Yang Ji-Yeon, Werner Henrica M J, Li Jie, Westin Shannon N, Lu Yiling, Halle Mari K, Trovik Jone, Salvesen Helga B, Mills Gordon B, Liang Han
Department of Bioinformatics and Computational Biology, The University of Texas MD Anderson Cancer Center, Houston, Texas. Department of Applied Mathematics, Kumoh National Institute of Technology, Gumi-si, South Korea.
Centre for Cancer Biomarkers, Department of Clinical Science, The University of Bergen, Bergen, Norway. Department of Obstetrics and Gynecology, Haukeland University Hospital, Bergen, Norway.
Clin Cancer Res. 2016 Jan 15;22(2):513-23. doi: 10.1158/1078-0432.CCR-15-0104. Epub 2015 Jul 29.
Endometrioid endometrial carcinoma (EEC) is the major histologic type of endometrial cancer, the most prevalent gynecologic malignancy in the United States. EEC recurrence or metastasis is associated with a poor prognosis. Early-stage EEC is generally curable, but a subset has high risk of recurrence or metastasis. Prognosis estimation for early-stage EEC mainly relies on clinicopathologic characteristics, but is unreliable. We aimed to identify patients with high-risk early-stage EEC who are most likely to benefit from more extensive surgery and adjuvant therapy by building a prognostic model that integrates clinical variables and protein markers.
We used two large, independent early-stage EEC datasets as training (n = 183) and validation cohorts (n = 333), and generated the levels of 186 proteins and phosphoproteins using reverse-phase protein arrays. By applying an initial filtering and the elastic net to the training samples, we developed a prognostic model for overall survival containing two clinical variables and 18 protein markers and optimized the risk group classification.
The Kaplan-Meier survival analyses in the validation cohort confirmed an improved discriminating power of our prognostic model for patients with early-stage EEC over key clinical variables (log-rank test, P = 0.565 for disease stage, 0.567 for tumor grade, and 1.3 × 10(-4) for the integrative model). Compared with clinical variables (stage, grade, and patient age), only the risk groups defined by the integrative model were consistently significant in both univariate and multivariate analyses across both cohorts.
Our prognostic model is potentially of high clinical value for stratifying patients with early-stage EEC and improving their treatment strategies.
子宫内膜样腺癌(EEC)是子宫内膜癌的主要组织学类型,是美国最常见的妇科恶性肿瘤。EEC复发或转移与预后不良相关。早期EEC一般可治愈,但有一部分具有较高的复发或转移风险。早期EEC的预后评估主要依赖于临床病理特征,但并不可靠。我们旨在通过构建一个整合临床变量和蛋白质标志物的预后模型,来识别最有可能从更广泛手术和辅助治疗中获益的高危早期EEC患者。
我们使用两个大型独立的早期EEC数据集作为训练队列(n = 183)和验证队列(n = 333),并使用反相蛋白质阵列生成186种蛋白质和磷酸化蛋白质的水平。通过对训练样本进行初始筛选和弹性网络分析,我们开发了一个包含两个临床变量和18个蛋白质标志物的总生存预后模型,并优化了风险组分类。
验证队列中的Kaplan-Meier生存分析证实,我们的预后模型对早期EEC患者的区分能力优于关键临床变量(对数秩检验,疾病分期P = 0.565,肿瘤分级P = 0.567,整合模型P = 1.3×10⁻⁴)。与临床变量(分期、分级和患者年龄)相比,只有整合模型定义的风险组在两个队列的单变量和多变量分析中均始终具有显著性。
我们的预后模型对于早期EEC患者分层及改善其治疗策略可能具有较高的临床价值。