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  Published Paper Details:

  Paper Title

MODIFIED MATHEMATICAL MORPHOLOGY BASED APPROACH FOR AUTOMATIC SEGMENTATION OF BRAIN MR IMAGES OF NEONATES AND PREMATURE INFANTS

  Authors

  Mahesh Dembrani

  Keywords

Mathematical morphology; Newborn; Premature; Segmentation

  Abstract


This paper focuses on the development of an accurate neonatal brain MRI segmentation algorithm and its clinical application to characterize normal brain development and investigate the neuro-anatomical correlates of cognitive impairments. Neonatal brain segmentation is challenging due to the large anatomical variability as a result of the rapid brain development in the neonatal period. The segmentation of MR images of the neonatal brain is a fundamental step in the study and assessment of infant brain development. The highest level of development techniques for adult brain MRI segmentation are not suitable for neonatal brain, because of substantial contrasts in structure and tissue properties between newborn and adult brains. Existing newborn brain MRI segmentation approaches either depend on manual interaction or require the utilization of atlases or templates, which unavoidably presents a bias of the results towards the population that was utilized to derive the atlases. In this paper, we proposed an atlas-free approach for the segmentation of neonatal brain MRI, based on the modified mathematical morphology approach. The segmentation of the brain in Magnetic Resonance Imaging (MRI) is a prerequisite to obtain quantitative measurements of regional brain structures. These measurements allow characterization of the regional brain development and the investigation of correlations with clinical factors.

  IJCRT's Publication Details

  Unique Identification Number - IJCRT1704353

  Paper ID - 170923

  Page Number(s) - 2699-2704

  Pubished in - Volume 5 | Issue 4 | December 2017

  DOI (Digital Object Identifier) -   

  Publisher Name - IJCRT | www.ijcrt.org | ISSN : 2320-2882

  E-ISSN Number - 2320-2882

  Cite this article

  Mahesh Dembrani,   "MODIFIED MATHEMATICAL MORPHOLOGY BASED APPROACH FOR AUTOMATIC SEGMENTATION OF BRAIN MR IMAGES OF NEONATES AND PREMATURE INFANTS ", International Journal of Creative Research Thoughts (IJCRT), ISSN:2320-2882, Volume.5, Issue 4, pp.2699-2704, December 2017, Available at :http://www.ijcrt.org/papers/IJCRT1704353.pdf

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ISSN: 2320-2882
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Journal Starting Year (ESTD) : 2013
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ISSN and 7.97 Impact Factor Details


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ISSN
ISSN: 2320-2882
Impact Factor: 7.97 and ISSN APPROVED
Journal Starting Year (ESTD) : 2013
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