Zheng Yun-Lin, Zheng Yi-Neng, Li Chuan-Fei, Gao Jue-Ni, Zhang Xin-Yu, Li Xin-Yi, Zhou Di, Wen Ming
Department of Radiology, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.
Department of Gastroenterology, The Second Affiliated Hospital, Chongqing Medical University, Chongqing, China.
Front Oncol. 2022 Jul 12;12:889833. doi: 10.3389/fonc.2022.889833. eCollection 2022.
This study explored the value of different radiomic models based on multiphase computed tomography in differentiating parotid pleomorphic adenoma (PA) and basal cell tumor (BCA) concerning the predominant phase and the optimal radiomic model.
This study enrolled 173 patients with pathologically confirmed parotid tumors (training cohort: n=121; testing cohort: n=52). Radiomic features were extracted from the nonenhanced, arterial, venous, and delayed phases CT images. After dimensionality reduction and screening, logistic regression (LR), K-nearest neighbor (KNN) and support vector machine (SVM) were applied to develop radiomic models. The optimal radiomic model was selected by using ROC curve analysis. Univariate and multivariable logistic regression was performed to analyze clinical-radiological characteristics and to identify variables for developing a clinical model. A combined model was constructed by integrating clinical and radiomic features. Model performances were assessed by ROC curve analysis.
A total of 1036 radiomic features were extracted from each phase of CT images. Sixteen radiomic features were considered valuable by dimensionality reduction and screening. Among radiomic models, the SVM model of the arterial and delayed phases showed superior predictive efficiency and robustness (AUC, training cohort: 0.822, 0.838; testing cohort: 0.752, 0.751). The discriminatory capability of the combined model was the best (AUC, training cohort: 0.885; testing cohort: 0.834).
The diagnostic performance of the arterial and delayed phases contributed more than other phases. However, the combined model demonstrated excellent ability to distinguish BCA from PA, which may provide a non-invasive and efficient method for clinical decision-making.
本研究探讨基于多期计算机断层扫描的不同放射组学模型在鉴别腮腺多形性腺瘤(PA)和基底细胞瘤(BCA)方面的价值,涉及优势期和最佳放射组学模型。
本研究纳入173例经病理证实的腮腺肿瘤患者(训练队列:n = 121;测试队列:n = 52)。从非增强、动脉期、静脉期和延迟期CT图像中提取放射组学特征。经过降维和筛选后,应用逻辑回归(LR)、K近邻(KNN)和支持向量机(SVM)建立放射组学模型。通过ROC曲线分析选择最佳放射组学模型。进行单因素和多因素逻辑回归分析临床放射学特征,并确定用于建立临床模型的变量。通过整合临床和放射组学特征构建联合模型。通过ROC曲线分析评估模型性能。
从CT图像的每个阶段共提取了1036个放射组学特征。经过降维和筛选,16个放射组学特征被认为具有价值。在放射组学模型中,动脉期和延迟期的SVM模型显示出更高的预测效率和稳健性(AUC,训练队列:0.822,0.838;测试队列:0.752,0.751)。联合模型的鉴别能力最佳(AUC,训练队列:0.885;测试队列:0.834)。
动脉期和延迟期的诊断性能比其他阶段贡献更大。然而,联合模型在区分BCA和PA方面表现出卓越能力,可为临床决策提供一种非侵入性且高效的方法。