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A versatile CRISPR/Cas9 system off-target prediction tool using language model

Weian Du, Liang Zhao, Kaichuan Diao, Yangyang Zheng, Qianyong Yang, Zhenzhen Zhu, Xiangxing Zhu, Dongsheng Tang

2025Communications Biology19 citationsDOIOpen Access PDF

Abstract

Genome editing with the CRISPR/Cas9 system has revolutionized life and medical sciences, particularly in treating monogenic genetic diseases by enabling long-term therapeutic effects from a single intervention. However, the CRISPR/Cas9 system can tolerate mismatches and DNA/RNA bulges at target sites, leading to unintended off-target effects that pose challenges for gene-editing therapy development. Existing high-throughput detection and in silico prediction methods are often limited to specifically designed single guide RNAs (sgRNAs) and perform poorly on unseen sequences. To address these limitations, we introduce CCLMoff, a deep learning framework for off-target prediction that incorporates a pretrained RNA language model from RNAcentral. CCLMoff captures mutual sequence information between sgRNAs and target sites and is trained on a comprehensive, updated dataset. This approach enables accurate off-target identification and strong generalization across diverse NGS-based detection datasets. Model interpretation reveals the biological importance of the seed region, underscoring CCLMoff's analytical capabilities. The development of CCLMoff lays the foundation for a comprehensive, end-to-end sgRNA design platform, enhancing both the precision and efficiency of CRISPR/Cas9-based therapeutics. CCLMoff is a versatile tool and is publicly available at github.com/duwa2/CCLMoff .

Topics & Concepts

CRISPRComputer scienceCas9Genome editingComputational biologyProgramming languageArtificial intelligenceBiologyGeneticsGeneCRISPR and Genetic EngineeringInnovation and Socioeconomic DevelopmentGenetics, Aging, and Longevity in Model Organisms
A versatile CRISPR/Cas9 system off-target prediction tool using language model | Litcius