Non-Invasive Simulation Technique for Early Stroke Recognition Using Differentiation in Magnetic Flux Density Waves

Authors

Keywords:

Artery Modeling, Changing the Magnetic Flux Density while Stroke, Electromagnetic waves in Brain, Stroke Simulation, Stroke Recognition

Abstract

Stroke is one of the most prevalent diseases around the world and identifying the type of stroke early is one of the most important reasons for effective treatment before the resulting death occurs or even before the complications of the disease occur and the permanent or semi-permanent disability it causes, and this is what many of those affected suffer from it by stroke. Therefore, early recognition of stroke is one of the preventative causes and one of the most important branches of scientific research in the medical field or medical engineering technology. The methods currently available for early identification of stroke, the most famous of which are computerized Tomography -CT scan and Magnetic Resonance Imaging -MRI scan, are not highly effective, despite the great development in these two methods used to detect stroke, they still have a significant shortcoming in early identification due to the delay in diagnosis, which causes a lot of death for patients or delays treatment, which leads to permanent disability, in addition to their lack of availability. In many hospitals because of their high prices, and for these reasons, the research point was chosen to overcome some of these current problems by developing a new model in which the artery was designed, the effect of electromagnetic waves was studied, and the change in Magnetic Flux Density through three designs of the artery, whether in its normal state, or in the event of an Ischemic stroke type where is the clotting of blood inside the artery, and the third case which is the hemorrhagic stroke where the artery cut,  The results of the experiments in modeling the artery between the three cases were different in the value of the magnetic flux density waves, which contributes to setting a nucleus for the identification of stroke detection by electromagnetic waves, which can be developed in the future to be a good and fast solution at a cost much lower than the available techniques and this is the main goal of this research..

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Published

17.02.2023

How to Cite

El-Shahat , A. ., A., W. ., & Ahmed , K. S. . (2023). Non-Invasive Simulation Technique for Early Stroke Recognition Using Differentiation in Magnetic Flux Density Waves . International Journal of Intelligent Systems and Applications in Engineering, 11(2), 854–863. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/2899

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Research Article