生物
腺相关病毒
DNA测序
九氟化硫
计算生物学
DNA
重组DNA
病毒学
载体(分子生物学)
杆状病毒科
基因组
DNA提取
遗传学
聚合酶链反应
基因
夜蛾
作者
Magalie Penaud‐Budloo,Émilie Lecomte,Aurélien Guy‐Duché,Sylvie Saleün,Alain Roulet,Céline Lopez-Roques,Benoît Tournaire,Benjamin Cogné,Adrien Léger,Véronique Blouin,Pierre Livet,Philippe Moullier,Eduard Ayuso
出处
期刊:Human Gene Therapy Methods
[Mary Ann Liebert]
日期:2017-06-01
卷期号:28 (3): 148-162
被引量:33
标识
DOI:10.1089/hgtb.2016.185
摘要
Recombinant adeno-associated viral (rAAV) vectors have proven excellent tools for the treatment of many genetic diseases and other complex diseases. However, the illegitimate encapsidation of DNA contaminants within viral particles constitutes a major safety concern for rAAV-based therapies. Moreover, the development of rAAV vectors for early-phase clinical trials has revealed the limited accuracy of the analytical tools used to characterize these new and complex drugs. Although most published data concerning residual DNA in rAAV preparations have been generated by quantitative PCR, we have developed a novel single-strand virus sequencing (SSV-Seq) method for quantification of DNA contaminants in AAV vectors produced in mammalian cells by next-generation sequencing (NGS). Here, we describe the adaptation of SSV-Seq for the accurate identification and quantification of DNA species in rAAV stocks produced in insect cells. We found that baculoviral DNA was the most abundant contaminant, representing less than 2.1% of NGS reads regardless of serotype (2, 8, or rh10). Sf9 producer cell DNA was detected at low frequency (≤0.03%) in rAAV lots. Advanced computational analyses revealed that (1) baculoviral sequences close to the inverted terminal repeats preferentially underwent illegitimate encapsidation, and (2) single-nucleotide variants were absent from the rAAV genome. The high-throughput sequencing protocol described here enables effective DNA quality control of rAAV vectors produced in insect cells, and is adapted to conform with regulatory agency safety requirements.
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