2022
DOI: 10.1038/s41598-022-18267-9
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Fitting of TC model according to key parameters affecting Parkinson's state based on improved particle swarm optimization algorithm

Abstract: Biophysical models contain a large number of parameters, while the spiking characteristics of neurons are related to a few key parameters. For thalamic neurons, relay reliability is an important characteristic that affects Parkinson's state. This paper proposes a method to fit key parameters of the model based on the spiking characteristics of neurons, and improves the traditional particle swarm optimization algorithm. That is, a nonlinear concave function and a Logistic chaotic mapping are combined to adjust … Show more

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