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Brain tumor classification of magnetic resonance Images using novel CNN-based medical image Analysis and Detection network in comparison with AlexNet

M. Ramya, Ganapathy Kirupa, A. Rama

202216 citationsDOIOpen Access PDF

Abstract

AIM: This research work aims at developing an automatic medical image analysis and detection for accurate classification of brain tumors from a magnetic resonance imaging (MRI) dataset. We developed a new MIDNet18 CNN architecture in comparison with the AlexNet CNN architecture for classifying normal brain images from brain tumor images. MATERIALS AND METHODS: The novel MIDNet18 CNN architecture comprises 14 convolutional layers, seven pooling layers, four dense layers, and one classification layer. The dataset used for this study has two classes: normal brain MR images and brain tumor MR images. This binary MRI brain dataset consists of 2918 images as the training set, 1458 images as the validation set, and 212 images as the test set. The independent sample size calculated was seven for each group, keeping GPower at 80%. RESULT: From the experimental performance metrics, it could be inferred that our novel MIDNet18 achieved higher test accuracy, AUC, F1 score, precision, and recall over the AlexNet algorithm. CONCLUSION: <0.05) than AlexNet in classifying tumors from brain MRI images.

Topics & Concepts

Artificial intelligenceConvolutional neural networkPattern recognition (psychology)Computer scienceContextual image classificationPoolingMagnetic resonance imagingTest setBrain tumorStandard test imageSet (abstract data type)Image (mathematics)Computer visionImage processingPathologyMedicineRadiologyProgramming languageBrain Tumor Detection and ClassificationScientific and Engineering Research TopicsInternet of Things and AI