衣壳
遗传增强
腺相关病毒
基因传递
免疫原性
工作流程
计算生物学
病毒学
生物
计算机科学
基因
人工智能
载体(分子生物学)
生物信息学
重组DNA
遗传学
病毒
免疫系统
数据库
作者
Xianrong Fu,Hairui Suo,Jiachen Zhang,Dongmei Chen
标识
DOI:10.2174/0113816128286593240226060318
摘要
Abstract: Target gene delivery is crucial to gene therapy. Adeno-associated virus (AAV) has emerged as a primary gene therapy vector due to its broad host range, long-term expression, and low pathogenicity. However, AAV vectors have some limitations, such as immunogenicity and insufficient targeting. Designing or modifying capsids is a potential method of improving the efficacy of gene delivery, but hindered by weak biological basis of AAV, complexity of the capsids, and limitations of current screening methods. Artificial intelligence (AI), especially machine learning (ML), has great potential to accelerate and improve the optimization of capsid properties as well as decrease their development time and manufacturing costs. This review introduces the traditional methods of designing AAV capsids and the general steps of building a sequence-function ML model, highlights the applications of ML in the development workflow, and summarizes its advantages and challenges.
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