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生物信息学分析确定FGF1基因是透明细胞肾细胞癌的一种新的预后指标。

Bioinformatic analysis identifying FGF1 gene as a new prognostic indicator in clear cell Renal Cell Carcinoma.

作者信息

Zhang Xiaoqin, Wang Ziyue, Zeng Zixin, Shen Ningning, Wang Bin, Zhang Yaping, Shen Honghong, Lu Wei, Wei Rong, Ma Wenxia, Wang Chen

机构信息

Department of Pathology, The Second Hospital of ShanXi Medical University, ShanXi Province, No.382 WuYi Road, Tai Yuan, 030000, China.

Department of Pathology, The Second Clinical Medical College of ShanXi Medical University, ShanXi Province, Tai Yuan, China.

出版信息

Cancer Cell Int. 2021 Apr 17;21(1):222. doi: 10.1186/s12935-021-01917-9.

Abstract

BACKGROUND

Clear cell renal cell carcinoma (ccRCC) has been the commonest renal cell carcinoma (RCC). Although the disease classification, diagnosis and targeted therapy of RCC has been increasingly evolving attributing to the rapid development of current molecular pathology, the current clinical treatment situation is still challenging considering the comprehensive and progressively developing nature of malignant cancer. The study is to identify more potential responsible genes during the development of ccRCC using bioinformatic analysis, thus aiding more precise interpretation of the disease METHODS: Firstly, different cDNA expression profiles from Gene Expression Omnibus (GEO) online database were used to screen the abnormal differently expressed genes (DEGs) between ccRCC and normal renal tissues. Then, based on the protein-protein interaction network (PPI) of all DEGs, the module analysis was performed to scale down the potential genes, and further survival analysis assisted our proceeding to the next step for selecting a credible key gene. Thirdly, immunohistochemistry (IHC) and quantitative real-time PCR (QPCR) were conducted to validate the expression change of the key gene in ccRCC comparing to normal tissues, meanwhile the prognostic value was verified using TCGA clinical data. Lastly, the potential biological function of the gene and signaling mechanism of gene regulating ccRCC development was preliminary explored.

RESULTS

Four cDNA expression profiles were picked from GEO database based on the number of containing sample cases, and a total of 192 DEGs, including 39 up-regulated and 153 down-regulated genes were shared in four profiles. Based on the DEGs PPI network, four function modules were identified highlighting a FGF1 gene involving PI3K-AKT signaling pathway which was shared in 3/4 modules. Further, both the IHC performed with ccRCC tissue microarray which contained 104 local samples and QPCR conducted using 30 different samples confirmed that FGF1 was aberrant lost in ccRCC. And Kaplan-Meier overall survival analysis revealed that FGF1 gene loss was related to worse ccRCC patients survival. Lastly, the pathological clinical features of FGF1 gene and the probable biological functions and signaling pathways it involved were analyzed using TCGA clinical data.

CONCLUSIONS

Using bioinformatic analysis, we revealed that FGF1 expression was aberrant lost in ccRCC which statistical significantly correlated with patients overall survival, and the gene's clinical features and potential biological functions were also explored. However, more detailed experiments and clinical trials are needed to support its potential drug-target role in clinical medical use.

摘要

背景

透明细胞肾细胞癌(ccRCC)一直是最常见的肾细胞癌(RCC)。尽管由于当前分子病理学的快速发展,RCC的疾病分类、诊断和靶向治疗不断演进,但考虑到恶性肿瘤的综合性和渐进性发展本质,目前的临床治疗形势仍具有挑战性。本研究旨在通过生物信息学分析确定ccRCC发生发展过程中更多潜在的相关基因,从而有助于更精确地阐释该疾病。

方法

首先,利用基因表达综合数据库(GEO)在线数据库中不同的cDNA表达谱筛选ccRCC与正常肾组织之间异常的差异表达基因(DEG)。然后,基于所有DEG的蛋白质-蛋白质相互作用网络(PPI)进行模块分析以缩小潜在基因范围,进一步的生存分析辅助我们进行下一步以选择可靠的关键基因。第三,进行免疫组织化学(IHC)和定量实时PCR(QPCR)以验证关键基因在ccRCC与正常组织中的表达变化,同时使用TCGA临床数据验证其预后价值。最后,初步探索该基因的潜在生物学功能以及基因调控ccRCC发生发展的信号机制。

结果

根据所含样本病例数量从GEO数据库中选取了四个cDNA表达谱,四个谱中共有的192个DEG,包括39个上调基因和153个下调基因。基于DEG的PPI网络,鉴定出四个功能模块,突出显示了一个涉及PI3K-AKT信号通路的FGF1基因,该基因在3/4的模块中都有出现。此外,对包含104个局部样本的ccRCC组织芯片进行的IHC以及使用30个不同样本进行的QPCR均证实FGF1在ccRCC中异常缺失。Kaplan-Meier总生存分析显示FGF1基因缺失与ccRCC患者较差的生存情况相关。最后,利用TCGA临床数据分析了FGF基因的病理临床特征及其可能涉及的生物学功能和信号通路。

结论

通过生物信息学分析,我们发现FGF1在ccRCC中表达异常缺失,这与患者的总生存情况具有显著统计学相关性,同时还探索了该基因的临床特征和潜在生物学功能。然而,需要更详细的实验和临床试验来支持其在临床医疗应用中的潜在药物靶点作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/692c/8052755/cea58752fdaf/12935_2021_1917_Fig1_HTML.jpg

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