Ming Hsieh Department of Electrical and Computer Engineering, Viterbi School of Engineering, University of Southern California, Los Angeles, CA, USA.
Center for Neural Science, New York University, New York, NY, USA.
Nat Biomed Eng. 2021 Apr;5(4):324-345. doi: 10.1038/s41551-020-00666-w. Epub 2021 Feb 1.
Direct electrical stimulation can modulate the activity of brain networks for the treatment of several neurological and neuropsychiatric disorders and for restoring lost function. However, precise neuromodulation in an individual requires the accurate modelling and prediction of the effects of stimulation on the activity of their large-scale brain networks. Here, we report the development of dynamic input-output models that predict multiregional dynamics of brain networks in response to temporally varying patterns of ongoing microstimulation. In experiments with two awake rhesus macaques, we show that the activities of brain networks are modulated by changes in both stimulation amplitude and frequency, that they exhibit damping and oscillatory response dynamics, and that variabilities in prediction accuracy and in estimated response strength across brain regions can be explained by an at-rest functional connectivity measure computed without stimulation. Input-output models of brain dynamics may enable precise neuromodulation for the treatment of disease and facilitate the investigation of the functional organization of large-scale brain networks.
直接电刺激可以调节大脑网络的活动,用于治疗多种神经和神经精神疾病,并恢复丧失的功能。然而,个体的精确神经调节需要准确地建模和预测刺激对其大规模大脑网络活动的影响。在这里,我们报告了动态输入-输出模型的发展,该模型可以预测大脑网络的多区域动力学,以响应持续微刺激的时变模式。在两项使用两只清醒恒河猴的实验中,我们表明大脑网络的活动可以通过刺激幅度和频率的变化来调节,它们表现出阻尼和振荡响应动力学,并且跨脑区的预测准确性和估计的响应强度的变异性可以用在没有刺激时计算的静息功能连通性测量来解释。大脑动力学的输入-输出模型可能能够实现精确的神经调节,以治疗疾病,并促进对大规模大脑网络的功能组织的研究。