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用于预测人类和非人类灵长类动物大脑中电刺激诱发反应的神经质量模型。

A neural mass model to predict electrical stimulation evoked responses in human and non-human primate brain.

机构信息

Department of Neurosurgery, Massachusetts General Hospital, Boston, MA, United States of America. Department of Psychiatry, Massachusetts General Hospital, Boston, MA, United States of America.

出版信息

J Neural Eng. 2018 Dec;15(6):066012. doi: 10.1088/1741-2552/aae136. Epub 2018 Sep 13.

Abstract

OBJECTIVE

Deep brain stimulation (DBS) is a valuable tool for ameliorating drug resistant pathologies such as movement disorders and epilepsy. DBS is also being considered for complex neuro-psychiatric disorders, which are characterized by high variability in symptoms and slow responses that hinder DBS setting optimization. The objective of this work was to develop an in silico platform to examine the effects of electrical stimulation in regions neighboring a stimulated brain region.

APPROACH

We used the Jansen-Rit neural mass model of single and coupled nodes to simulate the response to a train of electrical current pulses at different frequencies (10-160 Hz) of the local field potential recorded in the amygdala and cortical structures in human subjects and a non-human primate.

RESULTS

We found that using a single node model, the evoked responses could be accurately modeled following a narrow range of stimulation frequencies. Including a second coupled node increased the range of stimulation frequencies whose evoked responses could be efficiently modeled. Furthermore, in a chronic recording from a non-human primate, features of the in vivo evoked response remained consistent for several weeks, suggesting that model re-parameterization for chronic stimulation protocols would be infrequent.

SIGNIFICANCE

Using a model of neural population activity, we reproduced the evoked response to cortical and subcortical stimulation in human and non-human primate. This modeling framework provides an environment to explore, safely and rapidly, a wide range of stimulation settings not possible in human brain stimulation studies. The model can be trained on a limited dataset of stimulation responses to develop an optimal stimulation strategy for an individual patient.

摘要

目的

深部脑刺激(DBS)是改善耐药性疾病(如运动障碍和癫痫)的有效工具。DBS 也正在考虑用于复杂的神经精神疾病,这些疾病的特点是症状变化大,反应缓慢,这阻碍了 DBS 设置的优化。这项工作的目的是开发一个计算机模拟平台,以研究电刺激对刺激脑区周围区域的影响。

方法

我们使用 Jansen-Rit 神经质量模型的单个和耦合节点来模拟在人类和非人类灵长类动物的杏仁核和皮质结构中记录的局部场电位的电流脉冲刺激不同频率(10-160 Hz)的响应。

结果

我们发现,使用单个节点模型,可以在较窄的刺激频率范围内准确地模拟诱发响应。包括第二个耦合节点可以增加可以有效模拟的刺激频率范围。此外,在对非人类灵长类动物的慢性记录中,体内诱发响应的特征在数周内保持一致,这表明对于慢性刺激方案,模型重新参数化将不频繁。

意义

我们使用神经群体活动模型再现了人类和非人类灵长类动物皮质和皮质下刺激的诱发响应。这种建模框架提供了一个环境,可以安全、快速地探索广泛的刺激设置,而这些在人类脑刺激研究中是不可能的。该模型可以通过有限的刺激反应数据集进行训练,为个体患者开发最佳刺激策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5f2b/6757338/ab72b7dc942e/nihms-1051265-f0001.jpg

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