BACKGROUND: Adenine base editors (ABEs) enable the conversion of Aâ¢T to Gâ¢C base pairs. Since the sequence of the target locus influences base editing efficiency, efforts have been made to develop computational models that can predict base editing outcomes based on the targeted sequence. However, these models were trained on base editing datasets generated in cell lines and their predictive power for base editing in primary cells in vivo remains uncertain. RESULTS: In this study, we conduct base editing screens using SpRY-ABEmax and SpRY-ABE8e to target 2,195 pathogenic mutations with a total of 12,000 guide RNAs in cell lines and in the murine liver. We observe strong correlations between in vitro datasets generated by ABE-mRNA electroporation into HEK293T cells and in vivo datasets generated by adeno-associated virus (AAV)- or lipid nanoparticle (LNP)-mediated nucleoside-modified mRNA delivery (Spearman Râ=â0.83-0.92). We subsequently develop BEDICT2.0, a deep learning model that predicts adenine base editing efficiencies with high accuracy in cell lines (Râ=â0.60-0.94) and in the liver (Râ=â0.62-0.81). CONCLUSIONS: In conclusion, our work confirms that adenine base editing holds considerable potential for correcting a large fraction of pathogenic mutations. We also provide BEDICT2.0 - a robust computational model that helps identify sgRNA-ABE combinations capable of achieving high on-target editing with minimal bystander effects in both in vitro and in vivo settings.
Predicting adenine base editing efficiencies in different cellular contexts by deep learning.
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作者:Kissling Lucas, Mollaysa Amina, Janjuha Sharan, Mathis Nicolas, Marquart Kim F, Weber Yanik, Moon Woohyun J, Lin Paulo J C, Fan Steven H Y, Muramatsu Hiromi, Vadovics Máté, Allam Ahmed, Pardi Norbert, Tam Ying K, Krauthammer Michael, Schwank Gerald
| 期刊: | Genome Biology | 影响因子: | 9.400 |
| 时间: | 2025 | 起止号: | 2025 May 8; 26(1):115 |
| doi: | 10.1186/s13059-025-03586-7 | ||
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