CancerPro:通过组合富集分析和知识网络洞察力解读泛癌症预后景观。

IF 4 Q1 GENETICS & HEREDITY
NAR Genomics and Bioinformatics Pub Date : 2024-11-21 eCollection Date: 2024-12-01 DOI:10.1093/nargab/lqae157
Zhigang Wang, Yize Yuan, Zhe Wang, Wenjia Zhang, Chong Chen, Zhaojun Duan, Suyuan Peng, Jie Zheng, Yongqun He, Xiaolin Yang
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引用次数: 0

摘要

基因表达水平是评估癌症患者预后的重要指标。为了了解潜在的预后机制并探索不同癌症的潜在治疗方法,我们开发了CancerPro (https:/medcode.link/ CancerPro)。这个知识网络平台整合了有关基因、药物、疾病和途径及其相互作用的全面生物医学数据。通过整合本体和知识图谱技术,CancerPro提供了一个用户友好的界面,用于分析泛癌症预后标记物和探索感兴趣的基因或药物。CancerPro实现了三个核心功能:基于多个注释的基因集富集分析;药物深度分析;以及深入的基因表分析。使用CancerPro,我们将基因和癌症分类为不同的组,并利用网络分析来确定与不良预后基因相关的关键生物学途径。该平台进一步确定了潜在的药物靶点,并探索了预后标志物与患者特征(如谷胱甘肽水平和肥胖)之间的潜在联系。对于肾癌和前列腺癌,CancerPro发现了与免疫缺陷途径和选择性剪接异常相关的风险基因。这项研究突出了CancerPro作为研究人员探索泛癌症预后标志物和发现新的治疗途径的有价值工具的潜力。其灵活的工具支持广泛的生物研究,使其成为癌症研究和其他领域的多功能资产。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CancerPro: deciphering the pan-cancer prognostic landscape through combinatorial enrichment analysis and knowledge network insights.

Gene expression levels serve as valuable markers for assessing prognosis in cancer patients. To understand the mechanisms underlying prognosis and explore potential therapeutics across diverse cancers, we developed CancerPro (https:/medcode.link/cancerpro). This knowledge network platform integrates comprehensive biomedical data on genes, drugs, diseases and pathways, along with their interactions. By integrating ontology and knowledge graph technologies, CancerPro offers a user-friendly interface for analyzing pan-cancer prognostic markers and exploring genes or drugs of interest. CancerPro implements three core functions: gene set enrichment analysis based on multiple annotations; in-depth drug analysis; and in-depth gene list analysis. Using CancerPro, we categorized genes and cancers into distinct groups and utilized network analysis to identify key biological pathways associated with unfavorable prognostic genes. The platform further pinpoints potential drug targets and explores potential links between prognostic markers and patient characteristics such as glutathione levels and obesity. For renal and prostate cancer, CancerPro identified risk genes linked to immune deficiency pathways and alternative splicing abnormalities. This research highlights CancerPro's potential as a valuable tool for researchers to explore pan-cancer prognostic markers and uncover novel therapeutic avenues. Its flexible tools support a wide range of biological investigations, making it a versatile asset in cancer research and beyond.

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来源期刊
CiteScore
8.00
自引率
2.20%
发文量
95
审稿时长
15 weeks
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