Chen Lin, Ge Mengxiao, Mo Shaocong, Shi Menglin, Zhang Jun, Liu Jie
Department of Digestive Diseases of Huashan Hospital, Fudan University, Shanghai, 200040, China.
Curr Med Chem. 2024 Feb 14. doi: 10.2174/0109298673296767240116215814.
This study was designed to develop a ferroptosis-related gene signature for guiding the prognostic prediction in colorectal cancer (CRC) and to explore the potential in the molecular functions of the gene signature.
Ferroptosis is mainly characterized by lipid peroxide accumulation on the cell membranes in an iron-dependent manner, resulting in cellular oxidative stress, metabolic disorders, and, ultimately, cell death. This study aimed to develop a prognostic ferroptosis signature in CRC and explore its potential molecular function.
The present work was designed to devise a ferroptosis signature for CRC prognosis and explore its potential molecular function.
Single-cell RNA sequencing data GSE161277 and transcriptome sequencing data GSE17537 and TCGA-CRC from the Gene Expression Omnibus (GEO) and the Cancer Genome Atlas (TCGA) databases were downloaded, respectively. Quality control, dimension reduction, clustering, and clustering of single-cell RNA sequencing (scRNA- seq) data were performed using the Seurat package. A total of 259 ferroptosis-correlated genes from the FerrDb database were acquired. The single sample gene set enrichment analysis (ssGSEA) was performed to calculate the scores of genes related to ferroptosis. ESTIMATE was used to calculate immune infiltration. Independent prognostic factors were determined by performing Weighted Gene Co-Expression Network Analysis (WGCNA), univariate and Cox analyses, and Lasso analyses were used to search for independent prognostic factors.
From the scRNA-seq (GSE161277) dataset, 22 cell clusters were initially identified, and according to immune cell markers, only 8 types of cells (Follicular B, central memory T cell, Epithelial, Natural killer T cell, Plasma B, M1 macrophage, Fibroblasts, and Mast cell) were finally determined to be related to CRC prognosis. The results of the scRNA-seq analysis showed that the score of ferroptosis-related genes was higher in tumour tissues and in 8 types of cells in tumour samples. In the TCGA dataset, CRC samples were divided into ferroptosis-related high scores, ferroptosis-related median scores, and ferroptosis-related low scores. Immune cell analysis revealed that ferroptosis- related high scores had the highest abundance of immune cells. An 11-gene signature was developed by WGCNA, univariate Cox, and Lasso Cox regression. The prediction ability of the signature was successfully validated in the GSE17537 dataset. A comprehensive nomogram combining the 11 signature genes and clinical parameters could effectively predict the overall survival of CRC patients.
The present molecular signature established based on the 11 ferroptosis-related genes performed well in assessing CRC prognosis. The present discoveries could inspire further research on ferroptosis, providing a new direction for CRC management.
本研究旨在开发一种与铁死亡相关的基因特征,用于指导结直肠癌(CRC)的预后预测,并探索该基因特征在分子功能方面的潜力。
铁死亡主要特征是以铁依赖性方式在细胞膜上积累脂质过氧化物,导致细胞氧化应激、代谢紊乱,最终导致细胞死亡。本研究旨在开发一种用于CRC预后的铁死亡特征,并探索其潜在的分子功能。
本研究旨在设计一种用于CRC预后的铁死亡特征,并探索其潜在的分子功能。
分别从基因表达综合数据库(GEO)和癌症基因组图谱(TCGA)数据库下载单细胞RNA测序数据GSE161277、转录组测序数据GSE17537和TCGA-CRC。使用Seurat软件包对单细胞RNA测序(scRNA-seq)数据进行质量控制、降维、聚类和分群。从FerrDb数据库中获取了总共259个与铁死亡相关的基因。进行单样本基因集富集分析(ssGSEA)以计算与铁死亡相关基因的得分。使用ESTIMATE计算免疫浸润。通过加权基因共表达网络分析(WGCNA)、单因素和Cox分析确定独立预后因素,并使用Lasso分析寻找独立预后因素。
从scRNA-seq(GSE161277)数据集中,最初鉴定出22个细胞簇,根据免疫细胞标志物,最终确定只有8种细胞(滤泡B细胞、中央记忆T细胞、上皮细胞、自然杀伤T细胞、浆细胞B、M1巨噬细胞、成纤维细胞和肥大细胞)与CRC预后相关。scRNA-seq分析结果表明,肿瘤组织和肿瘤样本中的8种细胞中铁死亡相关基因的得分更高。在TCGA数据集中,CRC样本被分为铁死亡相关高分、铁死亡相关中分数和铁死亡相关低分。免疫细胞分析显示,铁死亡相关高分的免疫细胞丰度最高。通过WGCNA、单因素Cox和Lasso Cox回归开发了一个11基因特征。该特征的预测能力在GSE17537数据集中得到成功验证。结合11个特征基因和临床参数的综合列线图可以有效预测CRC患者的总生存期。
基于11个铁死亡相关基因建立的当前分子特征在评估CRC预后方面表现良好。本研究结果可能会激发对铁死亡的进一步研究,为CRC的管理提供新的方向。