Title of article
Bayesian Models Leveraging Bioactivity and Cytotoxicity Information for Drug Discovery Original Research Article
Author/Authors
Sean Ekins، نويسنده , , Robert C. Reynolds، نويسنده , , Hiyun Kim، نويسنده , , Mi-Sun Koo، نويسنده , , Marilyn Ekonomidis، نويسنده , , Meliza Talaue، نويسنده , , Steve D. Paget، نويسنده , , Lisa K. Woolhiser، نويسنده , , Anne J. Lenaerts، نويسنده , , Barry A. Bunin، نويسنده , , Nancy Connell، نويسنده , , Joel S. Freundlich، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2013
Pages
9
From page
370
To page
378
Abstract
Identification of unique leads represents a significant challenge in drug discovery. This hurdle is magnified in neglected diseases such as tuberculosis. We have leveraged public high-throughput screening (HTS) data to experimentally validate a virtual screening approach employing Bayesian models built with bioactivity information (single-event model) as well as bioactivity and cytotoxicity information (dual-event model). We virtually screened a commercial library and experimentally confirmed actives with hit rates exceeding typical HTS results by one to two orders of magnitude. This initial dual-event Bayesian model identified compounds with antitubercular whole-cell activity and low mammalian cell cytotoxicity from a published set of antimalarials. The most potent hit exhibits the in vitro activity and in vitro/in vivo safety profile of a drug lead. These Bayesian models offer significant economies in time and cost to drug discovery.
Journal title
Chemistry and Biology
Serial Year
2013
Journal title
Chemistry and Biology
Record number
1160409
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