Zhou Yimin, Li Xin, Wang Zixiu, Ng Liqi, He Rong, Liu Chaozong, Liu Gang, Fan Xiao, Mu Xiaohong, Zhou Yu
Department of Orthopedics, Dongzhimen Hospital of Beijing University of Chinese Medicine, Beijing, China.
Postdoctoral Research Workstation, Orthopedic Hospital, Chonqqing University of Chinese Medicine, Chongqing, China.
Front Neurol. 2025 Apr 23;16:1525416. doi: 10.3389/fneur.2025.1525416. eCollection 2025.
Spinal cord injury (SCI) severely affects the central nervous system. Copper homeostasis is closely related to mitochondrial regulation, and cuproptosis is a novel form of cell death associated with mitochondrial metabolism. This study aimed to explore the relationship between SCI and cuproptosis and construct prediction models.
Gene expression data of SCI patient samples from the GSE151371 dataset were analyzed. The differential expression and correlation of 13 cuproptosis-related genes (CRGs) between SCI and non-SCI samples were identified, and the ssGSEA algorithm was used for immunological infiltration analysis. Unsupervised clustering was performed based on differentially expressed CRGs, followed by weighted gene co-expression network analysis (WGCNA) and enrichment analysis. Three machine learning models (RF, LASSO, and SVM) were constructed to screen candidate genes, and a Nomogram model was used for verification. Animal experiments were carried out on an SCI rat model, including behavioral scoring, histological staining, electron microscopic observation, and qRT-PCR.
Seven CRGs showed differential expression between SCI and non-SCI samples, and there were significant differences in immune cell infiltration levels. Unsupervised clustering divided 38 SCI samples into two clusters (Cluster C1 and Cluster C2). WGCNA identified key modules related to the clusters, and enrichment analysis showed involvement in pathways such as the Ribosome and HIF-1 signaling pathway. Four candidate genes (SLC31A1, DBT, DLST, LIAS) were obtained from the machine learning models, with SLC31A1 performing best (AUC = 0.958). Animal experiments confirmed a significant decrease in the behavioral scores of rats in the SCI group, pathological changes in tissue sections, and differential expression of candidate genes in the SCI rat model.
This study revealed a close association between SCI and cuproptosis. Abnormal expression of the four candidate genes affects mitochondrial function, energy metabolism, oxidative stress, and the immune response, which is detrimental to the recovery of neurological function in SCI. However, this study has some limitations, such as unidentified SRGs, a small sample size. Future research requires more in vitro and in vivo experiments to deeply explore regulatory mechanisms and develop intervention methods.
脊髓损伤(SCI)严重影响中枢神经系统。铜稳态与线粒体调节密切相关,而铜死亡是一种与线粒体代谢相关的新型细胞死亡形式。本研究旨在探讨SCI与铜死亡之间的关系并构建预测模型。
分析来自GSE151371数据集的SCI患者样本的基因表达数据。确定SCI和非SCI样本之间13个铜死亡相关基因(CRGs)的差异表达和相关性,并使用单样本基因集富集分析(ssGSEA)算法进行免疫浸润分析。基于差异表达的CRGs进行无监督聚类,随后进行加权基因共表达网络分析(WGCNA)和富集分析。构建三种机器学习模型(随机森林、套索回归和支持向量机)以筛选候选基因,并使用列线图模型进行验证。对SCI大鼠模型进行动物实验,包括行为评分、组织学染色、电子显微镜观察和qRT-PCR。
7个CRGs在SCI和非SCI样本之间表现出差异表达,免疫细胞浸润水平存在显著差异。无监督聚类将38个SCI样本分为两个簇(簇C1和簇C2)。WGCNA确定了与这些簇相关的关键模块,富集分析表明其参与核糖体和HIF-1信号通路等途径。从机器学习模型中获得了四个候选基因(SLC31A1、DBT、DLST、LIAS),其中SLC31A1表现最佳(AUC = 0.958)。动物实验证实SCI组大鼠的行为评分显著降低,组织切片出现病理变化,且候选基因在SCI大鼠模型中存在差异表达。
本研究揭示了SCI与铜死亡之间的密切关联。四个候选基因的异常表达影响线粒体功能、能量代谢、氧化应激和免疫反应,这对SCI患者神经功能的恢复不利。然而,本研究存在一些局限性,如未鉴定的SRGs、样本量较小。未来的研究需要更多的体外和体内实验来深入探索调控机制并开发干预方法。