2024
DOI: 10.1038/s43018-024-00789-y
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Building a translational cancer dependency map for The Cancer Genome Atlas

Xu Shi,
Christos Gekas,
Daniel Verduzco
et al.

Abstract: Cancer dependency maps have accelerated the discovery of tumor vulnerabilities that can be exploited as drug targets when translatable to patients. The Cancer Genome Atlas (TCGA) is a compendium of ‘maps’ detailing the genetic, epigenetic and molecular changes that occur during the pathogenesis of cancer, yet it lacks a dependency map to translate gene essentiality in patient tumors. Here, we used machine learning to build translational dependency maps for patient tumors, which identified tumor vulnerabilities… Show more

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