CANet: Context Aware Network for 3D Brain Glioma Segmentation
- URL: http://arxiv.org/abs/2007.07788v3
- Date: Mon, 22 Mar 2021 10:03:12 GMT
- Title: CANet: Context Aware Network for 3D Brain Glioma Segmentation
- Authors: Zhihua Liu, Lei Tong, Long Chen, Feixiang Zhou, Zheheng Jiang, Qianni
Zhang, Yinhai Wang, Caifeng Shan, Ling Li, Huiyu Zhou
- Abstract summary: We propose a novel approach named Context-Aware Network (CANet) for brain glioma segmentation.
CANet captures high dimensional and discriminative features with contexts from both the convolutional space and feature interaction graphs.
We evaluate our method using publicly accessible brain glioma segmentation datasets BRATS 2017, BRATS 2018 and BRATS 2019.
- Score: 33.34852704111597
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Automated segmentation of brain glioma plays an active role in diagnosis
decision, progression monitoring and surgery planning. Based on deep neural
networks, previous studies have shown promising technologies for brain glioma
segmentation. However, these approaches lack powerful strategies to incorporate
contextual information of tumor cells and their surrounding, which has been
proven as a fundamental cue to deal with local ambiguity. In this work, we
propose a novel approach named Context-Aware Network (CANet) for brain glioma
segmentation. CANet captures high dimensional and discriminative features with
contexts from both the convolutional space and feature interaction graphs. We
further propose context guided attentive conditional random fields which can
selectively aggregate features. We evaluate our method using publicly
accessible brain glioma segmentation datasets BRATS2017, BRATS2018 and
BRATS2019. The experimental results show that the proposed algorithm has better
or competitive performance against several State-of-The-Art approaches under
different segmentation metrics on the training and validation sets.
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