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High-Content Analysis of Sequential Events during the Early Phase of Influenza A Virus Infection

机译:甲型流感病毒感染早期阶段事件的高内涵分析

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摘要

Influenza A virus (IAV) represents a worldwide threat to public health by causing severe morbidity and mortality every year. Due to high mutation rate, new strains of IAV emerge frequently. These IAVs are often drug-resistant and require vaccine reformulation. A promising approach to circumvent this problem is to target host cell determinants crucial for IAV infection, but dispensable for the cell. Several RNAi-based screens have identified about one thousand cellular factors that promote IAV infection. However, systematic analyses to determine their specific functions are lacking. To address this issue, we developed quantitative, imaging-based assays to dissect seven consecutive steps in the early phases of IAV infection in tissue culture cells. The entry steps for which we developed the assays were: virus binding to the cell membrane, endocytosis, exposure to low pH in endocytic vacuoles, acid-activated fusion of viral envelope with the vacuolar membrane, nucleocapsid uncoating in the cytosol, nuclear import of viral ribonucleoproteins, and expression of the viral nucleoprotein. We adapted the assays to automated microscopy and optimized them for high-content screening. To quantify the image data, we performed both single and multi-parametric analyses, in combination with machine learning. By time-course experiments, we determined the optimal time points for each assay. Our quality control experiments showed that the assays were sufficiently robust for high-content analysis. The methods we describe in this study provide a powerful high-throughput platform to understand the host cell processes, which can eventually lead to the discovery of novel anti-pathogen strategies.
机译:甲型流感病毒(IAV)每年都会造成严重的发病率和死亡率,对全世界的公共健康构成威胁。由于高突变率,新的IAV病毒株频繁出现。这些IAV通常具有耐药性,需要重新配制疫苗。解决该问题的一种有前途的方法是靶向对IAV感染至关重要但对细胞无用的宿主细胞决定簇。几项基于RNAi的筛选已鉴定出约一千种促进IAV感染的细胞因子。但是,缺乏确定其特定功能的系统分析。为了解决这个问题,我们开发了基于成像的定量分析方法,以剖析组织培养细胞中IAV感染早期的七个连续步骤。我们开发检测方法的进入步骤是:病毒结合到细胞膜,内吞作用,暴露于内吞液泡中的低pH值,病毒包膜与液泡膜的酸活化融合,胞质溶胶中的核衣壳脱壳,病毒的核输入核糖核蛋白,以及病毒核蛋白的表达。我们将检测方法调整为适用于自动显微镜,并对其进行了优化,以进行高内涵筛选。为了量化图像数据,我们结合机器学习进行了单参数和多参数分析。通过时程实验,我们确定了每种测定的最佳时间点。我们的质量控制实验表明,该检测方法足以进行高含量分析。我们在这项研究中描述的方法提供了一个强大的高通量平台,以了解宿主细胞的过程,最终可以导致发现新的抗病原体策略。

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