Poster: AI-driven identification and validation of novel synthetic lethal gene pairs through deep mining of cancer dependency data
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Conclusions
- Evariste have performed in silico modelling of cancer dependency data to identify the next generation of druggable synthetic lethal gene pairs
- We have prioritised gene pairs with a rational mechanism linking the target and biomarker, and with patient populations with high levels of unmet need
- These pairs reflect both pan-cancer and highly lineage specific relationships
- We have validated >10 of these relationships across multiple cell lines to give high confidence in the validity of the novel pairs
- For one gene pair with a kinase as the druggable node we have generated novel inhibitors with best-in-class selectivity over the SL partner and properties suitable for in vivo dosing and validated the specific targeting of biomarker low cell lines
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