article
Undersampled Critical Branching Processes on Small-World and Random Networks Fail to Reproduce the Statistics of Spike Avalanches
Fecha
2014-04-21Registro en:
Ribeiro TL, Ribeiro S, Belchior H, Caixeta F, Copelli M (2014) Undersampled Critical Branching Processes on Small-World and Random Networks Fail to Reproduce the Statistics of Spike Avalanches. PLoS ONE 9(4): e94992. doi:10.1371/journal.pone.0094992
1932-6203
Autor
Ribeiro, Tiago
Ribeiro, Sidarta Tollendal Gomes
Belchior, Hindiael
Caixeta, Fábio
Copelli, Mauro
Resumen
The power-law size distributions obtained experimentally for neuronal avalanches are an important evidence of criticality in
the brain. This evidence is supported by the fact that a critical branching process exhibits the same exponent t~3=2.
Models at criticality have been employed to mimic avalanche propagation and explain the statistics observed
experimentally. However, a crucial aspect of neuronal recordings has been almost completely neglected in the models:
undersampling. While in a typical multielectrode array hundreds of neurons are recorded, in the same area of neuronal
tissue tens of thousands of neurons can be found. Here we investigate the consequences of undersampling in models with
three different topologies (two-dimensional, small-world and random network) and three different dynamical regimes
(subcritical, critical and supercritical). We found that undersampling modifies avalanche size distributions, extinguishing the
power laws observed in critical systems. Distributions from subcritical systems are also modified, but the shape of the
undersampled distributions is more similar to that of a fully sampled system. Undersampled supercritical systems can
recover the general characteristics of the fully sampled version, provided that enough neurons are measured.
Undersampling in two-dimensional and small-world networks leads to similar effects, while the random network is
insensitive to sampling density due to the lack of a well-defined neighborhood. We conjecture that neuronal avalanches
recorded from local field potentials avoid undersampling effects due to the nature of this signal, but the same does not hold
for spike avalanches. We conclude that undersampled branching-process-like models in these topologies fail to reproduce
the statistics of spike avalanches.