Molecular Therapy: Nucleic Acids (Dec 2024)

AptamerRunner: An accessible aptamer structure prediction and clustering algorithm for visualization of selected aptamers

  • Dario Ruiz-Ciancio,
  • Suresh Veeramani,
  • Rahul Singh,
  • Eric Embree,
  • Chris Ortman,
  • Kristina W. Thiel,
  • William H. Thiel

Journal volume & issue
Vol. 35, no. 4
p. 102358

Abstract

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Aptamers are short single-stranded DNA or RNA molecules with high affinity and specificity for targets and are generated using the iterative systematic evolution of ligands by exponential enrichment (SELEX) process. Next-generation sequencing (NGS) revolutionized aptamer selections by allowing a more comprehensive analysis of SELEX-enriched aptamers as compared to Sanger sequencing. The current challenge with aptamer NGS datasets is identifying a diverse cohort of candidate aptamers with the highest likelihood of successful experimental validation. Here we present AptamerRunner, an aptamer sequence and/or structure clustering algorithm that synergistically integrates computational analysis with visualization and expertise-directed decision making. The visual integration of networked aptamers with ranking data, such as fold enrichment or scoring algorithm results, represents a significant advancement over existing clustering tools by providing a natural context to depict groups of aptamers from which ranked or scored candidates can be chosen for experimental validation. The inherent flexibility, user-friendly design, and prospects for future enhancements with AptamerRunner have broad-reaching implications for aptamer researchers across a wide range of disciplines.

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