Litcius/Paper detail

Cyto-Safe: A Machine Learning Tool for Early Identification of Cytotoxic Compounds in Drug Discovery

Francisco Lucas Feitosa, Victoria F. Cabral, Igor H. Sanches, Sabrina Silva Mendonça, Joyce Villa Verde Bastos Borba, Rodolpho C. Braga, Carolina Horta Andrade

2024Journal of Chemical Information and Modeling19 citationsDOIOpen Access PDF

Abstract

assays support high-throughput screening, allowing for efficient detection of toxic substances while considerably reducing the need for animal testing. Additionally, AI-based Quantitative Structure-Activity Relationship (AI-QSAR) models enhance early stage predictions by assessing the cytotoxic potential of molecular structures, which helps prioritize low-risk compounds for further validation. We present a freely accessible web application designed for identifying potential cytotoxic compounds utilizing QSAR models. This application utilizes machine learning techniques and is built on a data set of approximately 90,000 compounds, evaluated against two cell lines, 3T3 and HEK 293. Users can interact with the app by inputting a SMILES representation, uploading CSV or SDF files, or sketching molecules. The output includes a binary prediction for each cell line, a confidence percentage, and an explainable AI (XAI) analysis. Cyto-Safe web-app version 1.0 is available at http://insightai.labmol.com.br/.

Topics & Concepts

Drug discoveryIdentification (biology)DrugCytotoxic T cellComputational biologyComputer scienceMachine learningArtificial intelligencePharmacologyMedicineBioinformaticsBiologyBiochemistryBotanyIn vitroComputational Drug Discovery MethodsCell Image Analysis TechniquesBiosimilars and Bioanalytical Methods