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  3. A Minimal Annotation Pipeline for Deep Learning Segmentation of Skeletal Muscles.
 

A Minimal Annotation Pipeline for Deep Learning Segmentation of Skeletal Muscles.

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BORIS DOI
10.48620/88135
Date of Publication
July 2025
Publication Type
Article
Division/Institute

Institute of Diagnost...

Clinic of Neurology

Author
Baudin, Pierre-Yves
Balsiger, Fabianorcid-logo
Institute of Diagnostic and Interventional Neuroradiology
Clinic of Neurology
Beck, Lea
Boisserie, Jean-Marc
Jouan, Sophie
Marty, Benjamin
Reyngoudt, Harmen
Scheidegger, Olivierorcid-logo
Institute of Diagnostic and Interventional Neuroradiology
Clinic of Neurology
Series
NMR in Biomedicine
ISSN or ISBN (if monograph)
1099-1492
0952-3480
Publisher
Wiley
Language
English
Publisher DOI
10.1002/nbm.70066
PubMed ID
40390325
Uncontrolled Keywords

automatic segmentatio...

neuromuscular disorde...

nnU‐net

quantitative MRI

skeletal muscles

Description
Translating quantitative skeletal muscle MRI biomarkers into clinics requires efficient automatic segmentation methods. The purpose of this work is to investigate a simple yet effective iterative methodology for building a high-quality automatic segmentation model while minimizing the manual annotation effort. We used a retrospective database of quantitative MRI examinations (n = 70) of healthy and pathological thighs for training a nnU-Net segmentation model. Healthy volunteers and patients with various neuromuscular diseases, broadly categorized as dystrophic, inflammatory, neurogenic, and unlabeled NMDs. We designed an iterative procedure, progressively adding cases to the training set and using a simple visual five-level rating scale to judge the validity of generated segmentations for clinical use. On an independent test set (n = 20), we assessed the quality of the segmentation in 13 individual thigh muscles using standard segmentation metrics-dice coefficient (DICE) and 95% Hausdorff distance (HD95)-and quantitative biomarkers-cross-sectional area (CSA), fat fraction (FF), and water-T1/T2. We obtained high-quality segmentations (DICE = 0.88 ± 0.15/0.86 ± 0.14, HD95 = 6.35 ± 12.33/6.74 ± 11.57 mm), comparable to recent works, although with a smaller training set (n = 30). Inter-rater agreement on the five-level scale was fair to moderate but showed progressive improvement of the segmentation model along with the iterations. We observed limited differences from manually delineated segmentations on the quantitative outcomes (MAD: CSA = 65.2 mm2, FF = 1%, water-T1 = 8.4 ms, water-T2 = 0.35 ms), with variability comparable to manual delineations.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/211089
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NMR in Biomedicine - 2025 - Baudin - A Minimal Annotation Pipeline for Deep Learning Segmentation of Skeletal Muscles.pdftextAdobe PDF5.97 MBpublishedOpen
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