首页> 外文会议>International Conference on Awareness Science and Technology >MwoA auxiliary diagnosis via RSN-based 3D deep multiple instance learning with spatial attention mechanism
【24h】

MwoA auxiliary diagnosis via RSN-based 3D deep multiple instance learning with spatial attention mechanism

机译:MWOA辅助诊断通过RSN的3D深层多实例学习空间注意机制

获取原文
获取外文期刊封面目录资料

摘要

Migraine without aura (MwoA) is the most typical migraine disease in the clinic, which is endangered to human health and challenging to diagnose. Developing the auxiliary diagnosis algorithms of MwoA based on functional connectivity (FC) changes from resting-state functional magnetic resonance imaging (rs-fMRI) is an important research domain. However, existing auxiliary diagnostic methods mainly adopt a seed-based correlation method to extract FC, which are easily affected by subjective factors. Moreover, those methods neglect the relationship between changes in FC and disease duration. In this paper, we report a weakly supervised learning method aiming to tackle those issues. We propose a resting-state brain network-based 3D deep multiple instance learning with spatial attention mechanism (R3D-DMILSAM) framework, where the patient-level label is allocated to the rs-fMRI data that view as multiple instances of a bag. R3D-DMILSAM uses the group information guided independent component analysis (GIG-ICA) to generate the subject-specific resting-state brain networks (RSNs). After that, the designed spatial attention-based 3D deep multiple instance learning (SA3D-DMIL) is trained to perform the diagnosis of MwoA. SA3D-DMIL can automatically generate several semantic deep instances and discovers abnormal RSNs using spatial attention mechanism. Extensive experimental results on the MwoA dataset show that R3D-DMILSAM achieves an overall accuracy of 88.80% and AUC of 94.70%. The visual network obtains high weight, which could be used as a potential biomarker for individualized diagnosis of MwoA.
机译:没有光环的偏头痛(MWOA)是临床中最典型的偏头痛疾病,危及人类健康和挑战性诊断。基于功能连通性(FC)从静态功能磁共振成像(RS-FMRI)改变的MWOA的辅助诊断算法(RS-FMRI)是一个重要的研究结构域。然而,现有的辅助诊断方法主要采用基于种子的相关方法来提取FC,这很容易受主观因素影响。此外,这些方法忽略了Fc和疾病持续时间之间的关系。在本文中,我们报告了一种弱势监督的学习方法,旨在解决这些问题。我们提出了一种基于休息状态的大脑网络的3D深度多实例,具有空间注意机制(R3D-DMILSAM)框架,其中患者级标签被分配给RS-FMRI数据,该数据将视为袋子的多个实例。 R3D-DMILSAM使用组信息导向独立的组件分析(GIG-ICA)来生成特定的课堂休息状态大脑网络(RSNS)。之后,培训设计的基于空间关注的3D深度多实例学习(SA3D-DMIL),以执行MWOA的诊断。 SA3D-DMIL可以自动生成多个语义深度实例,并使用空间注意机制发现异常RSN。 MWOA数据集上的广泛实验结果表明,R3D-DMILSAM实现了88.80%的总体精度,AUC为94.70%。视觉网络获得高重量,其可用作潜在的生物标志物,用于MWOA的个性化诊断。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号