Semework Mulugeta, DiStasio Marcello
Department of Neuroscience, Columbia University New York, NY, USA.
Biomedical Engineering Program, SUNY Downstate Medical Center and NYU Polytechnic Brooklyn, New York, NY, USA.
Front Neuroeng. 2014 Sep 9;7:36. doi: 10.3389/fneng.2014.00036. eCollection 2014.
Recording the activity of large populations of neurons requires new methods to analyze and use the large volumes of time series data thus created. Fast and clear methods for finding functional connectivity are an important step toward the goal of understanding neural processing. This problem presents itself readily in somatosensory neuroprosthesis (SSNP) research, which uses microstimulation (MiSt) to activate neural tissue to mimic natural stimuli, and has the capacity to potentiate, depotentiate, or even destroy functional connections. As the aim of SSNP engineering is artificially creating neural responses that resemble those observed during natural inputs, a central goal is describing the influence of MiSt on activity structure among groups of neurons, and how this structure may be altered to affect perception or behavior. In this paper, we demonstrate the concept of Granger causality, combined with maximum likelihood methods, applied to neural signals recorded before, during, and after natural and electrical stimulation. We show how these analyses can be used to evaluate the changing interactions in the thalamocortical somatosensory system in response to repeated perturbation. Using LFPs recorded from the ventral posterolateral thalamus (VPL) and somatosensory cortex (S1) in anesthetized rats, we estimated pair-wise functional interactions between functional microdomains. The preliminary results demonstrate input-dependent modulations in the direction and strength of information flow during and after application of MiSt. Cortico-cortical interactions during cortical MiSt and baseline conditions showed the largest causal influence differences, while there was no statistically significant difference between pre- and post-stimulation baseline causal activities. These functional connectivity changes agree with physiologically accepted communication patterns through the network, and their particular parameters have implications for both rehabilitation and brain-machine interface SSNP applications.
记录大量神经元的活动需要新的方法来分析和利用由此产生的大量时间序列数据。快速且清晰的寻找功能连接的方法是迈向理解神经处理这一目标的重要一步。这个问题在体感神经假体(SSNP)研究中很容易出现,该研究使用微刺激(MiSt)来激活神经组织以模拟自然刺激,并且有能力增强、减弱甚至破坏功能连接。由于SSNP工程的目的是人工创造类似于自然输入时观察到的神经反应,一个核心目标是描述MiSt对神经元群体间活动结构的影响,以及这种结构如何被改变以影响感知或行为。在本文中,我们展示了格兰杰因果关系的概念,结合最大似然方法,应用于在自然刺激和电刺激之前、期间和之后记录的神经信号。我们展示了这些分析如何用于评估丘脑皮质体感系统中响应重复扰动时不断变化的相互作用。使用在麻醉大鼠的腹后外侧丘脑(VPL)和体感皮层(S1)记录的局部场电位(LFPs),我们估计了功能微域之间的成对功能相互作用。初步结果表明,在应用MiSt期间和之后,信息流的方向和强度存在输入依赖性调制。皮层MiSt期间和基线条件下的皮质-皮质相互作用显示出最大的因果影响差异,而刺激前和刺激后基线因果活动之间没有统计学上的显著差异。这些功能连接变化与通过网络生理上可接受的通信模式一致,并且它们的特定参数对康复和脑机接口SSNP应用都有影响。