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在基底神经节的生理启发模型中使用混合神经元。

Using a hybrid neuron in physiologically inspired models of the basal ganglia.

机构信息

Center for Neural and Emergent Systems, Information and System Sciences Laboratory, HRL Laboratories LLC. Malibu, CA, USA ; Department of Electrical and Biomedical Engineering, The University of Nevada Reno, NV, USA ; Department of Computer Science and Engineering, The University of Nevada Reno, NV, USA.

出版信息

Front Comput Neurosci. 2013 Jul 5;7:88. doi: 10.3389/fncom.2013.00088. eCollection 2013.

Abstract

Our current understanding of the basal ganglia (BG) has facilitated the creation of computational models that have contributed novel theories, explored new functional anatomy and demonstrated results complementing physiological experiments. However, the utility of these models extends beyond these applications. Particularly in neuromorphic engineering, where the basal ganglia's role in computation is important for applications such as power efficient autonomous agents and model-based control strategies. The neurons used in existing computational models of the BG, however, are not amenable for many low-power hardware implementations. Motivated by a need for more hardware accessible networks, we replicate four published models of the BG, spanning single neuron and small networks, replacing the more computationally expensive neuron models with an Izhikevich hybrid neuron. This begins with a network modeling action-selection, where the basal activity levels and the ability to appropriately select the most salient input is reproduced. A Parkinson's disease model is then explored under normal conditions, Parkinsonian conditions and during subthalamic nucleus deep brain stimulation (DBS). The resulting network is capable of replicating the loss of thalamic relay capabilities in the Parkinsonian state and its return under DBS. This is also demonstrated using a network capable of action-selection. Finally, a study of correlation transfer under different patterns of Parkinsonian activity is presented. These networks successfully captured the significant results of the originals studies. This not only creates a foundation for neuromorphic hardware implementations but may also support the development of large-scale biophysical models. The former potentially providing a way of improving the efficacy of DBS and the latter allowing for the efficient simulation of larger more comprehensive networks.

摘要

我们目前对基底神经节(BG)的理解促进了计算模型的创建,这些模型为新理论提供了依据,探索了新的功能解剖结构,并展示了与生理实验互补的结果。然而,这些模型的应用并不仅限于此。特别是在神经形态工程中,基底神经节在计算中的作用对于高效自主代理和基于模型的控制策略等应用非常重要。然而,用于 BG 现有计算模型的神经元并不适合许多低功耗硬件实现。由于需要更易于访问硬件的网络,我们复制了 BG 的四个已发布模型,涵盖单个神经元和小网络,并用 Izhikevich 混合神经元替换了计算成本更高的神经元模型。这从一个用于行为选择的网络模型开始,其中重现了基底活动水平和适当选择最突出输入的能力。然后,在正常条件、帕金森病条件和丘脑底核深部脑刺激(DBS)下探索帕金森病模型。由此产生的网络能够复制帕金森病状态下丘脑中继能力的丧失及其在 DBS 下的恢复。这也通过一个能够进行行为选择的网络来证明。最后,提出了一种在不同帕金森病活动模式下的相关性转移研究。这些网络成功地捕获了原始研究的重要结果。这不仅为神经形态硬件实现奠定了基础,也可能支持大规模生物物理模型的发展。前者可能为提高 DBS 的疗效提供一种途径,后者则可以实现更大型、更全面网络的高效模拟。

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