| Literature DB >> 33888692 |
Ali Bashir1, Qin Yang2, Jinpeng Wang2, Stephan Hoyer1, Wenchuan Chou2, Cory McLean1, Geoff Davis1, Qiang Gong2, Zan Armstrong1, Junghoon Jang2, Hui Kang2, Annalisa Pawlosky1, Alexander Scott2, George E Dahl1, Marc Berndl1, Michelle Dimon3, B Scott Ferguson4.
Abstract
Aptamers are single-stranded nucleic acid ligands that bind to target molecules with high affinity and specificity. They are typically discovered by searching large libraries for sequences with desirable binding properties. These libraries, however, are practically constrained to a fraction of the theoretical sequence space. Machine learning provides an opportunity to intelligently navigate this space to identify high-performing aptamers. Here, we propose an approach that employs particle display (PD) to partition a library of aptamers by affinity, and uses such data to train machine learning models to predict affinity in silico. Our model predicted high-affinity DNA aptamers from experimental candidates at a rate 11-fold higher than random perturbation and generated novel, high-affinity aptamers at a greater rate than observed by PD alone. Our approach also facilitated the design of truncated aptamers 70% shorter and with higher binding affinity (1.5 nM) than the best experimental candidate. This work demonstrates how combining machine learning and physical approaches can be used to expedite the discovery of better diagnostic and therapeutic agents.Entities:
Year: 2021 PMID: 33888692 DOI: 10.1038/s41467-021-22555-9
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919