Discovery of Novel Antimalarial Compounds Enabled by QSAR-Based Virtual Screening

作者:Zhang Liying; Fourches Denis; Sedykh Alexander; Zhu Hao; Golbraikh Alexander; Ekins Sean; Clark Julie; Connelly Michele C; Sigal Martina; Hodges Dena; Guiguemde Armand; Guy R Kiplin*; Tropsha Alexander
来源:Journal of Chemical Information and Modeling, 2013, 53(2): 475-492.
DOI:10.1021/ci300421n

摘要

Quantitative structure-activity relationship (QSAR) models have been developed for a data set of 3133 compounds defined as either active or inactive against P. falciparum. Because the data set was strongly biased toward inactive compounds, different sampling approaches were employed to balance the ratio of actives versus inactives, and models were rigorously validated using both internal and external validation approaches. The balanced accuracy for assessing the antimalarial activities of 70 external compounds was between 87% and 100% depending on the approach used to balance the data set. Virtual screening of the ChemBridge database using QSAR models identified 176 putative antimalarial compounds that were submitted for experimental validation, along with 42 putative inactives as negative controls. Twenty five (14.2%) computational hits were found to have antimalarial activities with minimal cytotoxicity to mammalian cells, while all 42 putative inactives were confirmed experimentally. Structural inspection of confirmed active hits revealed novel chemical scaffolds, which could be employed as starting points to discover novel antimalarial agents.

  • 出版日期2013-2
  • 单位rutgers