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Functional Source Separation for EEG-fMRI Fusion: Application to Steady-State Visual Evoked Potentials

机译:脑电功能磁共振成像功能源分离:在稳态视觉诱发电位中的应用

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摘要

Neurorobotics is one of the most ambitious fields in robotics, driving integration of interdisciplinary data and knowledge. One of the most productive areas of interdisciplinary research in this area has been the implementation of biologically-inspired mechanisms in the development of autonomous systems. Specifically, enabling such systems to display adaptive behavior such as learning from good and bad outcomes, has been achieved by quantifying and understanding the neural mechanisms of the brain networks mediating adaptive behaviors in humans and animals. For example, associative learning from aversive or dangerous outcomes is crucial for an autonomous system, to avoid dangerous situations in the future. A body of neuroscience research has suggested that the neurocomputations in the human brain during associative learning involve re-shaping of sensory responses. The nature of these adaptive changes in sensory processing during learning however are not yet well enough understood to be readily implemented into on-board algorithms for robotics application. Toward this overall goal, we record the simultaneous electroencephalogram (EEG) and functional magnetic resonance imaging (fMRI), characterizing one candidate mechanism, i.e., large-scale brain oscillations. The present report examines the use of Functional Source Separation (FSS) as an optimization step in EEG-fMRI fusion that harnesses timing information to constrain the solutions that satisfy physiological assumptions. We applied this approach to the voxel-wise correlation of steady-state visual evoked potential (ssVEP) amplitude and blood oxygen level-dependent imaging (BOLD), across both time series. The results showed the benefit of FSS for the extraction of robust ssVEP signals during simultaneous EEG-fMRI recordings. Applied to data from a 3-phase aversive conditioning paradigm, the correlation maps across the three phases (habituation, acquisition, extinction) show converging results, notably major overlapping areas in both primary and extended visual cortical regions, including calcarine sulcus, lingual cortex, and cuneus. In addition, during the acquisition phase when aversive learning occurs, we observed additional correlations between ssVEP and BOLD in the anterior cingulate cortex (ACC) as well as the precuneus and superior temporal gyrus.
机译:神经机器人学是机器人技术领域最雄心勃勃的领域之一,它推动了跨学科数据和知识的整合。该领域跨学科研究中最具生产力的领域之一是在自治系统的开发中实施具有生物启发性的机制。具体而言,通过量化和理解介导人类和动物的适应性行为的大脑网络的神经机制,已经实现了使此类系统显示适应性行为(例如从好坏结果中学习)的能力。例如,从厌恶或危险结果中进行联想学习对于自治系统至关重要,以避免将来发生危险情况。大量的神经科学研究表明,在联想学习过程中人脑中的神经计算涉及到感官反应的重塑。然而,在学习过程中,这些感官处理中的自适应变化的性质还没有被很好地理解,以至于可以很容易地实现到机器人应用的机载算法中。为了实现这一总体目标,我们记录了同时进行的脑电图(EEG)和功能磁共振成像(fMRI),以表征一种候选机制,即大规模脑震荡。本报告探讨了使用功能源分离(FSS)作为EEG-fMRI融合中的优化步骤,该融合利用时序信息约束满足生理假设的解决方案。我们在两个时间序列中将这种方法应用于稳态视觉诱发电位(ssVEP)振幅和血氧水平依赖性成像(BOLD)的体素关联。结果表明,在同时进行EEG-fMRI记录的过程中,FSS有助于提取健壮的ssVEP信号。将3个阶段的厌恶调节范式中的数据应用于三个阶段(习惯性,习性,消亡)的相关图显示出收敛的结果,特别是在主要和扩展的视觉皮层区域(包括钙沟,舌侧皮层,和楔形。此外,在获取阶段,当发生厌恶性学习时,我们观察到前扣带回皮质(ACC)中的ssVEP和BOLD以及早突和颞上回之间的其他相关性。

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