为高分辨率大脑动态建模时空神经帧 / Modeling Spatiotemporal Neural Frames for High Resolution Brain Dynamic
1️⃣ 一句话总结
这篇论文提出了一种利用脑电图信号来重建高分辨率功能性磁共振成像动态序列的新方法,通过结合两种技术的优势,实现了对大脑活动更精确、连续且实用的时空建模。
Capturing dynamic spatiotemporal neural activity is essential for understanding large-scale brain mechanisms. Functional magnetic resonance imaging (fMRI) provides high-resolution cortical representations that form a strong basis for characterizing fine-grained brain activity patterns. The high acquisition cost of fMRI limits large-scale applications, therefore making high-quality fMRI reconstruction a crucial task. Electroencephalography (EEG) offers millisecond-level temporal cues that complement fMRI. Leveraging this complementarity, we present an EEG-conditioned framework for reconstructing dynamic fMRI as continuous neural sequences with high spatial fidelity and strong temporal coherence at the cortical-vertex level. To address sampling irregularities common in real fMRI acquisitions, we incorporate a null-space intermediate-frame reconstruction, enabling measurement-consistent completion of arbitrary intermediate frames and improving sequence continuity and practical applicability. Experiments on the CineBrain dataset demonstrate superior voxel-wise reconstruction quality and robust temporal consistency across whole-brain and functionally specific regions. The reconstructed fMRI also preserves essential functional information, supporting downstream visual decoding tasks. This work provides a new pathway for estimating high-resolution fMRI dynamics from EEG and advances multimodal neuroimaging toward more dynamic brain activity modeling.
为高分辨率大脑动态建模时空神经帧 / Modeling Spatiotemporal Neural Frames for High Resolution Brain Dynamic
这篇论文提出了一种利用脑电图信号来重建高分辨率功能性磁共振成像动态序列的新方法,通过结合两种技术的优势,实现了对大脑活动更精确、连续且实用的时空建模。
源自 arXiv: 2603.24176