Wang Christopher J, Feng Szi Fei, Duncan Paul
Merck & Co., Inc., West Point, PA
Merck & Co., Inc., West Point, PA.
PDA J Pharm Sci Technol. 2014 Nov-Dec;68(6):579-88. doi: 10.5731/pdajpst.2014.01010.
The application of next-generation sequencing (also known as deep sequencing or massively parallel sequencing) for adventitious agent detection is an evolving field that is steadily gaining acceptance in the biopharmaceutical industry. In order for this technology to be successfully applied, a robust method that can isolate viral nucleic acids from a variety of biological samples (such as host cell substrates, cell-free culture fluids, viral vaccine harvests, and animal-derived raw materials) must be established by demonstrating recovery of model virus spikes. In this report, we implement the sample preparation workflow developed by Feng et. al. and assess the sensitivity of virus detection in a next-generation sequencing readout using the Illumina MiSeq platform. We describe a theoretical model to estimate the detection of a target virus in a cell lysate or viral vaccine harvest sample. We show that nuclease treatment can be used for samples that contain a high background of non-relevant nucleic acids (e.g., host cell DNA) in order to effectively increase the sensitivity of sequencing target viruses and reduce the complexity of data analysis. Finally, we demonstrate that at defined spike levels, nucleic acids from a panel of model viruses spiked into representative cell lysate and viral vaccine harvest samples can be confidently recovered by next-generation sequencing.
将下一代测序技术(也称为深度测序或大规模平行测序)应用于外源因子检测是一个不断发展的领域,在生物制药行业正逐渐获得认可。为了成功应用这项技术,必须通过证明模型病毒加标的回收率,建立一种能够从各种生物样品(如宿主细胞底物、无细胞培养液、病毒疫苗收获物和动物源原材料)中分离病毒核酸的可靠方法。在本报告中,我们实施了Feng等人开发的样品制备工作流程,并使用Illumina MiSeq平台评估了下一代测序读数中病毒检测的灵敏度。我们描述了一个理论模型,用于估计细胞裂解物或病毒疫苗收获物样品中目标病毒的检测情况。我们表明,核酸酶处理可用于含有高背景无关核酸(如宿主细胞DNA)的样品,以有效提高测序目标病毒的灵敏度并降低数据分析的复杂性。最后,我们证明,在规定的加标水平下,通过下一代测序可以可靠地从添加到代表性细胞裂解物和病毒疫苗收获物样品中的一组模型病毒中回收核酸。