Department of Ultrasound, Peking University Third Hospital, Beijing, China.
Department of Radiology, Shandong Provincial Hospital Affiliated to Shandong First Medical University, Jinan, Shandong, China.
Ultrasound Med Biol. 2023 Feb;49(2):560-568. doi: 10.1016/j.ultrasmedbio.2022.10.009. Epub 2022 Nov 12.
We evaluated the performance of ultrasound image-based deep features and radiomics for differentiating small fat-poor angiomyolipoma (sfp-AML) from small renal cell carcinoma (SRCC). This retrospective study included 194 patients with pathologically proven small renal masses (diameter ≤4 cm; 67 in the sfp-AML group and 127 in the SRCC group). We obtained 206 and 364 images from the sfp-AML and SRCC groups with experienced radiologist identification, respectively. We extracted 4024 deep features from the autoencoder neural network and 1497 radiomics features from the Pyradiomics toolbox; the latter included first-order, shape, high-order, Laplacian of Gaussian and Wavelet features. All subjects were allocated to the training and testing sets with a ratio of 3:1 using stratified sampling. The least absolute shrinkage and selection operator (LASSO) regression model was applied to select the most diagnostic features. Support vector machine (SVM) was adopted as the discriminative classifier. An optimal feature subset including 45 deep and 7 radiomics features was screened by the LASSO model. The SVM classifier achieved good performance in discriminating between sfp-AMLs and SRCCs, with areas under the curve (AUCs) of 0.96 and 0.85 in the training and testing sets, respectively. The classifier built using deep and radiomics features can accurately differentiate sfp-AMLs from SRCCs on ultrasound imaging.
我们评估了基于超声图像的深度特征和放射组学在区分小脂肪乏血供血管平滑肌脂肪瘤(sfp-AML)与小肾细胞癌(SRCC)中的性能。这项回顾性研究纳入了 194 名经病理证实的小肾肿块患者(直径≤4cm;sfp-AML 组 67 例,SRCC 组 127 例)。我们分别从 sfp-AML 和 SRCC 组获得了 206 个和 364 个经经验丰富的放射科医生识别的图像。我们从自动编码器神经网络中提取了 4024 个深度特征,从 Pyradiomics 工具包中提取了 1497 个放射组学特征;后者包括一阶、形状、高阶、拉普拉斯高斯和小波特征。所有受试者均采用分层抽样法按 3:1 的比例分配到训练集和测试集中。最小绝对收缩和选择算子(LASSO)回归模型用于选择最具诊断价值的特征。支持向量机(SVM)被用作鉴别分类器。LASSO 模型筛选出包含 45 个深度特征和 7 个放射组学特征的最佳特征子集。SVM 分类器在区分 sfp-AML 和 SRCC 方面表现良好,在训练集和测试集中的曲线下面积(AUCs)分别为 0.96 和 0.85。基于深度和放射组学特征构建的分类器可在超声成像上准确地区分 sfp-AML 和 SRCC。