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蛋白质组和转录组图谱的综合分析揭示泛癌相关通路和分子生物标志物。

Integrated Analysis of Proteome and Transcriptome Profiling Reveals Pan-Cancer-Associated Pathways and Molecular Biomarkers.

作者信息

Hu Guo-Sheng, Zheng Zao-Zao, He Yao-Hui, Wang Du-Chuang, Nie Rui-Chao, Liu Wen

机构信息

Biomedical Research Center of South China, College of Life Sciences, Fujian Normal University, Fuzhou, China; State Key Laboratory of Cellular Stress Biology, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China; Fujian Provincial Key Laboratory of Innovative Drug Target Research, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China; Xiang An Biomedicine Laboratory, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China.

State Key Laboratory of Cellular Stress Biology, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China; Fujian Provincial Key Laboratory of Innovative Drug Target Research, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China; Xiang An Biomedicine Laboratory, School of Pharmaceutical Sciences, Faculty of Medicine and Life Sciences, Xiamen University, Xiamen, Fujian, China.

出版信息

Mol Cell Proteomics. 2025 Mar;24(3):100919. doi: 10.1016/j.mcpro.2025.100919. Epub 2025 Jan 28.

Abstract

Understanding dysregulated genes and pathways in cancer is critical for precision oncology. Integrating mass spectrometry-based proteomic data with transcriptomic data presents unique opportunities for systematic analyses of dysregulated genes and pathways in pan-cancer. Here, we compiled a comprehensive set of datasets, encompassing proteomic data from 2404 samples and transcriptomic data from 7752 samples across 13 cancer types. Comparisons between normal or adjacent normal tissues and tumor tissues identified several dysregulated pathways including mRNA splicing, interferon pathway, fatty acid metabolism, and complement coagulation cascade in pan-cancer. Additionally, pan-cancer upregulated and downregulated genes (PCUGs and PCDGs) were also identified. Notably, RRM2 and ADH1B, two genes which belong to PCUGs and PCDGs, respectively, were identified as robust pan-cancer diagnostic biomarkers. TNM stage-based comparisons revealed dysregulated genes and biological pathways involved in cancer progression, among which the dysregulation of complement coagulation cascade and epithelial-mesenchymal transition are frequent in multiple types of cancers. A group of pan-cancer continuously upregulated and downregulated proteins in different tumor stages (PCCUPs and PCCDPs) were identified. We further constructed prognostic risk stratification models for corresponding cancer types based on dysregulated genes, which effectively predict the prognosis for patients with these cancers. Drug prediction based on PCUGs and PCDGs as well as PCCUPs and PCCDPs revealed that small molecule inhibitors targeting CDK, HDAC, MEK, JAK, PI3K, and others might be effective treatments for pan-cancer, thereby supporting drug repurposing. We also developed web tools for cancer diagnosis, pathologic stage assessment, and risk evaluation. Overall, this study highlights the power of combining proteomic and transcriptomic data to identify valuable diagnostic and prognostic markers as well as drug targets and treatments for cancer.

摘要

了解癌症中失调的基因和信号通路对于精准肿瘤学至关重要。将基于质谱的蛋白质组学数据与转录组学数据相结合,为全面分析泛癌中失调的基因和信号通路提供了独特的机会。在此,我们汇编了一套全面的数据集,涵盖来自13种癌症类型的2404个样本的蛋白质组学数据和7752个样本的转录组学数据。正常或癌旁正常组织与肿瘤组织之间的比较确定了泛癌中几个失调的信号通路,包括mRNA剪接、干扰素信号通路、脂肪酸代谢和补体凝血级联反应。此外,还鉴定了泛癌上调和下调基因(PCUG和PCDG)。值得注意的是,分别属于PCUG和PCDG的两个基因RRM2和ADH1B被鉴定为强大的泛癌诊断生物标志物。基于TNM分期的比较揭示了参与癌症进展的失调基因和生物学信号通路,其中补体凝血级联反应和上皮-间质转化的失调在多种癌症类型中很常见。鉴定了一组在不同肿瘤阶段持续上调和下调的泛癌蛋白质(PCCUP和PCCDP)。我们进一步基于失调基因构建了相应癌症类型的预后风险分层模型,该模型可有效预测这些癌症患者的预后。基于PCUG、PCDG以及PCCUP和PCCDP的药物预测表明,靶向CDK、HDAC、MEK、JAK、PI3K等的小分子抑制剂可能是泛癌的有效治疗方法,从而支持药物重新利用。我们还开发了用于癌症诊断、病理分期评估和风险评估的网络工具。总体而言,本研究突出了结合蛋白质组学和转录组学数据以识别有价值的诊断和预后标志物以及癌症药物靶点和治疗方法的作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4d7e/11907456/5d4c8fe7793f/ga1.jpg

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