Effective genome editing with an enhanced ISDra2 TnpB system and deep learning-predicted ωRNAs.

利用增强型 ISDra2 TnpB 系统和深度学习预测的 αRNA 进行有效的基因组编辑

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作者:Marquart Kim Fabiano, Mathis Nicolas, Mollaysa Amina, Müller Saphira, Kissling Lucas, Rothgangl Tanja, Schmidheini Lukas, Kulcsár Péter István, Allam Ahmed, Kaufmann Masako M, Matsushita Mai, Haenggi Tatjana, Cathomen Toni, Kopf Manfred, Krauthammer Michael, Schwank Gerald
Transposon (IS200/IS605)-encoded TnpB proteins are predecessors of class 2 type V CRISPR effectors and have emerged as one of the most compact genome editors identified thus far. Here, we optimized the design of Deinococcus radiodurans (ISDra2) TnpB for application in mammalian cells (TnpBmax), leading to an average 4.4-fold improvement in editing. In addition, we developed variants mutated at position K76 that recognize alternative target-adjacent motifs (TAMs), expanding the targeting range of ISDra2 TnpB. We further generated an extensive dataset on TnpBmax editing efficiencies at 10,211 target sites. This enabled us to delineate rules for on-target and off-target editing and to devise a deep learning model, termed TnpB editing efficiency predictor (TEEP; https://www.tnpb.app ), capable of predicting ISDra2 TnpB guiding RNA (ωRNA) activity with high performance (r > 0.8). Employing TEEP, we achieved editing efficiencies up to 75.3% in the murine liver and 65.9% in the murine brain after adeno-associated virus (AAV) vector delivery of TnpBmax. Overall, the set of tools presented in this study facilitates the application of TnpB as an ultracompact programmable endonuclease in research and therapeutics.

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