Seigneuric Renaud, Starmans Maud H W, Fung Glenn, Krishnapuram Balaji, Nuyten Dimitry S A, van Erk Arie, Magagnin Michael G, Rouschop Kasper M, Krishnan Sriram, Rao R Bharat, Evelo Chris T A, Begg Adrian C, Wouters Bradly G, Lambin Philippe
Maastricht Radiation Oncology (Maastro), GROW Research Institute, Maastricht University, The Netherlands.
Radiother Oncol. 2007 Jun;83(3):374-82. doi: 10.1016/j.radonc.2007.05.002. Epub 2007 May 25.
Hypoxia is a common feature of solid tumors associated with therapy resistance, increased malignancy and poor prognosis. Several approaches have been developed with the hope of identifying patients harboring hypoxic tumors including the use of microarray based gene signatures. However, studies to date have largely ignored the strong time dependency of hypoxia-regulated gene expression. We hypothesized that use of time-dependent patterns of gene expression during hypoxia would enable development of superior prognostic expression signatures.
Using published data from the microarray study of Chi et al., we extracted gene signatures correlating with induction during either early or late hypoxic exposure. Gene signatures were derived from in vitro exposed human mammary epithelial cell line (HMEC) under 0% or 2% oxygen. Gene signatures correlating with early and late up-regulation were tested by means of Kaplan-Meier survival, univariate, and multivariate analysis on a patient data set with primary breast cancer treated conventionally (surgery plus on indication radiotherapy and systemic therapy).
We found that the two early hypoxia gene signatures extracted from 0% and 2% hypoxia showed significant prognostic power (log-rank test: p=0.004 at 0%, p=0.034 at 2%) in contrast to the late hypoxia signatures. Both early gene signatures were linked to the insulin pathway. From the multivariate Cox-regression analysis, the early hypoxia signature (p=0.254) was found to be the 4th best prognostic factor after lymph node status (p=0.002), tumor size (p=0.016) and Elston grade (p=0.111). On this data set it indeed provided more information than ER status or p53 status.
The hypoxic stress elicits a wide panel of temporal responses corresponding to different biological pathways. Early hypoxia signatures were shown to have a significant prognostic power. These data suggest that gene signatures identified from in vitro experiments could contribute to individualized medicine.
缺氧是实体瘤的常见特征,与治疗耐药、恶性程度增加及预后不良相关。已开发出多种方法,希望能识别出患有缺氧肿瘤的患者,包括使用基于微阵列的基因特征。然而,迄今为止的研究在很大程度上忽略了缺氧调节基因表达的强烈时间依赖性。我们假设,利用缺氧期间基因表达的时间依赖性模式能够开发出更优的预后表达特征。
利用Chi等人微阵列研究的已发表数据,我们提取了与早期或晚期缺氧暴露诱导相关的基因特征。基因特征源自体外暴露于0%或2%氧气环境下的人乳腺上皮细胞系(HMEC)。通过Kaplan-Meier生存分析、单变量分析和多变量分析,在接受传统治疗(手术加根据指征进行放疗和全身治疗)的原发性乳腺癌患者数据集上,对与早期和晚期上调相关的基因特征进行了测试。
我们发现,与晚期缺氧特征相比,从0%和2%缺氧环境中提取的两个早期缺氧基因特征具有显著的预后能力(对数秩检验:0%时p = 0.004,2%时p = 0.034)。两个早期基因特征均与胰岛素通路相关。从多变量Cox回归分析中发现,早期缺氧特征(p = 0.254)是继淋巴结状态(p = 0.002)、肿瘤大小(p = 0.016)和Elston分级(p = 0.111)之后第四好的预后因素。在该数据集上,它确实比雌激素受体状态或p53状态提供了更多信息。
缺氧应激引发了一系列对应不同生物学途径的时间反应。早期缺氧特征显示出显著的预后能力。这些数据表明,从体外实验中识别出的基因特征可能有助于个体化医疗。