Wang Xuefu, Rao Jin, Chen Xiangyu, Wang Zhinong, Zhang Yufeng
School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai, People's Republic of China.
Department of Cardiothoracic Surgery, Shanghai Changzheng Hospital, Naval Medical University, Shanghai, People's Republic of China.
J Inflamm Res. 2024 Mar 21;17:1873-1895. doi: 10.2147/JIR.S450736. eCollection 2024.
A complex interrelationship exists between Heart Failure (HF) and chronic kidney disease (CKD). This study aims to clarify the molecular mechanisms of the organ-to-organ interplay between heart failure and CKD, as well as to identify extremely sensitive and specific biomarkers.
Differentially expressed tandem genes were identified from HF and CKD microarray datasets and enrichment analyses of tandem perturbation genes were performed to determine their biological functions. Machine learning algorithms are utilized to identify diagnostic biomarkers and evaluate the model by ROC curves. RT-PCR was employed to validate the accuracy of diagnostic biomarkers. Molecular subtypes were identified based on tandem gene expression profiling, and immune cell infiltration of different subtypes was examined. Finally, the ssGSEA score was used to build the ImmuneScore model and to assess the differentiation between subtypes using ROC curves.
Thirty-three crosstalk genes were associated with inflammatory, immune and metabolism-related signaling pathways. The machine-learning algorithm identified 5 hub genes (PHLDA1, ATP1A1, IFIT2, HLTF, and MPP3) as the optimal shared diagnostic biomarkers. The expression levels of tandem genes were negatively correlated with left ventricular ejection fraction and glomerular filtration rate. The CIBERSORT results indicated the presence of severe immune dysregulation in patients with HF and CKD, which was further validated at the single-cell level. Consensus clustering classified HF and CKD patients into immune and metabolic subtypes. Twelve immune genes associated with immune subtypes were screened based on WGCNA analysis, and an ImmuneScore model was constructed for high and low risk. The model accurately predicted different molecular subtypes of HF or CKD.
Five crosstalk genes may serve as potential biomarkers for diagnosing HF and CKD and are involved in disease progression. Metabolite disorders causing activation of a large number of immune cells explain the common pathogenesis of HF and CKD.
心力衰竭(HF)与慢性肾脏病(CKD)之间存在复杂的相互关系。本研究旨在阐明心力衰竭与CKD之间器官间相互作用的分子机制,并确定极其敏感和特异的生物标志物。
从HF和CKD微阵列数据集中鉴定差异表达的串联基因,并对串联扰动基因进行富集分析以确定其生物学功能。利用机器学习算法鉴定诊断生物标志物,并通过ROC曲线评估模型。采用RT-PCR验证诊断生物标志物的准确性。基于串联基因表达谱鉴定分子亚型,并检测不同亚型的免疫细胞浸润情况。最后,使用单样本基因集富集分析(ssGSEA)评分构建免疫评分模型,并通过ROC曲线评估亚型之间的差异。
33个相互作用基因与炎症、免疫和代谢相关信号通路有关。机器学习算法鉴定出5个核心基因(PHLDA1、ATP1A1、IFIT2、HLTF和MPP3)作为最佳的共享诊断生物标志物。串联基因的表达水平与左心室射血分数和肾小球滤过率呈负相关。CIBERSORT结果表明HF和CKD患者存在严重的免疫失调,这在单细胞水平上得到了进一步验证。一致性聚类将HF和CKD患者分为免疫和代谢亚型。基于加权基因共表达网络分析(WGCNA)筛选出12个与免疫亚型相关的免疫基因,并构建了高风险和低风险的免疫评分模型。该模型准确预测了HF或CKD的不同分子亚型。
5个相互作用基因可能作为诊断HF和CKD的潜在生物标志物,并参与疾病进展。代谢紊乱导致大量免疫细胞激活解释了HF和CKD的共同发病机制。