Virtual-screening workflow tutorials and prospective results from the Teach-Discover-Treat competition 2014 against malaria [version 1; peer review: 3 approved]

The first challenge in the 2014 competition launched by the Teach-Discover-Treat (TDT) initiative asked for the development of a tutorial for ligand-based virtual screening, based on data from a primary phenotypic high-throughput screen (HTS) against malaria. The resulting Workflows were applied to...

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Veröffentlicht in:F1000 research 2017, Vol.6, p.1136
Hauptverfasser: Riniker, Sereina, Landrum, Gregory A, Montanari, Floriane, Villalba, Santiago D, Maier, Julie, Jansen, Johanna M, Walters, W. Patrick, Shelat, Anang A
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Sprache:eng
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Zusammenfassung:The first challenge in the 2014 competition launched by the Teach-Discover-Treat (TDT) initiative asked for the development of a tutorial for ligand-based virtual screening, based on data from a primary phenotypic high-throughput screen (HTS) against malaria. The resulting Workflows were applied to select compounds from a commercial database, and a subset of those were purchased and tested experimentally for anti-malaria activity. Here, we present the two most successful Workflows, both using machine-learning approaches, and report the results for the 114 compounds tested in the follow-up screen. Excluding the two known anti-malarials quinidine and amodiaquine and 31 compounds already present in the primary HTS, a high hit rate of 57% was found.
ISSN:2046-1402
2046-1402
DOI:10.12688/f1000research.11905.1