Zhao Chongyue, Zhan Liang, Thompson Paul M, Huang Heng
Department of Electrical and Computer Engineering, University of Pittsburgh, Pittsburgh, PA, USA.
Imaging Genetics Center, University of Southern California, Los Angeles, CA, USA.
Med Image Comput Comput Assist Interv. 2022 Sep;13431:336-345. doi: 10.1007/978-3-031-16431-6_32. Epub 2022 Sep 15.
The transformation and transmission of brain stimuli reflect the dynamical brain activity in space and time. Compared with functional magnetic resonance imaging (fMRI), magneto- or electroencephalography (M/EEG) fast couples to the neural activity through generated magnetic fields. However, the MEG signal is inhomogeneous throughout the whole brain, which is affected by the signal-to-noise ratio, the sensors' location and distance. Current non-invasive neuroimaging modalities such as fMRI and M/EEG excel high resolution in space or time but not in both. To solve the main limitations of current technique for brain activity recording, we propose a novel recurrent memory optimization approach to predict the internal behavioral states in space and time. The proposed method uses Optimal Polynomial Projections to capture the long temporal history with robust online compression. The training process takes the pairs of fMRI and MEG data as inputs and predicts the recurrent brain states through the Siamese network. In the testing process, the framework only uses fMRI data to generate the corresponding neural response in space and time. The experimental results with Human connectome project (HCP) show that the predicted signal could reflect the neural activity with high spatial resolution as fMRI and high temporal resolution as MEG signal. The experimental results demonstrate for the first time that the proposed method is able to predict the brain response in both milliseconds and millimeters using only fMRI signal.
大脑刺激的转换与传输反映了大脑在空间和时间上的动态活动。与功能磁共振成像(fMRI)相比,磁脑电图或脑电图(M/EEG)通过产生的磁场与神经活动快速耦合。然而,脑磁图(MEG)信号在整个大脑中并不均匀,会受到信噪比、传感器位置和距离的影响。当前的非侵入性神经成像方式,如fMRI和M/EEG,在空间或时间上具有高分辨率,但并非两者兼具。为了解决当前大脑活动记录技术的主要局限性,我们提出了一种新颖的循环记忆优化方法,用于预测空间和时间上的内部行为状态。所提出的方法使用最优多项式投影来通过稳健的在线压缩捕捉长时间的历史记录。训练过程将fMRI和MEG数据对作为输入,并通过暹罗网络预测循环大脑状态。在测试过程中,该框架仅使用fMRI数据在空间和时间上生成相应的神经反应。人类连接体项目(HCP)的实验结果表明,预测信号能够像fMRI一样以高空间分辨率反映神经活动,像MEG信号一样以高时间分辨率反映神经活动。实验结果首次证明,所提出的方法仅使用fMRI信号就能在毫秒和毫米尺度上预测大脑反应。