Hei Changchun, Li Xiaowen, Wang Ruochen, Peng Jiahui, Liu Ping, Dong Xialan, Li P Andy, Zheng Weifan, Niu Jianguo, Yang Xiao
Key Laboratory for Craniocerebral Diseases of Ningxia Hui Autonomous Region, Department of Human Anatomy, Histology and Embryology, Ningxia Medical University, Yinchuan, China.
Department of Neurology, General Hospital of Ningxia Medical University, Yinchuan, China.
Sci Rep. 2025 Feb 27;15(1):7035. doi: 10.1038/s41598-024-83555-5.
The relationship between ischemic stroke (IS) and pyroptosis centers on the inflammatory response elicited by cerebral tissue damage during an ischemic stroke event. However, an in-depth mechanistic understanding of their connection remains limited. This study aims to comprehensively analyze the gene expression patterns of pyroptosis-related differentially expressed genes (PRDEGs) by employing integrated IS datasets and machine learning techniques. The primary objective was to develop classification models to identify crucial PRDEGs integral to the ischemic stroke process. Leveraging three distinct machine learning algorithms (LASSO, Random Forest, and Support Vector Machine), models were developed to differentiate between the Control and the IS patient samples. Through this approach, a core set of 10 PRDEGs consistently emerged as significant across all three machine learning models. Subsequent analysis of these genes yielded significant insights into their functional relevance and potential therapeutic approaches. In conclusion, this investigation underscores the pivotal role of pyroptosis pathways in ischemic stroke and identifies pertinent targets for therapeutic development and drug repurposing.
缺血性中风(IS)与细胞焦亡之间的关系集中在缺血性中风事件期间脑组织损伤引发的炎症反应上。然而,对它们之间联系的深入机制理解仍然有限。本研究旨在通过使用整合的IS数据集和机器学习技术,全面分析细胞焦亡相关差异表达基因(PRDEGs)的基因表达模式。主要目标是开发分类模型,以识别缺血性中风过程中不可或缺的关键PRDEGs。利用三种不同的机器学习算法(LASSO、随机森林和支持向量机),开发了区分对照样本和IS患者样本的模型。通过这种方法,一组由10个PRDEGs组成的核心基因在所有三种机器学习模型中均一致显示出显著性。对这些基因的后续分析为它们的功能相关性和潜在治疗方法提供了重要见解。总之,本研究强调了细胞焦亡途径在缺血性中风中的关键作用,并确定了治疗开发和药物重新利用的相关靶点。