A Novel Framework for Brain Tumor Detection Based on Convolutional Variational Generative Models
Wessam M. Salama, Ahmed Shokry

TL;DR
This paper presents a new framework that uses generative models to create synthetic MRI images, balancing datasets and improving brain tumor detection accuracy with deep learning.
Contribution
It introduces a novel combination of variational generative models and deep classifiers to enhance brain tumor detection from limited data.
Findings
Achieved 96.88% detection accuracy.
Generated large synthetic datasets from small unbalanced samples.
Demonstrated improved detection performance with synthetic data.
Abstract
Brain tumor detection can make the difference between life and death. Recently, deep learning-based brain tumor detection techniques have gained attention due to their higher performance. However, obtaining the expected performance of such deep learning-based systems requires large amounts of classified images to train the deep models. Obtaining such data is usually boring, time-consuming, and can easily be exposed to human mistakes which hinder the utilization of such deep learning approaches. This paper introduces a novel framework for brain tumor detection and classification. The basic idea is to generate a large synthetic MRI images dataset that reflects the typical pattern of the brain MRI images from a small class-unbalanced collected dataset. The resulted dataset is then used for training a deep model for detection and classification. Specifically, we employ two types of deep…
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