Department of Radiology, MOE Key Laboratory of Major Diseases in Children, Beijing Children's Hospital, Capital Medical University, National Center for Children's Health, Beijing, 100045, China.
Department of Radiology, Peking University Third Hospital, Beijing, 100191, China.
Pediatr Res. 2023 Sep;94(3):1104-1110. doi: 10.1038/s41390-023-02553-x. Epub 2023 Mar 23.
Deep learning (DL) is more and more widely used in children's medical treatment. In this study, we have developed a computed tomography (CT)-based DL model for identifying undiagnosed non-Wilms tumors (nWTs) from pediatric renal tumors.
This study collected and analyzed the preoperative clinical data and CT images of pediatric renal tumor patients diagnosed by our center from 2008 to 2020, and established a DL model to identify nWTs noninvasively.
A total of 364 children who had been confirmed by histopathology with renal tumors from our center were enrolled, including 269 Wilms tumors (WTs) and 95 nWTs. For DL model development, all cases were randomly allocated to training set (218 cases), validation set (73 cases), and test set (73 cases). In the test set, the DL model achieved area under the curve of 0.831 (95% CI: 0.712-0.951) in discriminating WTs from nWTs, with the accuracy, sensitivity, and specificity of 0.781, 0.563, and 0.842, respectively. The sensitivity of our model was higher than a radiologist with 15 years of experience.
We presented a DL model for identifying undiagnosed nWTs from pediatric renal tumors, with the potential to improve the image-based diagnosis.
Deep learning model was used for the first time to identify pediatric renal tumors in this study. Deep learning model can identify non-Wilms tumors from pediatric renal tumors. Deep learning model based on computed tomography images can improve tumor diagnosis rate.
深度学习(DL)在儿童医疗中的应用越来越广泛。本研究旨在建立一种基于计算机断层扫描(CT)的深度学习模型,用于识别儿科肾肿瘤中的未确诊的非 Wilms 肿瘤(nWT)。
本研究收集和分析了 2008 年至 2020 年期间在本中心诊断为小儿肾肿瘤的患者的术前临床数据和 CT 图像,并建立了一种 DL 模型以进行无创性 nWT 识别。
共纳入 364 例经组织病理学证实为肾肿瘤的患儿,其中 269 例为 Wilms 瘤(WT),95 例为 nWT。为了开发 DL 模型,所有病例均被随机分配至训练集(218 例)、验证集(73 例)和测试集(73 例)。在测试集中,DL 模型在区分 WT 和 nWT 方面的曲线下面积为 0.831(95%CI:0.712-0.951),其准确率、敏感度和特异度分别为 0.781、0.563 和 0.842。我们的模型的敏感度高于具有 15 年经验的放射科医生。
我们提出了一种用于识别儿科肾肿瘤中未确诊的 nWT 的深度学习模型,该模型具有改善基于图像的诊断的潜力。
在本研究中,首次使用深度学习模型来识别小儿肾肿瘤。深度学习模型可以识别小儿肾肿瘤中的非 Wilms 肿瘤。基于 CT 图像的深度学习模型可以提高肿瘤诊断率。