Department of Radiology, Nagoya City University Graduate School of Medical Sciences, Nagoya, Japan.
Department of Radiology, Fujita Health University School of Medicine, 1-98, Dengakugakubo, Kutsukake-Cho, Toyoake, Aichi, 470-1192, Japan.
Jpn J Radiol. 2024 Apr;42(4):367-373. doi: 10.1007/s11604-023-01512-0. Epub 2023 Nov 27.
To investigate the value of computed tomography (CT) radiomic feature analysis for the differential diagnosis between thymic epithelial tumors (TETs) and thymic cysts, and prediction of histological subtypes of TETs.
Twenty-four patients with TETs (13 low-risk and 9 high-risk thymomas, and 2 thymic carcinomas) and 12 with thymic cysts were included in this study. For each lesion, the radiomic features of a volume of interest covering the lesion were extracted from non-contrast enhanced CT images. The Least Absolute Shrinkage and Selection Operator (Lasso) method was used for the feature selection. Predictive models for differentiating TETs from thymic cysts (model A), and high risk thymomas + thymic carcinomas from low risk thymomas (model B) were created from the selected features. The receiver operating characteristic curve was used to evaluate the effectiveness of radiomic feature analysis for differentiating among these tumors.
In model A, the selected 5 radiomic features for the model A were NGLDM_Contrast, GLCM_Correlation, GLZLM_SZLGE, DISCRETIZED_HISTO_Entropy_log2, and DISCRETIZED_HUmin. In model B, sphericity was the only selected feature. The area under the curve, sensitivity, and specificity of radiomic feature analysis were 1 (95% confidence interval [CI]: 1-1), 100%, and 100%, respectively, for differentiating TETs from thymic cysts (model A), and 0.76 (95%CI: 0.53-0.99), 64%, and 100% respectively, for differentiating high-risk thymomas + thymic carcinomas from low-risk thymomas (model B).
CT radiomic analysis could be utilized as a non-invasive imaging technique for differentiating TETs from thymic cysts, and high-risk thymomas + thymic carcinomas from low-risk thymomas.
探讨 CT 放射组学特征分析在胸腺瘤(TET)与胸腺囊肿鉴别诊断及 TET 组织学分型预测中的价值。
本研究纳入 24 例 TET 患者(13 例低危和 9 例高危胸腺瘤,2 例胸腺癌)和 12 例胸腺囊肿患者。对每个病变,从非增强 CT 图像中提取包含病变的感兴趣区的放射组学特征。采用最小绝对收缩和选择算子(Lasso)方法进行特征选择。基于选择的特征,建立了用于区分 TET 与胸腺囊肿(模型 A)和高危胸腺瘤+胸腺癌与低危胸腺瘤(模型 B)的预测模型。使用受试者工作特征曲线评估放射组学特征分析在区分这些肿瘤中的有效性。
在模型 A 中,模型 A 选择的 5 个放射组学特征为 NGLDM_Contrast、GLCM_Correlation、GLZLM_SZLGE、DISCRETIZED_HISTO_Entropy_log2 和 DISCRETIZED_HUmin。在模型 B 中,球形度是唯一选择的特征。放射组学特征分析区分 TET 与胸腺囊肿的曲线下面积、敏感度和特异度分别为 1(95%置信区间[CI]:1-1)、100%和 100%(模型 A),以及 0.76(95%CI:0.53-0.99)、64%和 100%(模型 B)。
CT 放射组学分析可作为一种非侵入性影像学技术,用于区分 TET 与胸腺囊肿,以及高危胸腺瘤+胸腺癌与低危胸腺瘤。