Abstract

Diagnosis of brain tumors is one of the most severe medical problems that affect thousands of people each year in the United States. Manual classification of cancerous tumors through examination of MRI images is a difficult task even for trained professionals. It is an error-prone procedure that is dependent on the experience of the radiologist. Brain tumors, in particular, have a high level of complexity. Therefore, computer-aided diagnosis systems designed to assist with this task are of specific interest for physicians. Accurate detection and classification of brain tumors via magnetic resonance imaging (MRI) examination is a famous approach to analyze MRI images. This paper proposes a method to classify different brain tumors using a Convolutional Neural Network (CNN). We explore the performance of several CNN architectures and examine if decreasing the input image resolution affects the model's accuracy. The dataset used to train the model has initially been 3064 MRI scans. We augmented the data set to 8544 MRI scans to balance the available classes of images. The results show that the design of a suitable CNN architecture can significantly better diagnose medical images. The developed model classification performance was up to 97\% accuracy.

Highlights

  • IntroductionThe USA’s federal government, by the year 2028, will spend $2.9 trillion on health care [1]

  • Healthcare is one of the critical sectors in the USA

  • It appears that the depth of the Convolutional Neural Network (CNN) affects the accuracy depending on the input image resolution

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Summary

Introduction

The USA’s federal government, by the year 2028, will spend $2.9 trillion on health care [1] These costs will continue to grow and consume a cumulative share of the USA federal resources. Physicians address new health problems, unprecedented ailments, and many challenges that arise from many uncontrolled health problems. They capture benefits from up-to-date technologies to get over diseases and medical issues. MRI is the most frequently used imaging method of the brain, and spinal cord [2]. Such technologies can provide an appropriate suggestion for the diagnosis. These biopsies involve invasive procedures and removal of tissue [4]

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