Mathematical and Numerical Methods for Accurate Aorta Segmentation from Non-Enhanced ct Data Yielding Reliable Identification and Evaluation of Large Vessel Vasculitis
By: Konan A. Allaly, Jozef Urbán and Karol Mikula
References
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Language: English
Submitted on: Nov 12, 2025
Accepted on: Mar 15, 2026
Published on: Apr 22, 2026
Published by: Slovak Academy of Sciences, Mathematical Institute
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year
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© 2026 Konan A. Allaly, Jozef Urbán, Karol Mikula, published by Slovak Academy of Sciences, Mathematical Institute
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