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乳酸相关基因特征作为鼻咽癌预后预测指标及免疫图谱的综合分析

Lactate-related gene signatures as prognostic predictors and comprehensive analysis of immune profiles in nasopharyngeal carcinoma.

作者信息

Liu Changlin, Ni Chuping, Li Chao, Tian Hu, Jian Weiquan, Zhong Yuping, Zhou Yanqing, Lyu Xiaoming, Zhang Yuanbin, Xiang Xiao-Jun, Cheng Chao, Li Xin

机构信息

Shenzhen Key Laboratory of Viral Oncology, The Clinical Innovation & Research Center (CIRC), Shenzhen Hospital, Southern Medical University, Shenzhen, Guangdong, China.

Cancer Research Institute, School of Basic Medical Sciences, Southern Medical University, Guangzhou, China.

出版信息

J Transl Med. 2024 Dec 20;22(1):1116. doi: 10.1186/s12967-024-05935-9.

Abstract

OBJECTIVES

Nasopharyngeal carcinoma (NPC) is an aggressive malignancy with high rates of morbidity and mortality, largely because of its late diagnosis and metastatic potential. Lactate metabolism and protein lactylation are thought to play roles in NPC pathogenesis by modulating the tumor microenvironment and immune evasion. However, research specifically linking lactate-related mechanisms to NPC remains limited. This study aimed to identify lactate-associated biomarkers in NPC and explore their underlying mechanisms, with a particular focus on immune modulation and tumor progression.

METHODS

To achieve these objectives, we utilized a bioinformatics approach in which publicly available gene expression datasets related to NPC were analysed. Differential expression analysis revealed differentially expressed genes (DEGs) between NPC and normal tissues. We performed weighted gene coexpression network analysis (WGCNA) to identify module genes significantly associated with NPC. Overlaps among DEGs, key module genes and lactate-related genes (LRGs) were analysed to derive lactate-related differentially expressed genes (LR-DEGs). Machine learning algorithms can be used to predict potential biomarkers, and immune infiltration analysis can be used to examine the relationships between identified biomarkers and immune cell types, particularly M0 macrophages and B cells.

RESULTS

A total of 1,058 DEGs were identified between the NPC and normal tissue groups. From this set, 372 key module genes associated with NPC were isolated. By intersecting the DEGs, key module genes and lactate-related genes (LRGs), 17 lactate-related DEGs (LR-DEGs) were identified. Using three machine learning algorithms, this list was further refined, resulting in three primary lactate-related biomarkers: TPPP3, MUC4 and CLIC6. These biomarkers were significantly enriched in pathways related to "immune cell activation" and the "extracellular matrix environment". Additionally, M0 and B macrophages were found to be closely associated with these biomarkers, suggesting their involvement in shaping the NPC immune microenvironment.

CONCLUSION

In summary, this study identified TPPP3, MUC4 and CLIC6 as lactate-associated clinical modelling indicators linked to NPC, providing a foundation for advancing diagnostic and therapeutic strategies for this malignancy.

摘要

目的

鼻咽癌(NPC)是一种侵袭性恶性肿瘤,发病率和死亡率很高,主要是因为其诊断较晚且具有转移潜力。乳酸代谢和蛋白质乳酸化被认为通过调节肿瘤微环境和免疫逃逸在鼻咽癌发病机制中发挥作用。然而,将乳酸相关机制与鼻咽癌具体联系起来的研究仍然有限。本研究旨在识别鼻咽癌中与乳酸相关的生物标志物,并探索其潜在机制,特别关注免疫调节和肿瘤进展。

方法

为实现这些目标,我们采用了一种生物信息学方法,分析了与鼻咽癌相关的公开可用基因表达数据集。差异表达分析揭示了鼻咽癌组织与正常组织之间的差异表达基因(DEGs)。我们进行了加权基因共表达网络分析(WGCNA),以识别与鼻咽癌显著相关的模块基因。分析DEGs、关键模块基因和乳酸相关基因(LRGs)之间的重叠,以得出与乳酸相关的差异表达基因(LR-DEGs)。机器学习算法可用于预测潜在的生物标志物,免疫浸润分析可用于检查已识别的生物标志物与免疫细胞类型之间的关系,特别是M0巨噬细胞和B细胞。

结果

在鼻咽癌组和正常组织组之间共鉴定出1058个DEGs。从该集合中,分离出372个与鼻咽癌相关的关键模块基因。通过对DEGs、关键模块基因和乳酸相关基因(LRGs)进行交叉分析,鉴定出17个与乳酸相关的DEGs(LR-DEGs)。使用三种机器学习算法,对该列表进行了进一步优化,得出了三种主要的与乳酸相关的生物标志物:TPPP3、MUC4和CLIC6。这些生物标志物在与“免疫细胞激活”和“细胞外基质环境”相关的通路中显著富集。此外,发现M0巨噬细胞和B巨噬细胞与这些生物标志物密切相关,表明它们参与塑造鼻咽癌免疫微环境。

结论

总之,本研究将TPPP3、MUC4和CLIC6鉴定为与鼻咽癌相关的乳酸相关临床建模指标,为推进这种恶性肿瘤的诊断和治疗策略奠定了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/058f/11662464/9864b15fc8ff/12967_2024_5935_Fig1_HTML.jpg

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