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Genome-scale quantification and prediction of pathogenic stop codon readthrough by small molecules. | LitMetric

AI Article Synopsis

  • Premature termination codons (PTCs) are responsible for about 10-20% of inherited diseases and play a significant role in the inactivation of tumor suppressor genes in cancer.
  • Researchers aim to counteract PTC effects by promoting translational readthrough, but existing drug therapies face challenges with efficiency across various PTCs.
  • The study quantifies how eight different drugs affect readthrough of approximately 5,800 pathogenic stop codons, leading to predictive models that can help in designing personalized therapies and improving future clinical trials.

Article Abstract

Premature termination codons (PTCs) cause ~10-20% of inherited diseases and are a major mechanism of tumor suppressor gene inactivation in cancer. A general strategy to alleviate the effects of PTCs would be to promote translational readthrough. Nonsense suppression by small molecules has proven effective in diverse disease models, but translation into the clinic is hampered by ineffective readthrough of many PTCs. Here we directly tackle the challenge of defining drug efficacy by quantifying the readthrough of ~5,800 human pathogenic stop codons by eight drugs. We find that different drugs promote the readthrough of complementary subsets of PTCs defined by local sequence context. This allows us to build interpretable models that accurately predict drug-induced readthrough genome-wide, and we validate these models by quantifying endogenous stop codon readthrough. Accurate readthrough quantification and prediction will empower clinical trial design and the development of personalized nonsense suppression therapies.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11387191PMC
http://dx.doi.org/10.1038/s41588-024-01878-5DOI Listing

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