Wang Ziqing, Zou Jixuan
Beijing Friendship Hospital, Capital Medical University, Beijing, China.
Graduate School, Beijing University of Chinese Medicine, Beijing, China.
Front Cardiovasc Med. 2024 Aug 12;11:1426278. doi: 10.3389/fcvm.2024.1426278. eCollection 2024.
Polycythemia vera (PV) is a myeloproliferative disease characterized by significantly higher hemoglobin levels and positivity for JAK2 mutation. Thrombosis is the main risk event of this disease. Atherosclerosis (AS) can markedly increase the risk of arterial thrombosis in patients with PV. The objectives of our study were to identify potential biomarkers for PV-related AS and to explore the molecular biological association between PV and AS.
We extracted microarray datasets from the Gene Expression Omnibus (GEO) dataset for PV and AS. Common differentially expressed genes (CGs) were identified by differential expression analysis. Functional enrichment and protein-protein interaction (PPI) networks were constructed from the CG by random forest models using LASSO regression to identify pathogenic genes and their underlying processes in PV-related AS. The expression of potential biomarkers was validated using an external dataset. A diagnostic nomogram was constructed based on potential biomarkers to predict PV-related AS, and its diagnostic performance was assessed using ROC, calibration, and decision curve analyses. Subsequently, we used single-cell gene set enrichment analysis (GSEA) to analyze the immune signaling pathways associated with potential biomarkers. We also performed immune infiltration analysis of AS with "CIBERSORT" and calculated Pearson's correlation coefficients for potential biomarkers and infiltrating immune cells. Finally, we observed the expression of potential biomarkers in immune cells based on the single-cell RNA dataset.
Fifty-two CGs were identified based on the intersection between up-regulated and down-regulated genes in PV and AS. Most biological processes associated with CGs were cytokines and factors associated with chemotaxis of immune cells. The PPI analysis identified ten hub genes, and of these, CCR1 and MMP9 were selected as potential biomarkers with which to construct a diagnostic model using machine learning methods and external dataset validation. These biomarkers could regulate Toll-like signaling, NOD-like signaling, and chemokine signaling pathways associated with AS. Finally, we determined that these potential biomarkers had a strong correlation with macrophage M0 infiltration. Further, the potential biomarkers were highly expressed in macrophages from patients with AS.
We identified two CGs (CCR1 and MMP9) as potential biomarkers for PV-related AS and established a diagnostic model based on them. These results may provide insight for future experimental studies for the diagnosis and treatment of PV-related AS.
真性红细胞增多症(PV)是一种骨髓增殖性疾病,其特征为血红蛋白水平显著升高以及JAK2突变呈阳性。血栓形成是该疾病的主要风险事件。动脉粥样硬化(AS)可显著增加PV患者发生动脉血栓形成的风险。我们研究的目的是确定PV相关AS的潜在生物标志物,并探讨PV与AS之间的分子生物学关联。
我们从基因表达综合数据库(GEO)中提取了PV和AS的微阵列数据集。通过差异表达分析确定常见的差异表达基因(CGs)。使用随机森林模型和LASSO回归从CGs构建功能富集和蛋白质-蛋白质相互作用(PPI)网络,以识别PV相关AS中的致病基因及其潜在过程。使用外部数据集验证潜在生物标志物的表达。基于潜在生物标志物构建诊断列线图以预测PV相关AS,并使用ROC、校准和决策曲线分析评估其诊断性能。随后,我们使用单细胞基因集富集分析(GSEA)分析与潜在生物标志物相关的免疫信号通路。我们还使用“CIBERSORT”对AS进行免疫浸润分析,并计算潜在生物标志物与浸润免疫细胞的Pearson相关系数。最后,我们基于单细胞RNA数据集观察潜在生物标志物在免疫细胞中的表达。
基于PV和AS中上调和下调基因的交集,确定了52个CGs。与CGs相关的大多数生物学过程是细胞因子和与免疫细胞趋化性相关的因子。PPI分析确定了10个枢纽基因,其中CCR1和MMP9被选为潜在生物标志物,使用机器学习方法和外部数据集验证构建诊断模型。这些生物标志物可调节与AS相关的Toll样信号传导、NOD样信号传导和趋化因子信号传导途径。最后,我们确定这些潜在生物标志物与巨噬细胞M0浸润密切相关。此外,潜在生物标志物在AS患者的巨噬细胞中高表达。
我们确定了两个CGs(CCR1和MMP9)作为PV相关AS的潜在生物标志物,并基于它们建立了诊断模型。这些结果可能为未来PV相关AS诊断和治疗的实验研究提供思路。