阿达尔
计算机科学
生成语法
RNA编辑
人工智能
自然语言处理
核糖核酸
生物
生物化学
基因
作者
Yue Jiang,Lina R Bagepalli,B. Banjanin,Yiannis A. Savva,Yingxin Cao,Lan Guo,Adrian W. Briggs,Brian J. Booth,Ronald J. Hause
标识
DOI:10.1101/2024.09.27.613923
摘要
Adenosine Deaminase Acting on RNA (ADAR) converts adenosine to inosine within certain double-stranded RNA structures. However, ADAR's promiscuous editing and poorly understood specificity hinder therapeutic applications. We present an integrated approach combining high-throughput screening (HTS) with generative deep learning to rapidly engineer efficient and specific guide RNAs (gRNAs) to direct ADAR's activity to any target. Our HTS quantified ADAR-mediated editing across millions of unique gRNA sequences and structures, identifying key determinants of editing outcomes. We leveraged these data to develop DeepREAD (Deep learning for RNA Editing by ADAR Design), a diffusion-based model that elucidates complex design rules to generate novel gRNAs outperforming existing design heuristics. DeepREAD's gRNAs achieve highly efficient and specific editing, including challenging multi-site edits. We demonstrate DeepREAD's therapeutic potential by designing gRNAs targeting the MECP2R168X mutation associated with Rett syndrome, achieving both allelic specificity and species cross-reactivity. This approach significantly accelerates the development of ADAR-based RNA therapeutics for diverse genetic diseases.
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