Pharmacophore modeling and virtual screening to identify potential RET kinase inhibitors

Kuei Chung Shih, Chung Wai Shiau, Ting Shou Chen, Ching Huai Ko, Chih Lung Lin, Chun Yuan Lin, Chrong Shiong Hwang, Chuan Yi Tang, Wan Ru Chen, Jui Wen Huang*

*Corresponding author for this work

    Research output: Contribution to journalJournal Article peer-review

    16 Scopus citations

    Abstract

    Chemical features based 3D pharmacophore model for REarranged during Transfection (RET) tyrosine kinase were developed by using a training set of 26 structurally diverse known RET inhibitors. The best pharmacophore hypothesis, which identified inhibitors with an associated correlation coefficient of 0.90 between their experimental and estimated anti-RET values, contained one hydrogen-bond acceptor, one hydrogen-bond donor, one hydrophobic, and one ring aromatic features. The model was further validated by a testing set, Fischer's randomization test, and goodness of hit (GH) test. We applied this pharmacophore model to screen NCI database for potential RET inhibitors. The hits were docked to RET with GOLD and CDOCKER after filtering by Lipinski's rules. Ultimately, 24 molecules were selected as potential RET inhibitors for further investigation.

    Original languageEnglish
    Pages (from-to)4490-4497
    Number of pages8
    JournalBioorganic and Medicinal Chemistry Letters
    Volume21
    Issue number15
    DOIs
    StatePublished - 01 08 2011

    Keywords

    • CDOCKER
    • Discovery Studio
    • Docking
    • GOLD
    • Goodness of hit (GH) test
    • Molecular modeling
    • NCI database
    • Pharmacophore
    • RET kinase

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