1 Department of Radiology, First Affiliated Hospital of Nanjing Medical University, 300 Guangzhou Rd, Nanjing, Jiangsu, China, 210009.
2 Department of Pathology, First Affiliated Hospital of Nanjing Medical University, Nanjing, China.
AJR Am J Roentgenol. 2018 Jul;211(1):109-113. doi: 10.2214/AJR.17.19074. Epub 2018 Apr 18.
The purpose of this study was to evaluate the prognostic impact of radiomic features from CT scans in predicting occult mediastinal lymph node (LN) metastasis of lung adenocarcinoma.
A total of 492 patients with lung adenocarcinoma who underwent preoperative unenhanced chest CT were enrolled in the study. A total of 300 radiomics features quantifying tumor intensity, texture, and wavelet were extracted from the segmented entire-tumor volume of interest of the primary tumor. A radiomics signature was generated by use of the relief-based feature method and the support vector machine classification method. A ROC regression curve was drawn for the predictive performance of radiomics features. Multivariate logistic regression models based on clinicopathologic and radiomics features were compared for discriminating mediastinal LN metastasis.
Clinical variables (sex, tumor diameter, tumor location) and predominant subtype were risk factors for pathologic mediastinal LN metastasis. The accuracy of radiomics signature for predicting mediastinal LN metastasis was 91.1% in ROC analysis (AUC, 0.972; sensitivity, 94.8%; specificity, 92%). Radiomics signature (Akaike information criterion [AIC] value, 80.9%) showed model fit superior to that of the clinicohistopathologic model (AIC value, 61.1%) for predicting mediastinal LN metastasis.
The radiomics signature of a primary tumor based on CT scans can be used for quantitative and noninvasive prediction of occult mediastinal LN metastasis of lung adenocarcinoma.
本研究旨在评估 CT 扫描的放射组学特征对肺腺癌隐匿性纵隔淋巴结(LN)转移的预测预后价值。
共纳入 492 例术前未增强胸部 CT 检查的肺腺癌患者。从原发性肿瘤的分割整个肿瘤感兴趣区提取了 300 个定量肿瘤强度、纹理和小波的放射组学特征。使用基于 Relief 的特征选择方法和支持向量机分类方法生成放射组学特征。绘制了放射组学特征预测性能的 ROC 回归曲线。比较了基于临床病理和放射组学特征的多变量逻辑回归模型,以区分纵隔 LN 转移。
临床变量(性别、肿瘤直径、肿瘤位置)和主要亚型是病理纵隔 LN 转移的危险因素。ROC 分析中放射组学特征预测纵隔 LN 转移的准确率为 91.1%(AUC:0.972;敏感性:94.8%;特异性:92%)。放射组学特征(Akaike 信息准则[AIC]值:80.9%)在预测纵隔 LN 转移方面的模型拟合优于临床病理模型(AIC 值:61.1%)。
基于 CT 扫描的原发性肿瘤放射组学特征可用于定量和无创预测肺腺癌隐匿性纵隔 LN 转移。