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Optimal Hierarchical Modular Topologies for Producing Limited Sustained Activation of Neural Networks

Overview
Specialty Neurology
Date 2010 Jun 2
PMID 20514144
Citations 59
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Abstract

An essential requirement for the representation of functional patterns in complex neural networks, such as the mammalian cerebral cortex, is the existence of stable regimes of network activation, typically arising from a limited parameter range. In this range of limited sustained activity (LSA), the activity of neural populations in the network persists between the extremes of either quickly dying out or activating the whole network. Hierarchical modular networks were previously found to show a wider parameter range for LSA than random or small-world networks not possessing hierarchical organization or multiple modules. Here we explored how variation in the number of hierarchical levels and modules per level influenced network dynamics and occurrence of LSA. We tested hierarchical configurations of different network sizes, approximating the large-scale networks linking cortical columns in one hemisphere of the rat, cat, or macaque monkey brain. Scaling of the network size affected the number of hierarchical levels and modules in the optimal networks, also depending on whether global edge density or the numbers of connections per node were kept constant. For constant edge density, only few network configurations, possessing an intermediate number of levels and a large number of modules, led to a large range of LSA independent of brain size. For a constant number of node connections, there was a trend for optimal configurations in larger-size networks to possess a larger number of hierarchical levels or more modules. These results may help to explain the trend to greater network complexity apparent in larger brains and may indicate that this complexity is required for maintaining stable levels of neural activation.

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References
1.
Watts D, Strogatz S . Collective dynamics of 'small-world' networks. Nature. 1998; 393(6684):440-2. DOI: 10.1038/30918. View

2.
Haldeman C, Beggs J . Critical branching captures activity in living neural networks and maximizes the number of metastable States. Phys Rev Lett. 2005; 94(5):058101. DOI: 10.1103/PhysRevLett.94.058101. View

3.
Yu Y, Bultje R, Wang X, Shi S . Specific synapses develop preferentially among sister excitatory neurons in the neocortex. Nature. 2009; 458(7237):501-4. PMC: 2727717. DOI: 10.1038/nature07722. View

4.
Bertschinger N, Natschlager T . Real-time computation at the edge of chaos in recurrent neural networks. Neural Comput. 2004; 16(7):1413-36. DOI: 10.1162/089976604323057443. View

5.
Hilgetag C, Burns G, ONeill M, Scannell J, Young M . Anatomical connectivity defines the organization of clusters of cortical areas in the macaque monkey and the cat. Philos Trans R Soc Lond B Biol Sci. 2000; 355(1393):91-110. PMC: 1692723. DOI: 10.1098/rstb.2000.0551. View