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整合多组学和机器学习方法揭示了一种与胃癌发生中癌症相关成纤维细胞相关的新型代谢相关特征。

Integrative multi-omics and machine-learning approaches uncover a novel metabolic-related signature associated with cancer-associated fibroblasts in gastric cancer development.

作者信息

Ngoc Tram Van Thi, Minh Xuan Do Thi, Quy Nguyen Doan Phuong, Anuraga Gangga, Khoa Ta Hoang Dang

机构信息

Department of Medical Laboratory, University Medical Center Ho Chi Minh City, Ho Chi Minh City, Vietnam.

Faculty of Pharmacy, Van Lang University, 69/68 Dang Thuy Tram Street, Ward 13, Binh Thanh District, Ho Chi Minh City 70000, Vietnam.

出版信息

Comput Biol Med. 2025 Jun 20;195:110653. doi: 10.1016/j.compbiomed.2025.110653.

Abstract

Gastric cancer (GC) ranks as the fifth most commonly diagnosed malignancy and the fourth leading cause of cancer-related mortality worldwide. The integration of machine learning in the analysis of GC metabolomics data for biomarker identification remains underexplored, presenting substantial opportunities for further investigation. This study integrated various data types, including microarray, bulk RNA-seq, and single-cell RNA sequencing (scRNA-seq). GSE15459 and GSE26253 were used as external validation cohorts to evaluate model performance. GC's metabolic-related signature (MRS) expression profiles in GC were analyzed using scRNA-seq data from the GSE183904 dataset. Notably, metabolism-related genes exhibited significantly higher enrichment in fibroblasts compared to other cell types, suggesting a potential role of fibroblasts in metabolic dysfunction associated with cancer progression. From this, the analysis revealed that only the gene signature associated with a cancer-associated fibroblast (CAF) cluster, annotated as CAF_6, was significantly correlated with poorer overall survival. This indicated that CAF_6 had a potential pro-tumorigenic role, enriched for TNF-alpha signaling via NF-kB and epithelial-mesenchymal transition pathways. Additionally, a combined machine learning strategy was employed to develop a metabolism-associated signature, demonstrating a strong association with prognosis in TCGA-STAD patients (p-value <0.01). A nomogram was constructed to predict clinical outcomes in STAD patients by incorporating the MRS risk score alongside clinical parameters such as disease stage, age, and sex. In conclusion, our study emphasizes the molecular and functional heterogeneity of CAFs in GC and introduces a novel MRS with strong prognostic relevance. These insights provide a foundation for future investigations aimed at refining risk stratification and advancing targeted therapeutic approaches for GC.

摘要

胃癌(GC)是全球第五大最常被诊断出的恶性肿瘤,也是癌症相关死亡的第四大主要原因。机器学习在胃癌代谢组学数据分析中用于生物标志物识别的整合仍未得到充分探索,这为进一步研究提供了大量机会。本研究整合了多种数据类型,包括微阵列、批量RNA测序和单细胞RNA测序(scRNA-seq)。GSE15459和GSE26253用作外部验证队列以评估模型性能。使用来自GSE183904数据集的scRNA-seq数据分析了GC中与代谢相关的特征(MRS)表达谱。值得注意的是,与其他细胞类型相比,代谢相关基因在成纤维细胞中的富集程度显著更高,这表明成纤维细胞在与癌症进展相关的代谢功能障碍中可能发挥作用。由此分析发现,只有与癌症相关成纤维细胞(CAF)簇(注释为CAF_6)相关的基因特征与较差的总生存期显著相关。这表明CAF_6具有潜在的促肿瘤作用,通过NF-κB和上皮-间质转化途径富集肿瘤坏死因子-α信号。此外,采用联合机器学习策略开发了一种与代谢相关的特征,证明其与TCGA-STAD患者的预后密切相关(p值<0.01)。通过将MRS风险评分与疾病分期、年龄和性别等临床参数相结合,构建了一个列线图来预测STAD患者的临床结局。总之,我们的研究强调了GC中CAF的分子和功能异质性,并引入了一种具有强预后相关性的新型MRS。这些见解为未来旨在完善风险分层和推进GC靶向治疗方法的研究奠定了基础。

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