1. Academic Validation
  2. Discovery of New Zika Protease and Polymerase Inhibitors through the Open Science Collaboration Project OpenZika

Discovery of New Zika Protease and Polymerase Inhibitors through the Open Science Collaboration Project OpenZika

  • J Chem Inf Model. 2022 Oct 14. doi: 10.1021/acs.jcim.2c00596.
Melina Mottin 1 2 Bruna Katiele de Paula Sousa 1 Nathalya Cristina de Moraes Roso Mesquita 3 Ketllyn Irene Zagato de Oliveira 3 Gabriela Dias Noske 3 Geraldo Rodrigues Sartori 4 Aline de Oliveira Albuquerque 4 Fabio Urbina 5 Ana C Puhl 5 José Teófilo Moreira-Filho 1 Guilherme E Souza 3 Rafael V C Guido 3 Eugene Muratov 6 7 Bruno Junior Neves 1 João Hermínio Martins da Silva 4 Alex E Clark 8 Jair L Siqueira-Neto 8 Alexander L Perryman 9 10 Glaucius Oliva 3 Sean Ekins 5 Carolina Horta Andrade 1
Affiliations

Affiliations

  • 1 Laboratory of Molecular Modeling and Drug Design (LabMol), Faculdade de Farmácia, Universidade Federal de Goiás, Goiânia, GO74605-170, Brazil.
  • 2 Pathogen-Host Interface Laboratory, Department of Cell Biology, University of Brasilia, Brasilia70910-900, Brazil.
  • 3 São Carlos Institute of Physics, University of São Paulo, Avenida João Dagnone, 1100, São Carlos, São Paulo13563-120, Brazil.
  • 4 Fundação Oswaldo Cruz, Ceará61773-270, Brazil.
  • 5 Collaborations Pharmaceuticals, Inc., Raleigh, North Carolina27606, United States.
  • 6 University of North Carolina at Chapel Hill, Chapel Hill, North Carolina27599, United States.
  • 7 Universidade Federal da Paraíba, Joao Pessoa, PB58051-900, Brazil.
  • 8 Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California San Diego, La Jolla, California92093, United States.
  • 9 Department of Pharmacology, Physiology and Neuroscience, Rutgers University-New Jersey Medical School, Newark, New Jersey07103, United States.
  • 10 Repare Therapeutics, 7210 Rue Frederick-Banting, Suite 100, Montreal, QCH4S 2A1, Canada.
Abstract

The Zika virus (ZIKV) is a neurotropic arbovirus considered a global threat to public health. Although there have been several efforts in drug discovery projects for ZIKV in recent years, there are still no Antiviral drugs approved to date. Here, we describe the results of a global collaborative crowdsourced open science project, the OpenZika project, from IBM's World Community Grid (WCG), which integrates different computational and experimental strategies for advancing a drug candidate for ZIKV. Initially, molecular docking protocols were developed to identify potential inhibitors of ZIKV NS5 RNA-dependent RNA polymerase (NS5 RdRp), NS3 protease (NS2B-NS3pro), and NS3 helicase (NS3hel). Then, a machine learning (ML) model was built to distinguish active vs inactive compounds for the cytoprotective effect against ZIKV Infection. We performed three independent target-based virtual screening campaigns (NS5 RdRp, NS2B-NS3pro, and NS3hel), followed by predictions by the ML model and other filters, and prioritized a total of 61 compounds for further testing in enzymatic and phenotypic assays. This yielded five non-nucleoside compounds which showed inhibitory activity against ZIKV NS5 RdRp in enzymatic assays (IC50 range from 0.61 to 17 μM). Two compounds thermally destabilized NS3hel and showed binding affinity in the micromolar range (Kd range from 9 to 35 μM). Moreover, the compounds LabMol-301 inhibited both NS5 RdRp and NS2B-NS3pro (IC50 of 0.8 and 7.4 μM, respectively) and LabMol-212 thermally destabilized the ZIKV NS3hel (Kd of 35 μM). Both also protected cells from death induced by ZIKV Infection in in vitro cell-based assays. However, while eight compounds (including LabMol-301 and LabMol-212) showed a cytoprotective effect and prevented ZIKV-induced cell death, agreeing with our ML model for prediction of this cytoprotective effect, no compound showed a direct Antiviral effect against ZIKV. Thus, the new scaffolds discovered here are promising hits for future structural optimization and for advancing the discovery of further drug candidates for ZIKV. Furthermore, this work has demonstrated the importance of the integration of computational and experimental approaches, as well as the potential of large-scale collaborative networks to advance drug discovery projects for neglected diseases and emerging viruses, despite the lack of available direct Antiviral activity and cytoprotective effect data, that reflects on the assertiveness of the computational predictions. The importance of these efforts rests with the need to be prepared for future viral epidemic and pandemic outbreaks.

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