Transcriptomics-based exploration of ubiquitination-related biomarkers and potential molecular mechanisms in laryngeal squamous cell carcinoma.

IF 2.1 4区 医学 Q3 GENETICS & HEREDITY
Qiu Chen, Zhimin Wu, Yifei Ma
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引用次数: 0

Abstract

Background: One of the most common and prevalent cancers is laryngeal squamous cell carcinoma (LSCC), which poses a great threat to the life and health of the patient. Nonetheless, it has been demonstrated that ubiquitination is crucial for the development and course of LSCC. Therefore, it is particularly important to identify biomarkers for ubiquitination-related genes (UbRGs) in LSCC.

Methods: Differentially expressed genes (DEGs) in the LSCC versus controls were obtained by differential expression analysis. Also, key modular genes associated with LSCC were obtained using weighted gene co-expression network analysis (WGCNA). Next, DEGs, key module genes, and UbRGs were taken to intersect to obtain candidate genes. And then machine algorithms were to screen potential biomarkers, further their diagnostic value were analyzed and validated. Then, therapeutic agents for biomarkers were predict. In addition, the regulatory networks of the biomarkers were mapped. The expression levels of biomarkers were detected in clinical samples using reverse transcription-quantitative PCR (RT-qPCR).

Results: A total of eight candidate genes were acquired by the overlap 1,911 DEGs, the key modular genes of WGCNA, and 1,393 UbRGs. A sum of four biomarkers (WDR54, KAT2B, NBEAL2 and LNX1) were identified by two machine learning, then these four biomarkers were validated in GSE127165 and the expression trend was consistent with TCGA-LSCC, they were recorded as biomarkers. Moreover, the accuracy of the biomarkers in predicting clinical aspects of LSCC was confirmed by the receiver operating characteristic (ROC) curves. Subsequently, cancers such as malignant neoplasms, colorectal cancers, tumors, and primary malignant neoplasms were significantly associated with the biomarkers, which further suggests that these four biomarkers were strongly associated with cancer. Meanwhile, the drugs garcinol, cocaine, and triazolam, among others, used for LSCC treatment were predicted. Finally, transcription factors (TFs) (BRD4, MYC, AR, and CTCF) were predicted to regulate the biomarkers. RT-qPCR assays illustrated that the expression trends of KAT2B, LNX1 and NBEAL2 remained consistent with the dataset.

Conclusion: The identification of four biomarkers (WDR54, KAT2B, NBEAL2 and LNX1) associated with UbRGs could ultimately serve as a predictive clinical diagnosis of LSCC and provide insight into the molecular mechanisms of LSCC.

基于转录组学的喉鳞癌泛素化相关生物标志物和潜在分子机制的探索。
背景:喉鳞状细胞癌(喉鳞状细胞癌)是最常见和流行的癌症之一,严重威胁着患者的生命和健康。尽管如此,研究表明泛素化在LSCC的发展过程中起着至关重要的作用。因此,在LSCC中鉴定泛素化相关基因(UbRGs)的生物标志物尤为重要。方法:通过差异表达分析获得LSCC与对照组的差异表达基因(DEGs)。此外,利用加权基因共表达网络分析(WGCNA)获得了与LSCC相关的关键模块基因。接下来,将deg、关键模块基因和ubrg交叉得到候选基因。然后用机器算法筛选潜在的生物标志物,进一步分析和验证其诊断价值。然后预测生物标志物的治疗药物。此外,绘制了生物标志物的调控网络。应用逆转录定量PCR (RT-qPCR)检测临床样本中生物标志物的表达水平。结果:WGCNA关键模块基因1,911个deg和1,393个ubrg重叠,共获得8个候选基因。通过2次机器学习共鉴定出WDR54、KAT2B、NBEAL2和LNX1 4个生物标志物,在GSE127165中进行验证,表达趋势与TCGA-LSCC一致,记录为生物标志物。此外,受试者工作特征(ROC)曲线证实了生物标志物预测LSCC临床方面的准确性。随后,恶性肿瘤、结直肠癌、肿瘤和原发性恶性肿瘤等癌症与这些生物标志物显著相关,这进一步表明这四种生物标志物与癌症密切相关。同时,预测了用于LSCC治疗的药物garcinol、可卡因和triazolam等。最后,预测转录因子(TFs) (BRD4, MYC, AR和CTCF)调节生物标志物。RT-qPCR分析表明,KAT2B、LNX1和NBEAL2的表达趋势与数据集保持一致。结论:与UbRGs相关的4个生物标志物(WDR54、KAT2B、NBEAL2和LNX1)的鉴定最终可作为LSCC的临床预测诊断,并为LSCC的分子机制提供深入了解。
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来源期刊
BMC Medical Genomics
BMC Medical Genomics 医学-遗传学
CiteScore
3.90
自引率
0.00%
发文量
243
审稿时长
3.5 months
期刊介绍: BMC Medical Genomics is an open access journal publishing original peer-reviewed research articles in all aspects of functional genomics, genome structure, genome-scale population genetics, epigenomics, proteomics, systems analysis, and pharmacogenomics in relation to human health and disease.
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