Yu Jianjun, Yu Jindan, Cordero Kevin E, Johnson Michael D, Ghosh Debashis, Rae James M, Chinnaiyan Arul M, Lippman Marc E
Bioinformatigram, The University of of Michigan Medical Center, Ann Arbor, MI 48109 USA.
Neoplasia. 2008 Jan;10(1):79-88. doi: 10.1593/neo.07859.
Estrogen signaling plays an essential role in breast cancer progression, and estrogen receptor (ER) status has long been a marker of hormone responsiveness. However, ER status alone has been an incomplete predictor of endocrine therapy, as some ER+ tumors, nevertheless, have poor prognosis. Here we sought to use expression profiling of ER+ breast cancer cells to screen for a robust estrogen-regulated gene signature that may serve as a better indicator of cancer outcome. We identified 532 estrogen-induced genes and further developed a 73-gene signature that best separated a training set of 286 primary breast carcinomas into prognostic subtypes by stepwise cross-validation. Notably, this signature predicts clinical outcome in over 10 patient cohorts as well as their respective ER+ subcohorts. Further, this signature separates patients who have received endocrine therapy into two prognostic subgroups, suggesting its specificity as a measure of estrogen signaling, and thus hormone sensitivity. The 73-gene signature also provides additional predictive value for patient survival, independent of other clinical parameters, and outperforms other previously reported molecular outcome signatures. Taken together, these data demonstrate the power of using cell culture systems to screen for robust gene signatures of clinical relevance.
雌激素信号传导在乳腺癌进展中起着至关重要的作用,而雌激素受体(ER)状态长期以来一直是激素反应性的标志物。然而,仅ER状态一直是内分泌治疗的不完整预测指标,因为一些ER阳性肿瘤预后仍然较差。在此,我们试图利用ER阳性乳腺癌细胞的表达谱来筛选出一个强大的雌激素调节基因特征,该特征可能作为更好的癌症预后指标。我们鉴定出532个雌激素诱导基因,并进一步开发了一个73基因特征,通过逐步交叉验证,该特征能将286例原发性乳腺癌的训练集最佳地分为预后亚型。值得注意的是,该特征可预测超过10个患者队列及其各自的ER阳性亚队列的临床结果。此外,该特征将接受内分泌治疗的患者分为两个预后亚组,表明其作为雌激素信号传导(进而作为激素敏感性)衡量指标的特异性。这一73基因特征还为患者生存提供了独立于其他临床参数的额外预测价值,并且优于其他先前报道的分子预后特征。综上所述,这些数据证明了利用细胞培养系统筛选具有临床相关性的强大基因特征的能力。