Dynamical information encoding in neural adaptation

Adaptation refers to the general phenomenon that a neural system dynamically adjusts its response property according to the statistics of external inputs. In response to a prolonged constant stimulation, neuronal firing rates always first increase dramatically at the onset of the stimulation; and afterwards, they decrease rapidly to a low level close to background activity. This attenuation of neural activity seems to be contradictory to our experience that we can still sense the stimulus after the neural system is adapted. Thus, it prompts a question: where is the stimulus information encoded during the adaptation? Here, we investigate a computational model in which the neural system employs a dynamical encoding strategy during the neural adaptation: at the early stage of the adaptation, the stimulus information is mainly encoded in the strong independent firings; and as time goes on, the information is shifted into the weak but concerted responses of neurons. We find that short-term plasticity, a general feature of synapses, provides a natural mechanism to achieve this goal. Furthermore, we demonstrate that with balanced excitatory and inhibitory inputs, this correlation-based information can be read out efficiently. The implications of this study on our understanding of neural information encoding are discussed.

[1]  A. Fairhall,et al.  Shifts in Coding Properties and Maintenance of Information Transmission during Adaptation in Barrel Cortex , 2007, PLoS biology.

[2]  B. Sakmann,et al.  Cortex Is Driven by Weak but Synchronously Active Thalamocortical Synapses , 2006, Science.

[3]  Andreas V. M. Herz,et al.  A Universal Model for Spike-Frequency Adaptation , 2003, Neural Computation.

[4]  W. Newsome,et al.  The Variable Discharge of Cortical Neurons: Implications for Connectivity, Computation, and Information Coding , 1998, The Journal of Neuroscience.

[5]  M. Tsodyks,et al.  Synaptic Theory of Working Memory , 2008, Science.

[6]  A. Fairhall,et al.  Sensory adaptation , 2007, Current Opinion in Neurobiology.

[7]  Daeyeol Lee,et al.  Coding and transmission of information by neural ensembles , 2004, Trends in Neurosciences.

[8]  Wulfram Gerstner,et al.  Adaptive exponential integrate-and-fire model as an effective description of neuronal activity. , 2005, Journal of neurophysiology.

[9]  D. McCormick,et al.  Turning on and off recurrent balanced cortical activity , 2003, Nature.

[10]  R. Christopher deCharms,et al.  Primary cortical representation of sounds by the coordination of action-potential timing , 1996, Nature.

[11]  H. Markram,et al.  Differential signaling via the same axon of neocortical pyramidal neurons. , 1998, Proceedings of the National Academy of Sciences of the United States of America.

[12]  Stefano Panzeri,et al.  Information-theoretic methods for studying population codes , 2010, Neural Networks.

[13]  S. Nirenberg,et al.  Determining the role of correlated firing in large populations of neurons using white noise and natural scene stimuli , 2012, Vision Research.

[14]  Thomas K. Berger,et al.  Heterogeneity in the pyramidal network of the medial prefrontal cortex , 2006, Nature Neuroscience.