Zhongwen Lu, Na An, Shouwei Sheng, Mao Hong, Pin Deng, Junde Wu, Shengji Zhang, Zhaojun Chen
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引用次数: 0
摘要
糖尿病足溃疡(DFU)是糖尿病的严重并发症,常因伤口愈合不良和感染而导致截肢。DFU的免疫相关发病机制尚不清楚,治疗药物有限。本研究旨在探索DFU的免疫机制,并利用机器学习和单细胞方法确定潜在的治疗药物。通过Gene expression Omnibus (GEO)数据集的差异表达分析,我们鉴定出287个差异表达基因(deg),这些基因在IL-17信号通路和中性粒细胞趋化途径中显著富集。加权基因共表达网络分析(WGCNA)进一步确定了包含1,693个调控基因的疾病相关模块。机器学习算法优先排序了7个核心基因——ccl20、CXCL13、FGFR2、FGFR3、PI3、PLA2G2A和s100a8,并在外部数据集GSE147890和单细胞测序中进行了验证,揭示了它们在中性粒细胞和角质形成细胞中的主要表达。免疫浸润分析显示DFU患者存在明显的失调,其特征是记忆B细胞、M0巨噬细胞、活化肥大细胞和中性粒细胞比例升高。使用Connectivity Map数据库识别潜在的治疗化合物,并通过分子对接和动力学模拟进行测试。该研究确定了selegiline, L-BSO, fluunisolide, PP-30和氟西诺酮是有前途的治疗药物,为糖尿病足溃疡(DFU)的发病机制和潜在的治疗策略提供了新的见解。
Machine learning combining external validation to explore the immunopathogenesis of diabetic foot ulcer and predict therapeutic drugs.
Diabetic foot ulcer (DFU) is a severe complication of diabetes, often leading to amputation due to poor wound healing and infection. The immune-related pathogenesis of DFU remains unclear, and therapeutic drugs are limited. This study aimed to explore the immune mechanisms of DFU and identify potential therapeutic drugs using machine learning and single-cell approaches. Through differential expression analysis of Gene Expression Omnibus (GEO) datasets, we identified 287 differentially expressed genes (DEGs), which were significantly enriched in IL-17 signaling and neutrophil chemotaxis pathways. Weighted gene co-expression network analysis (WGCNA) further pinpointed disease-associated modules containing 1,693 regulatory genes. Machine learning algorithms prioritized seven core genes-CCL20, CXCL13, FGFR2, FGFR3, PI3, PLA2G2A, and S100A8-with validation in an external dataset GSE147890 and single-cell sequencing revealing their predominant expression in neutrophils and keratinocytes. Immune infiltration analysis demonstrated significant dysregulation in DFU patients, characterized by elevated proportions of memory B cells, M0 macrophages, activated mast cells, and neutrophils. Potential therapeutic compounds were identified using the Connectivity Map database and tested through molecular docking and dynamics simulations. The study pinpointed selegiline, L-BSO, flunisolide, PP-30, and fluocinolone as promising therapeutic agents, offering new insights into the pathogenesis of diabetic foot ulcers (DFU) and potential therapeutic strategies.
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