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Integrated computational and Drosophila cancer model platform captures previously unappreciated chemicals perturbing a kinase network.

Peter Man-Un UngMasahiro SonoshitaAlex P ScoptonArvin C DarRoss L CaganAvner Schlessinger
Published in: PLoS computational biology (2019)
Drosophila provides an inexpensive and quantitative platform for measuring whole animal drug response. A complementary approach is virtual screening, where chemical libraries can be efficiently screened against protein target(s). Here, we present a unique discovery platform integrating structure-based modeling with Drosophila biology and organic synthesis. We demonstrate this platform by developing chemicals targeting a Drosophila model of Medullary Thyroid Cancer (MTC) characterized by a transformation network activated by oncogenic dRetM955T. Structural models for kinases relevant to MTC were generated for virtual screening to identify unique preliminary hits that suppressed dRetM955T-induced transformation. We then combined features from our hits with those of known inhibitors to create a 'hybrid' molecule with improved suppression of dRetM955T transformation. Our platform provides a framework to efficiently explore novel kinase inhibitors outside of explored inhibitor chemical space that are effective in inhibiting cancer networks while minimizing whole body toxicity.
Keyphrases
  • high throughput
  • papillary thyroid
  • squamous cell
  • signaling pathway
  • oxidative stress
  • emergency department
  • high resolution
  • lymph node metastasis
  • cancer therapy
  • mass spectrometry
  • diabetic rats
  • childhood cancer