Clear Cell Renal Cell Carcinoma: A Comprehensive in silico Study in Searching for Therapeutic Targets.

IF 2.3 4区 医学 Q2 PERIPHERAL VASCULAR DISEASE
Kidney & blood pressure research Pub Date : 2023-01-01 Epub Date: 2023-02-28 DOI:10.1159/000529861
Mohammadjavad Naghdibadi, Maryam Momeni, Parvin Yavari, Alieh Gholaminejad, Amir Roointan
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引用次数: 0

Abstract

Introduction: Clear cell renal cell carcinoma (ccRCC) is recognized as one of the leading causes of illness and death worldwide. Understanding the molecular mechanisms in ccRCC pathogenesis is crucial for discovering novel therapeutic targets and developing efficient drugs. With the application of a comprehensive in silico analysis of the ccRCC-related array sets, the main objective of this study was to discover the top molecules and pathways in the pathogenesis of this cancer.

Methods: ccRCC microarray datasets were downloaded from the Gene Expression Omnibus database, and after quality checking, normalization, and analysis using the Limma algorithm, differentially expressed genes (DEGs) were identified, considering the adjusted p value <0.049. The intensity values of the identified DEGs were introduced to the Weighted Gene Co-Expression Network Analysis (WGCNA) algorithm to construct co-expression modules. Functional enrichment analyses were performed using the DEGs in the disease-correlated module, and hub genes were identified among the top genes in a protein-protein interaction network and the disease most correlated module. The expression analysis of hub genes was done by utilizing GEPIA, and the GSCA server was used to compare the expression patterns of hub genes in ccRCC and other cancers. DGIdb database was utilized to identify the hub gene-related drugs.

Results: Three datasets, including GSE11151, GSE12606, and GSE36897, were retrieved, merged, normalized, and analyzed. Using WGCNA, the DEGs were clustered into eight different modules. Translocation of ZAP-70 to immunological synapse, endosomal/vacuolar pathway, cell surface interactions at the vascular wall, and immune-related pathways were the topmost enriched terms for the ccRCC-correlated DEGs. Twelve genes including PTPRC, ITGAM, TLR2, CD86, PLEK, TYROBP, ITGB2, RAC2, CSF1R, CCR5, CCL5, and LCP2 were introduced as hub genes. All the 12 hub genes were upregulated in ccRCC samples and showed a positive correlation with the infiltration of different immune cells. According to the DGIdb database, 127 drugs, including tyrosine kinase inhibitors, glucocorticoids, and chemotaxis targeting molecules, were identified to interact with the hub genes.

Conclusion: By utilizing an integrative bioinformatics approach, this experiment shed light on the underlying pathways in the pathogenesis of ccRCC and introduced several potential therapeutic targets for repurposing or developing novel drugs for an efficient treatment of this cancer. Our next step would be to assess the gene expression profiles of the identified hubs in different cell populations in the tumor microenvironment.

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透明细胞肾细胞癌:寻找治疗靶点的全面硅学研究
简介透明细胞肾细胞癌(ccRCC)是全球公认的主要疾病和死亡原因之一。了解 ccRCC 发病的分子机制对于发现新的治疗靶点和开发高效药物至关重要。方法:从基因表达总库(Gene Expression Omnibus)数据库下载ccRCC微阵列数据集,经过质量检查、归一化处理并使用Limma算法进行分析后,确定差异表达基因(DEGs),考虑调整后的P值<0.049。确定的 DEGs 的强度值被引入加权基因共表达网络分析(WGCNA)算法,以构建共表达模块。利用疾病相关模块中的 DEGs 进行了功能富集分析,并在蛋白相互作用网络和疾病最相关模块中的顶级基因中发现了中心基因。利用GEPIA对中心基因进行了表达分析,并利用GSCA服务器比较了中心基因在ccRCC和其他癌症中的表达模式。利用DGIdb数据库确定了与枢纽基因相关的药物:检索、合并、归一化和分析了三个数据集,包括GSE11151、GSE12606和GSE36897。利用 WGCNA 将 DEGs 聚类为八个不同的模块。ZAP-70转位到免疫突触、内体/液泡通路、血管壁细胞表面相互作用和免疫相关通路是ccRCC相关DEGs的最高富集项。包括 PTPRC、ITGAM、TLR2、CD86、PLEK、TYROBP、ITGB2、RAC2、CSF1R、CCR5、CCL5 和 LCP2 在内的 12 个基因被引入为中心基因。所有这12个中枢基因在ccRCC样本中都出现了上调,并与不同免疫细胞的浸润呈正相关。根据DGIdb数据库,确定了127种药物(包括酪氨酸激酶抑制剂、糖皮质激素和趋化靶向分子)与中枢基因相互作用:本实验利用综合生物信息学方法,揭示了ccRCC发病机制的潜在通路,并提出了几个潜在的治疗靶点,以便重新利用或开发新型药物来有效治疗这种癌症。下一步,我们将评估已确定的中枢在肿瘤微环境中不同细胞群中的基因表达谱。
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来源期刊
Kidney & blood pressure research
Kidney & blood pressure research 医学-泌尿学与肾脏学
CiteScore
4.80
自引率
3.60%
发文量
61
审稿时长
6-12 weeks
期刊介绍: This journal comprises both clinical and basic studies at the interface of nephrology, hypertension and cardiovascular research. The topics to be covered include the structural organization and biochemistry of the normal and diseased kidney, the molecular biology of transporters, the physiology and pathophysiology of glomerular filtration and tubular transport, endothelial and vascular smooth muscle cell function and blood pressure control, as well as water, electrolyte and mineral metabolism. Also discussed are the (patho)physiology and (patho) biochemistry of renal hormones, the molecular biology, genetics and clinical course of renal disease and hypertension, the renal elimination, action and clinical use of drugs, as well as dialysis and transplantation. Featuring peer-reviewed original papers, editorials translating basic science into patient-oriented research and disease, in depth reviews, and regular special topic sections, ''Kidney & Blood Pressure Research'' is an important source of information for researchers in nephrology and cardiovascular medicine.
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