Adaptive Dual Residual U-Net with Attention Gate and Multiscale Spatial Attention Mechanisms (ADRUwAMS)
Mohsen Yaghoubi Suraki

TL;DR
This paper introduces ADRUwAMS, an advanced deep learning model combining adaptive dual residual networks and multiscale spatial attention for accurate brain tumor segmentation, achieving high dice scores on BraTS datasets.
Contribution
The paper presents a novel adaptive dual residual U-Net with attention mechanisms that improves tumor segmentation accuracy over existing methods.
Findings
Achieved dice scores of 0.9229 for whole tumor on BraTS 2020.
Model effectively captures high-level and low-level features for precise segmentation.
Demonstrated superior performance compared to previous models on benchmark datasets.
Abstract
Glioma is a harmful brain tumor that requires early detection to ensure better health results. Early detection of this tumor is key for effective treatment and requires an automated segmentation process. However, it is a challenging task to find tumors due to tumor characteristics like location and size. A reliable method to accurately separate tumor zones from healthy tissues is deep learning models, which have shown promising results over the last few years. In this research, an Adaptive Dual Residual U-Net with Attention Gate and Multiscale Spatial Attention Mechanisms (ADRUwAMS) is introduced. This model is an innovative combination of adaptive dual residual networks, attention mechanisms, and multiscale spatial attention. The dual adaptive residual network architecture captures high-level semantic and intricate low-level details from brain images, ensuring precise segmentation of…
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