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A deep learning approach to programmable RNA switches

Nicolaas M. Angenent-Mari, Alexander S. Garruss, Luis R. Soenksen, George M. Church, James J. Collins

2020Nature Communications148 citationsDOIOpen Access PDF

Abstract

Abstract Engineered RNA elements are programmable tools capable of detecting small molecules, proteins, and nucleic acids. Predicting the behavior of these synthetic biology components remains a challenge, a situation that could be addressed through enhanced pattern recognition from deep learning. Here, we investigate Deep Neural Networks (DNN) to predict toehold switch function as a canonical riboswitch model in synthetic biology. To facilitate DNN training, we synthesize and characterize in vivo a dataset of 91,534 toehold switches spanning 23 viral genomes and 906 human transcription factors. DNNs trained on nucleotide sequences outperform (R 2 = 0.43–0.70) previous state-of-the-art thermodynamic and kinetic models (R 2 = 0.04–0.15) and allow for human-understandable attention-visualizations (VIS4Map) to identify success and failure modes. This work shows that deep learning approaches can be used for functionality predictions and insight generation in RNA synthetic biology.

Topics & Concepts

Synthetic biologyRiboswitchDeep learningComputational biologyComputer scienceRNAArtificial intelligenceBiologyNon-coding RNAGeneticsGeneRNA and protein synthesis mechanismsRNA modifications and cancerBacterial Genetics and Biotechnology
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