Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip

<p>Hepatocellular carcinoma (HCC) is one of the most common malignant tumors worldwide. Due to its high invasiveness and poor prognosis, it ranks among the top three causes of cancer-related deaths globally. Accurate segmentation of the liver and lesion areas is crucial. It provides key suppor...

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1. autor: Lin Zhu (192179) (author)
Kolejni autorzy: Shuyan Liu (321855) (author)
Wydane: 2025
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author Lin Zhu (192179)
author2 Shuyan Liu (321855)
author2_role author
author_facet Lin Zhu (192179)
Shuyan Liu (321855)
author_role author
dc.creator.none.fl_str_mv Lin Zhu (192179)
Shuyan Liu (321855)
dc.date.none.fl_str_mv 2025-11-26T06:33:45Z
dc.identifier.none.fl_str_mv 10.3389/fmedt.2025.1712952.s001
dc.relation.none.fl_str_mv https://figshare.com/articles/dataset/Data_Sheet_1_DGA-Net_a_dual-branch_group_aggregation_network_for_liver_tumor_segmentation_in_medical_images_zip/30718709
dc.rights.none.fl_str_mv CC BY 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Medical Devices
liver tumor segmentation
medical images
dual-branch encoder
long-range inter-pixel dependencies
spatial information
dc.title.none.fl_str_mv Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
dc.type.none.fl_str_mv Dataset
info:eu-repo/semantics/publishedVersion
dataset
description <p>Hepatocellular carcinoma (HCC) is one of the most common malignant tumors worldwide. Due to its high invasiveness and poor prognosis, it ranks among the top three causes of cancer-related deaths globally. Accurate segmentation of the liver and lesion areas is crucial. It provides key support for diagnosis, surgical planning, and rehabilitation therapy. Deep learning technologies have been applied to the automatic segmentation of the liver and tumors. However, several issues remain, such as insufficient utilization of inter-pixel relationships, lack of refined processing after fusing high-level and low-level features, and high computational costs. To address insufficient inter-pixel modeling and high parameter costs, we propose DGA-Net (Dual-branch Group Aggregation Network for Liver Tumor Segmentation in Medical Images), a dual-branch architecture that includes two main components, i.e., a dual-branch encoder and a decoder with a specific module. The dual-branch encoder consists of the Fourier Spectral Learning Multi-Scale Fusion (FSMF) branch and the Multi-Axis Aggregation Hadamard Attention (MAHA) branch. The decoder is equipped with a Group Multi-Head Cross-Attention Aggregation (GMCA) module. The FSMF branch uses a Fourier network to learn amplitude and phase information. This helps capture richer features and details. The MAHA branch combines spatial information to enhance discriminative features. At the same time, it effectively reduces computational costs. The GMCA module merges features from different branches. This not only improves localization capabilities but also establishes long-range inter-pixel dependencies. We conducted experiments on the public LiTS2017 liver tumor dataset. Experiments on the public LiTS2017 liver tumor dataset show that the proposed method outperforms existing state-of-the-art approaches, achieving Dice-per-case (DPC) scores of 94.84% for liver and 69.51% for tumors, outperforming competing methods such as PVTFormer by 0.72% (liver) and 1.68% (tumor), and AGCAF-Net by 0.97% (liver) and 2.59% (tumor). We also carried out experiments on the 3DIRCADb dataset. The method still delivers excellent results, which highlights its strong generalization ability.</p>
eu_rights_str_mv openAccess
id Manara_25f91e1936ea59cb30daa54473916bd5
identifier_str_mv 10.3389/fmedt.2025.1712952.s001
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/30718709
publishDate 2025
repository.mail.fl_str_mv
repository.name.fl_str_mv
repository_id_str
rights_invalid_str_mv CC BY 4.0
spelling Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zipLin Zhu (192179)Shuyan Liu (321855)Medical Devicesliver tumor segmentationmedical imagesdual-branch encoderlong-range inter-pixel dependenciesspatial information<p>Hepatocellular carcinoma (HCC) is one of the most common malignant tumors worldwide. Due to its high invasiveness and poor prognosis, it ranks among the top three causes of cancer-related deaths globally. Accurate segmentation of the liver and lesion areas is crucial. It provides key support for diagnosis, surgical planning, and rehabilitation therapy. Deep learning technologies have been applied to the automatic segmentation of the liver and tumors. However, several issues remain, such as insufficient utilization of inter-pixel relationships, lack of refined processing after fusing high-level and low-level features, and high computational costs. To address insufficient inter-pixel modeling and high parameter costs, we propose DGA-Net (Dual-branch Group Aggregation Network for Liver Tumor Segmentation in Medical Images), a dual-branch architecture that includes two main components, i.e., a dual-branch encoder and a decoder with a specific module. The dual-branch encoder consists of the Fourier Spectral Learning Multi-Scale Fusion (FSMF) branch and the Multi-Axis Aggregation Hadamard Attention (MAHA) branch. The decoder is equipped with a Group Multi-Head Cross-Attention Aggregation (GMCA) module. The FSMF branch uses a Fourier network to learn amplitude and phase information. This helps capture richer features and details. The MAHA branch combines spatial information to enhance discriminative features. At the same time, it effectively reduces computational costs. The GMCA module merges features from different branches. This not only improves localization capabilities but also establishes long-range inter-pixel dependencies. We conducted experiments on the public LiTS2017 liver tumor dataset. Experiments on the public LiTS2017 liver tumor dataset show that the proposed method outperforms existing state-of-the-art approaches, achieving Dice-per-case (DPC) scores of 94.84% for liver and 69.51% for tumors, outperforming competing methods such as PVTFormer by 0.72% (liver) and 1.68% (tumor), and AGCAF-Net by 0.97% (liver) and 2.59% (tumor). We also carried out experiments on the 3DIRCADb dataset. The method still delivers excellent results, which highlights its strong generalization ability.</p>2025-11-26T06:33:45ZDatasetinfo:eu-repo/semantics/publishedVersiondataset10.3389/fmedt.2025.1712952.s001https://figshare.com/articles/dataset/Data_Sheet_1_DGA-Net_a_dual-branch_group_aggregation_network_for_liver_tumor_segmentation_in_medical_images_zip/30718709CC BY 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/307187092025-11-26T06:33:45Z
spellingShingle Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
Lin Zhu (192179)
Medical Devices
liver tumor segmentation
medical images
dual-branch encoder
long-range inter-pixel dependencies
spatial information
status_str publishedVersion
title Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
title_full Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
title_fullStr Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
title_full_unstemmed Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
title_short Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
title_sort Data Sheet 1_DGA-Net: a dual-branch group aggregation network for liver tumor segmentation in medical images.zip
topic Medical Devices
liver tumor segmentation
medical images
dual-branch encoder
long-range inter-pixel dependencies
spatial information