4.7 Article

Brain tumor segmentation based on the fusion of deep semantics and edge information in multimodal MRI

期刊

INFORMATION FUSION
卷 91, 期 -, 页码 376-387

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ELSEVIER
DOI: 10.1016/j.inffus.2022.10.022

关键词

Brain tumor segmentation; Transformer; Convolutional neural networks; Edge feature; Feature fusion

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In this paper, a brain tumor segmentation method based on the fusion of deep semantics and edge information in multimodal MRI is proposed. The method utilizes Swin Transformer for semantic feature extraction, introduces a shifted patch tokenization strategy, and designs an edge spatial attention block and a multi-feature inference block based on graph convolution for feature enhancement and fusion. The experimental results demonstrate that the proposed method outperforms other methods in brain tumor segmentation.
Brain tumor segmentation in multimodal MRI has great significance in clinical diagnosis and treatment. The utilization of multimodal information plays a crucial role in brain tumor segmentation. However, most existing methods focus on the extraction and selection of deep semantic features, while ignoring some features with specific meaning and importance to the segmentation problem. In this paper, we propose a brain tumor segmentation method based on the fusion of deep semantics and edge information in multimodal MRI, aiming to achieve a more sufficient utilization of multimodal information for accurate segmentation. The proposed method mainly consists of a semantic segmentation module, an edge detection module and a feature fusion module. In the semantic segmentation module, the Swin Transformer is adopted to extract semantic features and a shifted patch tokenization strategy is introduced for better training. The edge detection module is designed based on convolutional neural networks (CNNs) and an edge spatial attention block (ESAB) is presented for feature enhancement. The feature fusion module aims to fuse the extracted semantic and edge features, and we design a multi-feature inference block (MFIB) based on graph convolution to perform feature reasoning and information dissemination for effective feature fusion. The proposed method is validated on the popular BraTS benchmarks. The experimental results verify that the proposed method outperforms a number of state-of-the-art brain tumor segmentation methods. The source code of the proposed method is available at https://github.com/HXY-99/brats.

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