结合血清糖蛋白组学和临床变量建立区分前列腺癌和良性前列腺增生的预测模型。

IF 2.8 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS
Caterina Gabriele, Federica Aracri, Licia Elvira Prestagiacomo, Maria Antonietta Rota, Stefano Alba, Giuseppe Tradigo, Pietro Hiram Guzzi, Giovanni Cuda, Rocco Damiano, Pierangelo Veltri, Marco Gaspari
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引用次数: 0

摘要

背景:前列腺癌(PCa)是男性癌症相关死亡的第二大原因。目前用于前列腺癌筛查的前列腺特异性抗原(PSA)血清检测缺乏必要的敏感性和特异性。为了避免不必要的活组织检查,需要新的非侵入性诊断工具,能够区分肿瘤和良性状况以及侵袭性(AG-PCa)和惰性形式的PCa (NAG-PCa)。方法:采用平行反应监测(PRM)对163份血清样本(79份来自PCa患者,84份来自良性前列腺增生(BPH)患者)的32种原n -糖基化肽进行定量分析。这些潜在的候选生物标志物通过多阶段生物标志物发现管道进行优先排序:发现,LC-PRM分析开发和验证阶段。由于糖蛋白在癌症发生和进展中的作用已经得到证实,因此蛋白质组学分析主要集中在通过TiO2(二氧化钛)策略富集的糖蛋白上。结果:将机器学习算法应用于由蛋白质组学和临床变量组成的组合矩阵,建立了基于6个蛋白质组学变量(RNASE1、LAMP2、LUM、MASP1、NCAM1、GPLD1)和5个临床变量(前列腺尺寸、proPSA、free- psa、total-PSA、free/total-PSA)的预测模型,能够区分前列腺癌和前列腺增生,受试者工作特征(ROC)曲线下面积为0.93。该模型优于单独PSA,在相同的样本集上,能够区分PCa和BPH, AUC为0.79。为了提高对PCa患者的临床管理,我们进行了一项探索性的小规模分析(79个样本),旨在区分AG-PCa和NAG-PCa。建立了基于7个蛋白质组学变量(FCN3、LGALS3BP、AZU1、C6、LAMB1、CHL1、POSTN)和proPSA的前列腺癌侵袭性预测因子(AUC为0.69)。结论:为了满足对更敏感、更特异的血清诊断测试的迫切需求,我们开发了一种结合蛋白质组学和临床变量的预测模型。初步评估建立一个新的工具,能够区分侵略性表现的前列腺癌与良性行为的肿瘤被利用。该预测器表现出适度的表现,但由于样本队列数量有限,无法得出结论。数据可通过ProteomeXchange获得,标识符为PXD035935。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a predictive model to distinguish prostate cancer from benign prostatic hyperplasia by integrating serum glycoproteomics and clinical variables.

Background: Prostate Cancer (PCa) represents the second leading cause of cancer-related death in men. Prostate-specific antigen (PSA) serum testing, currently used for PCa screening, lacks the necessary sensitivity and specificity. New non-invasive diagnostic tools able to discriminate tumoral from benign conditions and aggressive (AG-PCa) from indolent forms of PCa (NAG-PCa) are required to avoid unnecessary biopsies.

Methods: In this work, 32 formerly N-glycosylated peptides were quantified by PRM (parallel reaction monitoring) in 163 serum samples (79 from PCa patients and 84 from individuals affected by benign prostatic hyperplasia (BPH)) in two technical replicates. These potential biomarker candidates were prioritized through a multi-stage biomarker discovery pipeline articulated in: discovery, LC-PRM assay development and verification phases. Because of the well-established involvement of glycoproteins in cancer development and progression, the proteomic analysis was focused on glycoproteins enriched by TiO2 (titanium dioxide) strategy.

Results: Machine learning algorithms have been applied to the combined matrix comprising proteomic and clinical variables, resulting in a predictive model based on six proteomic variables (RNASE1, LAMP2, LUM, MASP1, NCAM1, GPLD1) and five clinical variables (prostate dimension, proPSA, free-PSA, total-PSA, free/total-PSA) able to distinguish PCa from BPH with an area under the Receiver Operating Characteristic (ROC) curve of 0.93. This model outperformed PSA alone which, on the same sample set, was able to discriminate PCa from BPH with an AUC of 0.79. To improve the clinical managing of PCa patients, an explorative small-scale analysis (79 samples) aimed at distinguishing AG-PCa from NAG-PCa was conducted. A predictor of PCa aggressiveness based on the combination of 7 proteomic variables (FCN3, LGALS3BP, AZU1, C6, LAMB1, CHL1, POSTN) and proPSA was developed (AUC of 0.69).

Conclusions: To address the impelling need of more sensitive and specific serum diagnostic tests, a predictive model combining proteomic and clinical variables was developed. A preliminary evaluation to build a new tool able to discriminate aggressive presentations of PCa from tumors with benign behavior was exploited. This predictor displayed moderate performances, but no conclusions can be drawn due to the limited number of the sample cohort. Data are available via ProteomeXchange with identifier PXD035935.

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来源期刊
Clinical proteomics
Clinical proteomics BIOCHEMICAL RESEARCH METHODS-
CiteScore
5.80
自引率
2.60%
发文量
37
审稿时长
17 weeks
期刊介绍: Clinical Proteomics encompasses all aspects of translational proteomics. Special emphasis will be placed on the application of proteomic technology to all aspects of clinical research and molecular medicine. The journal is committed to rapid scientific review and timely publication of submitted manuscripts.
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