透明细胞肾细胞癌的代谢重编程和免疫微环境分析:对预后、靶向治疗和耐药性的影响

IF 2.8 4区 医学 Q3 ENDOCRINOLOGY & METABOLISM
Xiao Zheng, Yongqiang Liu, Zixin Yang, Yanhua Tian
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引用次数: 0

摘要

透明细胞肾细胞癌(ccRCC)是最常见的肾癌形式,其特点是代谢重编程、免疫微环境动力学和基因突变之间复杂的相互作用。在这项详细的研究中,我们分析了来自癌症基因组图谱(TCGA)的ccRCC队列以及来自KEGG数据库的81个代谢信号通路。通过使用基因集变异分析(GSVA),我们根据患者的代谢途径活性概况对患者进行了分层聚类,确定了三个不同的簇,它们在途径活性和生存结果上存在显著差异。第1组代谢活性高,生存预后较好,而第3组代谢活性低,预后较差。临床比较显示,在性别、组织学分期和生存状态方面存在显著差异,聚类3中晚期和已去世患者的比例更高。遗传上,集群1显示出最高的突变负担,VHL和PBRM1等基因突变突出。生物过程分析表明,有机羧酸代谢和ATP合成等途径在集群1中上调,而在集群3中受到抑制。机器学习模型(GBM、Cox boost和LASSO回归)能够识别出四个关键基因——bcat1、IL4I1、ACADM和acadsb——随后用于构建多因子Cox回归模型。该模型成功地将患者分为高危组和低危组,与免疫活动的显着差异相关。高危组趋化因子、TNF和HLA分子表达升高。药物敏感性分析提示AKT抑制剂III在低危队列中更有效,而硼替佐米可能对高危患者更有益。此外,综合风险评分和临床因素的临床预测模型显示了对患者生存的强大预测能力。通过UALCAN平台对核心基因进行甲基化分析,揭示了ccRCC中不同的表观遗传特征,为该疾病的分子机制提供了更深入的了解。本研究有助于更全面地了解ccRCC,并为个性化治疗策略和加强患者管理提供有价值的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metabolic reprogramming and immune microenvironment profiling in clear cell renal cell carcinoma: implications for prognosis, targeted therapy, and drug resistance.

Clear cell renal cell carcinoma (ccRCC) is the most prevalent form of kidney cancer, distinguished by intricate interactions between metabolic reprogramming, immune microenvironment dynamics, and genetic mutations. In this detailed investigation, we analyzed the ccRCC cohort from The Cancer Genome Atlas (TCGA) alongside 81 metabolic signaling pathways from the KEGG database. By utilizing Gene Set Variation Analysis (GSVA), we performed hierarchical clustering of patients based on their metabolic pathway activity profiles, identifying three distinct clusters with notable differences in pathway activity and survival outcomes. Cluster 1 displayed high metabolic activity and more favorable survival outcomes, while Cluster 3 was characterized by low metabolic activity and poorer prognosis. Clinical comparisons revealed significant disparities in gender, histological stage, and survival status, with Cluster 3 exhibiting a higher proportion of patients at advanced stages and those who had passed away. Genetically, Cluster 1 showed the highest mutation burden, with prominent mutations in genes such as VHL and PBRM1. Biological process analysis indicated that pathways like organic carboxylic acid metabolism and ATP synthesis were upregulated in Cluster 1 but suppressed in Cluster 3. Machine learning models (GBM, CoxBoost, and LASSO regression) enabled the identification of four pivotal genes-BCAT1, IL4I1, ACADM, and ACADSB-which were subsequently used to construct a multifactorial Cox regression model. This model successfully stratified patients into high- and low-risk groups, correlating with marked differences in immune activities. The high-risk group showed elevated expression of chemokines, TNF, and HLA molecules. Drug sensitivity analysis suggested that AKT inhibitor III was more effective in the low-risk cohort, while Bortezomib might be more beneficial for high-risk patients. Additionally, a clinical prediction model integrating risk scores and clinical factors demonstrated strong predictive power for patient survival. Methylation profiling of the core genes via the UALCAN platform revealed distinct epigenetic signatures in ccRCC, providing deeper insight into the disease's molecular mechanisms. This study contributes to a more comprehensive understanding of ccRCC and proposes valuable directions for personalized treatment strategies and enhanced patient management.

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来源期刊
Discover. Oncology
Discover. Oncology Medicine-Endocrinology, Diabetes and Metabolism
CiteScore
2.40
自引率
9.10%
发文量
122
审稿时长
5 weeks
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