Litcius/Paper detail

Using Machine Learning Methods and Structural Alerts for Prediction of Mitochondrial Toxicity

Jennifer Hemmerich, Florentina Troger, Barbara Füzi, Gerhard F. Ecker

2020Molecular Informatics61 citationsDOIOpen Access PDF

Abstract

Over the last few years more and more organ and idiosyncratic toxicities were linked to mitochondrial toxicity. Despite well-established assays, such as the seahorse and Glucose/Galactose assay, an in silico approach to mitochondrial toxicity is still feasible, particularly when it comes to the assessment of large compound libraries. Therefore, in silico approaches could be very beneficial to indicate hazards early in the drug development pipeline. By combining multiple endpoints, we derived the largest so far published dataset on mitochondrial toxicity. A thorough data analysis shows that molecules causing mitochondrial toxicity can be distinguished by physicochemical properties. Finally, the combination of machine learning and structural alerts highlights the suitability for in silico risk assessment of mitochondrial toxicity.

Topics & Concepts

Computer scienceMitochondrial toxicityMachine learningCheminformaticsChemical toxicityToxicityArtificial intelligenceComputational biologyData miningChemistryBioinformaticsBiologyOrganic chemistryComputational Drug Discovery MethodsMetabolomics and Mass Spectrometry StudiesCholinesterase and Neurodegenerative Diseases