Jaggi Akshay, Mastrodicasa Domenico, Charville Gregory W, Jeffrey R Brooke, Napel Sandy, Patel Bhavik
Stanford University School of Medicine, Department of Radiology, Stanford, California, United States.
Stanford University School of Medicine, Department of Pathology, Stanford, California, United States.
J Med Imaging (Bellingham). 2021 Sep;8(5):054501. doi: 10.1117/1.JMI.8.5.054501. Epub 2021 Sep 7.
: To differentiate oncocytoma and chromophobe renal cell carcinoma (RCC) using radiomics features computed from spherical samples of image regions of interest, "radiomic biopsies" (RBs). : In a retrospective cohort study of 102 CT cases [68 males (67%), 34 females (33%); mean age ± SD, ], we pathology-confirmed 42 oncocytomas (41%) and 60 chromophobes (59%). A board-certified radiologist performed two RB rounds. From each RB round, we computed radiomics features and compared the performance of a random forest and AdaBoost binary classifier trained from the features. To control for overfitting, we performed 10 rounds of 70% to 30% train-test splits with feature-selection, cross-validation, and hyperparameter-optimization on each split. We evaluated the performance with test ROC AUC. We tested models on data from the other RB round and compared with the same round testing with the DeLong test. We clustered important features for each round and measured a bootstrapped adjusted Rand index agreement. : Our best classifiers achieved an average AUC of . We found no evidence of an effect for RB round ( ). We also found no evidence for a decrease in model performance when tested on the other RB round ( ). Feature clustering produced seven clusters in each RB round with high agreement ( , ). : A consistent radiomic signature can be derived from RBs and could help distinguish oncocytoma and chromophobe RCC.
利用从感兴趣图像区域的球形样本计算出的放射组学特征(“放射组学活检”,RB)来鉴别嗜酸细胞瘤和嫌色性肾细胞癌(RCC)。在一项对102例CT病例的回顾性队列研究中(68例男性[67%],34例女性[33%];平均年龄±标准差, ),我们通过病理证实了42例嗜酸细胞瘤(41%)和60例嫌色细胞瘤(59%)。一位获得委员会认证的放射科医生进行了两轮RB操作。从每轮RB操作中,我们计算放射组学特征,并比较了基于这些特征训练的随机森林和AdaBoost二元分类器的性能。为了控制过拟合,我们进行了10轮70%至30%的训练-测试分割,并在每次分割上进行特征选择、交叉验证和超参数优化。我们用测试ROC AUC评估性能。我们在另一轮RB的数据上测试模型,并通过DeLong检验与同一轮测试进行比较。我们对每轮的重要特征进行聚类,并测量了自展调整兰德指数一致性。我们最好的分类器平均AUC达到了 。我们没有发现RB轮次有影响的证据( )。我们也没有发现在另一轮RB上测试时模型性能下降的证据( )。特征聚类在每轮RB中产生了七个聚类,一致性很高( , )。可以从RB中得出一致的放射组学特征,这有助于鉴别嗜酸细胞瘤和嫌色性RCC。