School of Medical Laboratory, Weifang Medical University, Weifang, China.
Office of Academic Affairs, Weifang Medical University, Weifang, China.
Front Immunol. 2023 May 2;14:1159713. doi: 10.3389/fimmu.2023.1159713. eCollection 2023.
Tuberculosis (TB) is the deadliest communicable disease in the world with the exception of the ongoing COVID-19 pandemic. Programmed cell death (PCD) patterns play key roles in the development and progression of many disease states such that they may offer value as effective biomarkers or therapeutic targets that can aid in identifying and treating TB patients.
The Gene Expression Omnibus (GEO) was used to gather TB-related datasets after which immune cell profiles in these data were analyzed to examine the potential TB-related loss of immune homeostasis. Profiling of differentially expressed PCD-related genes was performed, after which candidate hub PCD-associated genes were selected via a machine learning approach. TB patients were then stratified into two subsets based on the expression of PCD-related genes via consensus clustering. The potential roles of these PCD-associated genes in other TB-related diseases were further examined.
In total, 14 PCD-related differentially expressed genes (DEGs) were identified and highly expressed in TB patient samples and significantly correlated with the abundance of many immune cell types. Machine learning algorithms enabled the selection of seven hub PCD-related genes that were used to establish PCD-associated patient subgroups, followed by the validation of these subgroups in independent datasets. These findings, together with GSVA results, indicated that immune-related pathways were significantly enriched in TB patients exhibiting high levels of PCD-related gene expression, whereas metabolic pathways were significantly enriched in the other patient group. Single cell RNA-seq (scRNA-seq) further highlighted significant differences in the immune status of these different TB patient samples. Furthermore, we used CMap to predict five potential drugs for TB-related diseases.
These results highlight clear enrichment of PCD-related gene expression in TB patients and suggest that this PCD activity is closely associated with immune cell abundance. This thus indicates that PCD may play a role in TB progression through the induction or dysregulation of an immune response. These findings provide a foundation for further research aimed at clarifying the molecular drivers of TB, the selection of appropriate diagnostic biomarkers, and the design of novel therapeutic interventions aimed at treating this deadly infectious disease.
结核病(TB)是除持续大流行的 COVID-19 之外的世界上最致命的传染病。程序性细胞死亡(PCD)模式在许多疾病的发展和进展中起着关键作用,因此它们可能具有作为有效的生物标志物或治疗靶点的价值,有助于识别和治疗结核病患者。
使用基因表达综合数据库(GEO)收集与结核病相关的数据集,然后分析这些数据中的免疫细胞谱,以检查潜在的与结核病相关的免疫稳态丧失。对差异表达的 PCD 相关基因进行了分析,然后通过机器学习方法选择候选的 PCD 相关基因。根据 PCD 相关基因的表达,通过共识聚类将结核病患者分为两个亚组。进一步研究这些 PCD 相关基因在其他与结核病相关疾病中的潜在作用。
总共确定了 14 个与 PCD 相关的差异表达基因(DEGs),这些基因在结核病患者样本中高表达,并与许多免疫细胞类型的丰度显著相关。机器学习算法能够选择七个与 PCD 相关的基因作为枢纽基因,用于建立与 PCD 相关的患者亚组,然后在独立数据集上验证这些亚组。这些发现,连同 GSVA 结果,表明在高水平表达 PCD 相关基因的结核病患者中,免疫相关途径显著富集,而在另一个患者组中,代谢途径显著富集。单细胞 RNA-seq(scRNA-seq)进一步突出了这些不同结核病患者样本的免疫状态存在显著差异。此外,我们使用 CMap 预测了五种潜在的用于治疗与结核病相关疾病的药物。
这些结果突出表明,结核病患者中 PCD 相关基因表达明显富集,并表明这种 PCD 活性与免疫细胞丰度密切相关。这表明 PCD 可能通过诱导或失调免疫反应在结核病的发展中发挥作用。这些发现为进一步研究结核病的分子驱动因素、选择适当的诊断生物标志物以及设计针对这种致命传染病的新型治疗干预措施提供了基础。