Cockburn Jessica G, Hallett Robin M, Gillgrass Amy E, Dias Kay N, Whelan T, Levine M N, Hassell John A, Bane Anita
Department of Oncology, Juravinski Hospital and Cancer Centre, Hamilton, Canada.
Department of Biochemistry and Biomedical Sciences, Centre for Functional Genomics, McMaster University, Hamilton, Canada.
BMC Cancer. 2016 Jul 28;16:555. doi: 10.1186/s12885-016-2501-0.
Lymph node (LN) status is the most important prognostic variable used to guide ER positive (+) breast cancer treatment. While a positive nodal status is traditionally associated with a poor prognosis, a subset of these patients respond well to treatment and achieve long-term survival. Several gene signatures have been established as a means of predicting outcome of breast cancer patients, but the development and indication for use of these assays varies. Here we compare the capacity of two approved gene signatures and a third novel signature to predict outcome in distinct LN negative (-) and LN+ populations. We also examine biological differences between tumours associated with LN- and LN+ disease.
Gene expression data from publically available data sets was used to compare the ability of Oncotype DX and Prosigna to predict Distant Metastasis Free Survival (DMFS) using an in silico platform. A novel gene signature (Ellen) was developed by including patients with both LN- and LN+ disease and using Prediction Analysis of Microarrays (PAM) software. Gene Set Enrichment Analysis (GSEA) was used to determine biological pathways associated with patient outcome in both LN- and LN+ tumors.
The Oncotype DX gene signature, which only used LN- patients during development, significantly predicted outcome in LN- patients, but not LN+ patients. The Prosigna gene signature, which included both LN- and LN+ patients during development, predicted outcome in both LN- and LN+ patient groups. Ellen was also able to predict outcome in both LN- and LN+ patient groups. GSEA suggested that epigenetic modification may be related to poor outcome in LN- disease, whereas immune response may be related to good outcome in LN+ disease.
We demonstrate the importance of incorporating lymph node status during the development of prognostic gene signatures. Ellen may be a useful tool to predict outcome of patients regardless of lymph node status, or for those with unknown lymph node status. Finally we present candidate biological processes, unique to LN- and LN+ disease, that may indicate risk of relapse.
淋巴结(LN)状态是用于指导雌激素受体阳性(+)乳腺癌治疗的最重要的预后变量。虽然传统上淋巴结状态阳性与预后不良相关,但这些患者中的一部分对治疗反应良好并实现长期生存。已经建立了几种基因特征作为预测乳腺癌患者预后的手段,但这些检测方法的开发和使用指征各不相同。在这里,我们比较了两种已批准的基因特征和第三种新特征在不同的淋巴结阴性(-)和淋巴结阳性(+)人群中预测预后的能力。我们还研究了与淋巴结阴性和阳性疾病相关的肿瘤之间的生物学差异。
使用来自公开可用数据集的基因表达数据,通过计算机平台比较Oncotype DX和Prosigna预测无远处转移生存期(DMFS)的能力。通过纳入淋巴结阴性和阳性疾病患者并使用微阵列预测分析(PAM)软件,开发了一种新的基因特征(Ellen)。基因集富集分析(GSEA)用于确定与淋巴结阴性和阳性肿瘤患者预后相关的生物学途径。
Oncotype DX基因特征在开发过程中仅使用淋巴结阴性患者,能显著预测淋巴结阴性患者的预后,但不能预测淋巴结阳性患者的预后。Prosigna基因特征在开发过程中纳入了淋巴结阴性和阳性患者,能预测淋巴结阴性和阳性患者组的预后。Ellen也能够预测淋巴结阴性和阳性患者组的预后。GSEA表明,表观遗传修饰可能与淋巴结阴性疾病的不良预后相关,而免疫反应可能与淋巴结阳性疾病的良好预后相关。
我们证明了在预后基因特征开发过程中纳入淋巴结状态的重要性。Ellen可能是一种有用的工具,可用于预测无论淋巴结状态如何的患者的预后,或用于那些淋巴结状态未知的患者。最后,我们提出了淋巴结阴性和阳性疾病特有的候选生物学过程,这些过程可能表明复发风险。