Identification of a Gene Signature That Predicts Dependence upon YAP/TAZ-TEAD
Author(s)
Kanai, Ryan; Norton, Emily; Stern, Patrick; Hynes, Richard O.; Lamar, John M.
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Targeted therapies are effective cancer treatments when accompanied by accurate diagnostic tests that can help identify patients that will respond to those therapies. The YAP/TAZ-TEAD axis is activated and plays a causal role in several cancer types, and TEAD inhibitors are currently in early-phase clinical trials in cancer patients. However, a lack of a reliable way to identify tumors with YAP/TAZ-TEAD activation for most cancer types makes it difficult to determine which tumors will be susceptible to TEAD inhibitors. Here, we used a combination of RNA-seq and bioinformatic analysis of metastatic melanoma cells to develop a YAP/TAZ gene signature. We found that the genes in this signature are TEAD-dependent in several melanoma cell lines, and that their expression strongly correlates with YAP/TAZ activation in human melanomas. Using DepMap dependency data, we found that this YAP/TAZ signature was predictive of melanoma cell dependence upon YAP/TAZ or TEADs. Importantly, this was not limited to melanoma because this signature was also predictive when tested on a panel of over 1000 cancer cell lines representing numerous distinct cancer types. Our results suggest that YAP/TAZ gene signatures like ours may be effective tools to predict tumor cell dependence upon YAP/TAZ-TEAD, and thus potentially provide a means to identify patients likely to benefit from TEAD inhibitors.
Date issued
2024-02-20Department
Koch Institute for Integrative Cancer Research at MIT; Massachusetts Institute of Technology. Department of Biology; Howard Hughes Medical InstitutePublisher
MDPI AG
Citation
Cancers 16 (5): 852 (2024)
Version: Final published version
ISSN
2072-6694
Keywords
Cancer Research, Oncology