Áron Bartha, Boglárka Weltz, Lazaro Hiram Betancourt, Jeovanis Gil, Natália Pinto de Almeida, Giampaolo Bianchini, Beáta Szeitz, Leticia Szadai, Indira Pla, Lajos V. Kemény, Ágnes Judit Jánosi, Runyu Hong, Ahmad Rajeh, Fábio Nogueira, Viktória Doma, Nicole Woldmar, Jéssica Guedes, Zsuzsanna Újfaludi, Yonghyo Kim, Tibor Szarvas, Zoltan Pahi, Tibor Pankotai, A. Marcell Szasz, Aniel Sanchez, Bo Baldetorp, József Tímár, István Balázs Németh, Sarolta Kárpáti, Roger Appelqvist, Gilberto Barbosa Domont, Krzysztof Pawlowski, Elisabet Wieslander, Johan Malm, David Fenyo, Peter Horvatovich, György Marko-Varga and Balázs Győrffy*,
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Marcell Szasz, Aniel Sanchez, Bo Baldetorp, József Tímár, István Balázs Németh, Sarolta Kárpáti, Roger Appelqvist, Gilberto Barbosa Domont, Krzysztof Pawlowski, Elisabet Wieslander, Johan Malm, David Fenyo, Peter Horvatovich, György Marko-Varga and Balázs Győrffy*, ","doi":"10.1021/acs.jproteome.4c0074910.1021/acs.jproteome.4c00749","DOIUrl":null,"url":null,"abstract":"<p >Using several melanoma proteomics data sets we created a single analysis platform that enables the discovery, knowledge build, and validation of diagnostic, predictive, and prognostic biomarkers at the protein level. Quantitative mass-spectrometry-based proteomic data was obtained from five independent cohorts, including 489 tissue samples from 394 patients with accompanying clinical metadata. We established an interactive R-based web platform that enables the comparison of protein levels across diverse cohorts, and supports correlation analysis between proteins and clinical metadata including survival outcomes. By comparing differential protein levels between metastatic, primary tumor, and nonmalignant samples in two of the cohorts, we identified 274 proteins showing significant differences among the sample types. Further analysis of these 274 proteins in lymph node metastatic samples from a third cohort revealed that 45 proteins exhibited a significant effect on patient survival. The three most significant proteins were HP (HR = 4.67, p = 2.8e-06), LGALS7 (HR = 3.83, p = 2.9e-05), and UBQLN1 (HR = 3.2, p = 4.8e-05). The user-friendly interactive web platform, accessible at https://www.tnmplot.com/melanoma, provides an interactive interface for the analysis of proteomic and clinical data. 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引用次数: 0
摘要
利用几个黑色素瘤蛋白质组学数据集,我们创建了一个单一的分析平台,可以在蛋白质水平上发现、建立知识,并验证诊断、预测和预后生物标志物。基于质谱的定量蛋白质组学数据来自5个独立的队列,包括来自394名患者的489个组织样本,并伴有临床元数据。我们建立了一个交互式的基于r的web平台,可以比较不同队列的蛋白质水平,并支持蛋白质与临床元数据(包括生存结果)之间的相关性分析。通过比较两个队列中转移性、原发肿瘤和非恶性肿瘤样本的差异蛋白水平,我们确定了274种蛋白在样本类型中表现出显著差异。对来自第三个队列的淋巴结转移样本中这274种蛋白质的进一步分析显示,45种蛋白质对患者生存有显著影响。三个最显著的蛋白是HP (HR = 4.67, p = 2.8e-06)、LGALS7 (HR = 3.83, p = 2.9e-05)和UBQLN1 (HR = 3.2, p = 4.8e-05)。用户友好的交互式web平台,可访问https://www.tnmplot.com/melanoma,为蛋白质组学和临床数据的分析提供了一个交互界面。MEL-PLOT平台通过其交互功能,简化了综合知识库的创建,增强了假设的制定能力,并对生物医学研究和药物开发领域的最新进展进行了勤奋的监测。
Melanoma Proteomics Unveiled: Harmonizing Diverse Data Sets for Biomarker Discovery and Clinical Insights via MEL-PLOT
Using several melanoma proteomics data sets we created a single analysis platform that enables the discovery, knowledge build, and validation of diagnostic, predictive, and prognostic biomarkers at the protein level. Quantitative mass-spectrometry-based proteomic data was obtained from five independent cohorts, including 489 tissue samples from 394 patients with accompanying clinical metadata. We established an interactive R-based web platform that enables the comparison of protein levels across diverse cohorts, and supports correlation analysis between proteins and clinical metadata including survival outcomes. By comparing differential protein levels between metastatic, primary tumor, and nonmalignant samples in two of the cohorts, we identified 274 proteins showing significant differences among the sample types. Further analysis of these 274 proteins in lymph node metastatic samples from a third cohort revealed that 45 proteins exhibited a significant effect on patient survival. The three most significant proteins were HP (HR = 4.67, p = 2.8e-06), LGALS7 (HR = 3.83, p = 2.9e-05), and UBQLN1 (HR = 3.2, p = 4.8e-05). The user-friendly interactive web platform, accessible at https://www.tnmplot.com/melanoma, provides an interactive interface for the analysis of proteomic and clinical data. The MEL-PLOT platform, through its interactive capabilities, streamlines the creation of a comprehensive knowledge base, empowering hypothesis formulation and diligent monitoring of the most recent advancements in the domains of biomedical research and drug development.
期刊介绍:
Journal of Proteome Research publishes content encompassing all aspects of global protein analysis and function, including the dynamic aspects of genomics, spatio-temporal proteomics, metabonomics and metabolomics, clinical and agricultural proteomics, as well as advances in methodology including bioinformatics. The theme and emphasis is on a multidisciplinary approach to the life sciences through the synergy between the different types of "omics".