Publication | Closed Access
<i>In silico</i> prediction of mitochondrial toxicity of chemicals using machine learning methods
32
Citations
29
References
2021
Year
Mitochondrial DysfunctionToxicological MechanismMedicinal ChemistryMitochondrial BiogenesisBioanalysisToxicologyBiostatisticsMitochondrial ToxicityMachine Learning MethodsBiochemistryMitochondrial DynamicPredictive ToxicologyImportant OrganellesMetabolomicsPharmacologyMitochondrial DamageMitochondrial FunctionNatural SciencesComputational BiologyForensic ToxicologySystems BiologyMedicineDrug DiscoveryToxicogenomics
Mitochondria are important organelles in human cells, providing more than 95% of the energy. However, some drugs and environmental chemicals could induce mitochondrial dysfunction, which might cause complex diseases and even worsen the condition of patients with mitochondrial damage. Some drugs have been withdrawn from the market due to their severe mitochondrial toxicity, such as troglitazone. Therefore, there is an urgent need to develop models that could accurately predict the mitochondrial toxicity of chemicals. In this paper, suitable data were obtained from literature and databases first. Then nine types of fingerprints were used to characterize these compounds. Finally, different algorithms were used to build models. Meanwhile, the applicability domain of the prediction models was defined. We have also explored the structural alerts of mitochondrial toxicity, which would be helpful for medicinal chemists to better predict mitochondrial toxicity and further optimize lead compounds.
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