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Cell Line-Specific Network Models of ER+ Breast Cancer Identify Potential PI3Kα Inhibitor Resistance Mechanisms and Drug Combinations.

Jorge Gomez Tejeda ZanudoPingping MaoClara AlconKailey KowalskiGabriela N JohnsonGuotai XuJose BaselgaMaurizio ScaltritiAnthony G LetaiJoan MonteroReka AlbertNikhil Wagle
Published in: Cancer research (2021)
Durable control of invasive solid tumors necessitates identifying therapeutic resistance mechanisms and effective drug combinations. In this work, we used a network-based mathematical model to identify sensitivity regulators and drug combinations for the PI3Kα inhibitor alpelisib in estrogen receptor positive (ER+) PIK3CA-mutant breast cancer. The model-predicted efficacious combination of alpelisib and BH3 mimetics, for example, MCL1 inhibitors, was experimentally validated in ER+ breast cancer cell lines. Consistent with the model, FOXO3 downregulation reduced sensitivity to alpelisib, revealing a novel potential resistance mechanism. Cell line-specific sensitivity to combinations of alpelisib and BH3 mimetics depended on which BCL2 family members were highly expressed. On the basis of these results, newly developed cell line-specific network models were able to recapitulate the observed differential response to alpelisib and BH3 mimetics. This approach illustrates how network-based mathematical models can contribute to overcoming the challenge of cancer drug resistance. SIGNIFICANCE: Network-based mathematical models of oncogenic signaling and experimental validation of its predictions can identify resistance mechanisms for targeted therapies, as this study demonstrates for PI3Kα-specific inhibitors in breast cancer.
Keyphrases
  • estrogen receptor
  • transcription factor
  • signaling pathway
  • squamous cell carcinoma
  • cell proliferation
  • childhood cancer
  • human health
  • breast cancer risk
  • squamous cell
  • pi k akt
  • young adults
  • protein kinase
  • wild type