109
Views
10
CrossRef citations to date
0
Altmetric
Innovation

Supervised classification approach of biometric measures for automatic fetal defect screening in head ultrasound images

ORCID Icon, , ORCID Icon, &
Pages 279-286 | Received 09 Mar 2019, Accepted 04 Aug 2019, Published online: 10 Sep 2019

References

  • Isidor B, Barbarot S, Bénéteau C, et al. Multiple capillary skin malformations, epilepsy, microcephaly, mental retardation, hypoplasia of the distal phalanges: report of a new case and further delineation of a new syndrome. Am J Med Genet. 2011;155:1458–1460.
  • Krystkowiak P, Gaura V, Labalette M, et al. Alloimmunisation to donor antigens and immune rejection following foetal neural grafts to the brain in patients with Huntington's disease. PLOS One. 2007;2:e166.
  • Chaabouni H, Chaabouni M, Maazoul F, et al. Prenatal diagnosis of chromosome disorders in Tunisian population. Ann Genet. 2001;44:99–104.
  • Quarello E, Stos B, Fermont L. Prenatal diagnosis of aorta coarctations. Gynec Obstet Fertil. 2011;39:442–453.
  • Shan BP, Madheswaran M. Extraction of fetal biometrics using class separable shape sensitive approach for gestational age estimation. Proceedings of the International Conference on Computer Technology and Development, ICCTD'09; Kota Kinabalu, Malaysia: IEEE; 2009. p. 376–380.
  • Sahli H, Slama AB, Zaafouri A, et al. Automated detection of current fetal head in ultrasound sequences. Proceedings of the International conference on Image Processing, Applications and Systems (IPAS); 2016 November; Tunisia: IEEE; 2016. p. 1–6.
  • Sahli H, Zaafouri A, Slama AB, et al. Analytic approach for fetal head biometric measurements based on log gabor features. Iran J Sci Technol Trans Sci. 2018;43:1–9.
  • Foi A, Maggioni M, Pepe A, et al. Head contour extraction from the fetal ultrasound images by difference of Gaussians revolved along elliptical paths. Proceedings of challenge US: biometric measurements from fetal ultrasound images ISBI 2012; 2012. p. 1–3.
  • Ciurte A, Bresson X, Cuadra MB. A semi-supervised patchbased approach for segmentation of fetal ultrasound imaging. Proceedings of challenge US: biometric measurements from fetal ultrasound images, ISBI 2012; 2012. p. 5–7.
  • Ponomarev GV, Gelfand MS, Kazanov MD. A multilevel thresholding combined with edge detection and shape-based recognition for segmentation of fetal ultrasound images. Proceedings of challenge US: biometric measurements from fetal ultrasound images, ISBI 2012; 2012 May; 2012. p. 17–19.
  • Sun C. Automatic fetal head measurements from ultrasound images using circular shortest paths. Proceedings of challenge US: biometric measurements from fetal ultrasound images, ISBI 2012; 2012 May; 2012. p. 13–15.
  • Sun C, Pallottino S. Circular shortest path in images. Pattern Recognition. 2003;36:709–719.
  • Shrimali V, Anand RS, Kumar V. Improved segmentation of ultrasound images for fetal biometry, using morphological operators. Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society; 2009 September; IEEE; 2009. p. 459–462.
  • Pathak SD, Chalana V, Kim Y. Interactive automatic fetal head measurements from ultrasound images using multimedia computer technology. Ultrasound Medicine Biol. 1997;23:665–673.
  • Slama AB, Mouelhi A, Sahli H, et al. A new preprocessing parameter estimation based on geodesic active contour model for automatic vestibular neuritis diagnosis. Artif Intell Med. 2017;80:48–62.
  • Mouelhi A, Sayadi M, Fnaiech F, et al. Automatic image segmentation of nuclear stained breast tissue sections using color active contour model and an improved watershed method. Biomed Signal Process Control. 2013;8:421–436.
  • Jeleń Ł, Fevens T, Krzyżak A. Classification of breast cancer malignancy using cytological images of fine needle aspiration biopsies. Int J Appl Math Computer Sci. 2008;18:75–83.
  • Schölkopf B, Burges, CJ, Smola, AJ, editors. Advances in kernel methods: support vector learning. MIT Press; 1999.
  • Sahli H, Diouani MF, Sayadi M. A new approach based on the serological tests and the delayed hyper sensitivity tests for the diagnosis of canine leishmaniasis. Proceedings of the 15th International Conference on Sciences and Techniques of Automatic Control and Computer Engineering (STA); 2014 December; IEEE; 2014. p. 158–163.
  • Sahli H, Mouelhi A, Diouani MF, et al. An advanced intelligent ELISA test for bovine tuberculosis diagnosis. Biomed Signal Process Control. 2018;46:59–66.
  • Slama AB, Sahli H, Mouelhi A, et al. Automated approach for vestibular disorder diagnosis based on clinical VNG feature selection and fuzzy clustering. Biomed Res. 2018;29:1505–1513.
  • Tanaka R, Ishikawa Y, Yamasaki T, et al. Accuracy of classifying the movement strategy in the functional reach test using a markerless motion capture system. J Med Eng Technol. 2019;1–6.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.