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Abstract #0257

On Memory-Based Interactive Deep Learning Models for Cartilage Segmentation in 3D MRIs of the Knee Joint

Danielle Lopes Ferreira1, Bruno Nunes1, Xuzhe Zhang1, Laura Carretero1, Maggie Fung1, Ravi Soni1, and Gopal Avinash1
1GE Healthcare, San Ramon, CA, United States

Synopsis

Keywords: Other AI/ML, AI/ML Software

Motivation: Accurate morphometric assessment of cartilage—such as thickness and volume—via MRI is essential for monitoring knee osteoarthritis. Segmenting cartilage remains challenging and dependent on extensive expert-annotated datasets which are heavily subjected to inter-reader variability. Recent advancements in Visual Foundational Models(VFM), especially memory-based approaches, offer opportunities for improving generalizability and robustness.

Goal(s): Leverage memory-based VFMs as an accurate method for segmenting soft tissue in 3DMRIs of the knee joint.

Approach: Trained 2DVFM, 3DVFM, and 3DCNN on 500MRIs; proposed method, SAMRI-2, evaluated against external datasets and inter-reader variability.

Results: SAMRI-2 outperformed other models, achieving 5 DSC points higher and three times lower error in cartilage thickness.

Impact: By leveraging memory-based 3D-VFM for morphometric assessment of cartilage through 3DMRIs, we significantly enhance the accuracy and generalizability of the challenging knee soft tissue segmentation, paving the way for more precise measurements of osteoarthritis progression.

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Keywords