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Table 8 Performance comparison with other state-of-the-art SNN models

From: A robust Parkinson’s disease detection model based on time-varying synaptic efficacy function in spiking neural network

Reference and Year

Dataset Used

Model/Algorithm Used

Accuracy (in %)

López-Vázquez et al. [36], 2019

UCI Machine Learning Repository for PD

Grammatical Evolution (GE)-based SNN

88.75%

Kerman et al. [37], 2022

Spike data collected from different regions of Brain

Spiking MLP

93%

Siddique et al. [38], 2023

Spike data from the neurons in the subthalamic nucleus region

Spiking LSTM

99.48%

Proposed model [Dataset#1]

UCI Machine Learning Repository for PD [51]

Time-varying Synaptic Efficacy Function based SNN (SEFRON)

100%

Proposed model [Dataset#2]

UCI Machine Learning Repository: Parkinson Dataset with replicated acoustic features [52]

Time-varying Synaptic Efficacy Function based SNN (SEFRON)

91.94%