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Brain Tumor Detection Using Various Techniques in MRI Images: A Review

Shashank Sahu, Saral Garg

Abstract


About 24,000 individuals die each year because of brain tumours as per International Association Cancer Registries (IARC).The worldwide brain cancer market is expected to expand 1.11% compound yearly, according to Delve Insight analysis. According to medical experts, brain tumours may become the second most common cancer by 2030. If detection happens early, then brain tumor is not a deadly disease. In recent years, Computed Tomography and Magnetic Resonance Images technology, as well as the development of novel imaging techniques, greatly enhanced detection, and characterization of tumours. Physicians choose MRI (Magnetic Resonance Images) over CT (Computed Tomography) scanning because of its advantages. This research gives a complete evaluation of the methodologies and approaches that have previously been utilized to identify brain tumours using Magnetic Resonance Images (MRI).


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References


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