MM / PBSA方法。对于mm / pbsa来实现良好的性能,而Itscore2的性能对配体组合物敏感,例如,化合物中碳原子的百分比。对配体组合物的敏感性可以是进一步改善我们知识的评分功能的线索。 ]]>

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