Huang Chia-Yen, Liao Kuang-Wen, Chou Chih-Hung, Shrestha Sirjana, Yang Chi-Dung, Chiew Men-Yee, Huang Hsin-Tzu, Hong Hsiao-Chin, Huang Shih-Hung, Chang Tzu-Hao, Huang Hsien-Da
Department of Biological Science and Technology, National Chiao Tung University, Hsinchu, Taiwan.
Department of Obstetrics and Gynecology, Gynecologic Cancer Center, Cathay General Hospital, Taipei, Taiwan.
Front Oncol. 2020 Jan 21;9:1508. doi: 10.3389/fonc.2019.01508. eCollection 2019.
In the United States and Europe, endometrial endometrioid carcinoma (EEC) is the most prevalent gynecologic malignancy. Lymph node metastasis (LNM) is the key determinant of the prognosis and treatment of EEC. A biomarker that predicts LNM in patients with EEC would be beneficial, enabling individualized treatment. Current preoperative assessment of LNM in EEC is not sufficiently accurate to predict LNM and prevent overtreatment. This pilot study established a biomarker signature for the prediction of LNM in early stage EEC. We performed RNA sequencing in 24 clinically early stage (T1) EEC tumors (lymph nodes positive and negative in 6 and 18, respectively) from Cathay General Hospital and analyzed the RNA sequencing data of 289 patients with EEC from The Cancer Genome Atlas (lymph node positive and negative in 33 and 256, respectively). We analyzed clinical data including tumor grade, depth of tumor invasion, and age to construct a sequencing-based prediction model using machine learning. For validation, we used another independent cohort of early stage EEC samples ( = 72) and performed quantitative real-time polymerase chain reaction (qRT-PCR). Finally, a PCR-based prediction model and risk score formula were established. Eight genes (, and ) plus one clinical parameter (depth of myometrial invasion) were identified for use in a sequencing-based prediction model. After qRT-PCR validation, five genes (, and ) were identified as predictive biomarkers. Receiver operating characteristic curve analysis revealed that these five genes can predict LNM. Combined use of these five genes resulted in higher diagnostic accuracy than use of any single gene, with an area under the curve of 0.898, sensitivity of 88.9%, and specificity of 84.1%. The accuracy, negative, and positive predictive values were 84.7, 98.1, and 44.4%, respectively. We developed a five-gene biomarker panel associated with LNM in early stage EEC. These five genes may represent novel targets for further mechanistic study. Our results, after corroboration by a prospective study, may have useful clinical implications and prevent unnecessary elective lymph node dissection while not adversely affecting the outcome of treatment for early stage EEC.
在美国和欧洲,子宫内膜样腺癌(EEC)是最常见的妇科恶性肿瘤。淋巴结转移(LNM)是EEC预后和治疗的关键决定因素。一种能够预测EEC患者LNM的生物标志物将大有裨益,可实现个体化治疗。目前EEC中LNM的术前评估不够准确,无法预测LNM并避免过度治疗。这项前瞻性研究建立了一种生物标志物特征,用于预测早期EEC中的LNM。我们对国泰综合医院的24例临床早期(T1)EEC肿瘤(淋巴结阳性和阴性分别为6例和18例)进行了RNA测序,并分析了来自癌症基因组图谱的289例EEC患者的RNA测序数据(淋巴结阳性和阴性分别为33例和256例)。我们分析了包括肿瘤分级、肿瘤浸润深度和年龄在内的临床数据,以使用机器学习构建基于测序的预测模型。为了进行验证,我们使用了另一组独立的早期EEC样本队列(n = 72)并进行了定量实时聚合酶链反应(qRT-PCR)。最后,建立了基于PCR的预测模型和风险评分公式。在基于测序的预测模型中确定了八个基因(、和)以及一个临床参数(肌层浸润深度)。经过qRT-PCR验证后,确定了五个基因(、和)作为预测生物标志物。受试者工作特征曲线分析表明,这五个基因可以预测LNM。联合使用这五个基因比使用任何单个基因具有更高的诊断准确性,曲线下面积为0.898,灵敏度为88.9%,特异性为84.1%。准确性、阴性和阳性预测值分别为84.7%、98.1%和44.4%。我们开发了一种与早期EEC中LNM相关的五基因生物标志物组合。这五个基因可能代表进一步机制研究的新靶点。我们的结果经前瞻性研究证实后,可能具有有用的临床意义,并可避免不必要的选择性淋巴结清扫,同时不会对早期EEC的治疗结果产生不利影响。