4.8 Article

A precision oncology approach to the pharmacological targeting of mechanistic dependencies in neuroendocrine tumors

Journal

NATURE GENETICS
Volume 50, Issue 7, Pages 979-+

Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/s41588-018-0138-4

Keywords

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Funding

  1. Falconwood Foundation
  2. National Cancer Institute (NCI) Cancer Target Discovery and Development Program [U01CA217858]
  3. NCI Outstanding Investigator Award [R35CA197745]
  4. NCI Research Centers for Cancer Systems Biology Consortium [1U54CA209997]
  5. NIH [S10OD012351, S10OD021764, G20 RR030860]
  6. Swedish Cancer Foundation
  7. NCI [3P50 CA095103]
  8. SPORE in GI cancer

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We introduce and validate a new precision oncology framework for the systematic prioritization of drugs targeting mechanistic tumor dependencies in individual patients. Compounds are prioritized on the basis of their ability to invert the concerted activity of master regulator proteins that mechanistically regulate tumor cell state, as assessed from systematic drug perturbation assays. We validated the approach on a cohort of 212 gastroenteropancreatic neuroendocrine tumors (GEP-NETs), a rare malignancy originating in the pancreas and gastrointestinal tract. The analysis identified several master regulator proteins, including key regulators of neuroendocrine lineage progenitor state and immunoevasion, whose role as critical tumor dependencies was experimentally confirmed. Transcriptome analysis of GEP-NET-derived cells, perturbed with a library of 107 compounds, identified the HDAC class I inhibitor entinostat as a potent inhibitor of master regulator activity for 42% of metastatic GEP-NET patients, abrogating tumor growth in vivo. This approach may thus complement current efforts in precision oncology.

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