基于基因共表达网络分析的癌症新潜在药物和miRNA生物标志物的鉴定。

Genomics & informatics Pub Date : 2023-09-01 Epub Date: 2023-09-27 DOI:10.5808/gi.23039
Sara Hajipour, Sayed Mostafa Hosseini, Shiva Irani, Mahmood Tavallaie
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引用次数: 0

摘要

癌症(NSCLC)是全球癌症相关死亡的重要原因。因此,NSCLC的确切分子机制尚不清楚。本研究旨在鉴定在NSCLC中具有预测价值的miRNA。这两个数据集是从基因表达综合数据库(GEO)下载的。从标准化数据中选择差异表达的miRNA(DEmiRNA)和mRNA(DEmRNA)。接下来,测定miRNA-mRNA的相互作用。然后,使用R软件中的WGCNA包完成共表达网络分析。计算DEmiRNA和DEmRNA之间的共表达网络,以优先考虑miRNA。接下来,对DEmiRNA和DEmRNA进行富集分析。最后,通过将基因列表导入dgidb数据库,构建了药物-基因相互作用网络。从两个数据集中共识别出3033个差异表达基因和58个DE miRNA。利用共表达网络分析构建基因共表达网络。接下来,根据Zsummary分数选择了四个模块。在下一步中,构建了二分miRNA基因网络,并选择了枢纽miRNA(let-7a-2-3p、let-7d-5p、let-77b-5p、let-7a-5p和let-7b-3p)。最后,构建了一个药物基因网络,同时舒尼替尼、醋酸甲孕酮、多非替利、HALOPERIDOL和CALITRIOL药物被认为是非小细胞肺癌的有益药物。中枢miRNA和再利用药物可能分别在NSCLC的进展和治疗中发挥重要作用;然而,这些结果必须在进一步的临床和实验评估中得到验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification of novel potential drugs and miRNAs biomarkers in lung cancer based on gene co-expression network analysis.

Identification of novel potential drugs and miRNAs biomarkers in lung cancer based on gene co-expression network analysis.

Identification of novel potential drugs and miRNAs biomarkers in lung cancer based on gene co-expression network analysis.

Identification of novel potential drugs and miRNAs biomarkers in lung cancer based on gene co-expression network analysis.

Non-small cell lung cancer (NSCLC) is an important cause of cancer-associated deaths worldwide. Therefore, the exact molecular mechanisms of NSCLC are unidentified. The present investigation aims to identify the miRNAs with predictive value in NSCLC. The two datasets were downloaded from the Gene Expression Omnibus (GEO) database. Differentially expressed miRNAs (DEmiRNA) and mRNAs (DEmRNA) were selected from the normalized data. Next, miRNA-mRNA interactions were determined. Then, co-expression network analysis was completed using the WGCNA package in R software. The co-expression network between DEmiRNAs and DEmRNAs was calculated to prioritize the miRNAs. Next, the enrichment analysis was performed for DEmiRNA and DEmRNA. Finally, the drug-gene interaction network was constructed by importing the gene list to dgidb database. A total of 3,033 differentially expressed genes and 58 DE miRNA were recognized from two datasets. The co-expression network analysis was utilized to build a gene co-expression network. Next, four modules were selected based on the Zsummary score. In the next step, a bipartite miRNA-gene network was constructed and hub miRNAs (let-7a-2-3p, let-7d-5p, let-7b-5p, let-7a-5p, and let-7b-3p) were selected. Finally, a drug-gene network was constructed while SUNITINIB, MEDROXYPROGESTERONE ACETATE, DOFETILIDE, HALOPERIDOL, and CALCITRIOL drugs were recognized as a beneficial drug in NSCLC. The hub miRNAs and repurposed drugs may act a vital role in NSCLC progression and treatment, respectively; however, these results must validate in further clinical and experimental assessments.

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