Abstract

BackgroundGlioma is a malignant brain tumor; its location is complex and is difficult to remove surgically. To diagnosis the brain tumor, doctors can precisely diagnose and localize the disease using medical images. However, the computer-assisted diagnosis for the brain tumor diagnosis is still the problem because the rough segmentation of the brain tumor makes the internal grade of the tumor incorrect.MethodsIn this paper, we proposed an Aggregation-and-Attention Network for brain tumor segmentation. The proposed network takes the U-Net as the backbone, aggregates multi-scale semantic information, and focuses on crucial information to perform brain tumor segmentation. To this end, we proposed an enhanced down-sampling module and Up-Sampling Layer to compensate for the information loss. The multi-scale connection module is to construct the multi-receptive semantic fusion between encoder and decoder. Furthermore, we designed a dual-attention fusion module that can extract and enhance the spatial relationship of magnetic resonance imaging and applied the strategy of deep supervision in different parts of the proposed network.ResultsExperimental results show that the performance of the proposed framework is the best on the BraTS2020 dataset, compared with the-state-of-art networks. The performance of the proposed framework surpasses all the comparison networks, and its average accuracies of the four indexes are 0.860, 0.885, 0.932, and 1.2325, respectively.ConclusionsThe framework and modules of the proposed framework are scientific and practical, which can extract and aggregate useful semantic information and enhance the ability of glioma segmentation.

Highlights

  • Glioma is a malignant brain tumor; its location is complex and is difficult to remove surgically

  • In order to solve these problems, we propose a novel network named Aggregation-and-Attention Network (AANet), which makes full use of features to improve segmentation performance

  • We proposed an Aggregation-and-Attention Network (AANet), including the enhanced down-sampling (EDS) module, the multi-scale connection (MSC) module, and the dual-attention fusion (DAF) module

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Summary

Introduction

Glioma is a malignant brain tumor; its location is complex and is difficult to remove surgically. To diag‐ nosis the brain tumor, doctors can precisely diagnose and localize the disease using medical images. Glioma has emerged as one of the most major brain diseases that impair human health. It is closely related to the abnormal organization seen in the human brain [2, 3]. The requirement for rapid and accurate identification of diseases by computer technology is increasing due to the complexity of brain lesions [8]. Image segmentation is critical research in the field of computer vision. It refers to dividing an image into several non-overlapping subareas according to the pixel features, which satisfies the image discrimination requirements of glioma.

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