Vasile Corina Maria, Udriștoiu Anca Loredana, Ghenea Alice Elena, Popescu Mihaela, Gheonea Cristian, Niculescu Carmen Elena, Ungureanu Anca Marilena, Udriștoiu Ștefan, Drocaş Andrei Ioan, Gruionu Lucian Gheorghe, Gruionu Gabriel, Iacob Andreea Valentina, Alexandru Dragoş Ovidiu
PhD School Department, University of Medicine and Pharmacy of Craiova, 200349 Craiova, Romania.
Department of Pediatric Cardiology, County Clinical Emergency Hospital of Craiova, 200642 Craiova, Romania.
Medicina (Kaunas). 2021 Apr 19;57(4):395. doi: 10.3390/medicina57040395.
: At present, thyroid disorders have a great incidence in the worldwide population, so the development of alternative methods for improving the diagnosis process is necessary. : For this purpose, we developed an ensemble method that fused two deep learning models, one based on convolutional neural network and the other based on transfer learning. For the first model, called 5-CNN, we developed an efficient end-to-end trained model with five convolutional layers, while for the second model, the pre-trained VGG-19 architecture was repurposed, optimized and trained. We trained and validated our models using a dataset of ultrasound images consisting of four types of thyroidal images: autoimmune, nodular, micro-nodular, and normal. : Excellent results were obtained by the ensemble CNN-VGG method, which outperformed the 5-CNN and VGG-19 models: 97.35% for the overall test accuracy with an overall specificity of 98.43%, sensitivity of 95.75%, positive and negative predictive value of 95.41%, and 98.05%. The micro average areas under each receiver operating characteristic curves was 0.96. The results were also validated by two physicians: an endocrinologist and a pediatrician. We proposed a new deep learning study for classifying ultrasound thyroidal images to assist physicians in the diagnosis process.
目前,甲状腺疾病在全球人群中的发病率很高,因此有必要开发替代方法来改进诊断过程。为此,我们开发了一种集成方法,该方法融合了两个深度学习模型,一个基于卷积神经网络,另一个基于迁移学习。对于第一个模型,称为5-CNN,我们开发了一个具有五个卷积层的高效端到端训练模型,而对于第二个模型,对预训练的VGG-19架构进行了重新利用、优化和训练。我们使用由四种类型的甲状腺图像组成的超声图像数据集对模型进行了训练和验证:自身免疫性、结节性、微结节性和正常图像。集成的CNN-VGG方法取得了优异的结果,其性能优于5-CNN和VGG-19模型:总体测试准确率为97.35%,总体特异性为98.43%,敏感性为95.75%,阳性和阴性预测值分别为95.41%和98.05%。每个接收器操作特征曲线下的微平均面积为0.96。结果还得到了两位医生的验证:一位内分泌学家和一位儿科医生。我们提出了一项新的深度学习研究,用于对超声甲状腺图像进行分类,以协助医生进行诊断。