2022
DOI: 10.1002/mp.15533
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Transfer learning for data‐efficient abdominal muscle segmentation with convolutional neural networks

Abstract: Background: Skeletal muscle segmentation is an important procedure for assessing sarcopenia, an emerging imaging biomarker of patient frailty. Data annotation remains the bottleneck for training deep learning auto-segmentation models. Purpose: There is a need to define methodologies for applying models to different domains (e.g., anatomical regions or imaging modalities) without dramatically increasing data annotation. Methods: To address this problem, we empirically evaluate the generalizability of various so… Show more

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Cited by 6 publications
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References 33 publications
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