2605.13133
2026-05-14
cs.LG
eess.SP
KAST-BAR: Knowledge-Anchored Semantically-Dynamic Topology Brain Autoregressive Modeling for Universal Neural Interpretation
Haoning Wang, Wenchao Yang, Shuai Shen, Yang Li
发表机构
*
School of Automation Science and Electrical Engineering, Beihang University, Beijing, China.(自动化科学与电气工程学院,北航,北京,中国)
;
School of Biological Science and Medical Engineering, Beihang University, Beijing, China.(生物科学与医学工程学院,北航,北京,中国)
;
State Key Laboratory of Virtual Reality Technology and Systems, Beihang University, Beijing, China.(虚拟现实技术与系统国家重点实验室,北航,北京,中国)
;
T Magnetic Resonance Imaging Translational Medical Center, Department of Radiology, Southwest Hospital, Army Medical University (Third Military Medical University), Chongqing, China.(7T磁共振成像转化医学中心,放射科,西南医院,军医大学(第三军医大学),重庆,中国)
AI总结
本文提出了一种名为KAST-BAR的知识锚定语义动态拓扑脑自回归模型,旨在解决脑电图(EEG)基础模型在跨任务通用神经解码中面临的空间时间拓扑建模不足和生理信号与高层语义之间模态鸿沟的问题。该模型通过双流层次注意力编码器捕捉脑部非欧几里得拓扑结构,并结合知识锚定语义分析模块,将生理信号与专家级语义空间对齐,从而实现更准确的神经信号解码。实验表明,KAST-BAR在多个下游任务中均表现出色,有效融合了医学专家知识以提升EEG信号的理解与解释能力。