Bioinformation Analysis of Differential Expression Proteins in Different Processes of COVID-19.

IF 1.5 4区 医学 Q4 IMMUNOLOGY
Nana Guo, Xu Han, Guangyue Han, Mingyan Dai, Zhanying Han, Qi Li
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引用次数: 0

Abstract

COVID-19 is a highly infectious respiratory disease whose progression has been associated with multiple factors. From SARS-CoV-2 infection to death, biomarkers capable of predicting different disease processes are needed to help us further understand the molecular progression of COVID-19 disease. The aim is to find differentially expressed proteins that are associated with the progression of COVID-19 disease or can be potential biomarkers, and to provide a reference for further understanding of the molecular mechanisms of COVID-19 occurrence, progression, and treatment. Data-independent Acquisition (DIA) proteomics to obtain sample protein expression data, using R language screening differentially expressed proteins. Gene Ontology and Kyoto Encyclopedia for Genes and Genomes analysis was performed on differential proteins and protein-protein interaction (PPI) network was constructed to screen key proteins. A total of 47 differentially expressed proteins were obtained from COVID-19 incubation patients and healthy population (L/H), mainly enriched in platelet-related functions, and complement and coagulation cascade reaction pathways, such as platelet degranulation and platelet aggregation. A total of 42 differential proteins were obtained in clinical and latent phase patients (C/L), also mainly enriched in platelet-related functions and in complement and coagulation cascade reactions, platelet activation pathways. A total of 10 differential proteins were screened in recovery and clinical phase patients (R/C), mostly immune-related proteins. The differentially expressed proteins in different stages of COVID-19 are mostly closely associated with coagulation, and key differential proteins, such as FGA, FGB, FGG, ACTB, PFN1, VCL, SERPZNCL, APOC3, LTF, and DEFA1, have the potential to be used as early diagnostic markers.

COVID-19 不同过程中差异表达蛋白的生物信息分析。
COVID-19 是一种高度传染性的呼吸道疾病,其进展与多种因素有关。从 SARS-CoV-2 感染到死亡,我们需要能够预测不同疾病过程的生物标志物,以帮助我们进一步了解 COVID-19 疾病的分子进展。我们的目标是找到与 COVID-19 疾病进展相关或可作为潜在生物标志物的差异表达蛋白,为进一步了解 COVID-19 发生、进展和治疗的分子机制提供参考。数据独立获取(DIA)蛋白质组学获得样本蛋白质表达数据,使用 R 语言筛选差异表达蛋白质。对差异蛋白进行基因本体和京都基因组百科全书分析,并构建蛋白-蛋白相互作用(PPI)网络筛选关键蛋白。结果显示,COVID-19培养患者和健康人群(L/H)共获得47个差异表达蛋白,主要富集于血小板相关功能、补体和凝血级联反应途径,如血小板脱颗粒和血小板聚集。临床和潜伏期患者(C/L)共获得 42 个差异蛋白,也主要富集于血小板相关功能、补体和凝血级联反应、血小板活化途径。在恢复期和临床期患者(R/C)中共筛选出 10 种差异蛋白,其中大部分是与免疫相关的蛋白。COVID-19不同阶段的差异表达蛋白大多与凝血功能密切相关,其中FGA、FGB、FGG、ACTB、PFN1、VCL、SERPZNCL、APOC3、LTF和DEFA1等关键差异蛋白具有作为早期诊断标志物的潜力。
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来源期刊
Viral immunology
Viral immunology 医学-病毒学
CiteScore
3.60
自引率
0.00%
发文量
84
审稿时长
6-12 weeks
期刊介绍: Viral Immunology delivers cutting-edge peer-reviewed research on rare, emerging, and under-studied viruses, with special focus on analyzing mutual relationships between external viruses and internal immunity. Original research, reviews, and commentaries on relevant viruses are presented in clinical, translational, and basic science articles for researchers in multiple disciplines. Viral Immunology coverage includes: Human and animal viral immunology Research and development of viral vaccines, including field trials Immunological characterization of viral components Virus-based immunological diseases, including autoimmune syndromes Pathogenic mechanisms Viral diagnostics Tumor and cancer immunology with virus as the primary factor Viral immunology methods.
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