Linke Steven P, Bremer Troy M, Herold Christopher D, Sauter Guido, Diamond Cornelius
Prediction Sciences, La Jolla, California 92037, USA.
Clin Cancer Res. 2006 Feb 15;12(4):1175-83. doi: 10.1158/1078-0432.CCR-05-1562.
This study was designed to produce a model to predict outcome in tamoxifen-treated breast cancer patients based on clinicopathologic features and multiple molecular markers.
This was a retrospective study of 324 stage I to III female breast cancer patients treated with tamoxifen for whom standard clinicopathologic data and tumor tissue microarrays were available. Nine molecular markers were studied by semiquantitative immunohistochemistry and/or fluorescence in situ hybridization. Cox proportional hazards analysis was used to determine the contributions of each variable to disease-specific and overall survival, and machine learning was used to produce a model to predict patient outcome.
On a univariate basis, the following features were significantly associated with worse survival: high pathologic tumor or nodal class, histologic grade, epidermal growth factor receptor, ERBB2, MYC, or TP53; absent estrogen receptor (ER) or progesterone receptor; and low BCL2. CCND1 and CDKN1B did not reach statistical significance. On a multivariate basis, nodal class, ER, and MYC were statistically significant as independent factors for survival. However, the benefit of ER-positive status was moderated by BCL2, ERBB2, and progesterone receptor. BCL2 and TP53 also interacted as an independent risk factor. A kernel partial least squares polynomial model was developed with an area under the receiver operating characteristic curve of 0.90.
Our data show the predictive value of BCL2, ERBB2, MYC, and TP53 in addition to the standard hormone receptors and clinicopathologic features, and they show the importance of conditional interpretation of certain molecular markers. Our multimarker predictive model performed significantly better than standard guidelines.
本研究旨在构建一个基于临床病理特征和多种分子标志物来预测他莫昔芬治疗的乳腺癌患者预后的模型。
这是一项对324例接受他莫昔芬治疗的Ⅰ至Ⅲ期女性乳腺癌患者的回顾性研究,这些患者有标准的临床病理数据和肿瘤组织微阵列。通过半定量免疫组织化学和/或荧光原位杂交研究了9种分子标志物。采用Cox比例风险分析来确定每个变量对疾病特异性生存和总生存的贡献,并使用机器学习构建一个预测患者预后的模型。
单因素分析时,以下特征与较差的生存显著相关:高病理肿瘤或淋巴结分级、组织学分级、表皮生长因子受体、ERBB2、MYC或TP53;雌激素受体(ER)或孕激素受体缺失;以及低BCL2。CCND1和CDKN1B未达到统计学意义。多因素分析时,淋巴结分级、ER和MYC作为生存的独立因素具有统计学意义。然而,ER阳性状态的益处受到BCL2、ERBB2和孕激素受体的影响。BCL2和TP53也作为独立危险因素相互作用。开发了一个核偏最小二乘多项式模型,其受试者操作特征曲线下面积为0.90。
我们的数据显示了除标准激素受体和临床病理特征外,BCL2、ERBB2、MYC和TP53的预测价值,并显示了对某些分子标志物进行条件性解读的重要性。我们的多标志物预测模型的表现明显优于标准指南。