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3 months ago

3D-DDA: 3D Dual-Domain Attention for Brain Tumor Segmentation

{Soo-Hyung Kim Nguyen-Quynh Tram-Tran Do Nhu-Tai Vo-Thanh Hoang-Son}

Abstract

Accurate brain tumor segmentation plays an essential role in the diagnosis process. However, there are challenges due to the variety of tumors in low contrast, morphology, location, annotation bias, and imbalance among tumor regions. This work proposes a novel 3D dual-domain attention module to learn local and global information in spatial and context domains from encoding feature maps in Unet. Our attention module generates refined feature maps from the enlarged reception field at every stage by attention mechanisms and residual learning to focus on complex tumor regions. Our experiments on BraTS 2018 have demonstrated superior performance compared to existing state-of-the-art methods.

Benchmarks

BenchmarkMethodologyMetrics
brain-tumor-segmentation-on-brats-20183D-DDA
ET: 0.8069
TC: 0.8677
WT: 0.9135

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3D-DDA: 3D Dual-Domain Attention for Brain Tumor Segmentation | Papers | HyperAI