利用机器学习方法研究癌症预后剪接因素。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Mengyuan Yang, Jiajia Liu, Pora Kim, Xiaobo Zhou
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引用次数: 0

摘要

剪接因子(SFs)是主要的 RNA 结合蛋白(RBPs),也是通过与 mRNA 结合调节 mRNA 分子剪接的关键分子。在不同癌症类型中,剪接因子的表达经常发生失调,导致癌症标志物中致癌蛋白的产生。在这项研究中,我们调查了编码 RNA 结合蛋白的基因,并采用随机森林分类模型确定了导致异常剪接的潜在剪接因子。结果表明,56个剪接因子与13种癌症的预后有关,肝肝细胞癌中有两个SF复合体,食管癌中有一个SF复合体。对这些癌症预后剪接因子及其相关替代剪接事件的进一步系统生物信息学研究揭示了癌症特异性的潜在调控。我们的分析发现,通过替代剪接,ILF2-ILF3 的高表达与 LIHC 的不良预后相关。这些发现强调了SFs作为潜在预后指标或治疗干预靶点的重要性。它们在癌症中的作用表现出复杂性,并取决于其作用的具体环境。这一认识进一步强调了全面了解和探索 SFs 在不同类型癌症中的作用的必要性,从而为其在预后评估和开发靶向疗法中的潜在应用铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of prognostic splicing factors in cancer using machine learning approaches.

Splicing factors (SFs) are the major RNA-binding proteins (RBPs) and key molecules that regulate the splicing of mRNA molecules through binding to mRNAs. The expression of splicing factors is frequently deregulated in different cancer types, causing the generation of oncogenic proteins involved in cancer hallmarks. In this study, we investigated the genes that encode RNA-binding proteins and identified potential splicing factors that contribute to the aberrant splicing applying a random forest classification model. The result suggested 56 splicing factors were related to the prognosis of 13 cancers, two SF complexes in liver hepatocellular carcinoma, and one SF complex in esophageal carcinoma. Further systematic bioinformatics studies on these cancer prognostic splicing factors and their related alternative splicing events revealed the potential regulations in a cancer-specific manner. Our analysis found high ILF2-ILF3 expression correlates with poor prognosis in LIHC through alternative splicing. These findings emphasize the importance of SFs as potential indicators for prognosis or targets for therapeutic interventions. Their roles in cancer exhibit complexity and are contingent upon the specific context in which they operate. This recognition further underscores the need for a comprehensive understanding and exploration of the role of SFs in different types of cancer, paving the way for their potential utilization in prognostic assessments and the development of targeted therapies.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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