HES-UNet: A U-Net for Hepatic Echinococcosis Lesion Segmentation
Hepatic echinococcosis (HE) is a prevalent disease in economically underdeveloped pastoral areas, where adequate medical resources are usually lacking. Existing methods often ignore multi-scale feature fusion or focus only on feature fusion between adjacent levels, which may lead to insufficient fea...
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Zusammenfassung: | Hepatic echinococcosis (HE) is a prevalent disease in economically
underdeveloped pastoral areas, where adequate medical resources are usually
lacking. Existing methods often ignore multi-scale feature fusion or focus only
on feature fusion between adjacent levels, which may lead to insufficient
feature fusion. To address these issues, we propose HES-UNet, an efficient and
accurate model for HE lesion segmentation. This model combines convolutional
layers and attention modules to capture local and global features. During
downsampling, the multi-directional downsampling block (MDB) is employed to
integrate high-frequency and low-frequency features, effectively extracting
image details. The multi-scale aggregation block (MAB) aggregates multi-scale
feature information. In contrast, the multi-scale upsampling Block (MUB) learns
highly abstract features and supplies this information to the skip connection
module to fuse multi-scale features. Due to the distinct regional
characteristics of HE, there is currently no publicly available high-quality
dataset for training our model. We collected CT slice data from 268 patients at
a certain hospital to train and evaluate the model. The experimental results
show that HES-UNet achieves state-of-the-art performance on our dataset,
achieving an overall Dice Similarity Coefficient (DSC) of 89.21%, which is
1.09% higher than that of TransUNet. The project page is available at
https://chenjiayan-qhu.github.io/HES-UNet-page. |
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DOI: | 10.48550/arxiv.2412.06530 |