Xie Xiao, Ma Sheng-Xiao, Luo Xiang-De, Liao De-Ying, Han Dong, Huang Zhi-Peng, Chen Zhi-Hua, Li Xian-Ping, Li Bo, Hu Shi-Di, Chen Yan-Jun, Liu Peng-Fei, Zheng De-Zhong, Xia Hui, Liu Cun-Dong, Zhao Shan-Chao, Chen Ming-Kun
Department of Urology, Third Affiliated Hospital, Southern Medical University, Guangzhou, China.
The Third Clinical College, Southern Medical University, Guangzhou, China.
Ann Med. 2025 Dec;57(1):2540596. doi: 10.1080/07853890.2025.2540596. Epub 2025 Aug 7.
The incidence of adrenal incidentalomas (AIs) is increasing yearly. The early discovery of AIs is helpful to better manage adrenal diseases, especially subclinical primary aldosteronism, Cushing's syndrome and pheochromocytoma.
In this multicenter retrospective study, a total of 778 patients from three different medical centers were assessed. The two-stage cascade network consisted of a 3D Res-Unet network for adrenal gland segmentation and a classifier for determining the presence of AIs. The segmentation network was mainly evaluated by the Dice similarity coefficient (DSC), and the classifier was evaluated by the area under the receiver operator characteristic curve (AUC), accuracy, sensitivity, and specificity. The Delong test was used to compare the classification performance between the cascade network and manual segmentation.
A total of 443 patients were randomly assigned in a 7:3 ratio, stratified sampling, to train and valid sets of the model development cohort, and 335 patients from the three centers were included in the test cohort. In the validation set, the AUC of the model for identifying left AI was 88.15%, and the AUC of the model for identifying right AI was 87.90%. There was no significant difference between model performance and manual segmentation of AIs ( > 0.05). In the test cohort, the cascade network achieved AUC of more than 80% and accuracy of more than 75% for both left and right adrenal glands.
The two-stage cascade network based on a deep learning algorithm can be used for automatic recognition of AIs in nonenhanced CT from different centers.
肾上腺偶发瘤(AI)的发病率逐年上升。AI的早期发现有助于更好地管理肾上腺疾病,尤其是亚临床原发性醛固酮增多症、库欣综合征和嗜铬细胞瘤。
在这项多中心回顾性研究中,对来自三个不同医疗中心的778例患者进行了评估。两阶段级联网络由用于肾上腺分割的3D Res-Unet网络和用于确定AI存在的分类器组成。分割网络主要通过Dice相似系数(DSC)进行评估,分类器通过受试者操作特征曲线下面积(AUC)、准确性、敏感性和特异性进行评估。使用德龙检验比较级联网络和手动分割之间的分类性能。
总共443例患者按7:3的比例随机分配,分层抽样,进入模型开发队列的训练集和验证集,来自三个中心的335例患者被纳入测试队列。在验证集中,识别左侧AI的模型的AUC为88.15%,识别右侧AI的模型的AUC为87.90%。模型性能与AI的手动分割之间无显著差异(>0.05)。在测试队列中,级联网络对左右肾上腺的AUC均超过80%,准确率均超过75%。
基于深度学习算法的两阶段级联网络可用于自动识别来自不同中心的非增强CT中的AI。