Fang Yi, Wang He, Feng Ming, Chen Hongjie, Zhang Wentai, Wei Liangfeng, Pei Zhijie, Wang Renzhi, Wang Shousen
Department of Neurosurgery, The Fuzong Clinical Medical College of Fujian Medical University, Fuzhou, China.
Department of Neurosurgery, Fuzhou General Hospital, Fuzhou, China.
Front Oncol. 2022 Apr 14;12:835047. doi: 10.3389/fonc.2022.835047. eCollection 2022.
Convolutional neural network (CNN) is a deep-learning method for image classification and recognition based on a multi-layer NN. In this study, CNN was used to accurately assess cavernous sinus invasion (CSI) in pituitary adenoma (PA).
A total of 371 patients with PA were enrolled in the retrospective study. The cohort was divided into the invasive ( = 102) and non-invasive groups ( = 269) based on surgically confirmed CSI. Images were selected on the T1-enhanced imaging on MR scans. The cohort underwent a fivefold division of randomized datasets for cross-validation. Then, a tenfold augmented dataset (horizontal flip and rotation) of the training set was enrolled in the pre-trained Resnet50 model for transfer learning. The testing set was imported into the trained model for evaluation. Gradient-weighted class activation mapping (Grad-CAM) was used to obtain the occlusion map. The diagnostic values were compared with different dichotomizations of the Knosp grading system (grades 0-1/2-4, 0-2/3a-4, and 0-3a/3b-4).
Based on Knosp grades, 20 cases of grade 0, 107 cases of grade 1, 82 cases of grade 2, 104 cases of grade 3a, 22 cases of grade 3b, and 36 cases of grade 4 were recorded. The CSI rates were 0%, 3.7%, 18.3%, 37.5%, 54.5%, and 88.9%. The predicted accuracies of the three dichotomies were 60%, 74%, and 81%. The area under the receiver operating characteristic (AUC-ROC) of Knosp grade for CSI prediction was 0.84; the cutoff was 2.5 with a Youden value of 0.62. The accuracies of the CNN model ranged from 0.80 to 0.96, with AUC-ROC values ranging from 0.89 to 0.98. The Grad-CAM saliency maps confirmed that the region of interest of the model was around the sellar region.
We constructed a CNN model with a high proficiency at CSI diagnosis. A more accurate CSI identification was achieved with the constructed CNN than the Knosp grading system.
卷积神经网络(CNN)是一种基于多层神经网络的用于图像分类和识别的深度学习方法。在本研究中,CNN被用于准确评估垂体腺瘤(PA)的海绵窦侵袭(CSI)情况。
共有371例PA患者纳入本回顾性研究。根据手术证实的CSI情况,将队列分为侵袭组(n = 102)和非侵袭组(n = 269)。在磁共振成像(MR)扫描的T1增强成像上选择图像。该队列进行了五折随机数据集划分以进行交叉验证。然后,将训练集的十倍增强数据集(水平翻转和旋转)纳入预训练的Resnet50模型进行迁移学习。将测试集导入训练好的模型进行评估。使用梯度加权类激活映射(Grad-CAM)来获得遮挡图。将诊断价值与Knosp分级系统的不同二分法(0-1/2-4级、0-2/3a-4级和0-3a/3b-4级)进行比较。
根据Knosp分级,记录到0级20例、1级107例、2级82例、3a级104例、3b级22例和4级36例。CSI发生率分别为0%、3.7%、18.3%、37.5%、54.5%和88.9%。三种二分法的预测准确率分别为60%、74%和81%。用于CSI预测的Knosp分级的受试者操作特征曲线下面积(AUC-ROC)为0.84;截断值为2.5,约登指数为0.62。CNN模型的准确率范围为0.80至0.96,AUC-ROC值范围为0.89至0.98。Grad-CAM显著性图证实模型的感兴趣区域在鞍区周围。
我们构建了一个在CSI诊断方面具有高熟练度的CNN模型。与Knosp分级系统相比,构建的CNN实现了更准确的CSI识别。