CRISPR-Cas9 HDR Optimization: RAD52, Denatured and 5’-Modified DNA Templates in Knock-In Mice Generation

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Abstract

CRISPR/Cas9-mediated genome editing is a powerful tool for producing animal models of human diseases. However, it often encounters challenges related to low efficiency of donor DNA templates insertion through homology-directed repair (HDR) pathway or unwanted insertions and/or multiplications. Here, we present findings from multiple targeting experiments aimed at generating a Nup93 conditional knockout (cKO) mouse model. Injection of CRISPR/Cas9 components into over two thousand zygotes, resulted in 270 founder animals. Our study revealed various obstacles associated with the use of single-stranded (ssDNA) and double-stranded DNA (dsDNA) templates during cKO generation, highlighting the critical role of denaturation of long 5’-monophosphorylated dsDNA templates in enhancing precise genome editing and reducing template multiplications. Application of RAD52 protein increased HDR efficiency of ssDNA integration almost 4-fold, albeit with an associated increase in template multiplication. Targeting the antisense strand of DNA using two crRNAs demonstrated better efficacy in HDR-mediated precise genome editing when compared to targeting the sense or sense-antisense strands. In addition, the application of 5’-end biotin-modified donor DNA resulted in up to a 8-fold increase in HDR-mediated single-copy template integration compered to unmodified dsDNA donor. Furthermore, application of 5’-end C3 spacer modified template resulted in up to a 20-fold increase in correctly HDR modified mice independent from ssDNA or dsDNA template employment. This study underscores potential pitfalls in CRISPR/Cas9-mediated genome editing and offers simple practical solutions to refine this potent tool. These findings highlight various strategies to enhance CRISPR/Cas9 HDR efficiency, providing a framework for improving precision in the generation of conditional knockout models.

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