Department of Radiology, People's Hospital of Guangxi Zhuang Autonomous Region, Nanning, China.
Department of Radiology,Shanghai Pulmonary Hospital,Tongji University School of Medicine,Shanghai, China.
Eur J Radiol. 2019 Mar;112:44-51. doi: 10.1016/j.ejrad.2019.01.005. Epub 2019 Jan 7.
This study assessed the ability of conventional computed tomography (CT) features (including primary tumors, metastatic lesions, lymph nodes, and emphysema) to predict epidermal growth factor receptor (EGFR) mutations in advanced pulmonary adenocarcinoma.
Patients who were diagnosed with advanced pulmonary adenocarcinoma between January 2017 and August 2017 and had undergone a chest CT and EGFR mutation testing were enrolled in this retrospective study. Qualitative and quantitative CT-features and clinical characteristics evaluated in this study included: primary tumor location, size, and morphology (including degree of lobulation, density, calcification, cavitation, vacuole sign, and air bronchogram), size and distribution of lung and pleural metastatic nodules, size and status of hilar and mediastinal lymph nodes, emphysema, organs with distant metastasis, and patient age, sex, and smoking history.
Of 201 patients, 107 (53.23%) were EGFR-mutation positive. The multivariate logistic regression indicated that EGFR mutations were significantly associated with smaller lymph nodes, a lower percentage of deep lobulation of the primary tumor and partial fusion of lymph nodes, and absence of emphysema. The area under the curve of logistic regression model for predicting EGFR mutations was 0.898.
Conventional CT-features, including emphysema, degree of primary tumor lobulation, and lymph node size and status, help to predict the presence or absence of EGFR mutations in advanced pulmonary adenocarcinoma. Additionally, these same CT-features demonstrated that the CT manifestations of the EGFR mutant group were of relatively lower malignancy and less invasive as compared to the wild-type EGFR group.
本研究评估了常规计算机断层扫描(CT)特征(包括原发肿瘤、转移病灶、淋巴结和肺气肿)预测晚期肺腺癌中表皮生长因子受体(EGFR)突变的能力。
本回顾性研究纳入了 2017 年 1 月至 2017 年 8 月期间被诊断为晚期肺腺癌并接受胸部 CT 和 EGFR 突变检测的患者。本研究评估的定性和定量 CT 特征及临床特征包括:原发肿瘤位置、大小和形态(包括分叶程度、密度、钙化、空洞、空泡征和空气支气管征)、肺和胸膜转移结节的大小和分布、肺门和纵隔淋巴结的大小和状态、肺气肿、远处转移器官以及患者的年龄、性别和吸烟史。
在 201 名患者中,107 名(53.23%)为 EGFR 突变阳性。多变量逻辑回归分析表明,EGFR 突变与淋巴结较小、原发肿瘤深分叶程度和部分融合的比例较低、无肺气肿显著相关。用于预测 EGFR 突变的逻辑回归模型的曲线下面积为 0.898。
包括肺气肿、原发肿瘤分叶程度以及淋巴结大小和状态在内的常规 CT 特征有助于预测晚期肺腺癌中 EGFR 突变的存在与否。此外,这些相同的 CT 特征表明,与野生型 EGFR 组相比,EGFR 突变组的 CT 表现恶性程度较低,侵袭性较小。