Wang Chao, Yu Lu, Ma Hongyan
Department of Anesthesiology, !e First Hospital A"liated to Harbin Medical University, Heilongjiang, China.
Acta Orthop Traumatol Turc. 2025 Jun 5;59(4):201-209. doi: 10.5152/j.aott.2025.24248.
Objective: The objective of this study is to explore the role and regulatory mechanisms of disulfidoptosis in spinal cord injury (SCI) and to develop a diagnostic model based on this cell death mechanism. Methods: The peripheral blood RNA-seq data from SCI patients sourced from dataset GSE151371 was utilized in the study. Various analytical techniques, including differential gene expression analysis, immune infiltration profiling, consistency clustering, and pathway enrichment analysis, were employed to investigate the impact of disulfidoptosis. Machine learning models were also developed to aid in the diagnosis of SCI based on gene expression profiles related to disulfidoptosis. Results: Gene expression analysis revealed significant upregulation of genes such as GYS1, PDLIM1, NDUFA11, and MYL6, and down-regulation of NUBPL, LRPPRC, and CD2AP in SCI patients, with statistical significance (P < .05). Immune infiltration profiling showed a decrease in CD4+ and CD8+ T cells, contrasted by an increase in gamma delta T cells (P < .05), indicating an altered immune landscape. Furthermore, 2 distinct subgroups were identified through consistency clustering, highlighting significant differences in disulfidoptosis- related gene expression. Pathway enrichment analysis revealed different pathways between clusters, suggesting diverse regulatory mechanisms within SCI subtypes. The diagnostic model evaluation using random forest achieved the highest accuracy with an area under the curve (AUC) of 0.955, demonstrating its potential utility in clinical settings for SCI diagnosis. Conclusion: Disulfidoptosis plays a significant role in the pathophysiology of SCI. This study offers novel insights into its molecular mechanisms and presents a potential foundation for diagnostic modeling.
本研究旨在探讨二硫键介导的细胞死亡在脊髓损伤(SCI)中的作用及调控机制,并基于这种细胞死亡机制建立诊断模型。方法:本研究利用了来自数据集GSE151371的SCI患者外周血RNA测序数据。采用了多种分析技术,包括差异基因表达分析、免疫浸润分析、一致性聚类和通路富集分析,以研究二硫键介导的细胞死亡的影响。还基于与二硫键介导的细胞死亡相关的基因表达谱开发了机器学习模型,以辅助SCI的诊断。结果:基因表达分析显示,SCI患者中GYS1、PDLIM1、NDUFA11和MYL6等基因显著上调,而NUBPL、LRPPRC和CD2AP下调,具有统计学意义(P < 0.05)。免疫浸润分析显示CD4 +和CD8 + T细胞减少,而γδT细胞增加(P < 0.05),表明免疫格局发生改变。此外,通过一致性聚类确定了2个不同的亚组,突出了二硫键介导的细胞死亡相关基因表达的显著差异。通路富集分析揭示了不同亚组之间的不同通路,表明SCI亚型内存在多种调控机制。使用随机森林进行的诊断模型评估达到了最高准确率,曲线下面积(AUC)为0.955,证明了其在SCI临床诊断中的潜在应用价值。结论:二硫键介导的细胞死亡在SCI的病理生理学中起重要作用。本研究为其分子机制提供了新的见解,并为诊断建模提供了潜在基础。