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采用荟萃分析和系统生物学方法对透明细胞肾细胞癌进行系统研究。

A systematic investigation of clear cell renal cell carcinoma using meta-analysis and systems biology approaches.

机构信息

Biotechnology Research Center, Tabriz University of Medical Sciences, Tabriz, Iran.

出版信息

Mol Genet Genomics. 2024 Sep 16;299(1):87. doi: 10.1007/s00438-024-02180-z.

Abstract

Renal cell carcinoma with clear cells (ccRCC) is the most frequent kind; it accounts for almost 70% of all kidney cancers. A primary objective of current research was to find genes that may be used in ccRCC gene therapy to understand better the molecular pathways underlying the disease. Based on PubMed microarray searches and meta-analyses, we compared overall survival and recurrence-free survival rates in ccRCC patients with those in healthy samples. The technique was followed by a KEGG pathway and Gene Ontology (GO) function analyses, both performed in conjunction with the approach. Tumor immune estimate and multi-gene biomarkers validation for clinical outcomes were performed at the molecular and clinical cohort levels. Our analysis included fourteen GEO datasets based on inclusion and exclusion criteria. A meta-analysis procedure, network construction using PPIs, and four significant gene identification standard algorithms indicated that 11 genes had the most important differences. Ten genes were upregulated, and one was downregulated in the study. In order to analyze RFS and OS survival rates, 11 genes expressed in the GEPIA2 database were examined. Nearly nine of eleven significant genes have been found to beinvolved in tumor immunity. Furthermore, it was found that mRNA expression levels of these genes were significantly correlated with experimental literature studies on ccRCCs, which explained these findings. This study identified eleven gene panels associated with ccRCC growth and metastasis, as well as their immune system infiltration.

摘要

肾透明细胞癌(ccRCC)是最常见的类型;它占所有肾癌的近 70%。当前研究的主要目标是寻找可用于 ccRCC 基因治疗的基因,以更好地了解疾病的分子途径。基于 PubMed 微阵列搜索和荟萃分析,我们比较了 ccRCC 患者的总生存率和无复发生存率与健康样本的生存率和无复发生存率。该技术随后进行了 KEGG 途径和基因本体论(GO)功能分析,两者都与该方法结合进行。在分子和临床队列水平上进行了肿瘤免疫估计和多基因生物标志物验证以预测临床结局。我们的分析包括根据纳入和排除标准的十四项 GEO 数据集。荟萃分析程序、使用 PPI 构建网络以及四个显著基因识别标准算法表明,有 11 个基因具有最重要的差异。在研究中,有 10 个基因上调,一个基因下调。为了分析 RFS 和 OS 生存率,检查了 GEPIA2 数据库中表达的 11 个基因。几乎有九个重要基因与肿瘤免疫有关。此外,还发现这些基因的 mRNA 表达水平与 ccRCC 的实验文献研究显著相关,这解释了这些发现。本研究确定了与 ccRCC 生长和转移以及免疫系统浸润相关的 11 个基因面板。

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