首页> 外文会议> >Interpretable Multimodality Embedding of Cerebral Cortex Using Attention Graph Network for Identifying Bipolar Disorder
【24h】

Interpretable Multimodality Embedding of Cerebral Cortex Using Attention Graph Network for Identifying Bipolar Disorder

机译:使用注意图网络识别双相障碍的可解释性大脑皮层多模态嵌入

获取原文

摘要

Bipolar Disorder (BP) is a mental disorder that affects 1-2% of the population. Early diagnosis and targeted treatment can benefit from associated biological markers (biomarkers). The existing methods typically utilize biomarkers from anatomical MRI or functional BOLD imaging but lack the ability of revealing the relationship between integrated modalities and disease. In this paper, we developed an Edge-weighted Graph Attention Network (EGAT) with Dense Hierarchical Pooling (DHP), to better understand the underlying roots of the disorder from the view of structure-function integration. EGAT is an interpretable framework for integrating multi-modality features without loss of prediction accuracy. For the input, the underlying graph is constructed from functional connectivity matrices and the nodal features consist of both the anatomical features and the statistics of the connectivity. We investigated the potential benefits of using EGAT to classify BP vs. Healthy Control (HC), by examining the attention map and gradient sensitivity of nodal features. We indicated that associated with the abnormality of anatomical geometric properties, multiple interactive patterns among Default Mode, Fronto-parietal and Cingulo-opercular networks contribute to identifying BP.
机译:躁郁症(BP)是一种精神疾病,会影响1-2%的人口。早期诊断和靶向治疗可受益于相关的生物标志物(biomarkers)。现有方法通常利用来自解剖学MRI或功能性BOLD成像的生物标志物,但缺乏揭示整合方式与疾病之间关系的能力。在本文中,我们开发了带有密集分层池(DHP)的边缘加权图注意力网络(EGAT),以便从结构-功能集成的角度更好地了解疾病的潜在根源。 EGAT是一个可解释的框架,用于集成多模式功能而不会损失预测准确性。对于输入,基础图是从功能连通性矩阵构建的,并且节点特征既包括解剖特征也包括连通性统计信息。我们通过检查注意力图和淋巴结特征的梯度敏感性,研究了使用EGAT对BP与健康对照(HC)进行分类的潜在益处。我们指出,与解剖学几何特性的异常相关,默认模式,额顶壁和舌鞘网络之间的多种交互模式有助于识别BP。

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