Neuronal noise

neuron noise
This shows how noise affects the transmission of signals when non-spiking neurons are propagating the signal.

Neuronal noise or neural noise refers to the random intrinsic electrical fluctuations within neuronal networks. These fluctuations are not associated with encoding a response to internal or external stimuli and can be from one to two orders of magnitude.[1] Most noise commonly occurs below a voltage-threshold that is needed for an action potential to occur, but sometimes it can be present in the form of an action potential; for example, stochastic oscillations in pacemaker neurons in suprachiasmatic nucleus are partially responsible for the organization of circadian rhythms.[2][3]

Background

Neuronal activity at the microscopic level has a stochastic character, with atomic collisions and agitation, that may be termed "noise."[4] While it isn't clear on what theoretical basis neuronal responses involved in perceptual processes can be segregated into a "neuronal noise" versus a "signal" component, and how such a proposed dichotomy could be corroborated empirically, a number of computational models incorporating a "noise" term have been constructed.

Single neurons demonstrate different responses to specific neuronal input signals. This is commonly referred to as neural response variability. If a specific input signal is initiated in the dendrites of a neuron, then a hypervariability exists in the number of vesicles released from the axon terminal fiber into the synapse.[5] This characteristic is true for fibers without neural input signals, such as pacemaker neurons, as mentioned previously,[2] and cortical pyramidal neurons that have highly-irregular firing pattern.[6] Noise generally hinders neural performance, but recent studies show, in dynamical non-linear neural networks, this statement does not always hold true. Non-linear neural networks are a network of complex neurons that have many connections with one another such as the neuronal systems found within our brains. Comparatively, linear networks are an experimental view of analyzing a neural system by placing neurons in series with each other.

Initially, noise in complex computer circuit or neural circuits is thought to slow down[7] and negatively affect the processing power. However, current research suggests that neuronal noise is beneficial to non-linear or complex neural networks up until optimal value.[8] A theory by Anderson and colleagues supports that neural noise is beneficial. Their theory suggests that noise produced in the visual cortex helps linearize or smooth the threshold of action potentials.[9]

Another theory suggests that stochastic noise in a non-linear network shows a positive relationship between the interconnectivity and noise-like activity.[10] Thus based on this theory, Patrick Wilken and colleagues suggest that neuronal noise is the principal factor that limits the capacity of visual short-term memory. Investigators of neural ensembles and those who especially support the theory of distributed processing, propose that large neuronal populations effectively decrease noise by averaging out the noise in individual neurons. Some investigators have shown in experiments and in models that neuronal noise is a possible mechanism to facilitate neuronal processing.[11][12] The presence of neuronal noise (or more specifically synaptic noise) confers to neurons more sensitivity to a broader range of inputs, it can equalize the efficacy of synaptic inputs located at different positions on the neuron, and it can also enable finer temporal discrimination.[13] There are many theories of why noise is apparent in the neuronal networks, but many neurologists are unclear of why they exist.

More generally, two types of impacts of neuronal noise can be distinguished: it will either add variability to the neural response, or more interestingly enable noise – induced dynamical phenomena which would not have been observed in a noise-free system. For instance, channel noise has been shown to induce oscillations in the stochastic Hodgkin-Huxley model.[14]

Types

Sources

Noise present in neural system gives rise to the variability in the non-linear dynamical systems, but a black box still exists for the mechanism in which noise affects neural signal conduction. Instead, research has focused more on the sources of the noise present in dynamic neural networks. Several sources of response variability exist for neurons and neural networks:[17]

Recording methods

Global recording

The external noise paradigm assumes "neural noise" and speculates that external noise should multiplicatively increase the amount of internal noise in the central nervous system. It is not clear how "neural noise" is theoretically distinguished from "neural signal." Proponents of this paradigm believe that adding visual or auditory external noise to a stimuli, and measure how it affects reaction time or the subject's performance. If performance is more inconsistent than without the noise, the subject is said to have "internal noise." As in the case of "internal noise," it is not clear on what theoretical grounds researchers distinguish "external noise" from "external signal" in terms of the perceptual response of the viewer, which is a response to the stimulus as a whole.

Local recording

Local recording has contributed a lot to discovering many of the new sources of ion channel noise.

See also

References

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  2. 1 2 Ko, C. H. (2010). "Emergence of Noise-Induced Oscillations in the Central Circadian Pacemaker". PLOS Biology. 8 (10): e1000513. PMC 2953532Freely accessible. PMID 20967239. doi:10.1371/journal.pbio.1000513.
  3. Mazzoni, E. O. (2005). "Circadian Pacemaker Neurons Transmit and Modulate Visual Information to Control a Rapid Behavioral Response". Neuron. 45 (2): 293–300. PMID 15664180. doi:10.1016/j.neuron.2004.12.038.
  4. 1 2 Destexhe, A. (2012). Neuronal noise. New York: Springer.
  5. Stein, R. B. (2005). "Neuronal variability: noise or part of the signal?". Nature Reviews Neuroscience. 6 (5): 389–397. PMID 15861181. doi:10.1038/nrn1668.
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  9. Anderson, J. S. (2000). "The contribution of noise to contrast invariance of orientation tuning in cat visual cortex". Science. 290 (5498): 1968–1972. Bibcode:2000Sci...290.1968A. PMID 11110664. doi:10.1126/science.290.5498.1968.
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  11. Mysterious 'Neural Noise' Primes Brain for Peak Performance. rochester.edu (November 10, 2006)
  12. Ma, B. (2006). "Bayesian inference with probabilistic population codes" (PDF). Nature Neuroscience. 9 (11): 1432–1438. PMID 17057707. doi:10.1038/nn1790.
  13. See the "High-conductance state" article in Scholarpedia.
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  20. 1 2 Lauger, P. (1984). "Current noise generated by electrogenic ion pumps". Eur Biophys J. 11 (2): 117–128. PMID 6100543.
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