版权说明 操作指南
首页 > 成果 > 详情

A Simple and Effective Regional Contrastive Learning Method for 3D Medical Images

认领
导出
Link by DOI
反馈
分享
QQ微信 微博
成果类型:
会议论文
作者:
Jin Liu;Jiaqi Liu;Huifang Tang
作者机构:
[Huifang Tang] The First Affiliated Hospital & Hunan Provincial Key Laboratory of Multi-omics And Artificial Intelligence of Cardiovascular Diseases, Hengyang Medical School, University of South China, Hengyang, Hunan, China [email protected]
[Jiaqi Liu] The First Affiliated Hospital, Department of Cardiology, Hengyang Medical School, University of South China, Hengyang, Hunan, China [email protected]
[Jin Liu] School of Computer, University of South China, Hengyang, Hunan, China [email protected]
语种:
英文
年:
2025
页码:
336-341
会议名称:
BIC '25: Proceedings of the 2025 5th International Conference on Bioinformatics and Intelligent Computing
出版地:
New York, NY, United States
出版者:
Association for Computing Machinery
ISBN:
9798400712203
机构署名:
本校为第一机构
摘要:
3D medical images can visualize the internal structure of human organs, which have significant advantages over 2D medical images. However, the annotations of 3D medical images are more difficult to obtain compared to 2D medical images, which makes it challenging to capture complete spatial information in 3D medical images. To address this challenge, we propose a simple but effective self-supervised learning method that utilizes the similarity between medical images for region comparison and learns the organ correspondence information from different images but between the same regions. We pre-t...

反馈

验证码:
看不清楚,换一个
确定
取消

成果认领

标题:
用户 作者 通讯作者
请选择
请选择
确定
取消

提示

该栏目需要登录且有访问权限才可以访问

如果您有访问权限,请直接 登录访问

如果您没有访问权限,请联系管理员申请开通

管理员联系邮箱:yun@hnwdkj.com