AI-generated MLH1 small binder improves prime editing efficiency
- PMID: 40769155
- DOI: 10.1016/j.cell.2025.07.010
AI-generated MLH1 small binder improves prime editing efficiency
Abstract
The prime editing (PE) system consists of a Cas9 nickase fused to a reverse transcriptase, which introduces precise edits into the target genomic region guided by a PE guide RNA. However, PE efficiency is limited by mismatch repair. To overcome this limitation, transient expression of a dominant-negative MLH1 (MLH1dn) has been used to inhibit key components of mismatch repair. Here, we designed a de novo MLH1 small binder (MLH1-SB) that binds to the dimeric interface of MLH1 and PMS2 using RFdiffusion and AlphaFold 3. The compact size of MLH1-SB enabled its integration into existing PE architectures via 2A systems, creating a PE-SB platform. The PE7-SB2 system significantly improved PE efficiency, achieving an 18.8-fold increase over PEmax and a 2.5-fold increase over PE7 in HeLa cells, as well as a 3.4-fold increase over PE7 in mice. This study highlights the potential of generative AI in advancing genome editing technology.
Keywords: AI-generated de novo protein; AlphaFold 3; RFdiffusion; artificial intelligence; genome editing; mismatch repair; prime editing.
Copyright © 2025 The Author(s). Published by Elsevier Inc. All rights reserved.
Conflict of interest statement
Declaration of interests J.-C.P., H.U., and S.B. have filed a patent application based on this work.
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