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Immune system programming for medical image segmentation

Research Authors
Emad Mabrouk, Ahmed Ayman, Yara Raslan, Abdel-Rahman Hedar
Research Date
Research Department
Research Journal
Journal of Computational Science
Research Publisher
Elsevier
Research Vol
31
Research Website
https://www.sciencedirect.com/science/article/abs/pii/S1877750318311268
Research Year
2019
Research_Pages
111-125
Research Abstract

This paper introduces an automatic strategy for the segmentation of medical images from Magnetic Resonance Imaging (MRI) and Computed Topography (CT). A new segmentation technique is proposed to combine a new evolutionary algorithm, called the Immune System Programming (ISP) algorithm, with the Region Growing (RG) technique. The ISP algorithm with a tree data structure has the ability to create new mathematical threshold functions, and RG can use these functions to achieve an efficient segmentation process for medical images. Several MRI images with different levels of Radio Frequency (RF) and noise are used to test the proposed segmentation technique. In different experiments, the proposed technique showed promising performance and produced a new set of efficient threshold functions.