一种与锰代谢相关的基因特征可对肾癌的预后和免疫治疗疗效进行分层。

A manganese metabolism-related gene signature stratifies prognosis and immunotherapy efficacy in kidney cancer.

作者信息

Liu Yang, Ye Hao, Zhang Ruoxuan, Liu Xiaolong, Liu Ranlu

机构信息

Department of Urology, Tianjin Medical University General Hospital, No 154. Anshan Road, Tianjin, 300052, China.

出版信息

Discov Oncol. 2025 Jul 1;16(1):1242. doi: 10.1007/s12672-025-03050-9.

Abstract

BACKGROUND

Manganese modulates tumorigenesis and immune regulation. High levels of manganese may promote cancer progression. While manganese toxicity causes renal tubular damage and chronic impairment, its association with kidney cancer remains poorly understood.

METHODS

We systematically analyzed manganese metabolism genes in KIRC using the TCGA dataset. Through integrated bioinformatics approaches, including differential expression analysis, univariate Cox regression, and three machine learning algorithms (Boruta, GBM, and RFS), we identified prognosis-related MMCG. The Ward.D2 method was used to identify MMCG subtypes, while Lasso-cox regression analysis was performed to establish the MMCG risk model. The predictive performance was validated through time-dependent ROC analysis, calibration curves, and decision curve analysis.

RESULTS

We identified 11 prognosis-related manganese metabolism core genes (MMCGs). KIRC patients were stratified into two clusters based on MMCG expression levels. Patients in Cluster I showed poorer outcomes, which were associated with tumour progression. The MMCG risk score was subsequently developed using LASSO-Cox regression analysis, and patients were classified into high- and low-risk groups. Survival analysis revealed that the outcomes of high-risk group patients were poorer than those of the low-risk group. Univariate and multivariate analyses confirmed the MMCG risk score as an independent prognostic biomarker. Pathway enrichment analysis showed differential enrichment of immune and metabolic pathways across subtypes and risk groups. We constructed a clinical nomogram incorporating the MMCG risk score and other clinical parameters, which demonstrated highly accurate predictive capabilities. Immune infiltration analysis and immune therapy response predictions indicated that patients in Cluster I and the high-risk group showed low responses to immune therapy.

CONCLUSION

Our findings provide a basis for clinical stratification strategies and future research on manganese-based interventions for renal cell carcinoma (RCC).

摘要

背景

锰可调节肿瘤发生和免疫调节。高水平的锰可能促进癌症进展。虽然锰中毒会导致肾小管损伤和慢性损害,但其与肾癌的关联仍知之甚少。

方法

我们使用TCGA数据集系统分析了肾透明细胞癌(KIRC)中的锰代谢基因。通过综合生物信息学方法,包括差异表达分析、单变量Cox回归和三种机器学习算法(Boruta、梯度提升机(GBM)和随机森林抽样(RFS)),我们确定了与预后相关的锰代谢核心基因(MMCG)。采用Ward.D2方法识别MMCG亚型,同时进行Lasso-Cox回归分析以建立MMCG风险模型。通过时间依赖的ROC分析、校准曲线和决策曲线分析验证预测性能。

结果

我们确定了11个与预后相关的锰代谢核心基因(MMCG)。根据MMCG表达水平,KIRC患者被分为两个簇。簇I中的患者预后较差,这与肿瘤进展相关。随后使用LASSO-Cox回归分析得出MMCG风险评分,并将患者分为高风险和低风险组。生存分析显示,高风险组患者的预后比低风险组差。单变量和多变量分析证实MMCG风险评分是一个独立的预后生物标志物。通路富集分析显示免疫和代谢通路在亚型和风险组之间存在差异富集。我们构建了一个结合MMCG风险评分和其他临床参数的临床列线图,其显示出高度准确的预测能力。免疫浸润分析和免疫治疗反应预测表明,簇I和高风险组的患者对免疫治疗反应较低。

结论

我们的研究结果为肾细胞癌(RCC)的临床分层策略和未来基于锰的干预措施研究提供了依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6613/12214139/ab118b929e44/12672_2025_3050_Fig1_HTML.jpg

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