Teschendorff Andrew E, Caldas Carlos
Breast Cancer Functional Genomics Laboratory, Cancer Research UK Cambridge Research Institute, Cambridge, CB2 0RE, UK.
Breast Cancer Res. 2008;10(4):R73. doi: 10.1186/bcr2138. Epub 2008 Aug 28.
Patients with primary operable oestrogen receptor (ER) negative (-) breast cancer account for about 30% of all cases and generally have a worse prognosis than ER-positive (+) patients. Nevertheless, a significant proportion of ER- cases have favourable outcomes and could potentially benefit from a less aggressive course of therapy. However, identification of such patients with a good prognosis remains difficult and at present is only possible through examining histopathological factors.
Building on a previously identified seven-gene prognostic immune response module for ER- breast cancer, we developed a novel statistical tool based on Mixture Discriminant Analysis in order to build a classifier that could accurately identify ER- patients with a good prognosis.
We report the construction of a seven-gene expression classifier that accurately predicts, across a training cohort of 183 ER- tumours and six independent test cohorts (a total of 469 ER- tumours), ER- patients of good prognosis (in test sets, average predictive value = 94% [range 85 to 100%], average hazard ratio = 0.15 [range 0.07 to 0.36] p < 0.000001) independently of lymph node status and treatment.
This seven-gene classifier could be used in a polymerase chain reaction-based clinical assay to identify ER- patients with a good prognosis, who may therefore benefit from less aggressive treatment regimens.
原发性可手术切除的雌激素受体(ER)阴性乳腺癌患者约占所有病例的30%,总体预后通常比ER阳性患者差。然而,相当一部分ER阴性病例预后良好,可能从较温和的治疗方案中获益。然而,识别这类预后良好的患者仍然困难,目前只能通过检查组织病理学因素来实现。
基于先前确定的ER阴性乳腺癌七基因预后免疫反应模块,我们开发了一种基于混合判别分析的新型统计工具,以构建一个能够准确识别预后良好的ER阴性患者的分类器。
我们报告构建了一个七基因表达分类器,该分类器在183例ER阴性肿瘤的训练队列和六个独立测试队列(共469例ER阴性肿瘤)中,能够独立于淋巴结状态和治疗情况,准确预测预后良好的ER阴性患者(在测试集中,平均预测值 = 94% [范围85%至100%],平均风险比 = 0.15 [范围0.07至0.36],p < 0.000001)。
这个七基因分类器可用于基于聚合酶链反应的临床检测,以识别预后良好的ER阴性患者,这些患者可能因此从较温和的治疗方案中获益。