de Almeida Rita M C, Thomas Gilberto L, Glazier James A
Instituto de Física, Universidade Federal do Rio Grande do Sul, Porto Alegre, RS, Brazil.
Instituto Nacional de Ciência e Tecnologia: Sistemas Complexos, Universidade Federal do Rio Grande do Sul, Porto Alegre, RS, Brazil.
bioRxiv. 2021 Feb 25:2020.06.16.155267. doi: 10.1101/2020.06.16.155267.
To understand the difference between benign and severe outcomes after Coronavirus infection, we urgently need ways to clarify and quantify the time course of tissue and immune responses. Here we re-analyze 72-hour time-series microarrays generated in 2013 by Sims and collaborators for SARS-CoV-1 infection of a human lung epithelial cell line. Transcriptograms, a Bioinformatics tool to analyze genome-wide gene expression data, allow us to define an appropriate context-dependent threshold for mechanistic relevance of gene differential expression. Without knowing in advance which genes are relevant, classical analyses detect every gene with statistically-significant differential expression, leaving us with too many genes and hypotheses to be useful. Using a Transcriptogram-based top-down approach, we identified three major, differentially-expressed gene sets comprising 219 mainly immune-response-related genes. We identified timescales for alterations in mitochondrial activity, signaling and transcription regulation of the innate and adaptive immune systems and their relationship to viral titer. At the individual-gene level, EGR3 was significantly upregulated in infected cells. Similar activation in T-cells and fibroblasts in infected lung could explain the T-cell anergy and eventual fibrosis seen in SARS-CoV-1 infection. The methods can be applied to RNA data sets for SARS-CoV-2 to investigate the origin of differential responses in different tissue types, or due to immune or preexisting conditions or to compare cell culture, organoid culture, animal models, and human-derived samples.
为了了解冠状病毒感染后良性和严重后果之间的差异,我们迫切需要方法来阐明和量化组织及免疫反应的时间进程。在此,我们重新分析了2013年由西姆斯及其合作者针对人肺上皮细胞系感染SARS-CoV-1所生成的72小时时间序列微阵列。转录图谱是一种用于分析全基因组基因表达数据的生物信息学工具,它使我们能够为基因差异表达的机制相关性定义一个适当的、依赖于上下文的阈值。在事先不知道哪些基因相关的情况下,传统分析会检测出每个具有统计学显著差异表达的基因,这就给我们留下了太多的基因和假设,以至于无法发挥作用。使用基于转录图谱的自上而下的方法,我们确定了三个主要的、差异表达的基因集,其中包含219个主要与免疫反应相关的基因。我们确定了线粒体活性、先天和适应性免疫系统的信号传导及转录调控变化的时间尺度,以及它们与病毒滴度的关系。在单个基因水平上,EGR3在受感染细胞中显著上调。在受感染肺组织的T细胞和成纤维细胞中的类似激活,可以解释SARS-CoV-1感染中出现的T细胞无能和最终的纤维化。这些方法可以应用于SARS-CoV-2的RNA数据集,以研究不同组织类型中差异反应的起源,或者由于免疫或既往存在的状况引起的差异反应,或者用于比较细胞培养、类器官培养、动物模型和人类来源的样本。