Computationally guided AAV engineering for enhanced gene delivery

Jingxuan Guo,Li F. Lin, Sydney V. Oraskovich, Julio A. Rivera de Jesús,Jennifer Listgarten,David V. Schaffer

Trends in Biochemical Sciences(2024)

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摘要
Gene delivery vehicles based on adeno-associated viruses (AAVs) are enabling increasing success in human clinical trials, and they offer the promise of treating a broad spectrum of both genetic and non-genetic disorders. However, delivery efficiency and targeting must be improved to enable safe and effective therapies. In recent years, considerable effort has been invested in creating AAV variants with improved delivery, and computational approaches have been increasingly harnessed for AAV engineering. In this review, we discuss how computationally designed AAV libraries are enabling directed evolution. Specifically, we highlight approaches that harness sequences outputted by next-generation sequencing (NGS) coupled with machine learning (ML) to generate new functional AAV capsids and related regulatory elements, pushing the frontier of what vector engineering and gene therapy may achieve.
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关键词
AAV libraries,directed evolution,protein engineering,ancestral sequence reconstruction,next-generation sequencing,machine learning
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