Machine learning prediction of prime editing efficiency across diverse chromatin contexts

The success of prime editing depends on the prime editing guide RNA (pegRNA) design and target locus. Here, we developed machine learning models that reliably predict prime editing efficiency. PRIDICT2.0 assesses the performance of pegRNAs for all edit types up to 15 bp in length in mismatch repair-...

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Bibliographic Details
Published in:Nature biotechnology Vol. 43; no. 5; p. 712
Main Authors: Mathis, Nicolas, Allam, Ahmed, Tálas, András, Kissling, Lucas, Benvenuto, Elena, Schmidheini, Lukas, Schep, Ruben, Damodharan, Tanav, Balázs, Zsolt, Janjuha, Sharan, Ioannidi, Eleonora I, Böck, Desirée, van Steensel, Bas, Krauthammer, Michael, Schwank, Gerald
Format: Journal Article
Language:English
Published: United States 01.05.2025
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ISSN:1546-1696, 1546-1696
Online Access:Get more information
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