Liu Rong, Guo Cheng-Xian, Zhou Hong-Hao
a Department of Clinical Pharmacology; Xiangya Hospital; Central South University ; Changsha , China.
Cancer Biol Ther. 2015;16(2):317-24. doi: 10.1080/15384047.2014.1002360.
This study aims to identify effective gene networks and prognostic biomarkers associated with estrogen receptor positive (ER+) breast cancer using human mRNA studies. Weighted gene coexpression network analysis was performed with a complex ER+ breast cancer transcriptome to investigate the function of networks and key genes in the prognosis of breast cancer. We found a significant correlation of an expression module with distant metastasis-free survival (HR = 2.25; 95% CI .21.03-4.88 in discovery set; HR = 1.78; 95% CI = 1.07-2.93 in validation set). This module contained genes enriched in the biological process of the M phase. From this module, we further identified and validated 5 hub genes (CDK1, DLGAP5, MELK, NUSAP1, and RRM2), the expression levels of which were strongly associated with poor survival. Highly expressed MELK indicated poor survival in luminal A and luminal B breast cancer molecular subtypes. This gene was also found to be associated with tamoxifen resistance. Results indicated that a network-based approach may facilitate the discovery of biomarkers for the prognosis of ER+ breast cancer and may also be used as a basis for establishing personalized therapies. Nevertheless, before the application of this approach in clinical settings, in vivo and in vitro experiments and multi-center randomized controlled clinical trials are still needed.
本研究旨在通过人类mRNA研究确定与雌激素受体阳性(ER+)乳腺癌相关的有效基因网络和预后生物标志物。利用复杂的ER+乳腺癌转录组进行加权基因共表达网络分析,以研究网络功能和关键基因在乳腺癌预后中的作用。我们发现一个表达模块与无远处转移生存期显著相关(发现集中HR = 2.25;95%CI为2.103 - 4.88;验证集中HR = 1.78;95%CI = 1.07 - 2.93)。该模块包含在M期生物学过程中富集的基因。从这个模块中,我们进一步鉴定并验证了5个中心基因(CDK1、DLGAP5、MELK、NUSAP1和RRM2),其表达水平与不良生存密切相关。MELK高表达表明管腔A型和管腔B型乳腺癌分子亚型的生存较差。还发现该基因与他莫昔芬耐药有关。结果表明,基于网络的方法可能有助于发现ER+乳腺癌预后的生物标志物,也可作为建立个性化治疗的基础。然而,在将该方法应用于临床之前,仍需要进行体内和体外实验以及多中心随机对照临床试验。