Zhao Zhixuan, Mac Aodha Oisin, Daniel Carola Riccarda, Israeliantz Nicolas, Orekhova Anna, Schwarz Tobias, Mellanby Richard, Banks Christopher J
School of Informatics, The University of Edinburgh, Edinburgh, UK.
Royal (Dick) School of Veterinary Studies, The University of Edinburgh, Edinburgh, UK.
Vet Radiol Ultrasound. 2025 Sep;66(5):e70065. doi: 10.1111/vru.70065.
Middle ear disease occurs frequently in dogs. CT has proven to be an excellent diagnostic tool for detecting middle ear structures, helping to achieve rapid and accurate diagnoses. Deep learning techniques are now widely used in CT scan-based human medical image analysis, providing decision support and diagnostics. However, such techniques are currently underutilized in veterinary radiology. The focus of this study was to develop a deep learning model capable of diagnosing middle ear disease in dogs using CT images. To achieve this with a relatively small dataset, transfer learning and data augmentation techniques were applied. During the experimental phase of the study, we tested 10 binary classification models based on the ResNet architecture, combined with data augmentation and transfer learning, on a dataset consisting of a total of 535 canine CT images. We achieved a classification accuracy of up to 84.7%. The developed classifier, trained on relatively few CT images, can detect normal middle ears and middle ear disease in dogs with over 80% accuracy.
中耳疾病在犬类中频繁发生。CT已被证明是检测中耳结构的优秀诊断工具,有助于实现快速准确的诊断。深度学习技术目前广泛应用于基于CT扫描的人类医学图像分析,提供决策支持和诊断。然而,此类技术目前在兽医放射学中未得到充分利用。本研究的重点是开发一种能够使用CT图像诊断犬类中耳疾病的深度学习模型。为了在相对较小的数据集上实现这一目标,应用了迁移学习和数据增强技术。在研究的实验阶段,我们在一个总共包含535张犬类CT图像的数据集上,测试了10个基于ResNet架构的二分类模型,并结合了数据增强和迁移学习。我们实现了高达84.7%的分类准确率。所开发的分类器在相对较少的CT图像上进行训练,能够以超过80%的准确率检测犬类的正常中耳和中耳疾病。