Deep generative design of RNA aptamers using structural predictions


연구 분야: Databases



학회: Nature Computational Science


초록

RNAs represent a class of programmable biomolecules capable of performing diverse biological functions. Recent studies have developed accurate RNA three-dimensional structure prediction methods, which may enable new RNAs to be designed in a structure-guided manner. Here, we develop a structure-to-sequence deep learning platform for the de novo generative design of RNA aptamers. We show that our approach can design RNA aptamers that are predicted to be structurally similar, yet sequence dissimilar, to known light-up aptamers that fluoresce in the presence of small molecules. We experimentally validate several generated RNA aptamers to have fluorescent activity, show that these aptamers can be optimized for activity in silico, and find that they exhibit a mechanism of fluorescence similar to that of known light-up aptamers. Our results demonstrate how structural predictions can guide the targeted and resource-efficient design of new RNA sequences.


Author Profile
Felix Wong

Infectious Disease and Microbiome Program Broad Institute of MIT and Harvard Cambridge MA USA

Andorra
Author Profile
Dongchen He

Institute for Medical Engineering & Science and Department of Biological Engineering Massachusetts Institute of Technology Cambridge MA USA

Andorra
Author Profile
Aarti Krishnan

Integrated Biosciences Redwood City CA USA

Canada

📄 논문 정보

발행 연도 2024년
인용수 29
출판 국가 Morocco, Andorra, China, Canada
사이트 Springer
좋아요 수 0

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