Classification and characterisation of extracellular vesicles-related tuberculosis subgroups and immune cell profiles

IF 5.3 2区 医学 Q1 Biochemistry, Genetics and Molecular Biology
Peipei Zhou, Jie Shen, Xiao Ge, Fang Ding, Hong Zhang, Xinlin Huang, Chao Zhao, Meng Li, Zhenpeng Li
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引用次数: 1

Abstract

Around the world, tuberculosis (TB) remains one of the most common causes of morbidity and mortality. The molecular mechanism of Mycobacterium tuberculosis (Mtb) infection is still unclear. Extracellular vesicles (EVs) play a key role in the onset and progression of many disease states and can serve as effective biomarkers or therapeutic targets for the identification and treatment of TB patients. We analysed the expression profile to better clarify the EVs characteristics of TB and explored potential diagnostic markers to distinguish TB from healthy control (HC). Twenty EVs-related differentially expressed genes (DEGs) were identified, and 17 EVs-related DEGs were up-regulated and three DEGs were down-regulated in TB samples, which were related to immune cells. Using machine learning, a nine EVs-related gene signature was identified and two EVs-related subclusters were defined. The single-cell RNA sequence (scRNA-seq) analysis further confirmed that these hub genes might play important roles in TB pathogenesis. The nine EVs-related hub genes had excellent diagnostic values and accurately estimated TB progression. TB's high-risk group had significantly enriched immune-related pathways, and there were substantial variations in immunity across different groups. Furthermore, five potential drugs were predicted for TB using CMap database. Based on the EVs-related gene signature, the TB risk model was established through a comprehensive analysis of different EV patterns, which can accurately predict TB. These genes could be used as novel biomarkers to distinguish TB from HC. These findings lay the foundation for further research and design of new therapeutic interventions aimed at treating this deadly infectious disease.

Abstract Image

细胞外囊泡相关结核亚群和免疫细胞谱的分类和特征
在世界各地,结核病仍然是最常见的发病和死亡原因之一。结核分枝杆菌(Mtb)感染的分子机制尚不清楚。细胞外囊泡(EVs)在许多疾病状态的发生和进展中起着关键作用,可以作为识别和治疗结核病患者的有效生物标志物或治疗靶点。我们分析了EVs的表达谱,以更好地阐明TB的EVs特征,并探索区分TB与健康对照(HC)的潜在诊断标志物。共鉴定出20个evs相关差异表达基因(deg),其中17个evs相关差异表达基因在TB样本中表达上调,3个差异表达基因表达下调,这些差异表达基因与免疫细胞有关。利用机器学习,确定了9个ev相关基因特征,并定义了2个ev相关亚群。单细胞RNA序列(scRNA-seq)分析进一步证实了这些枢纽基因可能在结核病发病中发挥重要作用。9个evs相关枢纽基因具有良好的诊断价值,可准确估计结核病进展。结核病高危组的免疫相关通路显著丰富,不同组之间的免疫力存在很大差异。此外,利用CMap数据库预测了5种潜在的结核病药物。基于evs相关基因特征,通过对不同evs模式的综合分析,建立TB风险模型,能够准确预测TB。这些基因可作为区分结核与HC的新型生物标志物。这些发现为进一步研究和设计旨在治疗这种致命传染病的新治疗干预措施奠定了基础。
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来源期刊
CiteScore
10.00
自引率
1.90%
发文量
496
审稿时长
28 weeks
期刊介绍: Bridging physiology and cellular medicine, and molecular biology and molecular therapeutics, Journal of Cellular and Molecular Medicine publishes basic research that furthers our understanding of the cellular and molecular mechanisms of disease and translational studies that convert this knowledge into therapeutic approaches.
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