New tools for exploring rare cancer driver mutations.
Large-scale cancer sequencing studies of patient cohorts have statistically implicated many cancer driver genes, with a long-tail of infrequently mutated genes. Our group has developed CHASMplus, a computational method to predict driver missense mutations, which is uniquely powered to identify rare driver mutations within the long-tail. CHASMplus substantially outperforms comparable methods across a wide variety of benchmark sets.
We develop computational models to interpret and predict the impact of individual variation in the genome, transcriptome, and proteome. The models are being applied to cancer genomics, unclassified variants in Mendelian disease genes, and complex disease genetics. In collaboration with clinicians, pathologists, and experimental biologists, we aim to make significant improvements in individualized medicine within the next five years.
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Shao, XM et al. (2022) Ann Oncol. Jul;33(7):728-738 Article
Zheng, L et al. (2022) Bioinformatics Jun 1:btac367 Article
Pagel K et al. (2020) Journal of Clinical Oncology CCI. Mar;4:310-317 Article