Characterizing the landscape of gene process dependencies in cancer

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Abstract

Precision oncology aims to tailor cancer treatment to tumor genetics but it currently benefits only a small fraction of patients, in part because the primary focus is to match drug targets to single genes. The Cancer Dependency Map Project (DepMap) aimed to characterize the landscape of single-gene dependencies, which increased the universe of potential drug targets. However, the common challenges of drug off target effects and polypharmacology may limit effectiveness of single genes as drug targets. To address this limitation, we apply BioBombe, an AI/ML framework, to DepMap gene dependency data. This approach characterizes gene process dependencies, which are groups of genes within a biological process that cells rely on for survival. BioBombe fits many hundreds of dimensionality reduction models, across a range of latent dimensionalities. We find that this multiple-model approach discovers many more gene process dependencies than any single model alone. Using Reactome and CORUM-based gene set enrichment analyses, we characterize the landscape of the gene process dependencies, identifying, for example, mitotic regulation or the citric acid cycle as targets, as well as many cancer type–specific dependencies. In gliomas, TP53- and mitochondrial-related pathways emerged as key process vulnerabilities. Linking gene process dependencies with drug sensitivity scores on matched cell lines, we discovered both established and novel candidates. Taken together, BioBombe provides a scalable and interpretable framework for uncovering complex gene process dependencies, which guides drug repurposing, and introduces a novel targeting paradigm for precision oncology.

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