Classification of rotator cuff tears in ultrasound images using deep learning models.

Journal: Medical & biological engineering & computing
Published Date:

Abstract

Rotator cuff tears (RCTs) are one of the most common shoulder injuries, which are typically diagnosed using relatively expensive and time-consuming diagnostic imaging tests such as magnetic resonance imaging or computed tomography. Deep learning algorithms are increasingly used to analyze medical images, but they have not been used to identify RCTs with ultrasound images. The aim of this study is to develop an approach to automatically classify RCTs and provide visualization of tear location using ultrasound images and convolutional neural networks (CNNs). The proposed method was developed using transfer learning and fine-tuning with five pre-trained deep models (VGG19, InceptionV3, Xception, ResNet50, and DenseNet121). The Bayesian optimization method was also used to optimize hyperparameters of the CNN models. A total of 194 ultrasound images from Kosin University Gospel Hospital were used to train and test the CNN models by five-fold cross-validation. Among the five models, DenseNet121 demonstrated the best classification performance with 88.2% accuracy, 93.8% sensitivity, 83.6% specificity, and AUC score of 0.832. A gradient-weighted class activation mapping (Grad-CAM) highlighted the sensitive features in the learning process on ultrasound images. The proposed approach demonstrates the feasibility of using deep learning and ultrasound images to assist RCTs' diagnosis.

Authors

  • Thao Thi Ho
    School of Mechanical Engineering, College of Engineering, Kyungpook National University, 80 Daehak-ro, Buk-gu, Daegu, 41566, Republic of Korea.
  • Geun-Tae Kim
    Department of Internal Medicine, College of Medicine, Kosin University, 262 Gamcheon-ro, Seo-gu, Busan, 49267, Republic of Korea.
  • Taewoo Kim
    Graduate School of Artificial Intelligence, Korea Advanced Institute of Science and Technology, Daejeon, Korea.
  • Sanghun Choi
    School of Mechanical Engineering, Kyungpook National University, Daegu, Republic of Korea. Electronic address: s-choi@knu.ac.kr.
  • Eun-Kee Park
    Department of Medical Humanities and Social Medicine, College of Medicine, Kosin University, Busan, Republic of Korea.