Department of Radiology, The First Affiliated Hospital of Shandong First Medical University & Shandong Provincial Qianfoshan Hospital, No. 16766 Jingshi Road, Jinan, Shandong, China; Shandong First Medical University and Shandong Academy of Medical Sciences, Jinan, Shandong, China.
Department of Radiology, Shandong Mental Health Center, Jinan, Shandong, China.
Acad Radiol. 2023 Jan;30(1):40-46. doi: 10.1016/j.acra.2022.04.008. Epub 2022 May 14.
To explore the feasibility of differentiating three predominant metastatic tumor types using lung computed tomography (CT) radiomics features based on supervised machine learning.
This retrospective analysis included 252 lung metastases (LM) (from 78 patients), which were divided into the training (n = 176) and test (n = 76) cohort randomly. The metastases originated from colorectal cancer (n = 97), breast cancer (n = 87), and renal carcinoma (n = 68). An additional 77 LM (from 35 patients) were used for external validation. All radiomics features were extracted from lung CT using an open-source software called 3D slicer. The least absolute shrinkage and selection operator (LASSO) method selected the optimal radiomics features to build the model. Random forest and support vector machine (SVM) were selected to build three-class and two-class models. The performance of the classification model was evaluated with the area under the receiver operating characteristic curve (AUC) by two strategies: one-versus-rest and one-versus-one.
Eight hundred and fifty-one quantitative radiomics features were extracted from lung CT. By LASSO, 23 optimal features were extracted in three-class, and 25, 29, and 35 features in two-class for differentiating every two of three LM (colorectal cancer vs. renal carcinoma, colorectal cancer vs. breast cancer, and breast cancer vs. renal carcinoma, respectively). The AUCs of the three-class model were 0.83 for colorectal cancer, 0.79 for breast cancer, and 0.91 for renal carcinoma in the test cohort. In the external validation cohort, the AUCs were 0.77, 0.83, and 0.81, respectively. Swarmplot shows the distribution of radiomics features among three different LM types. In the two-class model, high accuracy and AUC were obtained by SVM. The AUC of discriminating colorectal cancer LM from renal carcinoma LM was 0.84, and breast cancer LM from colorectal cancer LM and renal carcinoma LM were 0.80 and 0.94, respectively. The AUCs were 0.77, 0.78, and 0.84 in the external validation cohort.
Quantitative radiomics features based on Lung CT exhibited good discriminative performance in LM of primary colorectal cancer, breast cancer, and renal carcinoma.
通过基于监督机器学习的肺部 CT 放射组学特征,探讨区分三种主要转移性肿瘤类型的可行性。
本回顾性分析纳入了 252 例肺转移瘤(LM)(来自 78 例患者),将其随机分为训练(n=176)和测试(n=76)队列。转移瘤来源于结直肠癌(n=97)、乳腺癌(n=87)和肾细胞癌(n=68)。另外 77 例 LM(来自 35 例患者)用于外部验证。使用开源软件 3D slicer 从肺部 CT 中提取所有放射组学特征。使用最小绝对值收缩和选择算子(LASSO)方法选择最佳放射组学特征来构建模型。选择随机森林和支持向量机(SVM)分别构建三分类和二分类模型。通过两种策略(一对一和一对多)评估分类模型的性能,即受试者工作特征曲线(ROC)下面积(AUC)。
从肺部 CT 中提取了 851 个定量放射组学特征。通过 LASSO,在三分类中提取了 23 个最优特征,在两分类中分别为 25、29 和 35 个特征,用于区分三种 LM(结直肠癌与肾细胞癌、结直肠癌与乳腺癌、乳腺癌与肾细胞癌)中的每两种。在测试队列中,三分类模型对结直肠癌、乳腺癌和肾细胞癌的 AUC 分别为 0.83、0.79 和 0.91。在外部验证队列中,AUC 分别为 0.77、0.83 和 0.81。SWARM 图显示了三种不同 LM 类型之间放射组学特征的分布。在二分类模型中,SVM 获得了较高的准确率和 AUC。SVM 对结直肠癌 LM 与肾细胞癌 LM 的鉴别 AUC 为 0.84,对乳腺癌 LM 与结直肠癌 LM 和肾细胞癌 LM 的鉴别 AUC 分别为 0.80 和 0.94。在外部验证队列中,AUC 分别为 0.77、0.78 和 0.84。
基于肺部 CT 的定量放射组学特征在原发性结直肠癌、乳腺癌和肾细胞癌的 LM 中具有良好的鉴别性能。