Integrated multi-optosis model for pan-cancer candidate biomarker and therapy target discovery.

IF 3.9 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in bioinformatics Pub Date : 2025-09-19 eCollection Date: 2025-01-01 DOI:10.3389/fbinf.2025.1630518
Emanuell Rodrigues de Souza, Higor Almeida Cordeiro Nogueira, Ronaldo da Silva Francisco Junior, Ana Beatriz Garcia, Enrique Medina-Acosta
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引用次数: 0

Abstract

Regulated cell death (RCD) is fundamental to tissue homeostasis and cancer progression, influencing therapeutic responses across tumor types. Although individual RCD forms have been extensively studied, a comprehensive framework integrating multiple RCD processes has been lacking, limiting systematic biomarker discovery. To address this gap, we developed a multi-optosis model that incorporates 25 distinct RCD forms and integrates multi-omic and phenotypic data across 33 cancer types. This model enables the identification of candidate biomarkers with translational relevance through genome-wide significant associations. We analyzed 9,385 tumor samples from The Cancer Genome Atlas (TCGA) and 7,429 non-tumor samples from the Genotype-Tissue Expression (GTEx) database, accessed via UCSCXena. Our analysis involved 5,913 RCD-associated genes, spanning 62,090 transcript isoforms, 882 mature miRNAs, and 239 cancer-associated proteins. Seven omic features-protein expression, mutation, copy number variation, miRNA expression, transcript isoform expression, mRNA expression, and CpG methylation-were correlated with seven clinical phenotypic features: tumor mutation burden, microsatellite instability, tumor stemness metrics, hazard ratio contexture, prognostic survival metrics, tumor microenvironment contexture, and tumor immune infiltration contexture. We performed over 27 million pairwise correlations, resulting in 44,641 multi-omic RCD signatures. These signatures capture both unique and overlapping associations between omic and phenotypic features. Apoptosis-related genes were recurrent across most signatures, reaffirming apoptosis as a central node in cancer-related RCD. Notably, isoform-specific signatures were prevalent, indicating critical roles for alternative splicing and promoter usage in cancer biology. For example, MAPK10 isoforms showed distinct phenotypic correlations, while COL1A1 and UMOD displayed gene-level coordination in regulating tumor stemness. Notably, 879 multi-omic signatures include chimeric antigen targets currently under clinical evaluation, underscoring the translational relevance of our findings for precision oncology and immunotherapy. This integrative resource is publicly available via CancerRCDShiny (https://cancerrcdshiny.shinyapps.io/cancerrcdshiny/), supporting future efforts in biomarker discovery and therapeutic target development across diverse cancer types.

泛癌症候选生物标志物和治疗靶点发现的综合多眼观察模型。
调节细胞死亡(RCD)是组织稳态和癌症进展的基础,影响各种肿瘤类型的治疗反应。尽管个体RCD形式已被广泛研究,但缺乏整合多个RCD过程的综合框架,限制了系统的生物标志物发现。为了解决这一差距,我们开发了一个多重光衰模型,该模型包含25种不同的RCD形式,并整合了33种癌症类型的多组学和表型数据。该模型能够通过全基因组显著关联识别具有翻译相关性的候选生物标志物。我们分析了来自癌症基因组图谱(TCGA)的9,385个肿瘤样本和来自基因型组织表达(GTEx)数据库的7,429个非肿瘤样本,这些样本通过UCSCXena访问。我们的分析涉及5,913个rcd相关基因,跨越62,090个转录异构体,882个成熟mirna和239个癌症相关蛋白。7个组学特征——蛋白质表达、突变、拷贝数变异、miRNA表达、转录异构体表达、mRNA表达和CpG甲基化——与7个临床表型特征相关:肿瘤突变负担、微卫星不稳定性、肿瘤干性指标、风险比背景、预后生存指标、肿瘤微环境背景和肿瘤免疫浸润背景。我们执行了超过2700万个两两关联,得到了44,641个多组RCD签名。这些特征捕获了组学和表型特征之间独特和重叠的关联。凋亡相关基因在大多数特征中反复出现,重申了细胞凋亡是癌症相关RCD的中心节点。值得注意的是,异构体特异性特征普遍存在,表明选择性剪接和启动子使用在癌症生物学中的关键作用。例如,MAPK10亚型表现出明显的表型相关性,而COL1A1和UMOD在调节肿瘤干性方面表现出基因水平的协调。值得注意的是,879个多组学特征包括嵌合抗原靶点,目前正在临床评估中,强调了我们的发现在精确肿瘤学和免疫治疗中的转化相关性。此综合资源可通过CancerRCDShiny (https://cancerrcdshiny.shinyapps)公开获取。Io /cancerrcdshiny/),支持未来在不同癌症类型的生物标志物发现和治疗靶点开发方面的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.60
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0.00%
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