首页|mRNA疫苗理性设计:从经验到入工智能设计

mRNA疫苗理性设计:从经验到入工智能设计

扫码查看
mRNA疫苗因其免疫原性强、无基因整合风险和低成本制造等天然优势,已在传染病的预防以及癌症治疗等领域展示出巨大的潜力.目前,针对mRNA疫苗面临的稳定性差和蛋白表达效率不高等挑战,研究人员开展了广泛的mRNA设计和优化工作.传统的mRNA疫苗设计依赖于经验和实验结果的反复迭代,而随着人工智能技术的发展,mRNA疫苗设计正向更加理性和高效的方向转变.本文首先系统介绍了各种疫苗的特性,并概述了多款已上市和临床评估阶段的mRNA疫苗.同时,针对mRNA疫苗的优化问题,根据mRNA的五个不同结构区域,分别详细介绍了经验设计和人工智能设计在mRNA疫苗理性设计中的应用和优缺点.最后,讨论了人工智能模型在mRNA疫苗优化中的局限性和未来发展方向.
The rational design of mRNA vaccine:From empirical method to artificial intelligence-based design
mRNA vaccines,recognized for their strong immunogenicity,low risk of gene integration,and cost-effective manufacturing,hold significant promise in preventing and treating infectious diseases and cancers.Indeed,mRNA vaccines were among the earliest vaccine platforms developed in response to the COVID-19 pandemic,demonstrating robust immunogenicity and playing a crucial role in protecting countless lives from COVID-19 infection.However,they also face practical challenges such as poor stability and suboptimal protein expression efficiency.To overcome these challenges,extensive research has focused on the design and optimization of mRNA vaccines.Traditionally,this design process has relied on iterative empirical refinements.With advances in artificial intelligence(AI)and bioinformatics,mRNA vaccine design is evolving toward more rational and efficient approaches.Thus,this review systematically introduces the characteristics of various vaccines and outlines the principles of mRNA vaccine design.We then focus on the optimization of mRNA vaccines,examining both empirical and AI-based design methods across five key structural domains of mRNA,including the 5'cap,5'untranslated region(UTR),3'UTR,coding sequence region,and poly-A tail.Traditional empirical methods involve designing and optimizing these regions to address some of the inherent deficiencies in mRNA vaccines.However,these methods often require repetitive experimental iterations,resulting in low development efficiency and high costs.Currently,the evolvement of vaccines is rapidly being revolutionized using advanced AI-based technologies.AI models can rapidly and efficiently optimize and generate highly druggable mRNA sequences by learning from publicly available or proprietary biological data.By comparing empirical and AI-based design approaches,we highlight the advantages of AI in mRNA vaccine design while also discussing its limitations and future potential.Centainly,AI models also face certain challenges when applied to mRNA design.Firstly,AI models require large-scale and high-quality experimental data for training,but currently,the available experimental data is limited in quantity,varies in quality,and is also scattered.Secondly,the interpretability of AI models is relatively poor,as they are often referred to as"black box"models,making it difficult to explain the decision-making processes of AI models.With the development of AI technology and the accumulation of biological data,the predictive capabilities of AI models will keep improving.It is even more foreseeable that base models based on large language models,such as AlphaFold3,targeting biomolecules like RNA and proteins,will play a significant role in drug development.AI models will be able to more comprehensively analyze the interaction patterns between RNA and other biomolecules like DNA and proteins,thereby further enhancing the effectiveness of mRNA design.In conclusion,we argue that personalized and precise mRNA design driven by AI could revolutionize the biomedical field,offering unprecedented therapeutic possibilities for patients,enhancing the vaccine development process,and providing new strategies to address future challenges.

mRNAvaccineartificial intelligencenucleic acid drug design

胡宇轩、濮澄韬、刘博翔、张亮

展开 >

Harvard Medical School,Boston 02115,USA

中国科学院杭州医学研究所,杭州 310018

National University of Singapore,Singapore 119077,Singapore

mRNA 疫苗 人工智能 核酸药物设计

2024

科学通报
中国科学院国家自然科学基金委员会

科学通报

CSTPCD北大核心
影响因子:1.269
ISSN:0023-074X
年,卷(期):2024.69(33)