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      Transitions in information processing dynamics at the whole-brain network level are driven by alterations in neural gain

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          Abstract

          A key component of the flexibility and complexity of the brain is its ability to dynamically adapt its functional network structure between integrated and segregated brain states depending on the demands of different cognitive tasks. Integrated states are prevalent when performing tasks of high complexity, such as maintaining items in working memory, consistent with models of a global workspace architecture. Recent work has suggested that the balance between integration and segregation is under the control of ascending neuromodulatory systems, such as the noradrenergic system, via changes in neural gain (in terms of the amplification and non-linearity in stimulus-response transfer function of brain regions). In a previous large-scale nonlinear oscillator model of neuronal network dynamics, we showed that manipulating neural gain parameters led to a ‘critical’ transition in phase synchrony that was associated with a shift from segregated to integrated topology, thus confirming our original prediction. In this study, we advance these results by demonstrating that the gain-mediated phase transition is characterized by a shift in the underlying dynamics of neural information processing. Specifically, the dynamics of the subcritical (segregated) regime are dominated by information storage, whereas the supercritical (integrated) regime is associated with increased information transfer (measured via transfer entropy). Operating near to the critical regime with respect to modulating neural gain parameters would thus appear to provide computational advantages, offering flexibility in the information processing that can be performed with only subtle changes in gain control. Our results thus link studies of whole-brain network topology and the ascending arousal system with information processing dynamics, and suggest that the constraints imposed by the ascending arousal system constrain low-dimensional modes of information processing within the brain.

          Author summary

          Higher brain function relies on a dynamic balance between functional integration and segregation. Previous work has shown that this balance is mediated in part by alterations in neural gain, which are thought to relate to projections from ascending neuromodulatory nuclei, such as the locus coeruleus. Here, we extend this work by demonstrating that the modulation of neural gain parameters alters the information processing dynamics of the brain regions of a biophysical neural model. Specifically, we find that subcritical dynamics in the phase space of neural gain parameters are characterized by high Active Information Storage, whereas supercritical dynamics in this phase space are associated with an increase in inter-regional Transfer Entropy. Our results suggest that the modulation of neural gain via the ascending arousal system may fundamentally alter the information processing mode of the brain, which in turn has important implications for understanding the biophysical basis of cognition.

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          Most cited references66

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          Impulses and Physiological States in Theoretical Models of Nerve Membrane

          Van der Pol's equation for a relaxation oscillator is generalized by the addition of terms to produce a pair of non-linear differential equations with either a stable singular point or a limit cycle. The resulting "BVP model" has two variables of state, representing excitability and refractoriness, and qualitatively resembles Bonhoeffer's theoretical model for the iron wire model of nerve. This BVP model serves as a simple representative of a class of excitable-oscillatory systems including the Hodgkin-Huxley (HH) model of the squid giant axon. The BVP phase plane can be divided into regions corresponding to the physiological states of nerve fiber (resting, active, refractory, enhanced, depressed, etc.) to form a "physiological state diagram," with the help of which many physiological phenomena can be summarized. A properly chosen projection from the 4-dimensional HH phase space onto a plane produces a similar diagram which shows the underlying relationship between the two models. Impulse trains occur in the BVP and HH models for a range of constant applied currents which make the singular point representing the resting state unstable.
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            Network modelling methods for FMRI.

            There is great interest in estimating brain "networks" from FMRI data. This is often attempted by identifying a set of functional "nodes" (e.g., spatial ROIs or ICA maps) and then conducting a connectivity analysis between the nodes, based on the FMRI timeseries associated with the nodes. Analysis methods range from very simple measures that consider just two nodes at a time (e.g., correlation between two nodes' timeseries) to sophisticated approaches that consider all nodes simultaneously and estimate one global network model (e.g., Bayes net models). Many different methods are being used in the literature, but almost none has been carefully validated or compared for use on FMRI timeseries data. In this work we generate rich, realistic simulated FMRI data for a wide range of underlying networks, experimental protocols and problematic confounds in the data, in order to compare different connectivity estimation approaches. Our results show that in general correlation-based approaches can be quite successful, methods based on higher-order statistics are less sensitive, and lag-based approaches perform very poorly. More specifically: there are several methods that can give high sensitivity to network connection detection on good quality FMRI data, in particular, partial correlation, regularised inverse covariance estimation and several Bayes net methods; however, accurate estimation of connection directionality is more difficult to achieve, though Patel's τ can be reasonably successful. With respect to the various confounds added to the data, the most striking result was that the use of functionally inaccurate ROIs (when defining the network nodes and extracting their associated timeseries) is extremely damaging to network estimation; hence, results derived from inappropriate ROI definition (such as via structural atlases) should be regarded with great caution. Copyright © 2010 Elsevier Inc. All rights reserved.
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              Dynamic reconfiguration of human brain networks during learning.

              Human learning is a complex phenomenon requiring flexibility to adapt existing brain function and precision in selecting new neurophysiological activities to drive desired behavior. These two attributes--flexibility and selection--must operate over multiple temporal scales as performance of a skill changes from being slow and challenging to being fast and automatic. Such selective adaptability is naturally provided by modular structure, which plays a critical role in evolution, development, and optimal network function. Using functional connectivity measurements of brain activity acquired from initial training through mastery of a simple motor skill, we investigate the role of modularity in human learning by identifying dynamic changes of modular organization spanning multiple temporal scales. Our results indicate that flexibility, which we measure by the allegiance of nodes to modules, in one experimental session predicts the relative amount of learning in a future session. We also develop a general statistical framework for the identification of modular architectures in evolving systems, which is broadly applicable to disciplines where network adaptability is crucial to the understanding of system performance.
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                Author and article information

                Contributors
                Role: Formal analysisRole: InvestigationRole: SoftwareRole: VisualizationRole: Writing – original draftRole: Writing – review & editing
                Role: SoftwareRole: VisualizationRole: Writing – original draftRole: Writing – review & editing
                Role: Data curationRole: InvestigationRole: ResourcesRole: SoftwareRole: Writing – review & editing
                Role: ResourcesRole: SoftwareRole: Writing – review & editing
                Role: ResourcesRole: SoftwareRole: Writing – review & editing
                Role: ConceptualizationRole: Formal analysisRole: Funding acquisitionRole: InvestigationRole: MethodologyRole: Project administrationRole: ResourcesRole: SoftwareRole: SupervisionRole: VisualizationRole: Writing – original draftRole: Writing – review & editing
                Role: ConceptualizationRole: Formal analysisRole: Funding acquisitionRole: InvestigationRole: MethodologyRole: Project administrationRole: ResourcesRole: SoftwareRole: SupervisionRole: VisualizationRole: Writing – original draftRole: Writing – review & editing
                Role: Editor
                Journal
                PLoS Comput Biol
                PLoS Comput. Biol
                plos
                ploscomp
                PLoS Computational Biology
                Public Library of Science (San Francisco, CA USA )
                1553-734X
                1553-7358
                October 2019
                15 October 2019
                : 15
                : 10
                : e1006957
                Affiliations
                [1 ] Centre for Complex Systems, The University of Sydney, Sydney, Australia
                [2 ] Brain and Mind Centre, The University of Sydney, Sydney, Australia
                [3 ] Complex Systems Research Group, Faculty of Engineering, The University of Sydney, Sydney, Australia
                [4 ] QIMR Berghofer Medical Research Institute, Queensland, Australia
                [5 ] Department of Psychology, Stanford University, Stanford, California, United States of America
                Ernst-Strungmann-Institut, GERMANY
                Author notes

                The authors have declared that no competing interests exist.

                Author information
                http://orcid.org/0000-0003-4514-7260
                http://orcid.org/0000-0002-2106-0403
                http://orcid.org/0000-0002-9910-8972
                Article
                PCOMPBIOL-D-19-00391
                10.1371/journal.pcbi.1006957
                6793849
                31613882
                9ab2e9b3-7e5f-4c50-9f7e-9a7c2a377e69
                © 2019 Li et al

                This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

                History
                : 11 March 2019
                : 2 September 2019
                Page count
                Figures: 6, Tables: 0, Pages: 27
                Funding
                Funded by: Australian Research Council
                Award ID: DE160100630
                Award Recipient :
                Funded by: funder-id http://dx.doi.org/10.13039/501100000925, National Health and Medical Research Council;
                Award ID: 1156536
                Award Recipient :
                Funded by: funder-id http://dx.doi.org/10.13039/501100008914, Advance Queensland;
                Award ID: AQIP12316-17RD2
                Award Recipient :
                MJA was supported through a Queensland Government Advance Queensland Innovation Partnership grant AQIP12316-17RD2 - https://advance.qld.gov.au/investors-universities-and-researchers/innovation-partnerships. JL was supported through the Australian Research Council DECRA grant DE160100630 - https://www.arc.gov.au/grants/discovery-program/discovery-early-career-researcher-award-decra. JMS was supported through a University of Sydney Robinson Fellowship and NHMRC Project Grant 1156536 - https://nhmrc.gov.au/funding/find-funding/project-grants. JMS and JL were supported through The University of Sydney Research Accelerator (SOAR) Fellowship program - https://sydney.edu.au/research/our-researchers/sydney-research-accelerator-fellows.html. High performance computing facilities provided by QIMR Berghofer Medical Research Institute and The University of Sydney (artemis) have contributed to the research results reported within this paper. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
                Categories
                Research Article
                Physical Sciences
                Physics
                Thermodynamics
                Entropy
                Computer and Information Sciences
                Information Technology
                Information Processing
                Computer and Information Sciences
                Information Theory
                Information Entropy
                Computer and Information Sciences
                Network Analysis
                Network Motifs
                Computer and Information Sciences
                Neural Networks
                Biology and Life Sciences
                Neuroscience
                Neural Networks
                Biology and Life Sciences
                Neuroscience
                Cognitive Science
                Cognition
                Memory
                Biology and Life Sciences
                Neuroscience
                Learning and Memory
                Memory
                Biology and Life Sciences
                Cell Biology
                Cellular Types
                Animal Cells
                Neurons
                Biology and Life Sciences
                Neuroscience
                Cellular Neuroscience
                Neurons
                Research and Analysis Methods
                Storage and Handling
                Specimen Storage
                Custom metadata
                Data underlying the results is produced via simulations as described in the manuscript; code to reproduce the simulations is freely available at https://github.com/macshine/gain_topology as linked from the manuscript.

                Quantitative & Systems biology
                Quantitative & Systems biology

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