Neural Field Model of Receptive Field Restructuring in Primary Visual Cortex

  • Authors:
  • Katrin Suder;Florentin Wörgötter;Thomas Wennekers

  • Affiliations:
  • Institute of Physiology, Department of Neurophysiology, Ruhr-University, D-44780 Bochum, Germany;Institute of Physiology, Department of Neurophysiology, Ruhr-University, D-44780 Bochum, Germany;Max-Planck-Institute for Mathematics in the Sciences, D-04103 Leipzig, Germany

  • Venue:
  • Neural Computation
  • Year:
  • 2001

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Abstract

Receptive fields (RF) in the visual cortex can change their size depending on the state of the individual. This reflects a changing visual resolution according to different demands on information processing during drowsiness. So far, however, the possible mechanisms that underlie these size changes have not been tested rigorously. Only qualitatively has it been suggested that state-dependent lateral geniculate nucleus (LGN) firing patterns (burst versus tonic firing) are mainly responsible for the observed cortical receptive field restructuring. Here, we employ a neural field approach to describe the changes of cortical RF properties analytically. Expressions to describe the spatiotemporal receptive fields are given for pure feedforward networks. The model predicts that visual latencies increase nonlinearly with the distance of the stimulus location from the RF center. RF restructuring effects are faithfully reproduced. Despite the changing RF sizes, the model demonstrates that the width of the spatial membrane potential profile (as measured by the variance σ of a gaussian) remains constant in cortex. In contrast, it is shown for recurrent networks that both the RF width and the width of the membrane potential profile generically depend on time and can even increase if lateral cortical excitatory connections extend further than fibers from LGN to cortex. In order to differentiate between a feedforward and a recurrent mechanism causing the experimental RF changes, we fitted the data to the analytically derived point-spread functions. Results of the fits provide estimates for model parameters consistent with the literature data and support the hypothesis that the observed RF sharpening is indeed mainly driven by input from LGN, not by recurrent intracortical connections.