Stoller Biomarker Discovery Centre, Faculty of Biology Medicine and Health (FBMH), University of Manchester, Manchester M20 4GJ, United Kingdom.
Stem Cell and Leukaemia Proteomics Laboratory, Manchester Cancer Research Centre, University of Manchester, Manchester M13 9PL, United Kingdom.
J Proteome Res. 2020 Nov 6;19(11):4219-4232. doi: 10.1021/acs.jproteome.0c00326. Epub 2020 Jul 24.
The emergence of novel coronavirus disease 2019 (COVID-19), caused by the SARS-CoV-2 coronavirus, has necessitated the urgent development of new diagnostic and therapeutic strategies. Rapid research and development, on an international scale, has already generated assays for detecting SARS-CoV-2 RNA and host immunoglobulins. However, the complexities of COVID-19 are such that fuller definitions of patient status, trajectory, sequelae, and responses to therapy are now required. There is accumulating evidence-from studies of both COVID-19 and the related disease SARS-that protein biomarkers could help to provide this definition. Proteins associated with blood coagulation (D-dimer), cell damage (lactate dehydrogenase), and the inflammatory response (e.g., C-reactive protein) have already been identified as possible predictors of COVID-19 severity or mortality. Proteomics technologies, with their ability to detect many proteins per analysis, have begun to extend these early findings. To be effective, proteomics strategies must include not only methods for comprehensive data acquisition (e.g., using mass spectrometry) but also informatics approaches via which to derive actionable information from large data sets. Here we review applications of proteomics to COVID-19 and SARS and outline how pipelines involving technologies such as artificial intelligence could be of value for research on these diseases.
新型冠状病毒病 2019(COVID-19)的出现是由 SARS-CoV-2 冠状病毒引起的,这就需要紧急开发新的诊断和治疗策略。在国际范围内,快速的研究和开发已经产生了用于检测 SARS-CoV-2 RNA 和宿主免疫球蛋白的检测方法。然而,COVID-19 的复杂性使得现在需要更全面地定义患者的状态、轨迹、后遗症和对治疗的反应。越来越多的证据表明——无论是 COVID-19 还是相关疾病 SARS 的研究——蛋白质生物标志物可以帮助提供这种定义。与血液凝块(D-二聚体)、细胞损伤(乳酸脱氢酶)和炎症反应(如 C 反应蛋白)相关的蛋白质已被确定为 COVID-19 严重程度或死亡率的可能预测因子。蛋白质组学技术能够在每次分析中检测到许多蛋白质,它已经开始扩展这些早期发现。为了有效,蛋白质组学策略不仅必须包括全面数据采集的方法(例如使用质谱法),还必须包括通过这些方法从大数据集中得出可操作信息的信息学方法。在这里,我们回顾了蛋白质组学在 COVID-19 和 SARS 中的应用,并概述了人工智能等技术的管道如何为这些疾病的研究提供价值。