Development of quantitative structure-binding affinity relationship models based on novel geometrical chemical descriptors of the protein-ligand interfaces

被引:67
|
作者
Zhang, SX [1 ]
Golbraikh, A [1 ]
Tropsha, A [1 ]
机构
[1] Univ N Carolina, Sch Pharm, Div Med Chem & Nat Prod, Lab Mol Modeling, Chapel Hill, NC 27599 USA
关键词
D O I
10.1021/jm050260x
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Novel geometrical chemical descriptors have been derived on the basis of the computational geometry of protein-ligand interfaces and Pauling atomic electronegativities ( EN). Delaunay tessellation has been applied to a diverse set of 517 X-ray characterized protein-ligand complexes yielding a unique collection of interfacial nearest neighbor atomic quadruplets for each complex. Each quadruplet composition was characterized by a single descriptor calculated as the sum of the EN values for the four participating atom types. We termed these simple descriptors generated from atomic EN values and derived with the Delaunay Tessellation the ENTess descriptors and used them in the variable selection k-nearest neighbor quantitative structure-binding affinity relationship (QSBR) studies of 264 diverse protein-ligand complexes with known binding constants. Twenty-four complexes with chemically dissimilar ligands were set aside as an independent validation set, and the remaining dataset of 240 complexes was divided into multiple training and test sets. The best models were characterized by the leave-one-out cross-validated correlation coefficient q(2) as high as 0.66 for the training set and the correlation coefficient R-2 as high as 0.83 for the test set. The high predictive power of these models was confirmed independently by applying them to the validation set of 24 complexes yielding R-2 as high as 0.85. We conclude that QSBR models built with the ENTess descriptors can be instrumental for predicting the binding affinity of receptor-ligand complexes.
引用
收藏
页码:2713 / 2724
页数:12
相关论文
共 50 条
  • [41] Characterising protein-ligand binding in support of structure-based drug discovery
    Murray, James
    Hubbard, Roderick E.
    ACTA CRYSTALLOGRAPHICA A-FOUNDATION AND ADVANCES, 2008, 64 : C122 - C122
  • [42] Structure-based design of novel Chk1 inhibitors: Insights into hydrogen bonding and protein-ligand affinity
    Foloppe, N
    Fisher, LM
    Howes, R
    Kierstan, P
    Potter, A
    Robertson, AGS
    Surgenor, AE
    JOURNAL OF MEDICINAL CHEMISTRY, 2005, 48 (13) : 4332 - 4345
  • [43] Novel topological and knowledge-based descriptors in QSAR-based protein-ligand scoring functions.
    Deng, W
    Breneman, CM
    Embrechts, MJ
    Shen, M
    Tropsha, A
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2004, 227 : U1019 - U1019
  • [44] Does a More Precise Chemical Description of Protein-Ligand Complexes Lead to More Accurate Prediction of Binding Affinity?
    Ballester, Pedro J.
    Schreyer, Adrian
    Blundell, Tom L.
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2014, 54 (03) : 944 - 955
  • [45] Implicit solvent models for protein-ligand binding: Insights based on explicit solvent simulations
    Zhang, LY
    Gallicchio, E
    Levy, RM
    SIMULATION AND THEORY OF ELECTROSTATIC INTERACTIONS IN SOLUTION: COMPUTATIONAL CHEMISTRY, BIOPHYSICS, AND AQUEOUS SOLUTIONS, 1999, 492 : 451 - 472
  • [46] ChemBoost: A Chemical Language Based Approach for Protein - Ligand Binding Affinity Prediction
    Ozcelik, Riza
    Ozturk, Hakime
    Ozgur, Arzucan
    Ozkirimli, Elif
    MOLECULAR INFORMATICS, 2021, 40 (05)
  • [47] CurvAGN: Curvature-based Adaptive Graph Neural Networks for Predicting Protein-Ligand Binding Affinity
    Wu, Jianqiu
    Chen, Hongyang
    Cheng, Minhao
    Xiong, Haoyi
    BMC BIOINFORMATICS, 2023, 24 (01)
  • [48] Exploring protein-ligand binding affinity prediction with electron density-based geometric deep learning
    Isert, Clemens
    Atz, Kenneth
    Riniker, Sereina
    Schneider, Gisbert
    RSC ADVANCES, 2024, 14 (07) : 4492 - 4502
  • [49] Iterative Knowledge-Based Scoring Function for Protein-Ligand Interactions by Considering Binding Affinity Information
    Zhao, Xuejun
    Li, Hao
    Zhang, Keqiong
    Huang, Sheng-You
    JOURNAL OF PHYSICAL CHEMISTRY B, 2023, 127 (42): : 9021 - 9034
  • [50] Persistent spectral-based machine learning (PerSpect ML) for protein-ligand binding affinity prediction
    Meng, Zhenyu
    Xia, Kelin
    SCIENCE ADVANCES, 2021, 7 (19)