Anterior cruciate ligament tear detection based on convolutional neural network and generative adversarial neural network

被引:0
作者
Kavita Joshi
K. Suganthi
机构
[1] Vellore Institute of Technology,
关键词
CNN; Deep learning; Generative adversarial network; ACL tear detection;
D O I
暂无
中图分类号
学科分类号
摘要
Knee ligament tear injury is frequent in many volleyball, football, basketball, and cricket players. In the past, various deep learning-based ACL tear detection schemes using knee magnetic resonance imaging (MRI) have been presented. It has shown challenges in ACL tear detection performance due to class imbalance issue arising due to uneven training samples and poor feature representation. This paper presents a simple and effective ACL knee ligament tear detection method with a convolutional neural network (ATD-CNN) to lessen the intricacy of the network. Further, the self-attention mechanism is used to improve the feature representation of MRI image information, neglect the irrelevant information in deep features, and enhance the classification accuracy. To diminish the class imbalance issue, generative adversarial network (GAN) is used to construct the synthetic database. The performance of the ATD-CNN with self-attention is assessed on the MRNet database using precision, accuracy, F1-score, and recall. ATD-CNN provides an accuracy of 90.10% for the original and 93.93% and augmented datasets. However, the ATD-CNN without attention mechanism resulted in 89.60% and 92.30% accuracy for original and augmented dataset. The proposed ATD-CNN model indicates that it can be utilized to detect ACL tears automatically and outperforms the existing schemes for tear detection.
引用
收藏
页码:5021 / 5030
页数:9
相关论文
共 123 条
  • [1] Bordalo-Rodrigues M(2021)Knee Musculoskeletal Diseases 2021–2024 83-106
  • [2] White LM(2021)Diagnostic performance of artificial intelligence for detection of anterior cruciate ligament and meniscus tears: a systematic review Arthrosc J Arthrosc Relat Surg 37 771-781
  • [3] Kunze KN(2022)Knee meniscus segmentation and tear detection based on magnitic resonacis images: a review of literature Int J Nonlinear Anal Appl 13 691-708
  • [4] Rossi DM(2022)Automated knee MR images segmentation of anterior cruciate ligament tears Sensors 22 1552-1821
  • [5] White GM(2021)Efficient detection of knee anterior cruciate ligament from magnetic resonance imaging using deep learning approach Diagnostics 11 105-212
  • [6] Karhade AV(2021)Automatic deep learning–assisted detection and grading of abnormalities in knee MRI studies Radiol Artif Intell 3 e200165-1712
  • [7] Deng J(2022)Anterior cruciate ligament tear detection based on deep convolutional neural network Diagnostics 12 2314-164
  • [8] Williams BT(2022)Intelligent detection of knee injury in MRI exam Int J Inf Technol 14 1815-3176
  • [9] Chahla J(2022)Meniscal tear and ACL injury detection model based on AlexNet and iterative ReliefF J Digit Imaging 35 200-986
  • [10] Mahdi AA(2015)Machine learning classification of OARSI-scored human articular cartilage using magnetic resonance imaging Osteoarthr Cartil 23 1704-1752