Name: | Description: | Size: | Format: | |
---|---|---|---|---|
1.62 MB | Adobe PDF |
Advisor(s)
Abstract(s)
Brain cancer is one of the most dominant causes of cancer death; the best way to diagnose
and treat brain tumors is to screen early. Magnetic Resonance Imaging (MRI) is commonly used for brain
tumor diagnosis; however, it is a challenging problem to achieve higher accuracy and performance, which is
a vital problem in most of the previously presented automated medical diagnosis. In this paper, we propose a
Hybrid Two-Track U-Net(HTTU-Net) architecture for brain tumor segmentation. This architecture leverages
the use of Leaky Relu activation and batch normalization. It includes two tracks; each one has a different
number of layers and utilizes a different kernel size. Then, we merge these two tracks to generate the final
segmentation. We use the focal loss, and generalized Dice (GDL), loss functions to address the problem of
class imbalance. The proposed segmentation method was evaluated on the BraTS’2018 datasets and obtained
a mean Dice similarity coefficient of 0.865 for the whole tumor region, 0.808 for the core region and 0.745
for the enhancement region and a median Dice similarity coefficient of 0.883, 0.895, and 0.815 for the
whole tumor, core and enhancing region, respectively. The proposed HTTU-Net architecture is sufficient
for the segmentation of brain tumors and achieves highly accurate results. Other quantitative and qualitative
evaluations are discussed, along with the paper. It confirms that our results are very comparable expert
human-level performance and could help experts to decrease the time of diagnostic.
Description
Keywords
Brain tumor segmentation Deep neural networks U-net Fully convolutional network BraTS’2018 challenge
Citation
Publisher
Institute of Electrical and Electronics Engineers