Sun Jing-Xi, Zhou Xuan-Xuan, Yu Yan-Jin, Wei Ya-Ming, Shi Yi-Bing, Xu Qing-Song, Chen Shuang-Shuang
Department of Radiology, Xuzhou Central Hospital, Xuzhou, China.
Department of Information, Xuzhou Central Hospital, Xuzhou, China.
Front Oncol. 2025 Feb 13;15:1502932. doi: 10.3389/fonc.2025.1502932. eCollection 2025.
Currently, the computed tomography (CT) radiomics-based models, which can evaluate small (≤ 20 mm) solid pulmonary nodules (SPNs) are lacking. This study aimed to develop a CT radiomics-based model that can differentiate between benign and malignant small SPNs.
This study included patients with small SPNs between January 2019 and November 2021. The participants were then randomly categorized into training and testing cohorts with an 8:2 ratio. CT images of all the patients were analyzed to extract radiomics features. Furthermore, a radiomics scoring model was developed based on the features selected in the training group via univariate and multivariate logistic regression analyses. The testing cohort was then used to validate the developed predictive model.
This study included 210 patients, 168 in the training and 42 in the testing cohorts. Radiomics scores were ultimately calculated based on 9 selected CT radiomics features. Furthermore, traditional CT and clinical risk factors associated with SPNs included lobulation (P < 0.001), spiculation (P < 0.001), and a larger diameter (P < 0.001). The developed CT radiomics scoring model comprised of the following formula: X = -6.773 + 12.0705×radiomics score+2.5313×lobulation (present: 1; no present: 0)+3.1761×spiculation (present: 1; no present: 0)+0.3253×diameter. The area under the curve (AUC) values of the CT radiomics-based model, CT radiomics score, and clinicoradiological score were 0.957, 0.945, and 0.853, respectively, in the training cohort, while that of the testing cohort were 0.943, 0.916, and 0.816, respectively.
The CT radiomics-based model designed in the present study offers valuable diagnostic accuracy in distinguishing benign and malignant SPNs.
目前,缺乏基于计算机断层扫描(CT)影像组学的模型来评估小(≤20mm)实性肺结节(SPN)。本研究旨在开发一种基于CT影像组学的模型,以区分良性和恶性小SPN。
本研究纳入了2019年1月至2021年11月期间患有小SPN的患者。然后将参与者以8:2的比例随机分为训练组和测试组。分析所有患者的CT图像以提取影像组学特征。此外,通过单因素和多因素逻辑回归分析,基于训练组中选择的特征开发了影像组学评分模型。然后使用测试组来验证所开发的预测模型。
本研究包括210名患者,其中168名在训练组,42名在测试组。最终基于9个选定的CT影像组学特征计算影像组学评分。此外,与SPN相关的传统CT和临床危险因素包括分叶(P<0.001)、毛刺(P<0.001)和较大直径(P<0.001)。所开发的CT影像组学评分模型由以下公式组成:X = -6.773 + 12.0705×影像组学评分 + 2.5313×分叶(存在:1;不存在:0)+ 3.1761×毛刺(存在:1;不存在:0)+ 0.3253×直径。在训练组中,基于CT影像组学的模型、CT影像组学评分和临床放射学评分的曲线下面积(AUC)值分别为0.957、0.945和0.853,而在测试组中分别为0.943、0.916和0.816。
本研究设计的基于CT影像组学的模型在区分良性和恶性SPN方面具有有价值的诊断准确性。