鉴定具有预测致病性的新变异是食管癌的关键靶点。

Waqas Ahmad Abbasi, Sajida Qureshi, Muhammad Asif Qureshi, Mohammad Saeed Quraishy
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引用次数: 0

摘要

食管癌(EC)由于其侵袭性和预后差,仍然是一个主要的全球健康挑战。基因改变在肿瘤进展中起关键作用;然而,更深入地了解EC的遗传景观对于确定新的和有效的治疗靶点是必不可少的。本研究旨在鉴定具有潜在致病性的关键基因及其变异。对EC样品进行全外显子组测序(WES)以鉴定错义变异。采用SIFT、FATHMM、provan、MutationTaster和LRT进行全面的计算机分析,对高危变异进行分类。使用GEPIA和cbiopportal平台分析基因表达、突变频率和预后相关性。蛋白稳定性通过MuPro和I-Mutant进行评估,以评估所鉴定变异的影响,同时通过STRING进行蛋白-蛋白相互作用(PPI)分析,通过metscape进行富集分析,以探索相关的生物学途径。研究人员在274个基因中发现了331个新的高危错读变异,并对其进行了系统的细化,最终将11个基因(PSMC1、SCN8A、HNRNPA3、RPL23、COL5A2、TBL1XR1、TCP1、HNRNPD、CALM2、ABCC2和HNRNPA1)中的23个具有预后意义的变异缩小到23个,这些基因也是EC中差异表达最多的基因。据预测,这些基因的变异会破坏相应蛋白质的稳定,从而导致EC的进展。计算机生存分析进一步表明,携带这些基因(包括其他基因)改变的患者的预后明显更差。蛋白质稳定性分析证实了它们的不稳定作用,而功能富集强调了它们参与驱动肿瘤发生的关键途径。这项研究确定了11个具有潜在致病性的新型错义变异的关键基因,突出了精确靶向治疗EC的脆弱性。
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 variants with predicted pathogenicity as key targets in esophageal cancer.

Esophageal cancer (EC) remains a major global health challenge due to its aggressive nature and poor prognosis. Genetic alterations play a crucial role in tumor progression; however, a deeper understanding of the genetic landscape of EC is essential for identifying novel and potent therapeutic targets. This study aims to identify key genes and their variants with potential pathogenicity driving EC progression. Whole-exome sequencing (WES) was performed on EC samples to identify missense variants. A comprehensive in-silico analysis was conducted using SIFT, FATHMM, PROVEAN, MutationTaster, and LRT to classify high-risk variants. Gene expression, mutation frequency, and prognostic relevance were analyzed using GEPIA and cBioPortal platforms. Protein stability was assessed with MuPro and I-Mutant to evaluate the impact of the identified variant, while protein-protein interaction (PPI) analysis via STRING and enrichment analysis through Metascape were performed to explore associated biological pathways. A total of 331 novel high-risk missense variants were identified across 274 genes and systematically refined, narrowing down to 23 prognostically significant variants in 11 genes (PSMC1, SCN8A, HNRNPA3, RPL23, COL5A2, TBL1XR1, TCP1, HNRNPD, CALM2, ABCC2, and HNRNPA1), which were also among the most differentially expressed in EC. Variants in these genes were predicted to destabilize their corresponding proteins, contributing to EC progression. In-silico survival analysis further indicated significantly worse outcomes for patients harboring alterations in these genes, including others. Protein stability analysis confirmed their destabilizing effects, while functional enrichment highlighted their involvement in key pathways driving tumorigenesis. This study identified 11 key DEGs harboring potentially pathogenic novel missense variants, highlighting vulnerabilities for precision-targeted therapies in EC.

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