Chanrion Maïa, Negre Vincent, Fontaine Hélène, Salvetat Nicolas, Bibeau Frédéric, Mac Grogan Gaëtan, Mauriac Louis, Katsaros Dionyssios, Molina Franck, Theillet Charles, Darbon Jean-Marie
U868 Institut National de la Sante et de la Recherche Medicale, Tumoral Identity and Plasticity, Cancer Research Center of Montpellier, Université Montpellier 1, CRLC Val d'Aurelle-Paul Lamarque, France.
Clin Cancer Res. 2008 Mar 15;14(6):1744-52. doi: 10.1158/1078-0432.CCR-07-1833.
The identification of a molecular signature predicting the relapse of tamoxifen-treated primary breast cancers should help the therapeutic management of estrogen receptor-positive cancers.
A series of 132 primary tumors from patients who received adjuvant tamoxifen were analyzed for expression profiles at the whole-genome level by 70-mer oligonucleotide microarrays. A supervised analysis was done to identify an expression signature.
We defined a 36-gene signature that correctly classified 78% of patients with relapse and 80% of relapse-free patients (79% accuracy). Using 23 independent tumors, we confirmed the accuracy of the signature (78%) whose relevance was further shown by using published microarray data from 60 tamoxifen-treated patients (63% accuracy). Univariate analysis using the validation set of 83 tumors showed that the 36-gene classifier is more efficient in predicting disease-free survival than the traditional histopathologic prognostic factors and is as effective as the Nottingham Prognostic Index or the "Adjuvant!" software. Multivariate analysis showed that the molecular signature is the only independent prognostic factor. A comparison with several already published signatures demonstrated that the 36-gene signature is among the best to classify tumors from both training and validation sets. Kaplan-Meier analyses emphasized its prognostic power both on the whole cohort of patients and on a subgroup with an intermediate risk of recurrence as defined by the St. Gallen criteria.
This study identifies a molecular signature specifying a subgroup of patients who do not gain benefits from tamoxifen treatment. These patients may therefore be eligible for alternative endocrine therapies and/or chemotherapy.
识别可预测他莫昔芬治疗的原发性乳腺癌复发的分子特征,应有助于雌激素受体阳性癌症的治疗管理。
对132例接受辅助性他莫昔芬治疗患者的原发性肿瘤进行分析,通过70聚体寡核苷酸微阵列在全基因组水平检测表达谱。进行监督分析以识别表达特征。
我们定义了一个36基因特征,其能正确分类78%的复发患者和80%的无复发患者(准确率79%)。使用23个独立肿瘤,我们证实了该特征的准确性(78%),通过使用来自60例接受他莫昔芬治疗患者的已发表微阵列数据进一步显示了其相关性(准确率63%)。使用83个肿瘤的验证集进行单变量分析表明,36基因分类器在预测无病生存方面比传统组织病理学预后因素更有效,并且与诺丁汉预后指数或“辅助!”软件效果相当。多变量分析表明,分子特征是唯一的独立预后因素。与几个已发表的特征进行比较表明,36基因特征是对训练集和验证集肿瘤进行分类的最佳特征之一。Kaplan-Meier分析强调了其在整个患者队列以及根据圣加仑标准定义的具有中等复发风险亚组中的预后能力。
本研究识别出一个分子特征,该特征确定了一组无法从他莫昔芬治疗中获益的患者亚组。因此,这些患者可能适合替代内分泌治疗和/或化疗。