van der Heijden Antoine G, Mengual Lourdes, Lozano Juan J, Ingelmo-Torres Mercedes, Ribal Maria J, Fernández Pedro L, Oosterwijk Egbert, Schalken Jack A, Alcaraz Antonio, Witjes J Alfred
Department of Urology, Radboud University Medical Center, Nijmegen, The Netherlands.
Laboratory and Department of Urology, Hospital Clínic, Institut d'Investigacions Biomèdiques August Pi i Sunyer (IDIBAPS), Universitat de Barcelona, Spain.
Eur J Cancer. 2016 Sep;64:127-36. doi: 10.1016/j.ejca.2016.06.003. Epub 2016 Jul 11.
The aim of this study was to analyze tumour gene expression profiles of progressive and non-progressive T1G3 bladder cancer (BC) patients to develop a gene expression signature to predict tumour progression.
Retrospective, multicenter study of 96 T1G3 BC patients without carcinoma in situ (CIS) who underwent a transurethral resection. Formalin-fixed paraffin-embedded tissue samples were collected. Global gene expression patterns were analyzed in 21 selected samples from progressive and non-progressive T1G3 BC patients using Illumina microarrays. Expression levels of 94 genes selected based on microarray data and based on literature were studied by quantitative polymerase chain reaction (qPCR) in an independent series of 75 progressive and non-progressive T1G3 BC patients. Univariate logistic regression was used to identify individual predictors. A variable selection method was used to develop a multiplex biomarker model. Discrimination of the model was measured by area under the receiver-operating characteristic curve. Interaction networks between the genes of the model were built by GeneMANIA Cytoscape plugin.
A total of 1294 genes were found differentially expressed between progressive and non-progressive patients. Differential expression of 15 genes was validated by qPCR in an additional set of samples. A five-gene expression signature (ANXA10, DAB2, HYAL2, SPOCD1, and MAP4K1) discriminated progressive from non-progressive T1G3 BC patients with a sensitivity of 79% and a specificity of 86% (AUC = 0.83). Direct interactions between the five genes of the model were not found.
Progressive and non-progressive T1G3 bladder tumours have shown different gene expression patterns. To identify T1G3 BC patients with a high risk of progression, a five-gene expression signature has been developed.
本研究旨在分析进展期和非进展期T1G3膀胱癌(BC)患者的肿瘤基因表达谱,以建立一种基因表达特征来预测肿瘤进展。
对96例未发生原位癌(CIS)的T1G3 BC患者进行回顾性多中心研究,这些患者均接受了经尿道切除术。收集福尔马林固定石蜡包埋的组织样本。使用Illumina微阵列分析从进展期和非进展期T1G3 BC患者中选取的21个样本的整体基因表达模式。在另一组75例进展期和非进展期T1G3 BC患者中,通过定量聚合酶链反应(qPCR)研究基于微阵列数据和文献选择的94个基因的表达水平。采用单因素逻辑回归来识别个体预测因子。使用变量选择方法建立多重生物标志物模型。通过受试者操作特征曲线下面积来衡量模型的辨别能力。利用GeneMANIA Cytoscape插件构建模型基因之间的相互作用网络。
共发现1294个基因在进展期和非进展期患者之间存在差异表达。另外一组样本通过qPCR验证了其中15个基因的差异表达。一种五基因表达特征(ANXA10、DAB2、HYAL2、SPOCD1和MAP4K)可区分进展期和非进展期T1G3 BC患者,敏感性为79%,特异性为86%(曲线下面积=0.83)。未发现模型中五个基因之间存在直接相互作用。
进展期和非进展期T1G3膀胱肿瘤表现出不同的基因表达模式。为了识别具有高进展风险的T1G3 BC患者,已建立了一种五基因表达特征。