Understanding variants of unknown significance: the computational frontier.
Alex FuRaúl RabadánPublished in: The oncologist (2024)
The rapid advancement of sequencing technologies has led to the identification of numerous mutations in cancer genomes, many of which are variants of unknown significance (VUS). Computational models are increasingly being used to predict the functional impact of these mutations, in both coding and noncoding regions. Integration of these models with emerging genomic datasets will refine our understanding of mutation effects and guide clinical decision making. Future advancements in modeling protein interactions and transcriptional regulation will further enhance our ability to interpret VUS. Periodic incorporation of these developments into VUS reclassification practice has the potential to significantly improve personalized cancer care.
Keyphrases
- copy number
- decision making
- papillary thyroid
- primary care
- healthcare
- single cell
- squamous cell
- current status
- genome wide
- rna seq
- protein protein
- dna methylation
- quality improvement
- squamous cell carcinoma
- amino acid
- binding protein
- small molecule
- risk assessment
- loop mediated isothermal amplification
- bioinformatics analysis