Identification of Prognostic Biomarkers in Papillary Thyroid Cancer and Developing Non-Invasive Diagnostic Models Through Integrated Bioinformatics Analysis.

Afsaneh Arefi Oskouie, Mohammad Saeed Ahmadi, Amir Taherkhani
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引用次数: 4

Abstract

BACKGROUND Papillary thyroid cancer (PTC) is the most frequent subtype of thyroid carcinoma, mainly detected in patients with benign thyroid nodules (BTN). Due to the invasiveness of accurate diagnostic tests, there is a need to discover applicable biomarkers for PTC. So, in this study, we aimed to identify the genes associated with prognosis in PTC. Besides, we performed a machine learning tool to develop a non-invasive diagnostic approach for PTC. METHODS For the study's purposes, the miRNA dataset GSE130512 was downloaded from the GEO database and then analyzed to identify the common differentially expressed miRNAs in patients with non-metastatic PTC (nm-PTC)/metastatic PTC (m-PTC) compared with BTNs. The SVM was also applied to differentiate patients with PTC from those patients with BTN using the common DEMs. A protein-protein interaction network was also constructed based on the targets of the common DEMs. Next, functional analysis was performed, the hub genes were determined, and survival analysis was then executed. RESULTS A total of three common miRNAs were found to be differentially expressed among patients with nm-PTC/m-PTC compared with BTNs. In addition, it was established that the autophagosome maturation, ciliary basal body-plasma membrane docking, antigen processing as ubiquitination & proteasome degradation, and class I MHC mediated antigen processing & presentation are associated with the pathogenesis of PTC. Furthermore, it was illustrated that RPS6KB1, CCNT1, SP1, and CHD4 might serve as new potential biomarkers for PTC prognosis. CONCLUSIONS RPS6KB1, CCNT1, SP1, and CHD4 may be considered as new potential biomarkers used for prognostic aims in PTC. However, performing validation tests is inevitable in the future.
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通过综合生物信息学分析鉴定甲状腺乳头状癌预后生物标志物并建立无创诊断模型。
背景:甲状腺乳头状癌(PTC)是最常见的甲状腺癌亚型,主要见于良性甲状腺结节(BTN)患者。由于准确诊断测试的侵入性,有必要发现适用于PTC的生物标志物。因此,在本研究中,我们旨在确定与PTC预后相关的基因。此外,我们使用机器学习工具来开发PTC的非侵入性诊断方法。方法:为了研究目的,从GEO数据库下载miRNA数据集GSE130512,然后分析非转移性PTC (nm-PTC)/转移性PTC (m-PTC)患者与btn患者的共同差异表达miRNA。支持向量机也被用于区分PTC患者和BTN患者使用常见的dem。基于常见dem的靶点,构建了蛋白-蛋白相互作用网络。接下来,进行功能分析,确定中心基因,然后进行生存分析。结果:与btn相比,nm-PTC/m-PTC患者中共有3种常见的mirna存在差异表达。此外,我们还发现自噬体成熟、纤毛基底体-质膜对接、泛素化和蛋白酶体降解等抗原加工和I类MHC介导的抗原加工和递呈与PTC的发病机制有关。此外,RPS6KB1、CCNT1、SP1和CHD4可能作为PTC预后的新的潜在生物标志物。结论:RPS6KB1、CCNT1、SP1和CHD4可能被认为是用于PTC预后目标的新的潜在生物标志物。然而,执行验证测试在将来是不可避免的。
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