Neurometric function

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In neuroscience, a neurometric function is a mathematical formula relating the activity of brain cells to aspects of an animal's sensory experience or motor behavior. Neurometric functions provide a quantitative summary of the neural code of a particular brain region.

In sensory neuroscience, neurometric functions measure the probability with which a sensory stimulus would be perceived based on decoding the activity of a given neuron or collection of neurons.

The concept was introduced to investigate the visibility of visual stimuli, by applying Detection theory to the output of single neurons of visual cortex.[1]

Comparing neurometric functions to psychometric functions (by recording from neurons in the brain of the observer) can reveal whether the neural representation in the recorded region constrains perceptual accuracy.[2][3]

In motor neuroscience, neurometric functions are used to predict body movements from the activity of neuronal populations in regions such as motor cortex. Such neurometric functions are used in the design of brain–computer interfaces.

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  1. ^ Tolhurst, D.J.; Movshon, J.A.; Dean, A.F. (January 1983). "The statistical reliability of signals in single neurons in cat and monkey visual cortex". Vision Research. 23 (8): 775–785. doi:10.1016/0042-6989(83)90200-6. PMID 6623937. S2CID 28977860.
  2. ^ Newsome, W. T.; Britten, K. H.; Movshon, J. A. (1989-09-07). "Neuronal correlates of a perceptual decision". Nature. 341 (6237): 52–54. Bibcode:1989Natur.341...52N. doi:10.1038/341052a0. ISSN 0028-0836. PMID 2770878. S2CID 3216175.
  3. ^ Parker, A. J.; Newsome, W. T. (1998). "SENSE AND THE SINGLE NEURON: Probing the Physiology of Perception". Annual Review of Neuroscience. 21 (1): 227–277. doi:10.1146/annurev.neuro.21.1.227. PMID 9530497.