Sahoo Debashis, Katkar Gajanan D, Khandelwal Soni, Behroozikhah Mahdi, Claire Amanraj, Castillo Vanessa, Tindle Courtney, Fuller MacKenzie, Taheri Sahar, Rogers Thomas F, Beutler Nathan, Ramirez Sydney I, Rawlings Stephen A, Pretorius Victor, Smith David M, Burton Dennis R, Alexander Laura E Crotty, Duran Jason, Crotty Shane, Dan Jennifer M, Das Soumita, Ghosh Pradipta
bioRxiv. 2021 Apr 13:2020.09.21.305698. doi: 10.1101/2020.09.21.305698.
We sought to define the host immune response, a.k.a, the "cytokine storm" that has been implicated in fatal COVID-19 using an AI-based approach. Over 45,000 transcriptomic datasets of viral pandemics were analyzed to extract a 166-gene signature using ACE2 as a 'seed' gene; ACE2 was rationalized because it encodes the receptor that facilitates the entry of SARS-CoV-2 (the virus that causes COVID-19) into host cells. Surprisingly, this 166-gene signature was conserved in all ral andemics, including COVID-19, and a subset of 20-genes classified disease severity, inspiring the nomenclatures and signatures, respectively. The signatures pinpointed a paradoxical phenomenon wherein lung epithelial and myeloid cells mount an IL15 cytokine storm, and epithelial and NK cell senescence and apoptosis determines severity/fatality. Precise therapeutic goals were formulated and subsequently validated in high-dose SARS-CoV-2-challenged hamsters using neutralizing antibodies that abrogate SARS-CoV-2•ACE2 engagement or a directly acting antiviral agent, EIDD-2801. IL15/IL15RA were elevated in the lungs of patients with fatal disease, and plasma levels of the cytokine tracked with disease severity. Thus, the signatures provide a quantitative and qualitative framework for titrating the immune response in viral pandemics and may serve as a powerful unbiased tool to rapidly assess disease severity and vet candidate drugs.
The host immune response in COVID-19.
The SARS-CoV-2 pandemic has inspired many groups to find innovative methodologies that can help us understand the host immune response to the virus; unchecked proportions of such immune response have been implicated in fatality. We searched GEO and ArrayExpress that provided many publicly available gene expression data that objectively measure the host immune response in diverse conditions. However, challenges remain in identifying a set of host response events that are common to every condition. There are no studies that provide a reproducible assessment of prognosticators of disease severity, the host response, and therapeutic goals. Consequently, therapeutic trials for COVID-19 have seen many more 'misses' than 'hits'. This work used multiple (> 45,000) gene expression datasets from GEO and ArrayExpress and analyzed them using an unbiased computational approach that relies upon fundamentals of gene expression patterns and mathematical precision when assessing them. This work identifies a signature that is surprisingly conserved in all viral pandemics, including Covid-19, inspiring the nomenclature ViP-signature. A subset of 20-genes classified disease severity in respiratory pandemics. The ViP signatures pinpointed the nature and source of the 'cytokine storm' mounted by the host. They also helped formulate precise therapeutic goals and rationalized the repurposing of FDA-approved drugs. The ViP signatures provide a quantitative and qualitative framework for assessing the immune response in viral pandemics when creating pre-clinical models; they serve as a powerful unbiased tool to rapidly assess disease severity and vet candidate drugs.
我们试图通过基于人工智能的方法来定义宿主免疫反应,即所谓的“细胞因子风暴”,这种反应与致命的新冠病毒疾病(COVID-19)有关。分析了超过45000个病毒大流行的转录组数据集,以血管紧张素转换酶2(ACE2)作为“种子”基因提取出一个166基因特征;选择ACE2是合理的,因为它编码促进严重急性呼吸综合征冠状病毒2(SARS-CoV-2,即导致COVID-19的病毒)进入宿主细胞的受体。令人惊讶的是,这个166基因特征在包括COVID-19在内的所有病毒大流行中都是保守的,其中一个20基因的子集可对疾病严重程度进行分类,分别启发了命名法和特征的产生。这些特征指出了一个矛盾的现象,即肺上皮细胞和髓样细胞引发白细胞介素15(IL15)细胞因子风暴,而上皮细胞和自然杀伤(NK)细胞的衰老和凋亡决定了疾病的严重程度/致死率。制定了精确的治疗目标,随后在高剂量感染SARS-CoV-2的仓鼠中使用中和抗体(消除SARS-CoV-2与ACE2的结合)或直接作用的抗病毒药物EIDD-2801进行了验证。致命疾病患者的肺部IL15/IL15受体α(IL15RA)水平升高,并且该细胞因子的血浆水平与疾病严重程度相关。因此,这些特征为调节病毒大流行中的免疫反应提供了一个定量和定性的框架,并且可以作为一个强大的无偏倚工具,用于快速评估疾病严重程度和审查候选药物。
COVID-19中的宿主免疫反应。
SARS-CoV-2大流行促使许多团队寻找创新方法,以帮助我们了解宿主对该病毒的免疫反应;这种免疫反应不受控制的程度被认为与致死率有关。我们搜索了基因表达综合数据库(GEO)和ArrayExpress,它们提供了许多公开可用的基因表达数据,可客观测量不同条件下的宿主免疫反应。然而,在确定一组每种情况都共有的宿主反应事件方面仍然存在挑战。目前尚无研究能对疾病严重程度的预后指标、宿主反应和治疗目标进行可重复的评估。因此,COVID-19的治疗试验失败的情况比成功的情况多得多。这项研究使用了来自GEO和ArrayExpress的多个(超过45000个)基因表达数据集,并使用一种无偏倚的计算方法对其进行分析,该方法在评估时依赖于基因表达模式的基本原理和数学精度。这项研究确定了一个在包括新冠病毒疾病在内的所有病毒大流行中都惊人保守的特征,启发了“病毒印记特征(ViP-signature)”这一命名法。一个20基因的子集可对呼吸道大流行中的疾病严重程度进行分类。ViP特征指出了宿主引发的“细胞因子风暴”的性质和来源。它们还帮助制定了精确的治疗目标,并使FDA批准药物的重新利用合理化。ViP特征为在创建临床前模型时评估病毒大流行中的免疫反应提供了一个定量和定性的框架;它们可作为一个强大的无偏倚工具,用于快速评估疾病严重程度和审查候选药物。