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DataSheet1_Garbage in, garbage out: how reliable training data improved a virtual screening approach against SARS-CoV-2 MPro.CSV (26.61 kB)

DataSheet1_Garbage in, garbage out: how reliable training data improved a virtual screening approach against SARS-CoV-2 MPro.CSV

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posted on 2023-06-22, 04:04 authored by Santiago M. Ruatta, Denis N. Prada Gori, Martín Fló Díaz, Franca Lorenzelli, Karen Perelmuter, Lucas N. Alberca, Carolina L. Bellera, Andrea Medeiros, Gloria V. López, Mariana Ingold, Williams Porcal, Estefanía Dibello, Irina Ihnatenko, Conrad Kunick, Marcelo Incerti, Martín Luzardo, Maximiliano Colobbio, Juan Carlos Ramos, Eduardo Manta, Lucía Minini, María Laura Lavaggi, Paola Hernández, Jonas Šarlauskas, César Sebastian Huerta García, Rafael Castillo, Alicia Hernández-Campos, Giovanni Ribaudo, Giuseppe Zagotto, Renzo Carlucci, Noelia S. Medrán, Guillermo R. Labadie, Maitena Martinez-Amezaga, Carina M. L. Delpiccolo, Ernesto G. Mata, Laura Scarone, Laura Posada, Gloria Serra, Theodora Calogeropoulou, Kyriakos Prousis, Anastasia Detsi, Mauricio Cabrera, Guzmán Alvarez, Adrián Aicardo, Verena Araújo, Cecilia Chavarría, Lucija Peterlin Mašič, Melisa E. Gantner, Manuel A. Llanos, Santiago Rodríguez, Luciana Gavernet, Soonju Park, Jinyeong Heo, Honggun Lee, Kyu-Ho Paul Park, Mariela Bollati-Fogolín, Otto Pritsch, David Shum, Alan Talevi, Marcelo A. Comini

Introduction: The identification of chemical compounds that interfere with SARS-CoV-2 replication continues to be a priority in several academic and pharmaceutical laboratories. Computational tools and approaches have the power to integrate, process and analyze multiple data in a short time. However, these initiatives may yield unrealistic results if the applied models are not inferred from reliable data and the resulting predictions are not confirmed by experimental evidence.

Methods: We undertook a drug discovery campaign against the essential major protease (MPro) from SARS-CoV-2, which relied on an in silico search strategy –performed in a large and diverse chemolibrary– complemented by experimental validation. The computational method comprises a recently reported ligand-based approach developed upon refinement/learning cycles, and structure-based approximations. Search models were applied to both retrospective (in silico) and prospective (experimentally confirmed) screening.

Results: The first generation of ligand-based models were fed by data, which to a great extent, had not been published in peer-reviewed articles. The first screening campaign performed with 188 compounds (46 in silico hits and 100 analogues, and 40 unrelated compounds: flavonols and pyrazoles) yielded three hits against MPro (IC50 ≤ 25 μM): two analogues of in silico hits (one glycoside and one benzo-thiazol) and one flavonol. A second generation of ligand-based models was developed based on this negative information and newly published peer-reviewed data for MPro inhibitors. This led to 43 new hit candidates belonging to different chemical families. From 45 compounds (28 in silico hits and 17 related analogues) tested in the second screening campaign, eight inhibited MPro with IC50 = 0.12–20 μM and five of them also impaired the proliferation of SARS-CoV-2 in Vero cells (EC50 7–45 μM).

Discussion: Our study provides an example of a virtuous loop between computational and experimental approaches applied to target-focused drug discovery against a major and global pathogen, reaffirming the well-known “garbage in, garbage out” machine learning principle.

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