Residual Channel Attention Network for Brain Glioma Segmentation
- URL: http://arxiv.org/abs/2205.10758v1
- Date: Sun, 22 May 2022 06:12:19 GMT
- Title: Residual Channel Attention Network for Brain Glioma Segmentation
- Authors: Yiming Yao, Peisheng Qian, Ziyuan Zhao, Zeng Zeng
- Abstract summary: A glioma is a malignant brain tumor that seriously affects cognitive functions and lowers patients' life quality.
In this study, we implement a novel deep neural network that integrates residual channel attention modules to calibrate intermediate features for glioma segmentation.
The proposed channel attention mechanism adaptively weights feature channel-wise to optimize the latent representation of gliomas.
- Score: 6.138217560128551
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A glioma is a malignant brain tumor that seriously affects cognitive
functions and lowers patients' life quality. Segmentation of brain glioma is
challenging because of interclass ambiguities in tumor regions. Recently, deep
learning approaches have achieved outstanding performance in the automatic
segmentation of brain glioma. However, existing algorithms fail to exploit
channel-wise feature interdependence to select semantic attributes for glioma
segmentation. In this study, we implement a novel deep neural network that
integrates residual channel attention modules to calibrate intermediate
features for glioma segmentation. The proposed channel attention mechanism
adaptively weights feature channel-wise to optimize the latent representation
of gliomas. We evaluate our method on the established dataset BraTS2017.
Experimental results indicate the superiority of our method.
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