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Transcript
Rikhye and Slotine BMC Neuroscience 2013, 14(Suppl 1):P366
http://www.biomedcentral.com/1471-2202/14/S1/P366
POSTER PRESENTATION
Open Access
The effect of neural synchronization on
information transmission
Rajeev V Rikhye1*, Jean-Jacques E Slotine1,2
From Twenty Second Annual Computational Neuroscience Meeting: CNS*2013
Paris, France. 13-18 July 2013
Networks in the neocortex serve an important purpose of
extracting information from sensory inputs. One appealing
theory is the efficient coding hypothesis, which postulates
that information about a stimulus is maximized when
redundancy between neurons is reduced [1]. This gives
rise to the notion of a sparse population code where only
neurons that are highly selective to certain stimulus
features respond. However, sparse codes are highly sensitivity to noise. An alternative strategy is to use a synchronized code, which is robust to noise but reduces the
representational capacity of the network [2,3]. Hence, it is
only logical to ask what level of redundancy between neurons maximizes the amount of information contained in a
population code.
In this study, we investigated how the collective
dynamics of a population of neurons represent stimulusspecific information. Our aim was to investigate (1) the
conditions required for a network to synchronize and (2)
the amount of information contained in a synchronized
rate code. By applying nonlinear contraction analysis on a
recurrent network with time varying inputs, we found that
the degree of synchronization depended critically on the
gain of the feedforward projection. Our analysis showed
that changing the feedforward gain exploits different symmetries in the network, resulting in different patterns of
synchrony and different population codes. We hypothesized that the coding strategy can by optimized by altering
this synaptic gain.
We tested this prediction computationally using a twolayered network. The receiver layer was a balanced recurrent network of 5000 integrate-and-fire neurons. Input to
the network was provided by a population of “visually
responsive” neurons, which was modeled using a linear* Correspondence: [email protected]
1
Department of Brain and Cognitive Sciences, Massachusetts Institute of
Technology, Cambridge, MA 02139, USA
Full list of author information is available at the end of the article
nonlinear Poisson (LNP) cascade. The LNP neurons were
tuned to 16 orientations and projected nonspecifically to
20% of the neurons in the receiver layer. We assumed that
the stimulus was a sequence of drifting gratings with random orientations. In response to stimuli, the network displayed transiently synchronized responses. Because
similarly tuned LNP neurons projected to different subsets
of neurons, the pattern of network activity was different for
each stimulus sequence. By gradually modifying the feedforward gain, we were able to alter this pattern of stimulus-specific synchronization, confirming the results from
our mathematical analysis. In the high gain condition, neurons became redundant and responded to all stimuli. However, when gain was low, only sparse subsets of neurons
were activated by different stimuli. Finally, we used an optimal linear decoder to measure of how well the network
encoded the stimuli. We found that classification accuracy
varied as a function of the degree of synchronization
between neurons. Classification accuracy was highest when
approximately 15% of the neurons responded concurrently
to the stimulus. In both densely synchronized and sparse
codes, the decoder performed below chance.
Our results show that stimulus-specific information is
maximized only when small ensembles of neurons are synchronized. Our finding that stimulus-dependent synchronization is controlled by the gain of feedforward synapses
is unique as it suggests that mechanisms which alter
synaptic gain such as attention can alter the coding strategy employed by the neocortex.
Author details
1
Department of Brain and Cognitive Sciences, Massachusetts Institute of
Technology, Cambridge, MA 02139, USA. 2Nonlinear Systems Laboratory,
Department of Mechanical Engineering, Massachusetts Institute of
Technology, Cambridge, MA 02139, USA.
Published: 8 July 2013
© 2013 Rikhye and Slotine; licensee BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative
Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and
reproduction in any medium, provided the original work is properly cited.
Rikhye and Slotine BMC Neuroscience 2013, 14(Suppl 1):P366
http://www.biomedcentral.com/1471-2202/14/S1/P366
Page 2 of 2
References
1. Barlow HB: Possible principles underlying the transformation of sensory
messages. In Sensory Communication. Cambridge, MA, MIT Press;Rosenblith
WA 217-234.
2. Schneidman E, Bialek W, Berry MJ: Synergy, Redundancy and
Independence in population codes. J Neurosci 2003, 23(37):11539-11553.
3. Tabareau N, Slotine J-J, Pham Q-C: How synchronization protects from
noise. PLoS Comput Biol 2010, 6(1):e1000637.
doi:10.1186/1471-2202-14-S1-P366
Cite this article as: Rikhye and Slotine: The effect of neural
synchronization on information transmission. BMC Neuroscience 2013 14
(Suppl 1):P366.
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