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整合基因表达谱分析揭示抗TNFα无反应性IBD患者可能的分子机制和候选生物标志物。

Integrated Gene Expression Profiling Analysis Reveals Probable Molecular Mechanism and Candidate Biomarker in Anti-TNFα Non-Response IBD Patients.

作者信息

Liu Yifan, Duan Yantao, Li Yousheng

机构信息

Department of General Surgery, Shanghai Ninth People's Hospital, Shanghai JiaoTong University School of Medicine, Shanghai 200011, People's Republic of China.

出版信息

J Inflamm Res. 2020 Feb 12;13:81-95. doi: 10.2147/JIR.S236262. eCollection 2020.

Abstract

PURPOSE

To explore the molecular mechanism and search for candidate biomarkers in the gene expression profile of IBD patients associated with the response to anti-TNFα agents.

METHODS

Differentially expressed genes (DEGs) of response vs non-response IBD patients in datasets GSE12251, GSE16879, and GSE23597 were integrated using NetworkAnalyst. We conducted functional enrichment analysis of Gene Ontology and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway and extracted hub genes from the protein-protein interaction network. The proportion of immune cell types was estimated via CIBERSORT. ROC curve analysis and binomial Lasso regression were applied to assess the expression level of hub genes in datasets GSE12251, GSE16879, and GSE23597, and another two datasets GSE107865 and GSE42296.

RESULTS

A total of 287 DEGs were obtained from the integrated dataset. They were enriched in 14 Gene Ontology terms and 11 KEGG pathways. Polarization from M2 to M1 macrophages was relatively high in non-response individuals. We found nine hub genes (TLR4, TLR1, TLR8, CCR1, CD86, CCL4, HCK, and FCGR2A), mainly related to the interaction between Toll-like Receptor (TLR) pathway and FcγR signaling in non-response anti-TNFα individuals. FCGR2A, HCK, TLR1, TLR4, TLR8, and CCL4 show great value for prediction in intestinal tissue. Besides, FCGR2A, HCK, and TLR8 might be candidate blood biomarkers of anti-TNFα non-response IBD patients.

CONCLUSION

Over-activated interaction between FcγR-TLR axis in the innate immune cells of IBD patients might be used to identify non-response individuals and increased our understanding of resistance to anti-TNFα therapy.

摘要

目的

探讨炎症性肠病(IBD)患者基因表达谱中与抗TNFα药物反应相关的分子机制,并寻找候选生物标志物。

方法

使用NetworkAnalyst整合数据集GSE12251、GSE16879和GSE23597中反应性与非反应性IBD患者的差异表达基因(DEG)。我们对基因本体论(Gene Ontology)和京都基因与基因组百科全书(KEGG)通路进行了功能富集分析,并从蛋白质-蛋白质相互作用网络中提取了枢纽基因。通过CIBERSORT估计免疫细胞类型的比例。应用ROC曲线分析和二项式套索回归评估枢纽基因在数据集GSE12251、GSE16879、GSE23597以及另外两个数据集GSE107865和GSE42296中的表达水平。

结果

从整合数据集中共获得287个DEG。它们富集于14个基因本体论术语和11条KEGG通路。非反应性个体中M2至M1巨噬细胞的极化相对较高。我们发现了9个枢纽基因(TLR4、TLR1、TLR8、CCR1、CD86、CCL4、HCK和FCGR2A),主要与非反应性抗TNFα个体中Toll样受体(TLR)通路和FcγR信号之间的相互作用有关。FCGR2A、HCK、TLR1、TLR4、TLR8和CCL4在肠道组织中显示出很大的预测价值。此外,FCGR2A、HCK和TLR8可能是抗TNFα非反应性IBD患者的候选血液生物标志物。

结论

IBD患者固有免疫细胞中FcγR-TLR轴的过度激活相互作用可能用于识别非反应性个体,并加深我们对抗TNFα治疗耐药性的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d42a/7024800/68966c3e774d/JIR-13-81-g0001.jpg

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