An efficient deep learning approach for brain tumor detection using 3D convolutional neural network
Abstract
In medical application, deep learning-based biomedical pixel-wise detection through
semantic segmentation has provided excellent results and proven to be efficient than
manual segmentation by human interaction in various cases. A well-known and
widely used architecture for biomedical segmentation is U-Net. In this work, a
convolutional neural architecture based on 3D U-Net but with fewer parameters and
lower computational cost is used for pixel-level detection of brain tumor through
semantic segmentation. The proposed model is able to maintain a very efficient
performance and provides better results in some cases compared to conventional U Net, while reducing memory usage, training time and inference time. BraTS 2021
dataset is used to evaluate the proposed architecture and it is able to achieve Dice
scores of 0.9105 on Whole Tumor(WT), 0.884 on Tumor Core(TC) and 0.8254 on
Enhancing-Tumor(ET) on the testing dataset.