Segmentation of tibiofemoral joint tissues from knee MRI using MtRA-Unet and incorporating shape information: Data from the Osteoarthritis Initiative
Akshay Daydar, Alik Pramanick, Arijit Sur, Subramani Kanagaraj

TL;DR
This paper introduces MtRA-Unet, a fast, single-stage deep learning model that accurately segments knee joint tissues from MRI scans, aiding osteoarthritis diagnosis with high precision and efficiency.
Contribution
The work presents a novel end-to-end MtRA-Unet framework with multi-resolution feature fusion and shape reconstruction loss for improved knee tissue segmentation.
Findings
Achieved DSC of 98.5% for femur segmentation
Segmented 160 MRI slices in 22 seconds per subject
Produced high-quality binary segmentation for cartilage analysis
Abstract
Knee Osteoarthritis (KOA) is the third most prevalent Musculoskeletal Disorder (MSD) after neck and back pain. To monitor such a severe MSD, a segmentation map of the femur, tibia and tibiofemoral cartilage is usually accessed using the automated segmentation algorithm from the Magnetic Resonance Imaging (MRI) of the knee. But, in recent works, such segmentation is conceivable only from the multistage framework thus creating data handling issues and needing continuous manual inference rendering it unable to make a quick and precise clinical diagnosis. In order to solve these issues, in this paper the Multi-Resolution Attentive-Unet (MtRA-Unet) is proposed to segment the femur, tibia and tibiofemoral cartilage automatically. The proposed work has included a novel Multi-Resolution Feature Fusion (MRFF) and Shape Reconstruction (SR) loss that focuses on multi-contextual information and…
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Taxonomy
TopicsOsteoarthritis Treatment and Mechanisms · Medical Imaging and Analysis · Diabetic Foot Ulcer Assessment and Management
