Computational Models Using Multiple Machine Learning Algorithms for Predicting Drug Hepatotoxicity with the DILIrank Dataset

scientific article published on 19 March 2020

Computational Models Using Multiple Machine Learning Algorithms for Predicting Drug Hepatotoxicity with the DILIrank Dataset is …
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scholarly articleQ13442814

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P356DOI10.3390/IJMS21062114
P932PMC publication ID7139829
P698PubMed publication ID32204453

P50authorMonica NeaguQ37839701
P2093author name stringCarolina Constantin
Florentina Furtunescu
Mihaela Dinu
Robert Ancuceanu
Adriana Iuliana Anghel
Marilena Viorica Hovanet
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P275copyright licenseCreative Commons Attribution 4.0 InternationalQ20007257
P6216copyright statuscopyrightedQ50423863
P4510describes a project that usesBayes' theoremQ182505
P433issue6
P921main subjectmachine learningQ2539
P577publication date2020-03-19
P1433published inInternational Journal of Molecular SciencesQ3153277
P1476titleComputational Models Using Multiple Machine Learning Algorithms for Predicting Drug Hepatotoxicity with the DILIrank Dataset
P478volume21