Efficient Feature Extraction and Classification Architecture for MRI-Based Brain Tumor Detection and Localization
Plabon Paul, Md. Nazmul Islam, Fazle Rafsani, Pegah Khorasani, Shovito, Barua Soumma

TL;DR
This paper presents a CNN-based method for rapid and accurate brain tumor detection and localization in MRI scans, achieving high accuracy and utilizing explainability tools to identify tumor regions.
Contribution
The study introduces an efficient CNN architecture combined with GradCAM for tumor localization, improving accuracy and interpretability in MRI-based brain tumor diagnosis.
Findings
CNN achieved 99.17% accuracy in tumor detection
Tumor regions were successfully localized using GradCAM
Model performance was validated with standard metrics
Abstract
Uncontrolled cell division in the brain is what gives rise to brain tumors. If the tumor size increases by more than half, there is little hope for the patient's recovery. This emphasizes the need of rapid and precise brain tumor diagnosis. When it comes to analyzing, diagnosing, and planning therapy for brain tumors, MRI imaging plays a crucial role. A brain tumor's development history is crucial information for doctors to have. When it comes to distinguishing between human soft tissues, MRI scans are superior. In order to get reliable classification results from MRI scans quickly, deep learning is one of the most practical methods. Early human illness diagnosis has been demonstrated to be more accurate when deep learning methods are used. In the case of diagnosing a brain tumor, when even a little misdiagnosis might have serious consequences, accuracy is especially important.…
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Taxonomy
TopicsBrain Tumor Detection and Classification
MethodsSupport Vector Machine
