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Deep learning models for predicting RNA degradation via dual crowdsourcing

Messenger RNA-based medicines hold immense potential, as evidenced by their rapid deployment as COVID-19 vaccines. However, worldwide distribution of mRNA molecules has been limited by their thermostability, which is fundamentally limited by the intrinsic instability of RNA molecules to a chemical d...

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Autores principales: Wayment-Steele, Hannah K., Kladwang, Wipapat, Watkins, Andrew M., Kim, Do Soon, Tunguz, Bojan, Reade, Walter, Demkin, Maggie, Romano, Jonathan, Wellington-Oguri, Roger, Nicol, John J., Gao, Jiayang, Onodera, Kazuki, Fujikawa, Kazuki, Mao, Hanfei, Vandewiele, Gilles, Tinti, Michele, Steenwinckel, Bram, Ito, Takuya, Noumi, Taiga, He, Shujun, Ishi, Keiichiro, Lee, Youhan, Öztürk, Fatih, Chiu, Anthony, Öztürk, Emin, Amer, Karim, Fares, Mohamed, Participants, Eterna, Das, Rhiju
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8528079/
https://www.ncbi.nlm.nih.gov/pubmed/34671698
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author Wayment-Steele, Hannah K.
Kladwang, Wipapat
Watkins, Andrew M.
Kim, Do Soon
Tunguz, Bojan
Reade, Walter
Demkin, Maggie
Romano, Jonathan
Wellington-Oguri, Roger
Nicol, John J.
Gao, Jiayang
Onodera, Kazuki
Fujikawa, Kazuki
Mao, Hanfei
Vandewiele, Gilles
Tinti, Michele
Steenwinckel, Bram
Ito, Takuya
Noumi, Taiga
He, Shujun
Ishi, Keiichiro
Lee, Youhan
Öztürk, Fatih
Chiu, Anthony
Öztürk, Emin
Amer, Karim
Fares, Mohamed
Participants, Eterna
Das, Rhiju
author_facet Wayment-Steele, Hannah K.
Kladwang, Wipapat
Watkins, Andrew M.
Kim, Do Soon
Tunguz, Bojan
Reade, Walter
Demkin, Maggie
Romano, Jonathan
Wellington-Oguri, Roger
Nicol, John J.
Gao, Jiayang
Onodera, Kazuki
Fujikawa, Kazuki
Mao, Hanfei
Vandewiele, Gilles
Tinti, Michele
Steenwinckel, Bram
Ito, Takuya
Noumi, Taiga
He, Shujun
Ishi, Keiichiro
Lee, Youhan
Öztürk, Fatih
Chiu, Anthony
Öztürk, Emin
Amer, Karim
Fares, Mohamed
Participants, Eterna
Das, Rhiju
author_sort Wayment-Steele, Hannah K.
collection PubMed
description Messenger RNA-based medicines hold immense potential, as evidenced by their rapid deployment as COVID-19 vaccines. However, worldwide distribution of mRNA molecules has been limited by their thermostability, which is fundamentally limited by the intrinsic instability of RNA molecules to a chemical degradation reaction called in-line hydrolysis. Predicting the degradation of an RNA molecule is a key task in designing more stable RNA-based therapeutics. Here, we describe a crowdsourced machine learning competition (“Stanford OpenVaccine”) on Kaggle, involving single-nucleotide resolution measurements on 6043 102–130-nucleotide diverse RNA constructs that were themselves solicited through crowdsourcing on the RNA design platform Eterna. The entire experiment was completed in less than 6 months, and 41% of nucleotide-level predictions from the winning model were within experimental error of the ground truth measurement. Furthermore, these models generalized to blindly predicting orthogonal degradation data on much longer mRNA molecules (504–1588 nucleotides) with improved accuracy compared to previously published models. Top teams integrated natural language processing architectures and data augmentation techniques with predictions from previous dynamic programming models for RNA secondary structure. These results indicate that such models are capable of representing in-line hydrolysis with excellent accuracy, supporting their use for designing stabilized messenger RNAs. The integration of two crowdsourcing platforms, one for data set creation and another for machine learning, may be fruitful for other urgent problems that demand scientific discovery on rapid timescales.
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spelling pubmed-85280792021-10-21 Deep learning models for predicting RNA degradation via dual crowdsourcing Wayment-Steele, Hannah K. Kladwang, Wipapat Watkins, Andrew M. Kim, Do Soon Tunguz, Bojan Reade, Walter Demkin, Maggie Romano, Jonathan Wellington-Oguri, Roger Nicol, John J. Gao, Jiayang Onodera, Kazuki Fujikawa, Kazuki Mao, Hanfei Vandewiele, Gilles Tinti, Michele Steenwinckel, Bram Ito, Takuya Noumi, Taiga He, Shujun Ishi, Keiichiro Lee, Youhan Öztürk, Fatih Chiu, Anthony Öztürk, Emin Amer, Karim Fares, Mohamed Participants, Eterna Das, Rhiju ArXiv Article Messenger RNA-based medicines hold immense potential, as evidenced by their rapid deployment as COVID-19 vaccines. However, worldwide distribution of mRNA molecules has been limited by their thermostability, which is fundamentally limited by the intrinsic instability of RNA molecules to a chemical degradation reaction called in-line hydrolysis. Predicting the degradation of an RNA molecule is a key task in designing more stable RNA-based therapeutics. Here, we describe a crowdsourced machine learning competition (“Stanford OpenVaccine”) on Kaggle, involving single-nucleotide resolution measurements on 6043 102–130-nucleotide diverse RNA constructs that were themselves solicited through crowdsourcing on the RNA design platform Eterna. The entire experiment was completed in less than 6 months, and 41% of nucleotide-level predictions from the winning model were within experimental error of the ground truth measurement. Furthermore, these models generalized to blindly predicting orthogonal degradation data on much longer mRNA molecules (504–1588 nucleotides) with improved accuracy compared to previously published models. Top teams integrated natural language processing architectures and data augmentation techniques with predictions from previous dynamic programming models for RNA secondary structure. These results indicate that such models are capable of representing in-line hydrolysis with excellent accuracy, supporting their use for designing stabilized messenger RNAs. The integration of two crowdsourcing platforms, one for data set creation and another for machine learning, may be fruitful for other urgent problems that demand scientific discovery on rapid timescales. Cornell University 2021-10-14 /pmc/articles/PMC8528079/ /pubmed/34671698 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Wayment-Steele, Hannah K.
Kladwang, Wipapat
Watkins, Andrew M.
Kim, Do Soon
Tunguz, Bojan
Reade, Walter
Demkin, Maggie
Romano, Jonathan
Wellington-Oguri, Roger
Nicol, John J.
Gao, Jiayang
Onodera, Kazuki
Fujikawa, Kazuki
Mao, Hanfei
Vandewiele, Gilles
Tinti, Michele
Steenwinckel, Bram
Ito, Takuya
Noumi, Taiga
He, Shujun
Ishi, Keiichiro
Lee, Youhan
Öztürk, Fatih
Chiu, Anthony
Öztürk, Emin
Amer, Karim
Fares, Mohamed
Participants, Eterna
Das, Rhiju
Deep learning models for predicting RNA degradation via dual crowdsourcing
title Deep learning models for predicting RNA degradation via dual crowdsourcing
title_full Deep learning models for predicting RNA degradation via dual crowdsourcing
title_fullStr Deep learning models for predicting RNA degradation via dual crowdsourcing
title_full_unstemmed Deep learning models for predicting RNA degradation via dual crowdsourcing
title_short Deep learning models for predicting RNA degradation via dual crowdsourcing
title_sort deep learning models for predicting rna degradation via dual crowdsourcing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8528079/
https://www.ncbi.nlm.nih.gov/pubmed/34671698
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