Performance of multiple docking and refinement methods in the pose prediction D3R prospective Grand Challenge 2016

被引:5
|
作者
Fradera, Xavier [1 ]
Verras, Andreas [2 ]
Hu, Yuan [2 ]
Wang, Deping [3 ]
Wang, Hongwu [2 ]
Fells, James I. [2 ]
Armacost, Kira A. [3 ]
Crespo, Alejandro [2 ]
Sherborne, Brad [2 ]
Wang, Huijun [2 ]
Peng, Zhengwei [2 ]
Gao, Ying-Duo [2 ]
机构
[1] Merck & Co Inc, 33 Ave Louis Pasteur, Boston, MA 02215 USA
[2] Merck & Co Inc, 2000 Galloping Hill Rd, Kenilworth, NJ 07033 USA
[3] Merck & Co Inc, 770 Sumneytown Pike, West Point, PA 19486 USA
关键词
Pose prediction; D3R Grand Challenge 2016; Docking; Molecular dynamics; FXR; PROTEIN-LIGAND DOCKING; MOLECULAR-DYNAMICS; SCORING FUNCTIONS; BINDING ENTROPY; DATA-BANK; VALIDATION; IDENTIFICATION; GENERATION; ALGORITHM; ACCURACY;
D O I
10.1007/s10822-017-0053-2
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
We describe the performance of multiple pose prediction methods for the D3R 2016 Grand Challenge. The pose prediction challenge includes 36 ligands, which represent 4 chemotypes and some miscellaneous structures against the FXR ligand binding domain. In this study we use a mix of fully automated methods as well as human-guided methods with considerations of both the challenge data and publicly available data. The methods include ensemble docking, colony entropy pose prediction, target selection by molecular similarity, molecular dynamics guided pose refinement, and pose selection by visual inspection. We evaluated the success of our predictions by method, chemotype, and relevance of publicly available data. For the overall data set, ensemble docking, visual inspection, and molecular dynamics guided pose prediction performed the best with overall mean RMSDs of 2.4, 2.2, and 2.2 respectively. For several individual challenge molecules, the best performing method is evaluated in light of that particular ligand. We also describe the protein, ligand, and public information data preparations that are typical of our binding mode prediction workflow.
引用
收藏
页码:113 / 127
页数:15
相关论文
共 50 条
  • [31] Mathematical deep learning for pose and binding affinity prediction and ranking in D3R Grand Challenges
    Duc Duy Nguyen
    Cang, Zixuan
    Wu, Kedi
    Wang, Menglun
    Cao, Yin
    Wei, Guo-Wei
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2019, 33 (01) : 71 - 82
  • [32] Mathematical deep learning for pose and binding affinity prediction and ranking in D3R Grand Challenges
    Duc Duy Nguyen
    Zixuan Cang
    Kedi Wu
    Menglun Wang
    Yin Cao
    Guo-Wei Wei
    Journal of Computer-Aided Molecular Design, 2019, 33 : 71 - 82
  • [33] Combining self- and cross-docking as benchmark tools: the performance of DockBench in the D3R Grand Challenge 2
    Salmaso, Veronica
    Sturlese, Mattia
    Cuzzolin, Alberto
    Moro, Stefano
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2018, 32 (01) : 251 - 264
  • [34] Workflows and performances in the ranking prediction of 2016 D3R Grand Challenge 2: lessons learned from a collaborative effort
    Ying-Duo Gao
    Yuan Hu
    Alejandro Crespo
    Deping Wang
    Kira A. Armacost
    James I. Fells
    Xavier Fradera
    Hongwu Wang
    Huijun Wang
    Brad Sherborne
    Andreas Verras
    Zhengwei Peng
    Journal of Computer-Aided Molecular Design, 2018, 32 : 129 - 142
  • [35] Combining self- and cross-docking as benchmark tools: the performance of DockBench in the D3R Grand Challenge 2
    Veronica Salmaso
    Mattia Sturlese
    Alberto Cuzzolin
    Stefano Moro
    Journal of Computer-Aided Molecular Design, 2018, 32 : 251 - 264
  • [36] D3R Grand Challenge 3: blind prediction of protein–ligand poses and affinity rankings
    Zied Gaieb
    Conor D. Parks
    Michael Chiu
    Huanwang Yang
    Chenghua Shao
    W. Patrick Walters
    Millard H. Lambert
    Neysa Nevins
    Scott D. Bembenek
    Michael K. Ameriks
    Tara Mirzadegan
    Stephen K. Burley
    Rommie E. Amaro
    Michael K. Gilson
    Journal of Computer-Aided Molecular Design, 2019, 33 : 1 - 18
  • [37] Workflows and performances in the ranking prediction of 2016 D3R Grand Challenge 2: lessons learned from a collaborative effort
    Gao, Ying-Duo
    Hu, Yuan
    Crespo, Alejandro
    Wang, Deping
    Armacost, Kira A.
    Fells, James I.
    Fradera, Xavier
    Wang, Hongwu
    Wang, Huijun
    Sherborne, Brad
    Verras, Andreas
    Peng, Zhengwei
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2018, 32 (01) : 129 - 142
  • [38] Hybrid receptor structure/ligand-based docking and activity prediction in ICM: development and evaluation in D3R Grand Challenge 3
    Polo C.-H. Lam
    Ruben Abagyan
    Maxim Totrov
    Journal of Computer-Aided Molecular Design, 2019, 33 : 35 - 46
  • [39] Hybrid receptor structure/ligand-based docking and activity prediction in ICM: development and evaluation in D3R Grand Challenge 3
    Lam, Polo C. -H.
    Abagyan, Ruben
    Totrov, Maxim
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2019, 33 (01) : 35 - 46
  • [40] Coupling enhanced sampling of the apo-receptor with template-based ligand conformers selection: performance in pose prediction in the D3R Grand Challenge 4
    Basciu, Andrea
    Koukos, Panagiotis, I
    Malloci, Giuliano
    Bonvin, Alexandre M. J. J.
    Vargiu, Attilio V.
    JOURNAL OF COMPUTER-AIDED MOLECULAR DESIGN, 2020, 34 (02) : 149 - 162