医学信息2026,Vol.39Issue(9):14-21,8.DOI:10.3969/j.issn.1006-1959.2026.09.002
基于生物信息学和机器学习的肺结核特征基因筛选及其免疫细胞浸润特征分析
Screening of Tuberculosis Characteristic Genes and Analysis of its Immune Cell Infiltration Characteristics Based on Bioinformatics and Machine Learning
摘要
Abstract
Objective To identify key signature genes of tuberculosis and explore its immune cell infiltration characteristics using bioinformatics and machine learning methods.Methods Data were obtained from the GEO database for differential expression gene(DEG)analysis and GO/KEGG functional enrichment analysis.LASSO regression and SVM-RFE were used to select signature genes,and ROC curves were plotted to evaluate their diagnostic value.Immune infiltration characteristics were analyzed using the CIBERSORT algorithm,and the correlation between signature genes and immune cells was examined.Finally,an miRNA-mRNA regulatory network related to TB was constructed.Results A total of 225 DEGs were identified.GO analysis showed enrichment in biological processes such as immune response activation,monocyte differentiation,and cytokine receptor binding,while KEGG analysis highlighted pathways including the NOD-like receptor signaling pathway and Th17 cell differentiation.Five signature genes were selected through machine learning,among which GBP5 and MUC1 showed significant differential expression in the validation set(P<0.01),with ROC AUC value>0.8,both two genes were significantly correlated with immune cell infiltration(P<0.05).Conclusion GBP5 and MUC1 are the key characteristic genes of tuberculosis.The constructed tuberculosis-related miRNA-mRNA regulatory network is helpful to provide theoretical support for the early diagnosis,treatment intervention and vaccine development of tuberculosis.关键词
肺结核/关键基因/免疫细胞浸润/机器学习Key words
Tuberculosis/Key genes/Immune cell infiltration/Machine learning分类
医药卫生引用本文复制引用
黄琪,何佳欣,马转转,再努尔·约麦尔..基于生物信息学和机器学习的肺结核特征基因筛选及其免疫细胞浸润特征分析[J].医学信息,2026,39(9):14-21,8.基金项目
大学生创新创业训练计划项目(编号:X202513561129) (编号:X202513561129)