Department of Radiology, University of the Ryukyus Graduate School of Medicine, Nishihara, Japan.
Department of Radiology, St. Marianna University School of Medicine, Kawasaki, Japan.
Nagoya J Med Sci. 2022 May;84(2):269-285. doi: 10.18999/nagjms.84.2.269.
To investigate the usefulness of texture analysis to discriminate between cervical lymph node (LN) metastasis from cancer of unknown primary (CUP) and cervical LN involvement of malignant lymphoma (ML) on unenhanced computed tomography (CT). Cervical LN metastases in 17 patients with CUP and cervical LN involvement in 17 patients with ML were assessed by F-FDG PET/CT. The texture features were obtained in the total cross-sectional area (CSA) of the targeted LN, following the contour of the largest cervical LN on unenhanced CT. Values for the max standardized uptake value (SUVmax) and the mean SUV value (SUVmean), and 34 texture features were compared using a Mann-Whitney U test. The diagnostic accuracy and area under the curve (AUC) of the combination of the texture features were evaluated by support vector machine (SVM) with nested cross-validation. The SUVmax and SUVmean did not differ significantly between cervical LN metastases from CUP and cervical LN involvement from ML. However, significant differences of 9 texture features of the total CSA were observed ( = 0.001 - 0.05). The best AUC value of 0.851 for the texture feature of the total CSA were obtained from the correlation in the gray-level co-occurrence matrix features. SVM had the best AUC and diagnostic accuracy of 0.930 and 84.8%. Radiomics analysis appears to be useful for differentiating cervical LN metastasis from CUP and cervical LN involvement of ML on unenhanced CT.
为了探究纹理分析在鉴别原发灶不明癌(CUP)颈部淋巴结(LN)转移与恶性淋巴瘤(ML)颈部 LN 侵犯中的作用,我们对 17 例 CUP 患者的颈部 LN 转移灶和 17 例 ML 患者的颈部 LN 侵犯灶进行了 F-FDG PET/CT 检查。在平扫 CT 上,根据最大颈部 LN 的轮廓,在目标 LN 的总横截面积(CSA)中提取纹理特征。采用 Mann-Whitney U 检验比较最大标准化摄取值(SUVmax)和平均 SUV 值(SUVmean)以及 34 个纹理特征的差异。采用支持向量机(SVM)进行嵌套交叉验证,评估纹理特征组合的诊断准确性和曲线下面积(AUC)。CUP 患者的颈部 LN 转移灶与 ML 患者的颈部 LN 侵犯灶的 SUVmax 和 SUVmean 无显著差异。然而,总 CSA 的 9 个纹理特征存在显著差异( = 0.001-0.05)。总 CSA 的灰度共生矩阵特征的相关性得到了最佳 AUC 值为 0.851。SVM 的 AUC 和诊断准确率最佳,分别为 0.930 和 84.8%。纹理分析似乎有助于在平扫 CT 上鉴别 CUP 患者的颈部 LN 转移灶和 ML 患者的颈部 LN 侵犯灶。