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Mining mutation contexts across the cancer genome to map tumor site of origin

Saptarshi Chakraborty, Axel Martin, Zoe Guan, Colin B. Begg, Ronglai Shen

2021Nature Communications22 citationsDOIOpen Access PDF

Abstract

The vast preponderance of somatic mutations in a typical cancer are either extremely rare or have never been previously recorded in available databases that track somatic mutations. These constitute a hidden genome that contrasts the relatively small number of mutations that occur frequently, the properties of which have been studied in depth. Here we demonstrate that this hidden genome contains much more accurate information than common mutations for the purpose of identifying the site of origin of primary cancers in settings where this is unknown. We accomplish this using a projection-based statistical method that achieves a highly effective signal condensation, by leveraging DNA sequence and epigenetic contexts using a set of meta-features that embody the mutation contexts of rare variants throughout the genome.

Topics & Concepts

GenomeGeneticsComputational biologyBiologyMutationGermline mutationCancer genome sequencingWhole genome sequencingEvolutionary biologyGeneCancer Genomics and DiagnosticsGenomics and Phylogenetic StudiesGenomics and Chromatin Dynamics
Mining mutation contexts across the cancer genome to map tumor site of origin | Litcius