Prediction of Clinically Significant Prostate Cancer by a Specific Collagen-related Transcriptome, Proteome, and Urinome Signature.

IF 8.3 1区 医学 Q1 ONCOLOGY European urology oncology Pub Date : 2024-06-07 DOI:10.1016/j.euo.2024.05.014
Isabel Heidegger, Maria Frantzi, Stefan Salcher, Piotr Tymoszuk, Agnieszka Martowicz, Enrique Gomez-Gomez, Ana Blanca, Guillermo Lendinez Cano, Agnieszka Latosinska, Harald Mischak, Antonia Vlahou, Christian Langer, Friedrich Aigner, Martin Puhr, Anne Krogsdam, Zlatko Trajanoski, Dominik Wolf, Andreas Pircher
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Abstract

Background and objective: While collagen density has been associated with poor outcomes in various cancers, its role in prostate cancer (PCa) remains elusive. Our aim was to analyze collagen-related transcriptomic, proteomic, and urinome alterations in the context of detection of clinically significant PCa (csPCa, International Society of Urological Pathology [ISUP] grade group ≥2).

Methods: Comprehensive analyses for PCa transcriptome (n = 1393), proteome (n = 104), and urinome (n = 923) data sets focused on 55 collagen-related genes. Investigation of the cellular source of collagen-related transcripts via single-cell RNA sequencing was conducted. Statistical evaluations, clustering, and machine learning models were used for data analysis to identify csPCa signatures.

Key findings and limitations: Differential expression of 30 of 55 collagen-related genes and 34 proteins was confirmed in csPCa in comparison to benign prostate tissue or ISUP 1 cancer. A collagen-high cancer cluster exhibited distinct cellular and molecular characteristics, including fibroblast and endothelial cell infiltration, intense extracellular matrix turnover, and enhanced growth factor and inflammatory signaling. Robust collagen-based machine learning models were established to identify csPCa. The models outcompeted prostate-specific antigen (PSA) and age, showing comparable performance to multiparametric magnetic resonance imaging (mpMRI) in predicting csPCa. Of note, the urinome-based collagen model identified four of five csPCa cases among patients with Prostate Imaging-Reporting and Data System (PI-IRADS) 3 lesions, for which the presence of csPCa is considered equivocal. The retrospective character of the study is a limitation.

Conclusions and clinical implications: Collagen-related transcriptome, proteome, and urinome signatures exhibited superior accuracy in detecting csPCa in comparison to PSA and age. The collagen signatures, especially in cases of ambiguous lesions on mpMRI, successfully identified csPCa and could potentially reduce unnecessary biopsies. The urinome-based collagen signature represents a promising liquid biopsy tool that requires prospective evaluation to improve the potential of this collagen-based approach to enhance diagnostic precision in PCa for risk stratification and guiding personalized interventions.

Patient summary: In our study, collagen-related alterations in tissue, and urine were able to predict the presence of clinically significant prostate cancer at primary diagnosis.

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通过与胶原蛋白相关的特定转录组、蛋白质组和尿液组特征预测具有临床意义的前列腺癌。
背景和目的:虽然胶原蛋白密度与多种癌症的不良预后有关,但其在前列腺癌(PCa)中的作用仍难以捉摸。我们的目的是在检测有临床意义的 PCa(csPCa,国际泌尿病理学会 [ISUP] 等级组≥2)时分析与胶原相关的转录组、蛋白质组和尿液组改变:对 PCa 转录组(n = 1393)、蛋白质组(n = 104)和尿液组(n = 923)数据集进行综合分析,重点研究 55 个胶原蛋白相关基因。通过单细胞 RNA 测序调查了胶原蛋白相关转录本的细胞来源。数据分析采用了统计评估、聚类和机器学习模型,以确定 csPCa 特征:与良性前列腺组织或 ISUP 1 癌症相比,55 个胶原蛋白相关基因中的 30 个基因和 34 种蛋白质在 csPCa 中被证实存在差异表达。胶原蛋白含量高的癌症集群表现出独特的细胞和分子特征,包括成纤维细胞和内皮细胞浸润、细胞外基质剧烈周转以及生长因子和炎症信号增强。建立了基于胶原蛋白的强大机器学习模型来识别 csPCa。这些模型在预测 csPCa 方面的表现优于前列腺特异性抗原(PSA)和年龄,可与多参数磁共振成像(mpMRI)相媲美。值得注意的是,在前列腺成像报告和数据系统(PI-IRADS)3 级病变的患者中,基于尿液的胶原蛋白模型发现了五例 csPCa 中的四例,而 csPCa 的存在被认为是模棱两可的。该研究的回顾性是其局限性之一:与 PSA 和年龄相比,胶原蛋白相关的转录组、蛋白质组和尿液组特征在检测 csPCa 方面表现出更高的准确性。胶原蛋白特征,尤其是在 mpMRI 显示病变不明确的情况下,能成功识别 csPCa,并有可能减少不必要的活检。基于尿液组的胶原蛋白特征是一种很有前景的液体活检工具,需要进行前瞻性评估,以提高这种基于胶原蛋白的方法的潜力,从而提高 PCa 诊断的精确度,用于风险分层和指导个性化干预。患者总结:在我们的研究中,组织和尿液中与胶原蛋白相关的改变能够预测初诊时是否存在有临床意义的前列腺癌。
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来源期刊
CiteScore
15.50
自引率
2.40%
发文量
128
审稿时长
20 days
期刊介绍: Journal Name: European Urology Oncology Affiliation: Official Journal of the European Association of Urology Focus: First official publication of the EAU fully devoted to the study of genitourinary malignancies Aims to deliver high-quality research Content: Includes original articles, opinion piece editorials, and invited reviews Covers clinical, basic, and translational research Publication Frequency: Six times a year in electronic format
期刊最新文献
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