SigProfilerExtractor

SigProfilerExtractor

Highlights

  • Most advanced bioinformatics tool for de novo extraction of mutational signatures

  • Comprehensive benchmarking of 14 de novo extraction tools with and without noise

  • Analysis of 23,827 sequenced cancers revealing four novel mutational signatures

  • Novel signature attributed to direct tobacco smoking mutagenesis in bladder tissues

Mutational signature analysis is commonly performed in cancer genomic studies. Here, we present SigProfilerExtractor, an automated tool for de novo extraction of mutational signatures, and benchmark it against another 13 bioinformatics tools by using 34 scenarios encompassing 2,500 simulated signatures found in 60,000 synthetic genomes and 20,000 synthetic exomes. For simulations with 5% noise, reflecting high-quality datasets, SigProfilerExtractor outperforms other approaches by elucidating between 20% and 50% more true-positive signatures while yielding 5-fold less false-positive signatures. Applying SigProfilerExtractor to 4,643 whole-genome- and 19,184 whole-exome-sequenced cancers reveals four novel signatures. Two of the signatures are confirmed in independent cohorts, and one of these signatures is associated with tobacco smoking. In summary, this report provides a reference tool for analysis of mutational signatures, a comprehensive benchmarking of bioinformatics tools for extracting signatures, and several novel mutational signatures, including one putatively attributed to direct tobacco smoking mutagenesis in bladder tissues.

Raviteja Vangara
Raviteja Vangara
Postdoctoral Research Scientist

I am interested in developing state-of-the-art machine learning techniques for scientific applications.

Related