Literature DB >> 29631506

Formulation and Implementation of Nonlinear Integral Equations to Model Neural Dynamics Within the Vertebrate Retina.

Jason K Eshraghian1, Seungbum Baek2, Jun-Ho Kim2, Nicolangelo Iannella3, Kyoungrok Cho2, Yong Sook Goo4, Herbert H C Iu1, Sung-Mo Kang5, Kamran Eshraghian6.   

Abstract

Existing computational models of the retina often compromise between the biophysical accuracy and a hardware-adaptable methodology of implementation. When compared to the current modes of vision restoration, algorithmic models often contain a greater correlation between stimuli and the affected neural network, but lack physical hardware practicality. Thus, if the present processing methods are adapted to complement very-large-scale circuit design techniques, it is anticipated that it will engender a more feasible approach to the physical construction of the artificial retina. The computational model presented in this research serves to provide a fast and accurate predictive model of the retina, a deeper understanding of neural responses to visual stimulation, and an architecture that can realistically be transformed into a hardware device. Traditionally, implicit (or semi-implicit) ordinary differential equations (OES) have been used for optimal speed and accuracy. We present a novel approach that requires the effective integration of different dynamical time scales within a unified framework of neural responses, where the rod, cone, amacrine, bipolar, and ganglion cells correspond to the implemented pathways. Furthermore, we show that adopting numerical integration can both accelerate retinal pathway simulations by more than 50% when compared with traditional ODE solvers in some cases, and prove to be a more realizable solution for the hardware implementation of predictive retinal models.

Keywords:  Artificial retina; numerical methods; simulation of vertebrate retina

Mesh:

Year:  2018        PMID: 29631506     DOI: 10.1142/S0129065718500041

Source DB:  PubMed          Journal:  Int J Neural Syst        ISSN: 0129-0657            Impact factor:   5.866


  1 in total

1.  Directional Preference in Avian Midbrain Saliency Computing Nucleus Reflects a Well-Designed Receptive Field Structure.

Authors:  Jiangtao Wang; Longlong Qian; Songwei Wang; Li Shi; Zhizhong Wang
Journal:  Animals (Basel)       Date:  2022-04-28       Impact factor: 3.231

  1 in total

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