Hahn Philip J, McIntyre Cameron C
Department of Biomedical Engineering, Cleveland Clinic Foundation, 9500 Euclid Avenue ND20, Cleveland, OH 44195, USA.
J Comput Neurosci. 2010 Jun;28(3):425-41. doi: 10.1007/s10827-010-0225-8. Epub 2010 Mar 23.
Deep brain stimulation (DBS) of the subthlamic nucleus (STN) represents an effective treatment for medically refractory Parkinson's disease; however, understanding of its effects on basal ganglia network activity remains limited. We constructed a computational model of the subthalamopallidal network, trained it to fit in vivo recordings from parkinsonian monkeys, and evaluated its response to STN DBS. The network model was created with synaptically connected single compartment biophysical models of STN and pallidal neurons, and stochastically defined inputs driven by cortical beta rhythms. A least mean square error training algorithm was developed to parameterize network connections and minimize error when compared to experimental spike and burst rates in the parkinsonian condition. The output of the trained network was then compared to experimental data not used in the training process. We found that reducing the influence of the cortical beta input on the model generated activity that agreed well with recordings from normal monkeys. Further, during STN DBS in the parkinsonian condition the simulations reproduced the reduction in GPi bursting found in existing experimental data. The model also provided the opportunity to greatly expand analysis of GPi bursting activity, generating three major predictions. First, its reduction was proportional to the volume of STN activated by DBS. Second, GPi bursting decreased in a stimulation frequency dependent manner, saturating at values consistent with clinically therapeutic DBS. And third, ablating STN neurons, reported to generate similar therapeutic outcomes as STN DBS, also reduced GPi bursting. Our theoretical analysis of stimulation induced network activity suggests that regularization of GPi firing is dependent on the volume of STN tissue activated and a threshold level of burst reduction may be necessary for therapeutic effect.
丘脑底核深部脑刺激(DBS)是治疗药物难治性帕金森病的一种有效方法;然而,对其对基底神经节网络活动影响的了解仍然有限。我们构建了一个丘脑底核-苍白球网络的计算模型,对其进行训练以拟合帕金森病猴子的体内记录,并评估其对丘脑底核DBS的反应。该网络模型由丘脑底核和苍白球神经元的单室生物物理模型通过突触连接而成,并由皮层β节律驱动的随机定义输入组成。开发了一种最小均方误差训练算法来参数化网络连接,并在与帕金森病状态下的实验峰值和爆发率进行比较时最小化误差。然后将训练后网络的输出与训练过程中未使用的实验数据进行比较。我们发现,减少皮层β输入对模型的影响会产生与正常猴子记录结果非常吻合的活动。此外,在帕金森病状态下进行丘脑底核DBS时,模拟结果再现了现有实验数据中发现的苍白球内侧部(GPi)爆发活动的减少。该模型还提供了大幅扩展对GPi爆发活动分析的机会,产生了三个主要预测。第一,其减少与DBS激活的丘脑底核体积成正比。第二,GPi爆发以刺激频率依赖的方式减少,在与临床治疗性DBS一致的值处达到饱和。第三,据报道,损毁丘脑底核神经元会产生与丘脑底核DBS相似的治疗效果,这也会减少GPi爆发。我们对刺激诱导的网络活动的理论分析表明,GPi放电的调节取决于被激活的丘脑底核组织的体积,并且爆发减少的阈值水平可能是治疗效果所必需的。