Mustacchi Giorgio, Sormani Maria Pia, Bruzzi Paolo, Gennari Alessandra, Zanconati Fabrizio, Bonifacio Daniela, Monzoni Adriana, Morandi Luca
Cancer Centre, ASS1 University of Trieste, Trieste 34012, Italy.
Int J Mol Sci. 2013 May 6;14(5):9686-702. doi: 10.3390/ijms14059686.
Molecular tests predicting the outcome of breast cancer patients based on gene expression levels can be used to assist in making treatment decisions after consideration of conventional markers. In this study we identified a subset of 20 mRNA differentially regulated in breast cancer analyzing several publicly available array gene expression data using R/Bioconductor package. Using RTqPCR we evaluate 261 consecutive invasive breast cancer cases not selected for age, adjuvant treatment, nodal and estrogen receptor status from paraffin embedded sections. The biological samples dataset was split into a training (137 cases) and a validation set (124 cases). The gene signature was developed on the training set and a multivariate stepwise Cox analysis selected five genes independently associated with DFS: FGF18 (HR = 1.13, p = 0.05), BCL2 (HR = 0.57, p = 0.001), PRC1 (HR = 1.51, p = 0.001), MMP9 (HR = 1.11, p = 0.08), SERF1a (HR = 0.83, p = 0.007). These five genes were combined into a linear score (signature) weighted according to the coefficients of the Cox model, as: 0.125FGF18 - 0.560BCL2 + 0.409PRC1 + 0.104MMP9 - 0.188SERF1A (HR = 2.7, 95% CI = 1.9-4.0, p < 0.001). The signature was then evaluated on the validation set assessing the discrimination ability by a Kaplan Meier analysis, using the same cut offs classifying patients at low, intermediate or high risk of disease relapse as defined on the training set (p < 0.001). Our signature, after a further clinical validation, could be proposed as prognostic signature for disease free survival in breast cancer patients where the indication for adjuvant chemotherapy added to endocrine treatment is uncertain.
基于基因表达水平预测乳腺癌患者预后的分子检测,可在综合考虑传统标志物后,用于辅助制定治疗决策。在本研究中,我们使用R/Bioconductor软件包分析了多个公开可用的阵列基因表达数据,确定了乳腺癌中20个差异调节的mRNA子集。我们使用RTqPCR对261例连续的浸润性乳腺癌病例进行评估,这些病例未根据年龄、辅助治疗、淋巴结和雌激素受体状态进行选择,样本来自石蜡包埋切片。生物样本数据集被分为一个训练集(137例)和一个验证集(124例)。在训练集上开发基因特征,并通过多变量逐步Cox分析选择了五个与无病生存期独立相关的基因:FGF18(风险比[HR]=1.13,p=0.05)、BCL2(HR=0.57,p=0.001)、PRC1(HR=1.51,p=0.001)、MMP9(HR=1.11,p=0.08)、SERF1a(HR=0.83,p=0.007)。这五个基因根据Cox模型的系数加权合并为一个线性评分(特征),即:0.125FGF18 - 0.560BCL2 + 0.409PRC1 + 0.104MMP9 - 0.188SERF1A(HR=2.7,95%置信区间[CI]=1.9 - 4.0,p<0.001)。然后在验证集上评估该特征,通过Kaplan - Meier分析评估其区分能力,使用与训练集相同的临界值将患者分类为疾病复发低、中或高风险(p<0.001)。经过进一步的临床验证,我们的特征可作为乳腺癌患者无病生存期的预后特征,用于在内分泌治疗基础上辅助化疗指征不确定的情况。