Is the cortex a scale-free network?

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In summary, it is known that the cortex is a scale-free network. This is supported by literature on the expansion of the brain from primates to humans, and by the integration taking place over so many scales.
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ektrules
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Is it known, or widely believed, that the cortex is a scale-free network? I.E. Do a large percentage of neurons have a small number of connections to other neurons, and do a small percentage of neurons have a large number of connections to other neurons?
 
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ektrules said:
Is it known, or widely believed, that the cortex is a scale-free network? I.E. Do a large percentage of neurons have a small number of connections to other neurons, and do a small percentage of neurons have a large number of connections to other neurons?

I certainly believe this is probable :biggrin:. And various arguments have been made along these lines.

There is the fact that integration takes place over so many scales, from the neuron, to the microcircuit, to the cortical column, to the cortical area, to the cortical lobe. It has the look of scale-free, powerlaw, connection. Though this can't be easily proven because there is always the question of whether structures like columns are "really there", or what we find because they are what we are looking for.

Another line of argument suggestive of scale-free structure is literature on the expansion of the brain from primates to humans. Structures like the prefrontal and striatum are argued to have been scaled up according to a simple powerlaw rather than because the higher areas have had preferential selection. So instead of prefrontal getting a special push in humans, it is just powerlaw larger as part of the whole brain being bigger.

I haven't kept track of recent developments in this area, but I am sure you will find many who would take the hypothesis seriously. Scalefree networks are another way of talking about nested hierarchical structure, and that was the normal way neurologists thought about brain organisation (unless they were cognitive phrenology types rather than dynamicists).

[edit: oh, on your particular point about neuron connections, I don't think it works out that way. Neurons generally all make similar numbers of connections for their class. But there are different classes of neurons, so for example the Purkinje cells of the cerebellum are massively connected compared to cortical pyramidal cells. But then every Purkinje cell has millions of synapses. And the reason relates to the particular job they have to do.

Where scale-free would show would be in the distance of each neurons connections more likely. Many local ones, and far fewer distant ones.

And then also in the various classes of neurons. So modulatory neurons like those producing dopamine in the substantia nigra would be at one extreme for the distances they cover across the brain. While other classes, like a hippocampal pyramidal cell, would only connect pretty locally.

Generally scalefree architecture is what we expect from systems that have self-organised complexity. So as a baseline view, it seems a good lens with which to approach the complex organisation of the brain.]
 
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ektrules said:
Do a large percentage of neurons have a small number of connections to other neurons, and do a small percentage of neurons have a large number of connections to other neurons?
It is http://www.plosbiology.org/article/info:doi/10.1371/journal.pbio.0030068" , but for some minor drawbacks (hard to tell appart synaptic strenght from number of synaptic buttons, data unavailable for long range connection).
atyy said:
Some references:
Interesting indeed, but that's about the activity, not the distribution of the synapse. In fact, it seems that the guys working on these topics find hard to understand how a power law activity makes it with a power law for the synaptic distribution (don't ask why, I don't understand why it should be a problem).
 
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  • #5
I _think_ so.
I developed a model of cortical connections in conjunction with a colleague in the Queen's University Math Dept [Norman J. Pullman, since deceased] in the early 1960's. He said, you know, this network has a property that it looks about the same at different scales--do you think it's worth following up?
Well, we didn't know from scale-free networks then. My main interest was considering plasticity in the adult brain.
Nah, I said.
I took a very long time publishing it.
Jacobson, J.Z., Pullman, N.J., & Treurniet, W. The Cell Assembly MK-III. Transitions between brain states and the localization and generalization of function. International Journal of Neuroscience, 2002, vol 112 (3) 277-290.
 

1. What is a scale-free network?

A scale-free network is a type of network in which the distribution of connections follows a power law, meaning that a few nodes have a large number of connections while most nodes have relatively few connections. This type of network is characterized by highly connected hubs and is often found in complex systems such as the internet, social networks, and biological networks.

2. Is the cortex a scale-free network?

There is ongoing debate and research on whether the cortex, the outer layer of the brain responsible for higher cognitive functions, follows a scale-free network structure. Some studies have found evidence for scale-free characteristics in certain regions of the cortex, while others have found more random or modular structures. More research is needed to fully understand the network structure of the cortex.

3. What are the implications if the cortex is a scale-free network?

If the cortex does exhibit characteristics of a scale-free network, it could have significant implications for our understanding of brain connectivity and function. It could help explain how the brain is able to process complex information and perform sophisticated tasks. It could also have implications for diagnosing and treating neurological disorders.

4. How can we determine if the cortex is a scale-free network?

There are various methods used to analyze and measure the structure of networks, including the cortex. These include degree distribution analysis, modularity analysis, and small-worldness analysis. By applying these methods to brain imaging data, researchers can determine if the cortex follows a scale-free network structure.

5. Can we apply the concept of scale-free networks to other biological systems?

Yes, the concept of scale-free networks has been applied to various biological systems, including gene networks, protein interaction networks, and ecological networks. This approach has helped us better understand the structure and function of these systems and how they respond to changes and disruptions.

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