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      Large-scale network organization in the avian forebrain: a connectivity matrix and theoretical analysis

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          Abstract

          Many species of birds, including pigeons, possess demonstrable cognitive capacities, and some are capable of cognitive feats matching those of apes. Since mammalian cortex is laminar while the avian telencephalon is nucleated, it is natural to ask whether the brains of these two cognitively capable taxa, despite their apparent anatomical dissimilarities, might exhibit common principles of organization on some level. Complementing recent investigations of macro-scale brain connectivity in mammals, including humans and macaques, we here present the first large-scale “wiring diagram” for the forebrain of a bird. Using graph theory, we show that the pigeon telencephalon is organized along similar lines to that of a mammal. Both are modular, small-world networks with a connective core of hub nodes that includes prefrontal-like and hippocampal structures. These hub nodes are, topologically speaking, the most central regions of the pigeon's brain, as well as being the most richly connected, implying a crucial role in information flow. Overall, our analysis suggests that indeed, despite the absence of cortical layers and close to 300 million years of separate evolution, the connectivity of the avian brain conforms to the same organizational principles as the mammalian brain.

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          Most cited references76

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          Rich-club organization of the human connectome.

          The human brain is a complex network of interlinked regions. Recent studies have demonstrated the existence of a number of highly connected and highly central neocortical hub regions, regions that play a key role in global information integration between different parts of the network. The potential functional importance of these "brain hubs" is underscored by recent studies showing that disturbances of their structural and functional connectivity profile are linked to neuropathology. This study aims to map out both the subcortical and neocortical hubs of the brain and examine their mutual relationship, particularly their structural linkages. Here, we demonstrate that brain hubs form a so-called "rich club," characterized by a tendency for high-degree nodes to be more densely connected among themselves than nodes of a lower degree, providing important information on the higher-level topology of the brain network. Whole-brain structural networks of 21 subjects were reconstructed using diffusion tensor imaging data. Examining the connectivity profile of these networks revealed a group of 12 strongly interconnected bihemispheric hub regions, comprising the precuneus, superior frontal and superior parietal cortex, as well as the subcortical hippocampus, putamen, and thalamus. Importantly, these hub regions were found to be more densely interconnected than would be expected based solely on their degree, together forming a rich club. We discuss the potential functional implications of the rich-club organization of the human connectome, particularly in light of its role in information integration and in conferring robustness to its structural core.
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            Assortative mixing in networks

            M. Newman (2002)
            A network is said to show assortative mixing if the nodes in the network that have many connections tend to be connected to other nodes with many connections. We define a measure of assortative mixing for networks and use it to show that social networks are often assortatively mixed, but that technological and biological networks tend to be disassortative. We propose a model of an assortative network, which we study both analytically and numerically. Within the framework of this model we find that assortative networks tend to percolate more easily than their disassortative counterparts and that they are also more robust to vertex removal.
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              The small world of the cerebral cortex.

              While much information is available on the structural connectivity of the cerebral cortex, especially in the primate, the main organizational principles of the connection patterns linking brain areas, columns and individual cells have remained elusive. We attempt to characterize a wide variety of cortical connectivity data sets using a specific set of graph theory methods. We measure global aspects of cortical graphs including the abundance of small structural motifs such as cycles, the degree of local clustering of connections and the average path length. We examine large-scale cortical connection matrices obtained from neuroanatomical data bases, as well as probabilistic connection matrices at the level of small cortical neuronal populations linked by intra-areal and inter-areal connections. All cortical connection matrices examined in this study exhibit "small-world" attributes, characterized by the presence of abundant clustering of connections combined with short average distances between neuronal elements. We discuss the significance of these universal organizational features of cortex in light of functional brain anatomy. Supplementary materials are at www.indiana.edu/~cortex/lab.htm.
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                Author and article information

                Journal
                Front Comput Neurosci
                Front Comput Neurosci
                Front. Comput. Neurosci.
                Frontiers in Computational Neuroscience
                Frontiers Media S.A.
                1662-5188
                04 July 2013
                2013
                : 7
                : 89
                Affiliations
                [1] 1Department of Computing, Imperial College London London, UK
                [2] 2Department of Psychology and J.P. Scott Center for Neuroscience, Mind and Behavior, Bowling Green State University Bowling Green, OH, USA
                [3] 3Department of Psychology, University of South Florida Tampa, FL, USA
                [4] 4Department of Anatomy with Radiology, Faculty of Medical and Health Sciences, University of Auckland Auckland, New Zealand
                [5] 5Biopsychologie, Fakultät für Psychologie, Ruhr-Universität Bochum Bochum, Germany
                Author notes

                Edited by: Si Wu, Beijing Normal University, China

                Reviewed by: Joaquín J. Torres, University of Granada, Spain; Pei-Ji Liang, Shanghai Jiao Tong University, China

                *Correspondence: Murray Shanahan, Department of Computing, Imperial College London, 180 Queen's Gate, London SW7 2RH, UK e-mail: m.shanahan@ 123456imperial.ac.uk
                Article
                10.3389/fncom.2013.00089
                3701877
                23847525
                36d8bca1-5af3-4ef7-9419-8229228a7497
                Copyright © 2013 Shanahan, Bingman, Shimizu, Wild and Güntürkün.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in other forums, provided the original authors and source are credited and subject to any copyright notices concerning any third-party graphics etc.

                History
                : 08 March 2013
                : 17 June 2013
                Page count
                Figures: 8, Tables: 5, Equations: 11, References: 96, Pages: 17, Words: 10737
                Categories
                Neuroscience
                Original Research Article

                Neurosciences
                brain connectivity,avain neuroanatomy,brain network analysis,pigeon forebrain,comparative neuroanatomy

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