Please use this identifier to cite or link to this item: https://doi.org/10.1155/2010/648202
Title: Ensemble fractional sensitivity: A quantitative approach to neuron selection for decoding motor tasks
Authors: Singhal, G
Aggarwal, V
Acharya, S
Aguayo, J
He, J
Thakor, N 
Keywords: Decoding algorithm
Firing rates
Identification accuracy
Input space
Model based approach
Motor tasks
Neuron selection
Noisy neuron
Optimal number
Quantitative approach
Random subsets
Reach to grasp
Relative contribution
Rhesus monkey
Robust methods
Training data
Training data sets
Computer simulation
Neurons
Sensitivity analysis
Decoding
action potential
algorithm
animal
article
artificial neural network
computer simulation
frontal lobe
hand
Macaca
male
Monte Carlo method
motor activity
motor cortex
nerve cell
nonlinear system
physiology
signal processing
wrist
Action Potentials
Algorithms
Animals
Computer Simulation
Frontal Lobe
Hand
Macaca mulatta
Male
Monte Carlo Method
Motor Activity
Motor Cortex
Neural Networks (Computer)
Neurons
Nonlinear Dynamics
Signal Processing, Computer-Assisted
Wrist
Issue Date: 2010
Publisher: Hindawi
Citation: Singhal, G, Aggarwal, V, Acharya, S, Aguayo, J, He, J, Thakor, N (2010). Ensemble fractional sensitivity: A quantitative approach to neuron selection for decoding motor tasks. Computational Intelligence and Neuroscience 2010 : 648202. ScholarBank@NUS Repository. https://doi.org/10.1155/2010/648202
Rights: Attribution 4.0 International
Abstract: A robust method to help identify the population of neurons used for decoding motor tasks is developed. We use sensitivity analysis to develop a new metric for quantifying the relative contribution of a neuron towards the decoded output, called fractional sensitivity. Previous model-based approaches for neuron ranking have been shown to largely depend on the collection of training data. We suggest the use of an ensemble of models that are trained on random subsets of trials to rank neurons. For this work, we tested a decoding algorithm on neuronal data recorded from two male rhesus monkeys while they performed a reach to grasp a bar at three orientations (45°, 90°, or 135°). An ensemble approach led to a statistically significant increase of 5% in decoding accuracy and 25% increase in identification accuracy of simulated noisy neurons, when compared to a single model. Furthermore, ranking neurons based on the ensemble fractional sensitivities resulted in decoding accuracies 10-20% greater than when randomly selecting neurons or ranking based on firing rates alone. By systematically reducing the size of the input space, we determine the optimal number of neurons needed for decoding the motor output. This selection approach has practical benefits for other BMI applications where limited number of electrodes and training datasets are available, but high decoding accuracies are desirable. Copyright © 2010 Girish Singhal et al.
Source Title: Computational Intelligence and Neuroscience
URI: https://scholarbank.nus.edu.sg/handle/10635/178201
ISSN: 1687-5265
DOI: 10.1155/2010/648202
Rights: Attribution 4.0 International
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