Web based classification of brain tumor using deep learning
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Date
2024-01-22
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Daffodil International University
Abstract
Classification of brain tumors is one of the most crucial jobs in medical imaging, and deep
learning models have shown promising outcomes when it comes to automation. We
provide a thorough analysis of three deep learning models for brain tumor classification in
this research utilizing a dataset of various types of MRI images of brain tumors.
Convolutional Neural Networks (CNNs), VGG16, and InceptionV3 are the names of these
proprietary models. Classifying brain tumors using a huge dataset of magnetic resonance
imaging (MRI) pictures is the aim of this effort. No ionizing radiation is used during an
MRI, making it a safer and more thorough way to learn about the anatomy. A convolutional
neural network (CNN) is trained on several datasets, such as images of benign tumors,
meningiomas, gliomas, and pituitaries, in order to develop a robust prediction model. The
model's goal is to evaluate MRI images automatically and distinguish between brain areas
that are tumor-filled and those that are normal. If this effort be successful, it will enable
prompt intervention and customized treatment plans by enabling early, non-invasive
identification. By providing a trustworthy method for categorizing brain tumors, this work
enhances medical imaging
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Keywords
Brain Tumor Diagnosis, Deep Learning, Medical Imaging, Automated Diagnosis, Machine Learning, Health Informatics
