Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens

Base editors enable precise genetic alterations but vary in efficiency at different loci. Here the authors analyse ABEs and CBEs at over 28,000 integrated sequences to train BE-DICT, a machine learning model capable of predicting base editing outcomes.

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Autores principales: Kim F. Marquart, Ahmed Allam, Sharan Janjuha, Anna Sintsova, Lukas Villiger, Nina Frey, Michael Krauthammer, Gerald Schwank
Formato: article
Lenguaje:EN
Publicado: Nature Portfolio 2021
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Acceso en línea:https://doaj.org/article/c9632ae8e3554eb0a6f6c3e3694e3ef8
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spelling oai:doaj.org-article:c9632ae8e3554eb0a6f6c3e3694e3ef82021-12-02T15:09:10ZPredicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens10.1038/s41467-021-25375-z2041-1723https://doaj.org/article/c9632ae8e3554eb0a6f6c3e3694e3ef82021-08-01T00:00:00Zhttps://doi.org/10.1038/s41467-021-25375-zhttps://doaj.org/toc/2041-1723Base editors enable precise genetic alterations but vary in efficiency at different loci. Here the authors analyse ABEs and CBEs at over 28,000 integrated sequences to train BE-DICT, a machine learning model capable of predicting base editing outcomes.Kim F. MarquartAhmed AllamSharan JanjuhaAnna SintsovaLukas VilligerNina FreyMichael KrauthammerGerald SchwankNature PortfolioarticleScienceQENNature Communications, Vol 12, Iss 1, Pp 1-9 (2021)
institution DOAJ
collection DOAJ
language EN
topic Science
Q
spellingShingle Science
Q
Kim F. Marquart
Ahmed Allam
Sharan Janjuha
Anna Sintsova
Lukas Villiger
Nina Frey
Michael Krauthammer
Gerald Schwank
Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
description Base editors enable precise genetic alterations but vary in efficiency at different loci. Here the authors analyse ABEs and CBEs at over 28,000 integrated sequences to train BE-DICT, a machine learning model capable of predicting base editing outcomes.
format article
author Kim F. Marquart
Ahmed Allam
Sharan Janjuha
Anna Sintsova
Lukas Villiger
Nina Frey
Michael Krauthammer
Gerald Schwank
author_facet Kim F. Marquart
Ahmed Allam
Sharan Janjuha
Anna Sintsova
Lukas Villiger
Nina Frey
Michael Krauthammer
Gerald Schwank
author_sort Kim F. Marquart
title Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
title_short Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
title_full Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
title_fullStr Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
title_full_unstemmed Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
title_sort predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens
publisher Nature Portfolio
publishDate 2021
url https://doaj.org/article/c9632ae8e3554eb0a6f6c3e3694e3ef8
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