Wang Mei, Klevebring Daniel, Lindberg Johan, Czene Kamila, Grönberg Henrik, Rantalainen Mattias
Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, Nobels Vag 12A, Stockholm, 171 77, Sweden.
Breast Cancer Res. 2016 May 10;18(1):48. doi: 10.1186/s13058-016-0710-8.
The histologic grade (HG) of breast cancer is an established prognostic factor. The grade is usually reported on a scale ranging from 1 to 3, where grade 3 tumours are the most aggressive. However, grade 2 is associated with an intermediate risk of recurrence, and carries limited information for clinical decision-making. Patients classified as grade 2 are at risk of both under- and over-treatment.
RNA-sequencing analysis was conducted in a cohort of 275 women diagnosed with invasive breast cancer. Multivariate prediction models were developed to classify tumours into high and low transcriptomic grade (TG) based on gene- and isoform-level expression data from RNA-sequencing. HG2 tumours were reclassified according to the prediction model and a recurrence-free survival analysis was performed by the multivariate Cox proportional hazards regression model to assess to what extent the TG model could be used to stratify patients. The prediction model was validated in N=487 breast cancer cases from the The Cancer Genome Atlas (TCGA) data set. Differentially expressed genes and isoforms associated with HGs were analysed using linear models.
The classification of grade 1 and grade 3 tumours based on RNA-sequencing data achieved high accuracy (area under the receiver operating characteristic curve = 0.97). The association between recurrence-free survival rate and HGs was confirmed in the study population (hazard ratio of grade 3 versus 1 was 2.62 with 95 % confidence interval = 1.04-6.61). The TG model enabled us to reclassify grade 2 tumours as high TG and low TG gene or isoform grade. The risk of recurrence in the high TG group of grade 2 tumours was higher than in low TG group (hazard ratio = 2.43, 95 % confidence interval = 1.13-5.20). We found 8200 genes and 13,809 isoforms that were differentially expressed between HG1 and HG3 breast cancer tumours.
Gene- and isoform-level expression data from RNA-sequencing could be utilised to differentiate HG1 and HG3 tumours with high accuracy. We identified a large number of novel genes and isoforms associated with HG. Grade 2 tumours could be reclassified as high and low TG, which has the potential to reduce over- and under-treatment if implemented clinically.
乳腺癌的组织学分级(HG)是一个既定的预后因素。分级通常采用1至3级的标准,其中3级肿瘤侵袭性最强。然而,2级与复发的中度风险相关,且对临床决策的信息有限。分类为2级的患者存在治疗不足和过度治疗的风险。
对275名诊断为浸润性乳腺癌的女性队列进行RNA测序分析。基于RNA测序的基因和异构体水平表达数据,开发多变量预测模型,将肿瘤分为高转录组学分级(TG)和低转录组学分级。根据预测模型对HG2肿瘤进行重新分类,并通过多变量Cox比例风险回归模型进行无复发生存分析,以评估TG模型在多大程度上可用于对患者进行分层。该预测模型在来自癌症基因组图谱(TCGA)数据集的N = 487例乳腺癌病例中得到验证。使用线性模型分析与HG相关的差异表达基因和异构体。
基于RNA测序数据对1级和3级肿瘤的分类具有很高的准确性(受试者操作特征曲线下面积 = 0.97)。在研究人群中证实了无复发生存率与HG之间的关联(3级与1级的风险比为2.62,95%置信区间 = 1.04 - 6.61)。TG模型使我们能够将2级肿瘤重新分类为高TG和低TG基因或异构体分级。2级肿瘤的高TG组复发风险高于低TG组(风险比 = 2.43,95%置信区间 = 1.13 - 5.20)。我们发现8200个基因和13809个异构体在HG1和HG3乳腺癌肿瘤之间存在差异表达。
RNA测序的基因和异构体水平表达数据可用于高精度区分HG1和HG3肿瘤。我们鉴定出大量与HG相关的新基因和异构体。2级肿瘤可重新分类为高TG和低TG,若在临床上实施,有可能减少过度治疗和治疗不足的情况。