在计算效率高的神经网络模型中表征深部脑刺激效应。

Alberta Latteri, Paolo Arena, Paolo Mazzone
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引用次数: 12

摘要

背景:最近对帕金森病(PD)医学治疗的研究导致了所谓的深部脑刺激(DBS)技术的引入。这种特殊的治疗方法可以积极地对比各种脑深部结构的病理活动,这些结构负责众所周知的PD症状。这项技术经常与多巴胺能药物联合使用,取代了手术干预来对比特定脑核(基底神经节)的活动。这种临床方案提供了分析和检查从植入大脑深部区域的电极测量到的信号的可能性。对这些信号的分析使得将PD作为生物神经网络中动态同步的具体案例进行研究成为可能,有利于应用这一科学领域的理论分析来寻找有效的治疗方法来面对这一重要疾病。实验结果表明,PD神经系统疾病以BG的病理信号同步为特征。例如,帕金森氏震颤被认为是由丘脑和纹状体结构的神经元群经历异常同步引起的。相反,在正常情况下,相同神经元群的活动似乎并不相关和同步。结果:为了详细研究刺激信号对病理神经介质的影响,建立了这些神经结构的有效模型,该模型能够在没有任何外部输入的情况下显示病理神经组织的内在特性,模拟BG同步动力学。我们开始考虑一个已经在文献中引入的模型,以研究电刺激对病理同步神经元簇的影响。该模型使用Morris Lecar型神经元。这种神经元模型,虽然具有很高的生物学合理性,但需要大量的计算努力来模拟大规模的网络。出于这个原因,我们考虑了一个降阶模型,Izhikevich模型,它在计算上要轻得多。在没有传统刺激和所有刺激方案的情况下,使用两种神经元模型构建的神经格之间的比较提供了可比较的结果。这是研究和模拟病理动力学中涉及的大规模神经网络的第一个结果。利用降阶模型对两个神经格的活动进行了检查,目的是分析一个区域的刺激如何影响另一个区域的动态,就像通常的医疗方案所要求的那样。通过对种群动态的研究,我们可以通过模拟来研究,刺激信号对神经动态去同步的积极影响。结论:所得结果对分析神经刺激引起的同步和去同步效应具有重要的附加价值。这项工作为更有效地研究大规模且计算效率高的神经网络中的刺激效果提供了机会。将结果与Morris Lecar和Izhikevich神经元的其他数学模型以及模拟的局部场电位(LFP)进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Characterizing Deep Brain Stimulation effects in computationally efficient neural network models.

Characterizing Deep Brain Stimulation effects in computationally efficient neural network models.

Characterizing Deep Brain Stimulation effects in computationally efficient neural network models.

Characterizing Deep Brain Stimulation effects in computationally efficient neural network models.

Background: Recent studies on the medical treatment of Parkinson's disease (PD) led to the introduction of the so called Deep Brain Stimulation (DBS) technique. This particular therapy allows to contrast actively the pathological activity of various Deep Brain structures, responsible for the well known PD symptoms. This technique, frequently joined to dopaminergic drugs administration, replaces the surgical interventions implemented to contrast the activity of specific brain nuclei, called Basal Ganglia (BG). This clinical protocol gave the possibility to analyse and inspect signals measured from the electrodes implanted into the deep brain regions. The analysis of these signals led to the possibility to study the PD as a specific case of dynamical synchronization in biological neural networks, with the advantage to apply the theoretical analysis developed in such scientific field to find efficient treatments to face with this important disease. Experimental results in fact show that the PD neurological diseases are characterized by a pathological signal synchronization in BG. Parkinsonian tremor, for example, is ascribed to be caused by neuron populations of the Thalamic and Striatal structures that undergo an abnormal synchronization. On the contrary, in normal conditions, the activity of the same neuron populations do not appear to be correlated and synchronized.

Results: To study in details the effect of the stimulation signal on a pathological neural medium, efficient models of these neural structures were built, which are able to show, without any external input, the intrinsic properties of a pathological neural tissue, mimicking the BG synchronized dynamics.We start considering a model already introduced in the literature to investigate the effects of electrical stimulation on pathologically synchronized clusters of neurons. This model used Morris Lecar type neurons. This neuron model, although having a high level of biological plausibility, requires a large computational effort to simulate large scale networks. For this reason we considered a reduced order model, the Izhikevich one, which is computationally much lighter. The comparison between neural lattices built using both neuron models provided comparable results, both without traditional stimulation and in presence of all the stimulation protocols. This was a first result toward the study and simulation of the large scale neural networks involved in pathological dynamics.Using the reduced order model an inspection on the activity of two neural lattices was also carried out at the aim to analyze how the stimulation in one area could affect the dynamics in another area, like the usual medical treatment protocols require.The study of population dynamics that was carried out allowed us to investigate, through simulations, the positive effects of the stimulation signals in terms of desynchronization of the neural dynamics.

Conclusions: The results obtained constitute a significant added value to the analysis of synchronization and desynchronization effects due to neural stimulation. This work gives the opportunity to more efficiently study the effect of stimulation in large scale yet computationally efficient neural networks. Results were compared both with the other mathematical models, using Morris Lecar and Izhikevich neurons, and with simulated Local Field Potentials (LFP).

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