In-depth analysis of deep learning architectures for brain tumor classification in MRI scans
Date
2024Publisher
Brac UniversityAuthor
Haque, Hossain MD. HasibulApon, MD. Sayeed Arefin
Chowdhury, Dhrubo Rashid
Imtiaz, Shahriar Islam
Mahi, Nishat Tasnim
Metadata
Show full item recordAbstract
One of the deadliest and most difficult tumors to cure is a brain tumor. Patients diagnosed with
brain tumors tend to have a comparatively shorter lifespan. This tumor can affect any individual of
any age. To mitigate the damages of brain tumors, early prognosis, and diagnosis are mandatory for
a comparatively longer lifespan. Our primary goal is to develop a functional convolutional neural
network (CNN) model that can reliably identify brain tumor cells in a patient’s magnetic resonance
imaging (MRI). Unfortunately, this is a hard task as there are not many resources available as around
2 to 3 cases occur each year in 100,000 individuals in Bangladesh. For this purpose, a dataset was
collected and augmented into a larger dataset by splitting, rotating, changing orientation, etc. Three
categories were added to the dataset: training, validation, and testing where 70% of the data was for
training, 15% for validation, and 15% for testing. Finally, we trained our dataset for 50 epochs to get
the accuracy rate and then tested the same data sets with other pre-trained models like MobileNetV2,
DenseNet121, and ResNet50. In this course of training our custom CNN model, we gained the
highest accuracy rate, which is 97.07% in training, 95.99% in validation, and 96.51% for testing.