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Quantitative imaging in diffuse lung disease
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Robust automatic segmentation of airway using multi-resolution deep learning
S. Bonte (Kontich, Belgium), M. Lanclus (Kontich, Belgium), J. Costa (Kontich, Belgium), C. Van Holsbeke (Kontich, Belgium)
Source:
Virtual Congress 2020 – Quantitative imaging in diffuse lung disease
Session:
Quantitative imaging in diffuse lung disease
Session type:
Oral Presentation
Number:
4334
Disease area:
Interstitial lung diseases
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S. Bonte (Kontich, Belgium), M. Lanclus (Kontich, Belgium), J. Costa (Kontich, Belgium), C. Van Holsbeke (Kontich, Belgium). Robust automatic segmentation of airway using multi-resolution deep learning. 4334
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