AI Article Synopsis

  • - Tumor mutational signatures are important in cancer research, but inconsistent methods make results unreliable; this study focused on colorectal cancer to assess how computational choices affect mutational analyses across various datasets.
  • - Analyzing 230 CRC cell lines and 152 patients, along with independent datasets from other cancer types, the researchers found that different algorithms and datasets led to significantly different mutational signature results.
  • - To help researchers standardize their analyses, the study introduced CoMSCER, a bioinformatics tool designed to streamline comparative mutational signature assessments in coding and non-coding regions of the genome.

Article Abstract

Tumor mutational signatures have gained prominence in cancer research, yet the lack of standardized methods hinders reproducibility and robustness. Leveraging colorectal cancer (CRC) as a model, we explored the influence of computational parameters on mutational signature analyses across 230 CRC cell lines and 152 CRC patients. Results were validated in three independent datasets: 483 endometrial cancer patients stratified by mismatch repair (MMR) status, 35 lung cancer patients by smoking status and 12 patient-derived organoids (PDOs) annotated for colibactin exposure. Assessing various bioinformatic tools, reference datasets and input data sizes including whole genome sequencing, whole exome sequencing and a pan-cancer gene panel, we demonstrated significant variability in the results. We report that the use of distinct algorithms and references led to statistically different results, highlighting how arbitrary choices may induce variability in the mutational signature contributions. Furthermore, we found a differential contribution of mutational signatures between coding and intergenic regions and defined the minimum number of somatic variants required for reliable mutational signature assignment. To facilitate the identification of the most suitable workflows, we developed Comparative Mutational Signature analysis on Coding and Extragenic Regions (CoMSCER), a bioinformatic tool which allows researchers to easily perform comparative mutational signature analysis by coupling the results from several tools and public reference datasets and to assess mutational signature contributions in coding and non-coding genomic regions. In conclusion, our study provides a comparative framework to elucidate the impact of distinct computational workflows on mutational signatures.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11116831PMC
http://dx.doi.org/10.1093/bib/bbae249DOI Listing

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