Short-Term Facilitation may Stabilize Parametric Working Memory Trace

Networks with continuous set of attractors are considered to be a paradigmatic model for parametric working memory (WM), but require fine tuning of connections and are thus structurally unstable. Here we analyzed the network with ring attractor, where connections are not perfectly tuned and the activity state therefore drifts in the absence of the stabilizing stimulus. We derive an analytical expression for the drift dynamics and conclude that the network cannot function as WM for a period of several seconds, a typical delay time in monkey memory experiments. We propose that short-term synaptic facilitation in recurrent connections significantly improves the robustness of the model by slowing down the drift of activity bump. Extending the calculation of the drift velocity to network with synaptic facilitation, we conclude that facilitation can slow down the drift by a large factor, rendering the network suitable as a model of WM.

[1]  H. Sompolinsky,et al.  Theory of orientation tuning in visual cortex. , 1995, Proceedings of the National Academy of Sciences of the United States of America.

[2]  Terrence J. Sejnowski,et al.  ASSOCIATIVE MEMORY AND HIPPOCAMPAL PLACE CELLS , 1995 .

[3]  J. Penney,et al.  Expression of N‐Methyl‐D‐Aspartate receptor subunit mRNAs in the human brain: Hippocampus and cortex , 1998, The Journal of comparative neurology.

[4]  Xiao-Jing Wang Synaptic reverberation underlying mnemonic persistent activity , 2001, Trends in Neurosciences.

[5]  Christos Constantinidis,et al.  A Neural Circuit Basis for Spatial Working Memory , 2004, The Neuroscientist : a review journal bringing neurobiology, neurology and psychiatry.

[6]  M. A. Steinmetz,et al.  Neuronal responses in area 7a to multiple stimulus displays: II. responses are suppressed at the cued location. , 2001, Cerebral cortex.

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

[8]  S. Nelson,et al.  The NMDA-to-AMPA ratio at synapses onto layer 2/3 pyramidal neurons is conserved across prefrontal and visual cortices. , 2003, Journal of neurophysiology.

[9]  H. Spinnler The prefrontal cortex, Anatomy, physiology, and neuropsychology of the frontal lobe, J.M. Fuster. Raven Press, New York (1980), IX-222 pages , 1981 .

[10]  Misha Tsodyks,et al.  Persistent Activity in Neural Networks with Dynamic Synapses , 2007, PLoS Comput. Biol..

[11]  Oren Shriki,et al.  Rate Models for Conductance-Based Cortical Neuronal Networks , 2003, Neural Computation.

[12]  R. Romo,et al.  Neuronal correlates of decision-making in secondary somatosensory cortex , 2002, Nature Neuroscience.

[13]  Idan Segev,et al.  Methods in Neuronal Modeling , 1988 .

[14]  M. D’Esposito Working memory. , 2008, Handbook of clinical neurology.

[15]  M. A. Steinmetz,et al.  Neuronal responses in area 7a to multiple-stimulus displays: I. neurons encode the location of the salient stimulus. , 2001, Cerebral cortex.

[16]  Daniel J. Amit,et al.  Paradigmatic Working Memory (Attractor) Cell in IT Cortex , 1997, Neural Computation.

[17]  Y. Miyashita,et al.  Neuronal correlate of pictorial short-term memory in the primate temporal cortexYasushi Miyashita , 1988, Nature.

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

[19]  G. E. Alexander,et al.  Neuron Activity Related to Short-Term Memory , 1971, Science.

[20]  J. Knott The organization of behavior: A neuropsychological theory , 1951 .

[21]  Daniel J. Amit,et al.  Modeling brain function: the world of attractor neural networks, 1st Edition , 1989 .

[22]  Xiao-Jing Wang,et al.  Robust Spatial Working Memory through Homeostatic Synaptic Scaling in Heterogeneous Cortical Networks , 2003, Neuron.

[23]  P. Goldman-Rakic,et al.  Visuospatial coding in primate prefrontal neurons revealed by oculomotor paradigms. , 1990, Journal of neurophysiology.

[24]  S. Amari Dynamics of pattern formation in lateral-inhibition type neural fields , 1977, Biological Cybernetics.

[25]  P. Goldman-Rakic,et al.  Mnemonic coding of visual space in the monkey's dorsolateral prefrontal cortex. , 1989, Journal of neurophysiology.

[26]  K. Zhang,et al.  Representation of spatial orientation by the intrinsic dynamics of the head-direction cell ensemble: a theory , 1996, The Journal of neuroscience : the official journal of the Society for Neuroscience.

[27]  Y Agid,et al.  Temporal limits of spatial working memory in humans , 1998, The European journal of neuroscience.

[28]  J. Fuster The Prefrontal Cortex , 1997 .

[29]  H. Sompolinsky,et al.  13 Modeling Feature Selectivity in Local Cortical Circuits , 2022 .

[30]  R. Romo,et al.  Neuronal correlates of parametric working memory in the prefrontal cortex , 1999, Nature.

[31]  Daniel D. Lee,et al.  Stability of the Memory of Eye Position in a Recurrent Network of Conductance-Based Model Neurons , 2000, Neuron.

[32]  Misha Tsodyks,et al.  From , 2020, Definitions.

[33]  David L. Sparks,et al.  Saccades to remembered target locations: an analysis of systematic and variable errors , 1994, Vision Research.

[34]  J J Hopfield,et al.  Neurons with graded response have collective computational properties like those of two-state neurons. , 1984, Proceedings of the National Academy of Sciences of the United States of America.

[35]  A. Koulakov,et al.  Model for a robust neural integrator , 2002, Nature Neuroscience.

[36]  H. Sebastian Seung,et al.  Learning Continuous Attractors in Recurrent Networks , 1997, NIPS.