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胃癌中线粒体与巨噬细胞极化相关预后特征的构建与验证

Construction and validation of prognostic signatures related to mitochondria and macrophage polarization in gastric cancer.

作者信息

Zhang Yan, Cao Jian, Yuan Zhen, Zuo Hao, Yao Jiacong, Tu Xiaodie, Gu Xinhua

机构信息

Department of Gastrointestinal Surgery, Suzhou Municipal Hospital, Affiliated Suzhou Hospital of Nanjing Medical University, Gusu School of Nanjing Medical University, Suzhou, China.

Department of Gastroenterology, Suzhou Municipal Hospital, Affiliated Suzhou Hospital of Nanjing Medical University, Gusu School of Nanjing Medical University, Suzhou, China.

出版信息

Front Oncol. 2024 Jul 26;14:1433874. doi: 10.3389/fonc.2024.1433874. eCollection 2024.

Abstract

BACKGROUND

Increasing evidence reveals the involvement of mitochondria and macrophage polarisation in tumourigenesis and progression. This study aimed to establish mitochondria and macrophage polarisation-associated molecular signatures to predict prognosis in gastric cancer (GC) by single-cell and transcriptional data.

METHODS

Initially, candidate genes associated with mitochondria and macrophage polarisation were identified by differential expression analysis and weighted gene co-expression network analysis. Subsequently, candidate genes were incorporated in univariateCox analysis and LASSO to acquire prognostic genes in GC, and risk model was created. Furthermore, independent prognostic indicators were screened by combining risk score with clinical characteristics, and a nomogram was created to forecast survival in GC patients. Further, in single-cell data analysis, cell clusters and cell subpopulations were yielded, followed by the completion of pseudo-time analysis. Furthermore, a more comprehensive immunological analysis was executed to uncover the relationship between GC and immunological characteristics. Ultimately, expression level of prognostic genes was validated through public datasets and qRT-PCR.

RESULTS

A risk model including six prognostic genes (GPX3, GJA1, VCAN, RGS2, LOX, and CTHRC1) associated with mitochondria and macrophage polarisation was developed, which was efficient in forecasting the survival of GC patients. The GC patients were categorized into high-/low-risk subgroups in accordance with median risk score, with the high-risk subgroup having lower survival rates. Afterwards, a nomogram incorporating risk score and age was generated, and it had significant predictive value for predicting GC survival with higher predictive accuracy than risk model. Immunological analyses revealed showed higher levels of M2 macrophage infiltration in high-risk subgroup and the strongest positive correlation between risk score and M2 macrophages. Besides, further analyses demonstrated a better outcome for immunotherapy in low-risk patients. In single-cell and pseudo-time analyses, stromal cells were identified as key cells, and a relatively complete developmental trajectory existed for stromal C1 in three subclasses. Ultimately, expression analysis revealed that the expression trend of RGS2, GJA1, GPX3, and VCAN was consistent with the results of the TCGA-GC dataset.

CONCLUSION

Our findings demonstrated that a novel prognostic model constructed in accordance with six prognostic genes might facilitate the improvement of personalised prognosis and treatment of GC patients.

摘要

背景

越来越多的证据表明线粒体和巨噬细胞极化参与肿瘤的发生和发展。本研究旨在通过单细胞和转录数据建立与线粒体和巨噬细胞极化相关的分子特征,以预测胃癌(GC)的预后。

方法

首先,通过差异表达分析和加权基因共表达网络分析确定与线粒体和巨噬细胞极化相关的候选基因。随后,将候选基因纳入单变量Cox分析和LASSO分析,以获取GC中的预后基因,并建立风险模型。此外,通过将风险评分与临床特征相结合筛选独立的预后指标,并创建列线图以预测GC患者的生存情况。此外,在单细胞数据分析中,生成细胞簇和细胞亚群,随后完成伪时间分析。此外,进行了更全面的免疫分析,以揭示GC与免疫特征之间的关系。最后,通过公共数据集和qRT-PCR验证预后基因的表达水平。

结果

建立了一个包含六个与线粒体和巨噬细胞极化相关的预后基因(GPX3、GJA1、VCAN、RGS2、LOX和CTHRC1)的风险模型,该模型在预测GC患者的生存情况方面具有高效性。根据中位风险评分将GC患者分为高/低风险亚组,高风险亚组的生存率较低。随后,生成了一个包含风险评分和年龄的列线图,它在预测GC生存方面具有显著的预测价值,预测准确性高于风险模型。免疫分析显示,高风险亚组中M2巨噬细胞浸润水平较高,且风险评分与M2巨噬细胞之间的正相关性最强。此外,进一步分析表明低风险患者接受免疫治疗的效果更好。在单细胞和伪时间分析中,基质细胞被确定为关键细胞,并且在三个亚类中基质C1存在相对完整的发育轨迹。最后,表达分析表明RGS2、GJA1、GPX3和VCAN的表达趋势与TCGA-GC数据集的结果一致。

结论

我们的研究结果表明,根据六个预后基因构建的新型预后模型可能有助于改善GC患者的个性化预后和治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8a87/11310369/a3b430ea5b3e/fonc-14-1433874-g001.jpg

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