Scott Suzanne, Westhaus Adrian, Nazareth Deborah, Cabanes-Creus Marti, Navarro Renina Gale, Chandra Deborah, Zhu Erhua, Venkateswaran Aravind, Alexander Ian E, Bauer Denis C, Wilson Laurence O W, Lisowski Leszek
Translational Vectorology Research Unit, Children's Medical Research Institute, Faculty of Medicine and Health, The University of Sydney, Westmead, NSW 2145, Australia.
Australian e-Health Research Centre, Commonwealth Scientific and Industrial Research Organisation (CSIRO), Westmead, NSW 2145, Australia.
Mol Ther Methods Clin Dev. 2024 Oct 4;32(4):101351. doi: 10.1016/j.omtm.2024.101351. eCollection 2024 Dec 12.
Gene therapies using recombinant adeno-associated virus (AAV) vectors have demonstrated considerable clinical success in the treatment of genetic disorders. Improved vectors with favorable tropism profiles, decreased immunogenicity, and enhanced manufacturability are poised to further improve the state of gene therapies. Such vectors can be identified through directed evolution, a process of subjecting a diverse capsid library to a selection pressure to identify individual variants with a desired trait. Currently, libraries that involve changes distributed throughout the AAV capsid coding region, such as DNA family shuffled libraries, are largely characterized using low-throughput Sanger sequencing of individual clones. However, improvements in long-read sequencing technologies have increased their applicability to capsid libraries and evaluation of the selection process. Here, we explore the application of Oxford Nanopore Technologies refined by a concatemeric consensus method for initial library characterization and monitoring selection of a shuffled AAV capsid library. Furthermore, we present AAVolve, a bioinformatic pipeline for processing long-read data from AAV-directed evolution experiments. Our approach allows high-throughput characterization of AAV capsids in a streamlined manner, facilitating deeper insights into library composition through multiple rounds of selection, and generalization through training of machine learning models.
使用重组腺相关病毒(AAV)载体的基因疗法在治疗遗传疾病方面已取得了显著的临床成功。具有良好嗜性谱、降低免疫原性和增强可制造性的改进型载体有望进一步改善基因治疗的现状。此类载体可通过定向进化来鉴定,即对多样化的衣壳文库施加选择压力,以识别具有所需特性的个体变体的过程。目前,涉及AAV衣壳编码区域各处变化的文库,如DNA家族改组文库,主要通过对单个克隆进行低通量桑格测序来表征。然而,长读长测序技术的改进提高了其对衣壳文库的适用性以及对选择过程的评估。在此,我们探索通过串联一致方法改进的牛津纳米孔技术在初始文库表征和监测改组AAV衣壳文库选择中的应用。此外,我们展示了AAVolve,这是一种用于处理来自AAV定向进化实验的长读长数据的生物信息学流程。我们的方法能够以简化的方式对AAV衣壳进行高通量表征,通过多轮选择促进对文库组成的更深入了解,并通过机器学习模型的训练进行概括。