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Automated Recognition of healthy Anterior Cruciate Ligament in Sagittal MR images using Lightweight Deep Learning

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Auteur
Siouras A., Moustakidis S., Giannakidis A., Chalatsis G., Malizos K.N., Hantes M., Tasoulis S., Tsaopoulos D.
Date
2022
Language
en
DOI
10.1109/IISA56318.2022.9904387
Sujet
Cost effectiveness
Damage detection
Deep learning
Magnetic resonance imaging
Object detection
Object recognition
Anterior cruciate ligament
Anterior cruciate ligament injury
Automated recognition
Cost effective
Knee injury
Light weight
Light-weight deep learning
MR-images
Objects detection
Sagittal plane
Pipelines
Institute of Electrical and Electronics Engineers Inc.
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Résumé
Anterior cruciate ligament (ACL) tears are very common among athletes. The success of enhanced ACL injury therapy hinges on accurate and cost-effective detection. Deep learning-based techniques have recently dominated ACL injury detection in MRI research. The goal of this study is to develop a robust and lightweight deep learning pipeline for identifying ACL in 3D MRI data of healthy knees. Specifically, we aim at finding the slices in the sagittal plane where the ACL is present. This could be utilized by clinicians for further evaluation. To this end, we build and test an advanced pipeline that relies on the newest object detection network, YOLOv5-Nano. We go on to compare our model to other pipelines that rely on YOLOv5-xlarge, YOLOX-small and YOLOX-nano. YOLOv5-nano is shown to be the best performer, obtaining the highest overall mAP@0.5 performance (0.9727) on augmented data, while at the same time having the smallest model size (3.7 MB). Conclusive object detection is a key step in identifying damage. YOLOv5-nano offers a great solution towards achieving robust object detection healthcare systems that will permit local processing by devices with limited computational resources. © 2022 IEEE.
URI
http://hdl.handle.net/11615/79048
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