MGACA-Net: a novel deep learning based multi-scale guided attention and context aggregation for localization of knee anterior cruciate ligament tears region in MRI images

Author:

Awan Mazhar Javed12,Mohd Rahim Mohd Shafry1,Salim Naomie1,Nobanee Haitham345,Asif Ahsen Ali2,Attiq Muhammad Ozair2

Affiliation:

1. Faculty of Computing, Universiti Teknologi Malaysia, Johar Bahru, JOHOR, Malaysia

2. Department of Software Engineering, University of Management & Technology, Lahore, Punjab, Pakistan

3. College of Business, Abu Dhabi University, Abu Dhabi, United Arab Emirates

4. Oxford Centre for Islamic Studies, University of Oxford, Oxford, United Kingdom

5. School of Histories, Languages and Cultures, University of Liverpool, Liverpool, United Kingdom

Abstract

Anterior cruciate ligament (ACL) tears are a common knee injury that can have serious consequences and require medical intervention. Magnetic resonance imaging (MRI) is the preferred method for ACL tear diagnosis. However, manual segmentation of the ACL in MRI images is prone to human error and can be time-consuming. This study presents a new approach that uses deep learning technique for localizing the ACL tear region in MRI images. The proposed multi-scale guided attention-based context aggregation (MGACA) method applies attention mechanisms at different scales within the DeepLabv3+ architecture to aggregate context information and achieve enhanced localization results. The model was trained and evaluated on a dataset of 917 knee MRI images, resulting in 15265 slices, obtaining state-of-the-art results with accuracy scores of 98.63%, intersection over union (IOU) scores of 95.39%, Dice coefficient scores (DCS) of 97.64%, recall scores of 97.5%, precision scores of 98.21%, and F1 Scores of 97.86% on validation set data. Moreover, our method performed well in terms of loss values, with binary cross entropy combined with Dice loss (BCE_Dice_loss) and Dice_loss values of 0.0564 and 0.0236, respectively, on the validation set. The findings suggest that MGACA provides an accurate and efficient solution for automating the localization of ACL in knee MRI images, surpassing other state-of-the-art models in terms of accuracy and loss values. However, in order to improve robustness of the approach and assess its performance on larger data sets, further research is needed.

Publisher

PeerJ

Subject

General Computer Science

Reference33 articles.

1. Deep learning approaches for automatic localization in medical images;Alaskar;Computational Intelligence and Neuroscience,2022

2. Machine learning-based performance comparison to diagnose anterior cruciate ligament tears;Awan;Journal of Healthcare Engineering,2022

3. Automated knee MR images segmentation of anterior cruciate ligament tears;Awan;Sensors,2022

4. Improved deep convolutional neural network to classify osteoarthritis from anterior cruciate ligament tear using magnetic resonance imaging;Awan;Journal of Personalized Medicine,2021

5. Optimising knee injury detection with spatial attention and validating localisation ability;Belton,2021

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