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      Homologous Basal Ganglia Network Models in Physiological and Parkinsonian Conditions

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          Abstract

          The classical model of basal ganglia has been refined in recent years with discoveries of subpopulations within a nucleus and previously unknown projections. One such discovery is the presence of subpopulations of arkypallidal and prototypical neurons in external globus pallidus, which was previously considered to be a primarily homogeneous nucleus. Developing a computational model of these multiple interconnected nuclei is challenging, because the strengths of the connections are largely unknown. We therefore use a genetic algorithm to search for the unknown connectivity parameters in a firing rate model. We apply a binary cost function derived from empirical firing rate and phase relationship data for the physiological and Parkinsonian conditions. Our approach generates ensembles of over 1,000 configurations, or homologies, for each condition, with broad distributions for many of the parameter values and overlap between the two conditions. However, the resulting effective weights of connections from or to prototypical and arkypallidal neurons are consistent with the experimental data. We investigate the significance of the weight variability by manipulating the parameters individually and cumulatively, and conclude that the correlation observed between the parameters is necessary for generating the dynamics of the two conditions. We then investigate the response of the networks to a transient cortical stimulus, and demonstrate that networks classified as physiological effectively suppress activity in the internal globus pallidus, and are not susceptible to oscillations, whereas parkinsonian networks show the opposite tendency. Thus, we conclude that the rates and phase relationships observed in the globus pallidus are predictive of experimentally observed higher level dynamical features of the physiological and parkinsonian basal ganglia, and that the multiplicity of solutions generated by our method may well be indicative of a natural diversity in basal ganglia networks. We propose that our approach of generating and analyzing an ensemble of multiple solutions to an underdetermined network model provides greater confidence in its predictions than those derived from a unique solution, and that projecting such homologous networks on a lower dimensional space of sensibly chosen dynamical features gives a better chance than a purely structural analysis at understanding complex pathologies such as Parkinson's disease.

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          Most cited references41

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          Similar network activity from disparate circuit parameters.

          It is often assumed that cellular and synaptic properties need to be regulated to specific values to allow a neuronal network to function properly. To determine how tightly neuronal properties and synaptic strengths need to be tuned to produce a given network output, we simulated more than 20 million versions of a three-cell model of the pyloric network of the crustacean stomatogastric ganglion using different combinations of synapse strengths and neuron properties. We found that virtually indistinguishable network activity can arise from widely disparate sets of underlying mechanisms, suggesting that there could be considerable animal-to-animal variability in many of the parameters that control network activity, and that many different combinations of synaptic strengths and intrinsic membrane properties can be consistent with appropriate network performance.
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            Boosting Cortical Activity at Beta-Band Frequencies Slows Movement in Humans

            Summary Neurons have a striking tendency to engage in oscillatory activities. One important type of oscillatory activity prevalent in the motor system occurs in the beta frequency band, at about 20 Hz. It is manifest during the maintenance of tonic contractions and is suppressed prior to and during voluntary movement [1–7]. This and other correlative evidence suggests that beta activity might promote tonic contraction, while impairing motor processing related to new movements [3, 8, 9]. Hence, bursts of beta activity in the cortex are associated with a strengthening of the motor effects of sensory feedback during tonic contraction and with reductions in the velocity of voluntary movements [9–11]. Moreover, beta activity is increased when movement has to be resisted or voluntarily suppressed [7, 12, 13]. Here we use imperceptible transcranial alternating-current stimulation to entrain cortical activity at 20 Hz in healthy subjects and show that this slows voluntary movement. The present findings are the first direct evidence of causality between any physiological oscillatory brain activity and concurrent motor behavior in the healthy human and help explain how the exaggerated beta activity found in Parkinson's disease can lead to motor slowing in this illness [14].
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              Recurrent collateral connections of striatal medium spiny neurons are disrupted in models of Parkinson's disease.

              The principal neurons of the striatum, GABAergic medium spiny neurons (MSNs), are interconnected by local recurrent axon collateral synapses. Although critical to many striatal models, it is not clear whether these connections are random or whether they preferentially link functionally related groups of MSNs. To address this issue, dual whole patch-clamp recordings were made from striatal MSNs in brain slices taken from transgenic mice in which D(1) or D(2) dopamine receptor expression was reported with EGFP (enhanced green fluorescent protein). These studies revealed that unidirectional connections were common between both D(1) receptor-expressing MSN (D(1) MSN) pairs (26%) and D(2) receptor-expressing MSN (D(2) MSN) pairs (36%). D(2) MSNs also commonly formed synapses on D(1) MSNs (27% of pairs). Conversely, only 6% of the D(1) MSNs formed detectable connections with D(2) MSNs. Furthermore, synaptic connections formed by D(1) MSNs were weaker than those formed by D(2) MSNs, a difference that was attributable to fewer GABA(A) receptors at D(1) MSN synapses. The strength of detectable recurrent connections was dramatically reduced in Parkinson's disease models. The studies demonstrate that recurrent collateral connections between MSNs are not random but rather differentially couple D(1) and D(2) MSNs. Moreover, this recurrent collateral network appears to be disrupted in Parkinson's disease models, potentially contributing to pathological alterations in MSN activity patterns and psychomotor symptoms.
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                Author and article information

                Contributors
                Journal
                Front Comput Neurosci
                Front Comput Neurosci
                Front. Comput. Neurosci.
                Frontiers in Computational Neuroscience
                Frontiers Media S.A.
                1662-5188
                22 August 2017
                2017
                : 11
                : 79
                Affiliations
                [1] 1Institute of Neuroscience and Medicine (INM-6), Institute for Advanced Simulation (IAS-6), JARA Brain Institute I, Jülich Research Center Jülich, Germany
                [2] 2Computational Science and Technology, School of Computer Science and Communication, KTH Royal Institute of Technology Stockholm, Sweden
                [3] 3Faculty of Biology, Bernstein Center Freiburg, University of Freiburg Freiburg, Germany
                [4] 4Institute for Cognitive Neurosciences, Ruhr University Bochum, Germany
                Author notes

                Edited by: James Kozloski, IBM Research (United States), United States

                Reviewed by: Alekhya Mandali, Indian Institute of Technology Madras, India; Dieter Jaeger, Emory University, United States; Adam Ponzi, Okinawa Institute of Science and Technology, Japan

                *Correspondence: Jyotika Bahuguna j.bahuguna@ 123456fz-juelich.de
                Article
                10.3389/fncom.2017.00079
                5572265
                28878643
                f31401fb-b3eb-4697-a116-440d66d2f901
                Copyright © 2017 Bahuguna, Tetzlaff, Kumar, Hellgren Kotaleski and Morrison.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 30 March 2017
                : 04 August 2017
                Page count
                Figures: 7, Tables: 5, Equations: 25, References: 54, Pages: 21, Words: 15206
                Categories
                Neuroscience
                Original Research

                Neurosciences
                basal ganglia,network models,degeneracy,oscillations,parkinson's disease
                Neurosciences
                basal ganglia, network models, degeneracy, oscillations, parkinson's disease

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