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Update total/metadata.json

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  1. total/metadata.json +2 -2
total/metadata.json CHANGED
@@ -1,7 +1,7 @@
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  {
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  "display_name": "Total Segmentator",
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- "short_description": "<b>Description:</b><br>KonfAI-accelerated adaptation of <a href='https://github.com/wasserth/TotalSegmentator'>TotalSegmentator</a>, delivering fast whole-body CT segmentation of <b>104 anatomical structures</b> (1.5 mm resolution) with reduced inference cost compared to the original nnU-Net implementation.<br><br><b>How to cite:</b><br><cite>J. Wasserthal et al., <i>TotalSegmentator: Robust Segmentation of 104 Anatomical Structures in CT Images</i>, Radiology: AI, 2023.</cite>",
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- "description": "<b>Description:</b><br>This model is an optimized adaptation of the original <a href='https://github.com/wasserth/TotalSegmentator'>TotalSegmentator</a> for the <b>KonfAI</b> deep learning framework.<br><br><b>Capabilities:</b><br>• Segmentation of <b>104 anatomical classes</b> covering organs, bones, muscles, and vessels<br>• Enhanced runtime and memory efficiency vs. the original nnU-Net implementation<br>• High-resolution input: <b>1.5 mm isotropic</b><br><br><b>Training data:</b><br>Trained on a diverse dataset of <b>1204 whole-body CT examinations</b> including different scanners, acquisition settings, contrast phases, and major pathologies (27 organs, 59 bones, 10 muscles, 8 vessels), with manual expert-reviewed annotations<br><br><b>How to cite:</b><br><cite>J. Wasserthal et al., <i>TotalSegmentator: Robust Segmentation of 104 Anatomical Structures in CT Images</i>, Radiology: AI, 2023.</cite>",
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  "tta": 0,
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  "mc_dropout": 0
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  }
 
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  {
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  "display_name": "Total Segmentator",
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+ "short_description": "<b>Description:</b><br>KonfAI-accelerated adaptation of <a href='https://github.com/wasserth/TotalSegmentator'>TotalSegmentator</a>, delivering fast whole-body CT segmentation of <b>118 anatomical structures</b> (1.5 mm resolution) with reduced inference cost compared to the original nnU-Net implementation.<br><br><b>How to cite:</b><br><cite>J. Wasserthal et al., <i>TotalSegmentator: Robust Segmentation of 104 Anatomical Structures in CT Images</i>, Radiology: AI, 2023.</cite>",
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+ "description": "<b>Description:</b><br>This model is an optimized adaptation of the original <a href='https://github.com/wasserth/TotalSegmentator'>TotalSegmentator</a> for the <b>KonfAI</b> deep learning framework.<br><br><b>Capabilities:</b><br>• Segmentation of <b>118 anatomical classes</b> covering organs, bones, muscles, and vessels<br>• Enhanced runtime and memory efficiency vs. the original nnU-Net implementation<br>• High-resolution input: <b>1.5 mm isotropic</b><br><br><b>Training data:</b><br>Trained on a diverse dataset of <b>1204 whole-body CT examinations</b> including different scanners, acquisition settings, contrast phases, and major pathologies (27 organs, 59 bones, 10 muscles, 8 vessels), with manual expert-reviewed annotations<br><br><b>How to cite:</b><br><cite>J. Wasserthal et al., <i>TotalSegmentator: Robust Segmentation of 104 Anatomical Structures in CT Images</i>, Radiology: AI, 2023.</cite>",
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  "tta": 0,
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  "mc_dropout": 0
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  }