Han Zonglin, Lu Xiulian, He Yuxiang, Zhang Tangshan, Zhou Zhengtong, Zhang Jingyong, Zhou Hua
Department of Vascular Surgery, Shandong Provincial Hospital Affiliated to Shandong First Medical University, Jinan, Shandong, China.
Cisen Pharmaceutical Co., Ltd, Jining, Shandong, China.
Front Immunol. 2024 Dec 11;15:1486209. doi: 10.3389/fimmu.2024.1486209. eCollection 2024.
Abdominal aortic aneurysm (AAA) is a serious life-threatening vascular disease, and its ferroptosis/cuproptosis markers have not yet been characterized. This study was aiming to identify markers associated with ferroptosis/cuproptosis in AAA by bioinformatics analysis combined with machine learning models and to perform experimental validation.
This study used three scRNA-seq datasets from different mouse models and a human PBMC bulk RNA-seq dataset. Candidate genes were identified by integrated analysis of scRNA-seq, cell communication analysis, monocle pseudo-time analysis, and hdWGCNA analysis. Four machine learning algorithms, LASSO, REF, RF and SVM, were used to construct a prediction model for the PBMC dataset, the above results were comprehensively analyzed, and the targets were confirmed by RT-qPCR.
scRNA-seq analysis showed Mo/MF as the most sensitive cell type to AAA, and 34 cuproptosis associated ferroptosis genes were obtained. Pseudo-time series analysis, hdWGCNA and machine learning prediction model construction were performed on these genes. Subsequent comparison of the above results showed that only PIM1 appeared in all algorithms. RT-qPCR and western blot results were consistent with sequencing results, showing that PIM1 was significantly upregulated in AAA.
In a conclusion, PIM1 as a novel biomarker associated with cuproptosis/ferroptosis in AAA was highlighted.
腹主动脉瘤(AAA)是一种严重威胁生命的血管疾病,其铁死亡/铜死亡标志物尚未明确。本研究旨在通过生物信息学分析结合机器学习模型鉴定与AAA中铁死亡/铜死亡相关的标志物,并进行实验验证。
本研究使用了来自不同小鼠模型的三个单细胞RNA测序(scRNA-seq)数据集和一个人类外周血单核细胞(PBMC)批量RNA测序数据集。通过scRNA-seq综合分析、细胞通讯分析、单样本拟时间分析和高密度加权基因共表达网络分析(hdWGCNA)鉴定候选基因。使用四种机器学习算法,即套索回归(LASSO)、随机森林(RF)、支持向量机(SVM)和岭回归(REF),为PBMC数据集构建预测模型,对上述结果进行综合分析,并通过逆转录定量聚合酶链反应(RT-qPCR)确认靶点。
scRNA-seq分析显示单核细胞/巨噬细胞(Mo/MF)是对AAA最敏感的细胞类型,并获得了34个与铜死亡相关的铁死亡基因。对这些基因进行了拟时间序列分析、hdWGCNA和机器学习预测模型构建。随后对上述结果进行比较,发现只有原癌基因丝氨酸/苏氨酸激酶1(PIM1)出现在所有算法中。RT-qPCR和蛋白质免疫印迹结果与测序结果一致,表明PIM1在AAA中显著上调。
总之,PIM1作为一种与AAA中铜死亡/铁死亡相关的新型生物标志物被凸显出来。