Refine your search
Collections
Co-Authors
Year
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Udayakumar, E.
- An Efficient Tissue Segmentation of Neonatal Brain Magnetic Resonance Imaging
Abstract Views :174 |
PDF Views:0
Authors
Affiliations
1 Department of ECE, KIT-Kalaignarkarunanidhi Institute of Technology, Coimbatore, Tamilnadu, IN
1 Department of ECE, KIT-Kalaignarkarunanidhi Institute of Technology, Coimbatore, Tamilnadu, IN
Source
Research Journal of Pharmacy and Technology, Vol 12, No 6 (2019), Pagination: 2963-2966Abstract
The growth of brain can be assessed by using MRI. The MRI images of the neonatal brain have a much lower Contrast-to-Noise Ratio (CNR), frequently have lower signal-to-noise ratio due to the small size of the neonatal brain and vary enormously in terms of brain shape and appearance as a result of rapid brain development during this period. In addition, the partial volume effect present due to the inverted signal intensity in White Matter (WM) presents an obstacle for tissue classification. The Manual segmentation of the abnormal tissues cannot be compared with modern day’s high speed computing machines which enable us to visually observe the volume and location of unwanted tissues. This system provides a framework for accurate intensity based segmentation of newborn brain using region growing algorithm.Keywords
New Born Brain, Clustering, White Matter.References
- Antonios Makropoulos, and Daniel Rueckert, Automatic Whole Brain MRI Segmentation of the eveloping Neonatal Brain. IEEE Transactions on Medical Imaging, 33(9), 2014.
- M. J. Cardoso, A. Melbourne, G. S. Kendall, and S. Ourselin. Adaptive neonate brain segmentation. Proc. MICCAI, 14: 2011: 378–386.
- M. J. Cardoso, A. Melbourne, G. S. Kendall, and S. Ourselin. An adaptive preterm segmentation algorithm for neonatal brain MRI NeuroImage. 65, 97–108: 2012.
- Gousias, D. Rueckert, R. A. Heckemann, L. E. Dyet and A. Hammers. Automatic segmentation of brain MRIs of 2-year-olds into 83 regions of interest. Neuro Image. 40(2); 2008:672–684.
- L. Gui, R. Lisowski, T. Faundez, P. S. and M. Kocher. Morphology-driven automatic segmentation of MR images of the neonatal brain. Med. Image Anal. 16(8); 2012: 1565–1579.
- M. Prastawa, J. H. Gilmore, W. Lin, and G. Gerig, Automatic segmentation of MR images of the developing newborn brain. Med. Image Anal. 9(5); 2005: 457–466.
- Z. Song, S. P. Awate, D. J. Licht, and J. C. Gee. Clinical neonatal brain MRI segmentation using adaptive nonparametric data models and intensity-based Markov priors. Proc. MICCAI. 10; 2007: 883–890.
- N. I. Weisenfeld and S. K. Warfield, Automatic segmentation of newborn brain MRI. NeuroImage. 47(2), 2009: 564–572.
- H. Xue, L. Srinivasan, S. Jiang, M. Rutherford, and J. V. Hajnal. Automatic segmentation and reconstruction of the cortex from neonatal MRI. NeuroImage. 38(3); 2007: 461–477.
- S. Gousias, A. D. Edwards, M. A. Rutherford and A. Hammers. Magnetic resonance imaging of the newborn brain: Manual segmentation of labelled atlases in term born and preterm infants NeuroImage. 62(3); 2012:1499–1509.
- S. Gousias, A. Hammers, and A. D. Edwards. Magnetic resonance imaging of the newborn brain: Automatic segmentation of brain images into 50 anatomical regions. PLoS ONE. 8(4), 2013.
- Dr. Samir Kumar Bandhyopadhyay, Tuhin Utsab Paul. Segmentation of Brain MRI Image. International Journal of Advanced Research in Computer Science and Software Engineering. 2(3), 2012.
- S. W. Zucker. Region Growing: Childhood and Adolescence. Computer Vision, Graphics, and image Processing.5, 1976:382-389.
- R. Adams, and L. Bischof. Seeded region growing. IEEE Trans. Pattern Anal. Machine Intell. 16(6),1994: 641-647.
- Z. Lin, J. Jin and H. Talbot. Unseeded region growing for 3D image segmentation. ACM International Conference Proceeding Series 9, 2000: 31-37.
- J. Macqueen. Some methods of classification and analysis of multivariate observations. Proc. 5th Berkeley Symp. Math. Statist. Probabil. 1967. 281–297.
- E. Udayakumar and Dr. S. Santhi. Analysis of Magnetic Resonance Image Segmentation using spatial fuzzy clustering algorithm. Journal of Global Pharma Technology. 10(12), 2018: 88-94.
- E. Udayakumar and C. Ramesh. A Review on diagnosis of Malignant Melanoma from Benign Lesion by using BPNN and ABCD Rule Parameters. International Research Journal of Pharmacy, Moksha Publishing House. 9(10), 2018:13-17.
- C. Ramesh and et.al. Detection and Segmentation of Optic Disc in Fundus Images. International Journal of Current Pharmaceutical Research, Innovare Academic Sciences, 10(5), 2018: 20-24.
- E. Udayakumar and Dr. S. Santhi. An Improved Skin Cancer Classification using Back Propagation Neural Networks. International Journal of Advanced Research in Basic Engineering Sciences and Technology. 4(8); 2018: 253-261.
- E. Udayakumar and Dr. P. Vetrivelan. An Investigation of Bayes Algorithm and Neural Networks for identifying the Breast Cancer. Indian Journal of Medical and Paediatric Oncology. Medknow Publications. 38(3), 2017: 340-344.
- E. Udayakumar and Dr. P. Vetrivelan. An Identification of efficient vessel feature for Endoscopic Analysis. Research Journal of Pharmacy and Technology, A and V Publications. 10(8), 2017: 2633-2636.
- E. Udayakumar and Dr. S. Santhi. An Unified Reeb Analysis for Cortical Surface Reconstruction of MRI Images. Biomedical and Pharmacology Journal, Oriental Scientific Publishing Company. 10(2), 2017: 939-945.
- Dr. S. Santhi and et.al .Design and Development of Smart Glucose Monitoring System. International Journal of Pharma and Biosciences. 8(3); 2017: 631-638.
- E. Udayakumar and Dr. P. Vetrivelan. TB screening using SVM and CBC techniques. Current Pediatric Research, Allied Academies. 21(2), 2017: 338-342.
- E. Udayakumar and Dr. S. Santhi. Automatic Detection of Diabetic Retinopathy through Optic Disc using Morphological Methods. Asian Journal of Pharmaceutical and Clinical Research, Innovare Academic Sciences. 10(4), 2017: 28-31.
- E. Udayakumar and Dr. S. Santhi. Region Growing Image Segmentation for Newborn Brain MRI. Bio Technology: An Indian Journal, Trade ScienceInc Journals. 12(12); 2016: 1-8.
- E. Udayakumar and Dr. K. Srihari. Certain Investigation on Pathologies in Brain Images Using MRI Slicing. Middle-East Journal of Scientific Research, IDOSI Publications. 23(6); 2015:1076-1084.
- E. Udayakumar and Dr. S. Karthik. Certain Investigation on Human Body using various Algorithms. Australian Journal of Basic and Applied Sciences, AENSI Publications. 8(10), 2014: 559-564.