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Modeling Long-term Spike Frequency Adaptation in SA-I Afferent Neurons Using an Izhikevich-based Biological Neuron Modelopen access

Authors
Kim, JaehunChoi, Young InSohn, Jeong-WooKim, Sung-PhilJung, Sung Jun
Issue Date
Jun-2023
Publisher
KOREAN SOC BRAIN & NEURAL SCIENCE
Keywords
Touch; Physiological adaptation; Afferent neuron; Neurological models; Computer simulation
Citation
EXPERIMENTAL NEUROBIOLOGY, v.32, no.3, pp.157 - 169
Indexed
SCIE
SCOPUS
KCI
Journal Title
EXPERIMENTAL NEUROBIOLOGY
Volume
32
Number
3
Start Page
157
End Page
169
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/191278
DOI
10.5607/en23005
ISSN
1226-2560
Abstract
To develop a biomimetic artificial tactile sensing system capable of detecting sustained mechanical touch, we propose a novel biological neuron model (BNM) for slowly adapting type I (SA-I) afferent neurons. The proposed BNM is designed by modifying the Izhikevich model to incorporate long-term spike frequency adaptation. Adjusting the parameters renders the Izhikevich model describing various neuronal firing patterns. We also search for optimal parameter values for the proposed BNM to describe firing patterns of biological SA-I afferent neurons in response to sustained pressure longer than 1-second. We obtain the firing data of SA-I afferent neurons for six different mechanical pressure ranging from 0.1 mN to 300 mN from the ex-vivo experiment on SA-I afferent neurons in rodents. Upon finding the optimal parameters, we generate spike trains using the proposed BNM and compare the resulting spike trains to those of biological SA-I afferent neurons using the spike distance metrics. We verify that the proposed BNM can generate spike trains showing long-term adaptation, which is not achievable by other conventional models. Our new model may offer an essential function to artificial tactile sensing technology to perceive sustained mechanical touch.
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