Brain tumor image segmentation based on multi-scale detail enhancement
10.3969/j.issn.1005-202X.2024.07.007
- VernacularTitle:基于多尺度细节增强的脑瘤图像分割研究
- Author:
Zunxiong LIU
1
;
Zihan CHEN
;
Tijian CAI
;
Jun CHEN
;
Ciyong LUO
Author Information
1. 华东交通大学信息工程学院,江西南昌 330013
- Keywords:
brain tumor;
image segmentation;
attention mechanism;
auxiliary classifier
- From:
Chinese Journal of Medical Physics
2024;41(7):828-835
- CountryChina
- Language:Chinese
-
Abstract:
Given that the imbalance of semantic feature transfer caused by the skip connection of the brain tumor image segmentation network and the insufficient correlation of multi-scale features lead to the loss of details,resulting in poor segmentation accuracy for small tumors,an improved segmentation model of the Res-Unet framework is proposed.The model introduces a multi-scale attention fusion module which makes the model better adaptable to tumors of different sizes by mixing multi-scale features,and adds a spatial attention module to the skip connection to enhance feature expression while avoiding the interference of useless information,preserving the spatial details of feature maps.Through the auxiliary classifier module,the decoder performs feature prediction on feature maps of different scales.The BraTS2020 dataset is used for experiments and evaluations,and the model segmentation performance is evaluated with Dice score.The results show that the improved network achieved average Dice scores of 0.887 7,0.822 9,and 0.802 7 for whole tumor,tumor core,and enhancing tumor,respectively.Compared with the channel attention model,the improved model increases the scores of enhancing tumor and tumor core by 2.6%and 0.14%,respectively,which proves its effectiveness and accuracy for brain tumor MR image segmentation.