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Predicting higher-order mutational effects in an RNA enzyme by machine learning of high-throughput experimental data

James D. Beck, View ORCID ProfileJessica M. Roberts, Joey Kitzhaber, Ashlyn Trapp, Edoardo Serra, Francesca Spezzano, View ORCID ProfileEric J. Hayden
doi: https://doi.org/10.1101/2022.05.31.494017
James D. Beck
1Computing PhD Program, Boise State University, Boise, ID, USA
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Jessica M. Roberts
2Biomolecular Sciences Graduate Programs, Boise State University, Boise, ID, USA
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Joey Kitzhaber
3Department of Computer Science, Boise State University, Boise, ID, USA
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Ashlyn Trapp
4Department of Biological Sciences, Boise State University, Boise, ID, USA
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Edoardo Serra
1Computing PhD Program, Boise State University, Boise, ID, USA
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Francesca Spezzano
1Computing PhD Program, Boise State University, Boise, ID, USA
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Eric J. Hayden
2Biomolecular Sciences Graduate Programs, Boise State University, Boise, ID, USA
3Department of Computer Science, Boise State University, Boise, ID, USA
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  • ORCID record for Eric J. Hayden
  • For correspondence: erichayden@boisestate.edu
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Abstract

Ribozymes are RNA molecules that catalyze biochemical reactions. Self-cleaving ribozymes are a common naturally occurring class of ribozymes that catalyze site-specific cleavage of their own phosphodiester backbone. In addition to their natural functions, self-cleaving ribozymes have been used to engineer control of gene expression because they can be designed to alter RNA processing and stability. However, the rational design of ribozyme activity remains challenging, and many ribozyme-based systems are engineered or improved by random mutagenesis and selection (in vitro evolution). Improving a ribozyme-based system often requires several mutations to achieve the desired function, but extensive pairwise and higher-order epistasis prevent a simple prediction of the effect of multiple mutations that is needed for rational design. Recently, high-throughput sequencing-based approaches have produced data sets on the effects of numerous mutations in different ribozymes (RNA fitness landscapes). Here we used such high-throughput experimental data from variants of the CPEB3 self-cleaving ribozyme to train a predictive model through machine learning approaches. We trained models using either a random forest or long short-term memory (LSTM) recurrent neural network approach. We found that models trained on a comprehensive set of pairwise mutant data could predict active sequences at higher mutational distances, but the correlation between predicted and experimentally observed self-cleavage activity decreased with increasing mutational distance. Adding sequences with increasingly higher numbers of mutations to the training data improved the correlation at increasing mutational distances. Systematically reducing the size of the training data set suggests that a wide distribution of ribozyme activity may be the key to accurate predictions. Because the model predictions are based only on sequence and activity data, the results demonstrate that this machine learning approach allows readily obtainable experimental data to be used for RNA design efforts even for RNA molecules with unknown structures. The accurate prediction of RNA functions will enable a more comprehensive understanding of RNA fitness landscapes for studying evolution and for guiding RNA-based engineering efforts.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://gitlab.com/bsu/biocompute-public/ml-19ribo-predict.git

  • https://www.ebi.ac.uk/ena/browser/view/PRJEB51631?show=reads

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC 4.0 International license.
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Posted May 31, 2022.
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Predicting higher-order mutational effects in an RNA enzyme by machine learning of high-throughput experimental data
James D. Beck, Jessica M. Roberts, Joey Kitzhaber, Ashlyn Trapp, Edoardo Serra, Francesca Spezzano, Eric J. Hayden
bioRxiv 2022.05.31.494017; doi: https://doi.org/10.1101/2022.05.31.494017
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Predicting higher-order mutational effects in an RNA enzyme by machine learning of high-throughput experimental data
James D. Beck, Jessica M. Roberts, Joey Kitzhaber, Ashlyn Trapp, Edoardo Serra, Francesca Spezzano, Eric J. Hayden
bioRxiv 2022.05.31.494017; doi: https://doi.org/10.1101/2022.05.31.494017

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