Workflows and performances in the ranking prediction of 2016 D3R Grand Challenge 2: lessons learned from a collaborative effort

被引:5
|
作者
Gao, Ying-Duo [1 ]
Hu, Yuan [1 ]
Crespo, Alejandro [1 ]
Wang, Deping [2 ]
Armacost, Kira A. [2 ]
Fells, James I. [1 ]
Fradera, Xavier [3 ]
Wang, Hongwu [1 ]
Wang, Huijun [1 ]
Sherborne, Brad [1 ]
Verras, Andreas [1 ]
Peng, Zhengwei [1 ]
机构
[1] Merck & Co Inc, 2000 Galloping Hill Rd, Kenilworth, NJ 07033 USA
[2] Merck & Co Inc, 770 Sumneytown Pike, West Point, PA 19486 USA
[3] Merck & Co Inc, 33 Ave Louis Pasteur, Boston, MA 02215 USA
关键词
Affinity prediction; 2016 D3R Grand Challenge; QM/MM; MMGBSA; FXR; MacroModel interaction energy; Glide; X-score; BINDING-AFFINITY PREDICTION; CONTINUUM DIELECTRIC THEORY; LIGAND-BINDING; SCORING FUNCTIONS; DRUG DISCOVERY; FORCE-FIELD; FREE-ENERGY; EFFICIENT GENERATION; MOLECULAR-DYNAMICS; ACCURATE DOCKING;
D O I
10.1007/s10822-017-0072-z
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
The 2016 D3R Grand Challenge 2 includes both pose and affinity or ranking predictions. This article is focused exclusively on affinity predictions submitted to the D3R challenge from a collaborative effort of the modeling and informatics group. Our submissions include ranking of 102 ligands covering 4 different chemotypes against the FXR ligand binding domain structure, and the relative binding affinity predictions of the two designated free energy subsets of 15 and 18 compounds. Using all the complex structures prepared in the same way allowed us to cover many types of workflows and compare their performances effectively. We evaluated typical workflows used in our daily structure-based design modeling support, which include docking scores, force field-based scores, QM/MM, MMGBSA, MD-MMGBSA, and MacroModel interaction energy estimations. The best performing methods for the two free energy subsets are discussed. Our results suggest that affinity ranking still remains very challenging; that the knowledge of more structural information does not necessarily yield more accurate predictions; and that visual inspection and human intervention are considerably important for ranking. Knowledge of the mode of action and protein flexibility along with visualization tools that depict polar and hydrophobic maps are very useful for visual inspection. QM/MM-based workflows were found to be powerful in affinity ranking and are encouraged to be applied more often. The standardized input and output enable systematic analysis and support methodology development and improvement for high level blinded predictions.
引用
收藏
页码:129 / 142
页数:14
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