He Wenzhang, Xia Chunchao, Chen Xiaoyi, Yu Jianqun, Liu Jing, Pu Huaxia, Li Xue, Liu Shengmei, Chen Xinyue, Peng Liqing
Department of Radiology, West China Hospital, Sichuan University, Chengdu, China.
Computed Tomography (CT) Collaboration, Siemens Healthineers, Chengdu, China.
Front Oncol. 2022 May 13;12:869982. doi: 10.3389/fonc.2022.869982. eCollection 2022.
To investigate the differential diagnostic performance of computed tomography (CT)-based radiomics in thymic epithelial tumors (TETs) and lymphomas in anterior mediastinum.
There were 149 patients with TETs and 93 patients with lymphomas enrolled. These patients were assigned to a training set (n = 171) and an external validation set (n = 71). Dedicated radiomics prototype software was used to segment lesions on preoperative chest enhanced CT images and extract features. The multivariable logistic regression algorithm was used to construct three models according to clinico-radiologic features, radiomics features, and combined features, respectively. Performance of the three models was compared by using the area under the receiver operating characteristic curves (AUCs). Decision curve analysis was used to evaluate clinical utility of the three models.
For clinico-radiologic model, radiomics signature model, and combined model, the AUCs were 0.860, 0.965, 0.975 and 0.843, 0.961, 0.955 in the training cohort and the test cohort, respectively (all <0.05). The accuracies of each model were 0.836, 0.895, 0.918 and 0.845, 0.901, 0.859 in the two cohorts, respectively (all <0.05). Compared with the clinico-radiologic model, better diagnostic performances were found in the radiomics signature model and the combined model.
Radiomics signature model and combined model exhibit outstanding and comparable differential diagnostic performances between TETs and lymphomas. The CT-based radiomics analysis might serve as an effective tool for accurately differentiating TETs from lymphomas before treatment.
探讨基于计算机断层扫描(CT)的影像组学在前纵隔胸腺上皮肿瘤(TETs)和淋巴瘤鉴别诊断中的性能。
纳入149例TETs患者和93例淋巴瘤患者。这些患者被分为训练集(n = 171)和外部验证集(n = 71)。使用专用的影像组学原型软件对术前胸部增强CT图像上的病变进行分割并提取特征。分别根据临床放射学特征、影像组学特征和联合特征,采用多变量逻辑回归算法构建三个模型。通过使用受试者操作特征曲线(AUC)下的面积比较三个模型的性能。决策曲线分析用于评估三个模型的临床实用性。
对于临床放射学模型、影像组学特征模型和联合模型,训练队列中的AUC分别为0.860、0.965、0.975,测试队列中的AUC分别为0.843、0.961、0.955(均P<0.05)。两个队列中各模型的准确率分别为0.836、0.895、0.918和0.845、0.901、0.859(均P<0.05)。与临床放射学模型相比,影像组学特征模型和联合模型具有更好的诊断性能。
影像组学特征模型和联合模型在TETs和淋巴瘤之间表现出出色且相当的鉴别诊断性能。基于CT的影像组学分析可能是治疗前准确区分TETs和淋巴瘤的有效工具。