Department of Math and Computer Science, Beloit College, 700 College St., Beloit, WI 53511, USA.
Department of Mathematics, Drexel University, Philadelphia, PA 19104, USA.
Int J Mol Sci. 2023 Mar 14;24(6):5555. doi: 10.3390/ijms24065555.
Deep brain stimulation (DBS)-through a surgically implanted electrode to the subthalamic nucleus (STN)-has become a widely used therapeutic option for the treatment of Parkinson's disease and other neurological disorders. The standard conventional high-frequency stimulation (HF) that is currently used has several drawbacks. To overcome the limitations of HF, researchers have been developing closed-loop and demand-controlled, adaptive stimulation protocols wherein the amount of current that is delivered is turned on and off in real-time in accordance with a biophysical signal. Computational modeling of DBS in neural network models is an increasingly important tool in the development of new protocols that aid researchers in animal and clinical studies. In this computational study, we seek to implement a novel technique of DBS where we stimulate the STN in an adaptive fashion using the interspike time of the neurons to control stimulation. Our results show that our protocol eliminates bursts in the synchronized bursting neuronal activity of the STN, which is hypothesized to cause the failure of thalamocortical neurons (TC) to respond properly to excitatory cortical inputs. Further, we are able to significantly decrease the TC relay errors, representing potential therapeutics for Parkinson's disease.
脑深部电刺激(DBS)-通过手术植入的电极到丘脑底核(STN)-已成为治疗帕金森病和其他神经疾病的广泛应用的治疗选择。目前使用的标准常规高频刺激(HF)有几个缺点。为了克服 HF 的局限性,研究人员一直在开发闭环和需求控制、自适应刺激协议,其中根据生物物理信号实时开启和关闭输送的电流量。神经网络模型中的 DBS 的计算建模是开发新协议的重要工具,有助于研究人员进行动物和临床研究。在这项计算研究中,我们试图实施一种新的 DBS 技术,我们使用神经元的尖峰时间来控制刺激,以自适应的方式刺激 STN。我们的结果表明,我们的方案消除了 STN 中同步爆发神经元活动中的爆发,这被假设为导致丘脑皮质神经元(TC)无法对兴奋性皮质输入做出适当反应的原因。此外,我们能够显著降低 TC 中继错误,为帕金森病提供潜在的治疗方法。