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, Volume 78, Issue 2, pp 2481–2506 | Cite as

A review on acute/sub-acute ischemic stroke lesion segmentation and registration challenges

  • M. Sunil BabuEmail author
  • V. Vijayalakshmi
Article
  • 79 Downloads

Abstract

The segmentation of lesion tissue in brain images of stroke patients serves to distinguish the degree of the affected tissues, to perform anticipation on its recovery, and to quantify its development in longitudinal reviews. Manual depiction, the present standard, is tedious and experiences high intra-and inter-observer differences. Because of limited scholastic investigations of ischemic stroke identification, the achievement rate to distinguish stroke is low utilizing just CT image. Combination of CT and MRI images makes a composite image which gives more data than any of the information signals. Image segmentation is accomplished by a Random forest (RF) classifier connected on an arrangement of image elements extricated from each voxel and its neighborhood. An underlying arrangement of marked voxels is required to begin the procedure, preparing an underlying RF. The most unverifiable unlabeled voxels are appeared to the human administrator to choose some of them for incorporation in the preparation set, retraining the RF classifier. These strategies give very accurate segmented tumor output with very low error rate and very high accuracy.

Keywords

Random forest Arterial vessel spin labeling Cerebral micro bleeds Magnetic resonance imaging Markov random field Computed tomography angiography 

Notes

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© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Department of Electronics and Communication Engineering, Pondicherry Engineering College (PEC)Pondicherry University (A Central University)PuducherryIndia
  2. 2.Department of Electronics and Communication EngineeringPondicherry Engineering College (PEC)PuducherryIndia

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