SALT: Introducing a Framework for Hierarchical Segmentations in Medical Imaging using Softmax for Arbitrary Label Trees
Sven Koitka, Giulia Baldini, Cynthia S. Schmidt, Olivia B. Pollok,, Obioma Pelka, Judith Kohnke, Katarzyna Borys, Christoph M. Friedrich,, Benedikt M. Schaarschmidt, Michael Forsting, Lale Umutlu, Johannes Haubold,, Felix Nensa, Ren\'e Hosch

TL;DR
SALT is a novel hierarchical segmentation framework for medical imaging that leverages label tree structures and softmax probabilities to improve accuracy and efficiency in CT scan segmentation.
Contribution
This paper introduces SALT, a new method utilizing hierarchical label structures and softmax for improved medical image segmentation, especially in CT imaging.
Findings
Achieved Dice scores of 0.929 on SAROS and 0.93 on LUNA16 datasets.
Demonstrated rapid segmentation processing time of 35 seconds for 100 slices.
Showed reliable accuracy across multiple diverse datasets.
Abstract
Traditional segmentation networks approach anatomical structures as standalone elements, overlooking the intrinsic hierarchical connections among them. This study introduces Softmax for Arbitrary Label Trees (SALT), a novel approach designed to leverage the hierarchical relationships between labels, improving the efficiency and interpretability of the segmentations. This study introduces a novel segmentation technique for CT imaging, which leverages conditional probabilities to map the hierarchical structure of anatomical landmarks, such as the spine's division into lumbar, thoracic, and cervical regions and further into individual vertebrae. The model was developed using the SAROS dataset from The Cancer Imaging Archive (TCIA), comprising 900 body region segmentations from 883 patients. The dataset was further enhanced by generating additional segmentations with the TotalSegmentator,…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Image Segmentation Techniques · AI in cancer detection
MethodsSoftmax
