PLX185878

GSE114647: Targeting FGFR overcomes EMT-mediated resistance in EGFR mutant non-small cell lung cancer

  • Organsim human
  • Type RNASEQ
  • Target gene
  • Project ARCHS4

Acquired drug resistance to tyrosine kinase inhibitor (TKI) targeted therapies remains a major clinical challenge. In EGFR mutant non-small cell lung cancer (NSCLC), therapeutic failure of EGFR TKIs can result from both genetic and epigenetic mechanisms of acquired drug resistance. Histologic and gene expression changes consistent with an epithelial-to-mesenchymal transition (EMT) have been associated with resistance to EGFR TKIs in both experimental models and in patients, and may coincide with genetic mechanisms of resistance such as the EGFRT790M gatekeeper mutation. While therapeutic approaches targeting EGFRT790M have been developed, a strategy for overcoming EMT-related resistance remains unclear. We performed whole-genome CRISPR screening on patient-derived, mesenchymal EGFRT790M-positive cell lines and identified FGFR1 as a critical gene promoting resistance to third generation EGFR TKIs. The FGFR1-3 inhibitor, BGJ398 (infigratinib), resensitized resistant mesenchymal-like cell lines to EGFR inhibition in a synergistic manner. Combining EGFR + FGFR inhibitors also inhibited the in vitro survival and expansion of EGFR mutant drug tolerant cells with mesenchymal-like features prior to the development of drug resistance, and delayed the development of in vivo resistance in EGFR mutant NSCLC xenograft tumors. These results suggest that dual EGFR + FGFR blockade may be a promising clinical strategy for preventing and overcoming EMT-associated acquired drug resistance in EGFR mutant NSCLC. SOURCE: Sana Raoof (sanaraoofmgh@gmail.com) - Massachusetts General Hospital

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