Machine Learning Approach for MRI Brain Tumor Detection using Regularized Extreme Learning

Agrawal, R. K. and Mohammad Shabbir, Alam and Rajesh Kumar, A and Aparna, N and GAYATHRI DEVI, S and Amit, Jain (2025) Machine Learning Approach for MRI Brain Tumor Detection using Regularized Extreme Learning. Machine Learning Approach for MRI Brain Tumor Detection using Regularized Extreme Learning. ISSN 979-8-3315-4265-8

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Abstract

One of the most useful imaging methods for finding brain tumors is magnetic resonance imaging. Among the deadliest human diseases, brain tumors rank high. Brain MRI is a lifesaver for radiologists when it comes to diagnosing and treating patients with brain tumors. Radiologist have utilized magnetic resonance imaging (MRI), a relatively new imaging method, to visualize the anatomy and physiology of the human body. Whether a tumor is benign or malignant, it can be utilized to characterize it and track its course. The output weights may be efficiently derived using the suggested GELM model, which shares a closed form solution with the classic DCN, RCNN, UNet. The numerical results show that the suggested method is effective in identifying abnormal and normal tissue from brain MRI images with a higher level of accuracy (94.54%), sensitivity (93.34%), and specificity (93.47%)

Item Type: Article
Subjects: Computer Science Engineering > Machine Learning
Domains: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 15 Mar 2026 09:09
Last Modified: 12 May 2026 14:12
URI: https://ir.vistas.ac.in/id/eprint/13235

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