High-Throughput Phenotypic Screening and Machine Learning Methods Enabled the Selection of Broad-Spectrum Low-Toxicity Antitrypanosomatidic Agents
Academic Article
Publication Date:
2023
abstract:
Broad-spectrum anti-infective chemotherapy agents with activity against Trypanosomes, Leishmania, and Mycobacterium tuberculosis species were identified from a high-throughput phenotypic screening program of the 456 compounds belonging to the Ty-Box, an in-house industry database. Compound characterization using machine learning approaches enabled the identification and synthesis of 44 compounds with broad-spectrum antiparasitic activity and minimal toxicity against Trypanosoma brucei, Leishmania Infantum, and Trypanosoma cruzi. In vitro studies confirmed the predictive models identified in compound 40 which emerged as a new lead, featured by an innovative N-(5-pyrimidinyl)benzenesulfonamide scaffold and promising low micromolar activity against two parasites and low toxicity. Given the volume and complexity of data generated by the diverse high-throughput screening assays performed on the compounds of the Ty-Box library, the chemoinformatic and machine learning tools enabled the selection of compounds eligible for further evaluation of their biological and toxicological activities and aided in the decision-making process toward the design and optimization of the identified lead.
Iris type:
1.1 Articolo in rivista
List of contributors:
Linciano, Pasquale; Quotadamo, Antonio; Luciani, Rosaria; Santucci, Matteo; Zorn, Kimberley M.; Foil, Daniel H.; Lane, Thomas R.; Cordeiro da Silva, Anabela; Santarem, Nuno; B Moraes, Carolina; Freitas-Junior, Lucio; Wittig, Ulrike; Mueller, Wolfgang; Tonelli, Michele; Ferrari, Stefania; Venturelli, Alberto; Gul, Sheraz; Kuzikov, Maria; Ellinger, Bernhard; Reinshagen, Jeanette; Ekins, Sean; Costi, Maria Paola
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