LRU-Net: lightweight and multiscale feature extraction for localization of ACL tears region in MRI images
Xiaojun Si, Liang Yan, Cui Shi, Yang Xu

TL;DR
LRU-Net is a lightweight deep learning model that accurately detects ACL tears in MRI images with high precision and efficiency.
Contribution
LRU-Net introduces a lightweight residual U-Net with attention mechanisms and dynamic feature extraction for improved ACL tear localization.
Findings
LRU-Net achieved a Dice Coefficient Score of 97.93% and an IoU of 96.40% in experiments.
The model outperformed several benchmark models like Attention-Unet and Swin-UNet.
It maintains high accuracy while reducing computational requirements.
Abstract
Anterior cruciate ligament (ACL) injuries hold significant clinical importance, making the development of accurate and efficient diagnostic tools essential. Deep learning has emerged as an effective method for detecting ACL tears. However, current models often struggle with multiscale and boundary-sensitive tear patterns and tend to be computationally intensive. We present LRU-Net, a lightweight residual U-Net designed for ACL tear segmentation. LRU-Net integrates an advanced attention mechanism that emphasizes gradients and leverages the anatomical position of the ACL, thereby improving boundary sensitivity. Furthermore, it employs a dynamic feature extraction module for adaptive multiscale feature extraction. A dense decoder featuring dense connections enhances feature reuse. In experimental evaluations, LRU-Net achieves a Dice Coefficient Score of 97.93% and an Intersection over…
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Taxonomy
TopicsKnee injuries and reconstruction techniques · Osteoarthritis Treatment and Mechanisms · Orthopedic Surgery and Rehabilitation
