17 research outputs found

    Evidence of Rentian Scaling of Functional Modules in Diverse Biological Networks

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    Biological networks have long been known to be modular, containing sets of nodes that are highly connected internally. Less emphasis, however, has been placed on understanding how intermodule connections are distributed within a network. Here, we borrow ideas from engineered circuit design and study Rentian scaling, which states that the number of external connections between nodes in different modules is related to the number of nodes inside the modules by a power-law relationship. We tested this property in a broad class of molecular networks, including protein interaction networks for six species and gene regulatory networks for 41 human and 25 mouse cell types. Using evolutionarily defined modules corresponding to known biological processes in the cell, we found that all networks displayed Rentian scaling with a broad range of exponents. We also found evidence for Rentian scaling in functional modules in the Caenorhabditis elegans neural network, but, interestingly, not in three different social networks, suggesting that this property does not inevitably emerge. To understand how such scaling may have arisen evolutionarily, we derived a new graph model that can generate Rentian networks given a target Rent exponent and a module decomposition as inputs. Overall, our work uncovers a new principle shared by engineered circuits and biological networks

    Efficient Physical Embedding of Topologically Complex Information Processing Networks in Brains and Computer Circuits

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    Nervous systems are information processing networks that evolved by natural selection, whereas very large scale integrated (VLSI) computer circuits have evolved by commercially driven technology development. Here we follow historic intuition that all physical information processing systems will share key organizational properties, such as modularity, that generally confer adaptivity of function. It has long been observed that modular VLSI circuits demonstrate an isometric scaling relationship between the number of processing elements and the number of connections, known as Rent's rule, which is related to the dimensionality of the circuit's interconnect topology and its logical capacity. We show that human brain structural networks, and the nervous system of the nematode C. elegans, also obey Rent's rule, and exhibit some degree of hierarchical modularity. We further show that the estimated Rent exponent of human brain networks, derived from MRI data, can explain the allometric scaling relations between gray and white matter volumes across a wide range of mammalian species, again suggesting that these principles of nervous system design are highly conserved. For each of these fractal modular networks, the dimensionality of the interconnect topology was greater than the 2 or 3 Euclidean dimensions of the space in which it was embedded. This relatively high complexity entailed extra cost in physical wiring: although all networks were economically or cost-efficiently wired they did not strictly minimize wiring costs. Artificial and biological information processing systems both may evolve to optimize a trade-off between physical cost and topological complexity, resulting in the emergence of homologous principles of economical, fractal and modular design across many different kinds of nervous and computational networks

    Spatial brain networks

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    Micro-connectomics: probing the organization of neuronal networks at the cellular scale.

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    Defining the organizational principles of neuronal networks at the cellular scale, or micro-connectomics, is a key challenge of modern neuroscience. In this Review, we focus on graph theoretical parameters of micro-connectome topology, often informed by economical principles that conceptually originated with Ram贸n y Cajal's conservation laws. First, we summarize results from studies in intact small organisms and in samples from larger nervous systems. We then evaluate the evidence for an economical trade-off between biological cost and functional value in the organization of neuronal networks. Various results suggest that many aspects of neuronal network organization are indeed the outcome of competition between these two fundamental selection pressures.This work was supported by the National Institute of Health Research (NIHR) Cambridge Biomedical Research Centre.This is the author accepted manuscript. It is currently under an indefinite embargo pending publication by the Nature Publishing Group

    The relationship between connectome structure and cognition

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    Ph. D. Thesis.Cognition consists of many abilities, designed to allow the animal to interact effectively with the environment. In this thesis, we explore the relationship between cognition and the network of connections within the brain, known as the connectome. Firstly, we assess the spatial organisation of the macaque monkey connectome. We ask whether regions are arranged so as to minimise the total wiring length, a theory known as component placement optimisation. We find that the total wiring length of the connectome can be reduced by repositioning brain regions, suggesting the presence of alternative constraints on brain connectivity. We subsequently construct a model of neural dynamics to obtain a mechanistic understanding for why the brain is sub-optimally arranged with respect to its wiring configuration. Next, we explore spatial optimisation in the human connectome. We find that the human connectome can be spatially rearranged to reduce the total length of all connections, and that regions differ in their contribution towards this reduction. We find evidence to suggest that this sub-optimal spatial arrangement of brain regions supports healthy dynamics by encouraging greater fluctuations in global synchrony throughout the brain. We also explore connectome structure in the context of impaired cognition, specifically in subjects with schizophrenia, where we identify a link between symptom severity and the spatial organisation of the frontal lobe. Lastly, we investigate the relationship between connectome structure and intelligence, performing numerous spatial and topological analyses on the human connectome alongside measures of fluid and crystallised ability. We find evidence suggesting that fluid ability, rather than crystallised, is linked to spatial features of the connectome, and, in particular, with connectivity that is closer to being spatially optimised. Our work contributes towards an understanding of the spatial and topological features of the connectome, and offers novel insights into the mechanisms that underpin cognitionNewcastle Universit
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