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Mathematical and Numerical Methods for Accurate Aorta Segmentation from Non-Enhanced ct Data Yielding Reliable Identification and Evaluation of Large Vessel Vasculitis Cover

Mathematical and Numerical Methods for Accurate Aorta Segmentation from Non-Enhanced ct Data Yielding Reliable Identification and Evaluation of Large Vessel Vasculitis

Open Access
|Apr 2026

References

  1. ADAMS, R.—BISCHOF, L.: Seeded region growing, IEEE Transactions On Pattern Analysis and Machine Intelligence, 16 (1994), no. 6, 641–647.
  2. ALLALY, K. A.—URBÁN, J.: Automatic path extraction inside the aorta from CT data. In: Proceedings of the Conference Algoritmy (2024), pp. 255–263,
  3. AMBROZ, M.—BALAŽOVJECH, M.—MEDL’A, M.—MIKULA, K.: Numerical modeling of wildland surface fire propagation by evolving surface curves, Adv. Comput. Math. 45 (2009), 1067–1103.
  4. ARNAUD, L.—HAROCHE, J.—MALEK, Z.—ARCHAMBAUD, F.—GAMBOTTI, L.—GRIMON, G.—KAS, A.—COSTEDOAT-CHALUMEAU, N.—CACOUB, P.— TOLEDANO, D.—CLUZEL, P.—PIETTE, J.-C.—AMOURA, Z.: Is 18F-fluorodeoxyglucose positron emission tomography scanning a reliable way to assess disease activity in Takayasu arteritis?, Arthritis & Rheumatism 60 (April 2009), 1193–1200.
  5. BALINK, H.—BENNINK, R. J.—VAN ECK-SMIT, B. L. F.—VERBERNE, H. J.: The Role of 18F-FDG PET/CT in large-vessel vasculitis: appropriateness of current classification criteria?, BioMed Research International 2014 (2014), no. 1, 13 p. https://doi.org/10.1155/2014/687608
  6. BENMANSOUR, F.—COHEN, L. D.: Fast object segmentation by growing minimal paths from a single point on 2D or 3D images, J. Math. Imaging Vision 33 (2009), 209–221.
  7. BOELLAARD, R.—O’DOHERTY, M. J.—WEBER, W. A.—MOTTAGHY, F. M.— LONSDALE, M. N.—STROOBANTS, S. G.—OYEN, W. J. G.—KOTZERKE, J.— HOEKSTRA, O. S.—PRUIM, J. et al.: FDG PET and PET/CT: EANM procedure guidelines for tumour PET imaging: version 1.0, Eur. J. Nucl. Med. Mol. Imaging 37 (2010), no. 1, 181–200. DOI: 10.1007/s00259-009-1297-4.
  8. BANKMAN, I. N.: Handbook of medical imaging: processing and analysis. Academic Press, 2000.
  9. CASELLES, V.—KIMMEL, R.—SAPIRO, G.—SBERT, C.: Minimal surfaces: a geometric three-dimensional segmentation approach, Num. Math. 77 (1997), 423–451.
  10. CHEN, D.—COHEN, L. D.—MIREBEAU, J-M.: Vessel extraction using anisotropic minimal paths and path score, IEEE International Conference on Image Processing (ICIP), (2014), 1570–1574.
  11. COHEN, L. D.—KIMMEL, R.: Global minimum for active contour models: a minimal path approach, International Journal of Computer Vision 24 1997, 57–78.
  12. CORSARO, S.—MIKULA, K.—SARTI, A.—SGALLARI, F.: Semiiplicit covolume method in 3D image segmentation, SIAMJ.Sci.Comput. 28 (2006), 2248–2265.
  13. CASTELLANOS, M. D. C. P.—VEGA, M. M.—CABALLERO, A. M.— GONZÁLVEZ, M. P. B.: Early diagnosis of large vessel vasculitis: usefulness of positron emission tomography with computed tomography,Reumatología Clínica 9 (2013), 65–68.
  14. DEJACO, C.—RAMIRO, S.—BOND, M.—BOSCH, P.—PONTE, C.—MACKIE, S. L.—BLEY, T. A.—BLOCKMANS, D.—BROLIN, S.—BOLEK, E. C. et al.: EULAR recommendations for the use of imaging in large vessel vasculitis in clinical practice: 2023 update, Annals of the Rheumatic Diseases 83 (2024), 741–751.
  15. DEJACO, C.—RAMIRO, S.—DUFTNER, C.—BESSON, F. L.—BLEY, T. A.— BLOCKMANS, D.—BROUWER, E.—CIMMINO, M. A.—CLARK, E.— DASGUPTA, B.: EULAR recommendations for the use of imaging in large vessel vasculitis in clinical practice, Annals of the Rheumatic Diseases 77 (2018), 636–643.
  16. DESCHAMPS, T.—COHEN, L. D.: Fast extraction of minimal paths in 3D images and applications to virtual endoscopy, Medical Image Analysis 5 (2001), 281–299.
  17. GAMECHI, Z. S.—BONS, L. R.—GIORDANO, M.—BOS, D.—BUDDE,R. P. J.— KOFOED, K. F.—PEDERSEN, J. H.—ROOS-HESSELINK, J. W.—DE BRUIJNE, M.: Automated 3D segmentation and diameter measurement of the thoracic aorta on non-contrast enhanced CT. European Radiology 29 (2019), 4613–4623.
  18. HATT, M.—LAMARE, L.—BOUSSION, N.—TURZO, A.—COLLET, C.— SALZENSTEIN, F.—ROUX, C.—JARRITT, P.—CARSON, K.—CHEZE-LE-REST, C.—VISVIKIS, D.: Fuzzy hidden Markov chains segmentation for volume determination and quantitation in PET, Physics in Medicine and Biology 52 (2007), 3467–3491.
  19. HUTTENLOCHER, D. P.—KLANDERMAN, G. A.—RUCKLIDGE, W. J.: Comparing images using the Hausdorff distance, IEEE Transactions on Pattern Analysis and Machine Intelligence 15 (1993).
  20. JENNETTE, J. C.—FALK, R. J.—BACON, P. A.—BASU, N.—CID, M. C.— FERRARIO, F.—FLORES-SUAREZ, L. F.—GROSS, W. L.—GUILLEVIN, L.— HANGEN, E. C. et al.: 2012 revised international chapel hill consensus conference nomenclature of vasculitides, Arthritis and Rheumatism 65 (January 2013), 1–11.
  21. KASS, M.— WITKINS, A.—TERZOPOULOS, D.: Snakes: active contours model, International Journal of Computer Vision (1988), pp. 321–331. https://doi.org/10.1007/bf00133570
  22. KOVÁCS, T.: Automatic Segmentation of the Vessel Lumen from 3D CTA Images of Aortic Dissection. PhD thesis, ETH Zurich, 2010.
  23. KRIVÁ, Z.—MIKULA, K.—PEYRIÉRA, N.—RIZZI, B.—SARTI, A.— STAŠOVÁ, O.: 3D early embryogenesis image filtering by nonlinear partial differential equations,Medical Image Analysis 14 (2010), 510–526.
  24. KURUGOL, S.—ESTEPAR, R. S. J.— ROSS, J.—WASHKO, G. R.: Aorta segmentation with a 3D level set approach and quantification of aortic calcifications in non-contrast chest CT, Conference Proceedings IEEE Eng. Med. Biol. Soc. 16 (2012), 2343–2346.
  25. LI, H.—YEZZI, A.: Vessels as 4D curves: global minimal 4D paths to extract 3D tubular surfaces and centerlines, IEEE Transactions on Medical Imaging 26, (September 2007).
  26. LMFELD, S.—ROTTENGURGER, C.—SCHEGK, E.—ASCHWANDEN, M.— JUENGLING, F.—STAUB, D.—RECHER, M.—KYNURZ, D.—BERGER, C. T.— DAIKELER. T.: [18F]FDG positron emission tomography in patients presenting with suspicion of giant cell arteritis - lessons from a vasculitis clinic, European Heart Journal - Cardiovascular Imaging 19 (August 2018), 933–940.
  27. MARTÍNEZ-MERA, J. A.—TAHOCES, P. G.—CARREIRA, J. M.—SUÁREZCUENCA, J. J.—SOUTO. M.: A hybrid method based on level set and 3D region growing for segmentation of the thoracic aorta, Computer Aided Surgery 18 (2013), 109–117.
  28. MIKULA, K.—OHLBERGER, M.—URBÁN. J.: Inflow-implicit/outflow-explicit finite volume methods for solving advection equations, Appl. Numer. Math. 85 (June 2014), 16–37.
  29. MIKULA, K.—PEYRIÉRAS, N.—REMIŠÍKOVÁ, M.—SARTI, A.: 3D embryogenesis image segmentation by the generalized subjective surface method using the finite volume technique. Finite Volumes for Complex Applications V: Problems and Perspectives (2008), 585–592.
  30. MIKULA, K.—PEYRIÉRAS, N.—REMIŠÍKOVÁ, M.—STAŠOVÁ, O.: Segmentation of 3D cell membrane images by PDE methods and its applications, Computers in Biology and Medicine 41 (2011), 326–339.
  31. MIKULA, K.—REMEŠÍKOVÁ, M.: Finite volume schemes for the generalized subjective surface equation in image segmentation,Kybernetika, 45 (2009), 646–656.
  32. MIKULA, K.—SMISEK, M.—SIPR, R.: Parallel algorithms for segmentation of cellular structures in 2d+time and 3d morphogenesis data. In Proceedings of ALGORITMY 2012 (2015), pp. 416–426; https://www.math.sk/mikula/43Smisek.pdf
  33. MIKULA, K.—URBÁN, J.: A new tangentially stabilized 3D curve evolution algorithm and its application in virtual colonoscopy, Adv. Comput. Math. 40 (August 2014), 819–837.
  34. MIKULA, K.—ŠEVČOVIČ, D.: Evolution of plane curves driven by a nonlinear function of curvature and anisotropy, SIAM J. Appl. Math. 61 (2001), 1473–1501.
  35. MIKULA, K.—ŠEVČOVIČ, D.: A direct method for solving an anisotropic mean curvature flow of planar curve with an external force, Mathematical Methods in Appl. Sci. 27 (2004), 1545–1565.
  36. MIREBEAU, J.-M.: Anisotropic fast-marching on cartesian grids using lattice basis reduction, SIAM J. Numer. Anal. (Society for Industrial and Applied Mathematics (SIAM)) 52 (2014), 1573–1599.
  37. PERONA, P.—MALIK. J.: Scale-space and edge detection using anisotropic diffusion, IEEE Transactions on Pattern Analysis and Machine Intelligence, 12 (July 1990), 629–639.
  38. SARTI, A.—CITTI. G.: Subjective surfaces and Riemannian mean curvature flow of graphs. In: Proceedings of Algoritmy 2000 (2001), no. 1, pp. 85–103.
  39. SETHIAN, J. A.: A fast marching level set method for monotonically advancing fronts. In: Proceedings of the Natural Academy of Sciences 93 (February 1996), pp. 1591–1595.
  40. SLART, R. H. J.—GLAUDEMANS, A. W. J. M.—CHAREONTHAITAWEE, P.— TREGLIA, G.—BESSON, F. L.—BLEY, T. A.—BLOCKMANS, D.—BOELLARD, R.—BUCERIUS, J.— CARRIL, J. M. et al.: FDG-PET/CT(A) imaging in large vessel vasculitis and polymyalgia rheumatica: joint procedural recommendation of the EANM, SNMMI, and the PET interest group (PIG), and endorsed by the ASNC, European Journal of Nuclear Medicine and Molecular Imaging 45 (2018), 1250–1269.
  41. TRULLO, R.—PETITJEAN, C.—RUAN, S.—DUBRAY, B.—NIE, D.—SHEN. D.: Segmentation of organs at risk in thoracic CT images using a sharpmask architecture and conditional random fields. In: 2017 IEEE 14th international symposium on biomedical imaging IEEE 2017 (2017), pp. 1003–1006.
  42. ŠTEŇOVÁ, E.—MIŠTEC, S.— POVINEC. P.: FDG-PET/CT in large-vessel vasculitis: its diagnostic and follow-up role, Rheumatology International 30 (August 2009), 1111–1114.
  43. XIE, Y.—PADGETT, J.—BIANCARDI, A. M.—REEVES, A. P.: Automated aorta segmentation in low-dose chest CT images, International Journal of Computer Assisted Radiology and Surgery 9 (2014), 211–219.
  44. YUAN, J.—PEPE, A.—LI, J.—GSAXNER, C.—ZHAO, F.-H.—POMYKALAD, K. L.— KLEESIEK, J.—FRNAGI, A. F.—EGGER, J.: AI-based aortic vessel tree segmentation for cardiovascular diseases treatment: status quo, arXiv preprint arXiv, 2021.
  45. ZHAO. H.: A fast sweeping method for eikonal equations, Mathematics of Computation 74 (2004), 603–627.
DOI: https://doi.org/10.2478/tmmp-2026-0005 | Journal eISSN: 1338-9750 | Journal ISSN: 12103195
Language: English
Submitted on: Nov 12, 2025
Accepted on: Mar 15, 2026
Published on: Apr 22, 2026
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2026 Konan A. Allaly, Jozef Urbán, Karol Mikula, published by Slovak Academy of Sciences, Mathematical Institute
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.

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