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Analysis of Oscillatory Neural Activity in Series Network Models of Parkinson's Disease During Deep Brain Stimulation

机译:帕金森氏病脑深部刺激系列网络模型中的振荡神经活动分析。

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Parkinson's disease is a progressive, neurodegenerative disorder, characterized by hallmark motor symptoms. It is associated with pathological, oscillatory neural activity in the basal ganglia. Deep brain stimulation (DBS) is often successfully used to treat medically refractive Parkinson's disease. However, the selection of stimulation parameters is based on qualitative assessment of the patient, which can result in a lengthy tuning period and a suboptimal choice of parameters. This study explores fourth-order, control theory-based models of oscillatory activity in the basal ganglia. Describing function analysis is applied to examine possible mechanisms for the generation of oscillations in interacting nuclei and to investigate the suppression of oscillations with high-frequency stimulation. The theoretical results for the suppression of the oscillatory activity obtained using both the fourth-order model, and a previously described second-order model, are optimized to fit clinically recorded local field potential data obtained from Parkinsonian patients with implanted DBS. Close agreement between the power of oscillations recorded for a range of stimulation amplitudes is observed ( ). The results suggest that the behavior of the system and the suppression of pathological neural oscillations with DBS is well described by the macroscopic models presented. The results also demonstrate that in this instance, a second-order model is sufficient to model the clinical data, without the need for added complexity. Describing the system behavior with computationally efficient models could aid in the identification of optimal stimulation parameters for patients in a clinical environment.
机译:帕金森氏病是一种进行性神经退行性疾病,其特征是明显的运动症状。它与基底神经节的病理性,振荡性神经活动有关。深度脑刺激(DBS)通常成功地用于治疗医学上难治的帕金森氏病。但是,刺激参数的选择是基于对患者的定性评估,这可能导致调整期过长以及参数选择不理想。本研究探讨了基于四阶,基于控制理论的基底神经节振荡活动模型。描述函数分析用于检查相互作用核中产生振荡的可能机制,并研究高频刺激对振荡的抑制作用。使用四阶模型和先前描述的二阶模型获得的抑制振荡活动的理论结果均经过优化,以适合临床记录的从植入了DBS的帕金森病患者获得的局部场电势数据。观察到在一系列刺激幅度范围内记录的振荡功率之间存在密切的一致性()。结果表明,所提出的宏观模型很好地描述了系统的行为以及DBS对病理性神经振荡的抑制作用。结果还表明,在这种情况下,二级模型足以对临床数据进行建模,而无需增加复杂性。用计算有效的模型描述系统行为可以帮助确定临床环境中患者的最佳刺激参数。

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