Journal of Computer Applications ›› 2025, Vol. 45 ›› Issue (6): 1998-2006.DOI: 10.11772/j.issn.1001-9081.2024060855
• Multimedia computing and computer simulation • Previous Articles
Jie JIANG1, Gongning LUO1, Suyu DONG2, Fanding LI1, Xiangyu LI1(), Qince LI1, Yongfeng YUAN1, Kuanquan WANG1
Received:
2024-06-24
Revised:
2024-09-06
Accepted:
2024-09-10
Online:
2024-09-18
Published:
2025-06-10
Contact:
Xiangyu LI
About author:
JIANG Jie, born in 2001, M. S. candidate. His research interests include medical image processing, computer vision.Supported by:
蒋杰1, 骆功宁1, 董素宇2, 李凡丁1, 李向宇1(), 李钦策1, 袁永峰1, 王宽全1
通讯作者:
李向宇
作者简介:
蒋杰(2001—),男,重庆人,硕士研究生,主要研究方向:医学图像处理、计算机视觉CLC Number:
Jie JIANG, Gongning LUO, Suyu DONG, Fanding LI, Xiangyu LI, Qince LI, Yongfeng YUAN, Kuanquan WANG. Information bottleneck-guided intracranial hemorrhage segmentation method[J]. Journal of Computer Applications, 2025, 45(6): 1998-2006.
蒋杰, 骆功宁, 董素宇, 李凡丁, 李向宇, 李钦策, 袁永峰, 王宽全. 信息瓶颈引导的颅内出血分割方法[J]. 《计算机应用》唯一官方网站, 2025, 45(6): 1998-2006.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2024060855
数据集 | 方法 | Dice | NSD | RVD |
---|---|---|---|---|
内部数据集 | Patch-FCN[ | 75.5 | 84.9 | 17.2 |
DR-UNet[ | 76.3 | 85.4 | 14.3 | |
U-Net[ | 75.8 | 83.9 | 21.2 | |
3D U-Net[ | 76.4 | 87.0 | 16.2 | |
SLEX-Net[ | 76.1 | 86.8 | 15.7 | |
IBGS-Net | 78.1 | 90.1 | 11.5 | |
公共数据集 | UNETR[ | 60.7 | 45.4 | 47.8 |
U-Net[ | 57.5 | 41.5 | 54.3 | |
3D U-Net[ | 59.3 | 46.3 | 36.3 | |
CHSNet[ | 61.3 | 45.2 | 35.2 | |
MOEL-Net[ | 58.9 | 43.4 | 40.3 | |
IBGS-Net | 63.2 | 48.7 | 32.0 |
Tab. 1 Comparison of segmentation performance of different methods
数据集 | 方法 | Dice | NSD | RVD |
---|---|---|---|---|
内部数据集 | Patch-FCN[ | 75.5 | 84.9 | 17.2 |
DR-UNet[ | 76.3 | 85.4 | 14.3 | |
U-Net[ | 75.8 | 83.9 | 21.2 | |
3D U-Net[ | 76.4 | 87.0 | 16.2 | |
SLEX-Net[ | 76.1 | 86.8 | 15.7 | |
IBGS-Net | 78.1 | 90.1 | 11.5 | |
公共数据集 | UNETR[ | 60.7 | 45.4 | 47.8 |
U-Net[ | 57.5 | 41.5 | 54.3 | |
3D U-Net[ | 59.3 | 46.3 | 36.3 | |
CHSNet[ | 61.3 | 45.2 | 35.2 | |
MOEL-Net[ | 58.9 | 43.4 | 40.3 | |
IBGS-Net | 63.2 | 48.7 | 32.0 |
实验 | IAM | ResSPADE | IGL | Dice | NSD | RVD |
---|---|---|---|---|---|---|
A | 75.7 | 84.1 | 19.2 | |||
B | √ | 76.1 | 84.7 | 15.5 | ||
C | √ | √ | 76.9 | 87.3 | 13.2 | |
D | √ | 77.2 | 86.9 | 14.1 | ||
E | √ | √ | √ | 78.1 | 90.1 | 11.5 |
Tab. 2 Comparison of ablation experimental results
实验 | IAM | ResSPADE | IGL | Dice | NSD | RVD |
---|---|---|---|---|---|---|
A | 75.7 | 84.1 | 19.2 | |||
B | √ | 76.1 | 84.7 | 15.5 | ||
C | √ | √ | 76.9 | 87.3 | 13.2 | |
D | √ | 77.2 | 86.9 | 14.1 | ||
E | √ | √ | √ | 78.1 | 90.1 | 11.5 |
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