Structure-based pharmacophore modeling 2. Developing a novel framework for structure-based pharmacophore model generation and selection

被引:2
|
作者
Szwabowski, Gregory L. [1 ]
Daigle, Bernie J. [2 ,3 ]
Baker, Daniel L. [1 ]
Parrill, Abby L. [1 ]
机构
[1] Univ Memphis, Dept Chem, Memphis, TN 38152 USA
[2] Univ Memphis, Dept Biol Sci, Memphis, TN 38152 USA
[3] Univ Memphis, Dept Comp Sci, Memphis, TN 38152 USA
关键词
Pharmacophore modeling; Ligand identification; Ligand discovery; Structure-based pharmacophore; GPCR; PROTEIN-COUPLED RECEPTORS; OPIOID RECEPTOR; CRYSTAL-STRUCTURE; DRUG DISCOVERY; ADENOSINE A(1); FINGERPRINTS; CHALLENGES; COMPLEX; TARGETS; LIGAND;
D O I
10.1016/j.jmgm.2023.108488
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Pharmacophore models are three-dimensional arrangements of molecular features required for biological activity that are used in ligand identification efforts for many biological targets, including G protein-coupled receptors (GPCR). Though GPCR are integral membrane proteins of considerable interest as targets for drug development, many of these receptors lack known ligands or experimentally determined structures necessary for ligand-or structure-based pharmacophore model generation, respectively. Thus, we here present a structure-based pharmacophore modeling approach that uses fragments placed with Multiple Copy Simultaneous Search (MCSS) to generate high-performing pharmacophore models in the context of experimentally determined, as well as modeled GPCR structures. Moreover, we have addressed the oft-neglected topic of pharmacophore model se-lection via development of a cluster-then-predict machine learning workflow. Herein score-based pharmaco-phore models were generated in experimentally determined and modeled structures of 13 class A GPCR and resulted in pharmacophore models exhibiting high enrichment factors when used to search a database containing 569 class A GPCR ligands. In addition, classification of pharmacophore models with the best performing cluster-then-predict logistic regression classifier resulted in positive predictive values (PPV) of 0.88 and 0.76 for selecting high enrichment pharmacophore models from among those generated in experimentally determined and modeled structures, respectively.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] Class A GPCRs: Structure, Function, Modeling and Structure-based Ligand Design
    Cong, Xiaojing
    Topin, Jeremie
    Golebiowski, Jerome
    CURRENT PHARMACEUTICAL DESIGN, 2017, 23 (29) : 4390 - 4409
  • [42] Computational investigation of potent inhibitors against YsxC: structure-based pharmacophore modeling, molecular docking, molecular dynamics, and binding free energy
    Kumari, Reena
    Rathi, Ravi
    Pathak, Seema R.
    Dalal, Vikram
    JOURNAL OF BIOMOLECULAR STRUCTURE & DYNAMICS, 2023, 41 (03) : 930 - 941
  • [43] Estrogen receptor potentially stable conformations from molecular dynamics as a structure-based pharmacophore model for mapping, screening, and identifying ligands-a new paradigm shift in pharmacophore screening
    Shanmugarajan, Dhivya
    David, Charles
    JOURNAL OF BIOMOLECULAR STRUCTURE & DYNAMICS, 2023, 41 (11) : 4939 - 4948
  • [44] Structure Based Pharmacophore Modeling and Virtual Screening for Identification of Novel Inhibitor for Cyclooxygenase-2
    Saranyah, K.
    Sukesh, K.
    Kumar, Dinesh K.
    Saleena, Lilly M.
    BIOSCIENCE, BIOCHEMISTRY AND BIOINFORMATICS, 2011, 5 : 373 - 377
  • [45] Structure-based pharmacophore modeling, virtual screening and simulation studies for the identification of potent anticancerous phytochemical lead targeting cyclin-dependent kinase 2
    Sharma, Mala
    Sharma, Neha
    Muddassir, Mohd
    Rahman, Qazi Inamur
    Dwivedi, U. N.
    Akhtar, Salman
    JOURNAL OF BIOMOLECULAR STRUCTURE & DYNAMICS, 2022, 40 (20) : 9815 - 9832
  • [46] A Structure-Based Model for Predicting Serum Albumin Binding
    Lexa, Katrina W.
    Dolghih, Elena
    Jacobson, Matthew P.
    PLOS ONE, 2014, 9 (04):
  • [47] Dynamic Structure-Based Pharmacophore Model Development: A New and Effective Addition in the Histone Deacetylase 8 (HDAC8) Inhibitor Discovery
    Thangapandian, Sundarapandian
    John, Shalini
    Lee, Yuno
    Kim, Songmi
    Lee, Keun Woo
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2011, 12 (12) : 9440 - 9462
  • [48] Applications of 3D-QSAR and structure-based pharmacophore modeling, virtual screening, ADMET, and molecular docking of putative MAPKAP-K2 (MK2) inhibitors
    Wang, Tai-Jin
    Zhou, Lu
    Fei, Jia
    Li, Zi-Cheng
    He, Lu-fen
    MEDICINAL CHEMISTRY RESEARCH, 2013, 22 (10) : 4818 - 4829
  • [49] Identification of Novel Liver X Receptor Activators by Structure-Based Modeling
    von Grafenstein, Susanne
    Mihaly-Bison, Judit
    Wolber, Gerhard
    Bochkov, Valery N.
    Liedl, Klaus R.
    Schuster, Daniela
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2012, 52 (05) : 1391 - 1400
  • [50] Muscarinic Receptors as Model Targets and Antitargets for Structure-Based Ligand Discovery
    Kruse, Andrew C.
    Weiss, Dahlia R.
    Rossi, Mario
    Hu, Jianxin
    Hu, Kelly
    Eitel, Katrin
    Gmeiner, Peter
    Wess, Juergen
    Kobilka, Brian K.
    Shoichet, Brian K.
    MOLECULAR PHARMACOLOGY, 2013, 84 (04) : 528 - 540