fbpx
Wikipedia

Neuronal noise

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]

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

Background edit

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 enable noise-induced dynamical phenomena which cannot be observed in a noise-free system. For instance, channel noise has been shown to induce oscillations in the stochastic Hodgkin-Huxley model.[14]

Types edit

  • Ions exist inside and outside of the neuron and are subject to many bodily conditions. One major source of noise arises from ions or molecules in response to the third law of thermodynamics. This law states that the entropy of a system approaches a constant value as the temperature approaches zero. Since the body maintains temperatures above 0K, the molecules are subjected to increased kinetic energy, or motion. The stochastic, or random, movements give rise to receptor noise produced by the constant bombardment of ions, as described by Brownian motion. Ions are constantly being leaked across the membrane in efforts to equalize the ionic gradient produced by ATPase channels embedded in the membrane. These leaky channels permit the movement of ions across the membrane leading to small fluctuations, or noise, in the membrane potential.[15]
  • Synapses are another major source of neural noise. More than often, there is random exocytosis of vesicles containing neurotransmitters, which eventually bind to the postsynaptic membrane, leading to a spontaneous action potential by graded potentials in the postsynaptic neuron.[16] It is considered the largest-amplitude noise source in the cerebral cortex.[4]

Sources edit

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]

  • Thermal noise: Johnson–Nyquist noise occurs due to the thermal motions of ions and other charge carriers, producing voltage fluctuations proportional to temperature. This source of noise is attributed to the third law of thermodynamics, stating that kinetic energy of molecules increases with a raise in temperature. Thermal noise is the weakest source of noise and can be considered negligible.[18]
  • Ionic conductance noise: Ion channels in the membrane undergo spontaneous changes in conformation between different states and can open (or close) due to thermal fluctuations. The transmembrane embedded protein channels are made up of small subunits that undergo conformational changes and are affected by thermal fluctuations. When temperature drops below 33 °C, the rate at which the channel becomes active or inactive decreases. In contrast when the temperature is increased above 33 °C, the rate at which the channel becomes active or inactive increases.[19]
  • Ion pump noise: Membrane embedded ATPase ion pumps produce fluctuating potentials by transporting ions against their concentration gradient. The multistep process in which ions are transported across their gradient requires ATP.[20] The steps involved in active transport have a net forward direction, but small stochastic steps still exist in the conformational process that move backwards.[20] These backward steps contribute to neuronal noise present in all dynamic neuronal circuits.
  • Ion channel shot noise: The number of ions that migrate through an open ion channel are discrete and random.[21] In synapses, the number of calcium ions that enter the postsynaptic side after a spike is on the order of 250 ions,[17] potentially making potentiation processes noisy. This noise is also associated with thermal fluctuations affecting the protein channels, as previously mentioned. This is not to be confused with shot noise, which is noise produced by the random generation of action potentials in neurons.
  • Synaptic release noise: Generally, action potentials are transferred down a neuron, which then are converted to either electrical or chemical signals between neurons. Chemical synapses are not deterministic, which means that every action potential produced does not result in the release of neurotransmitters. Rather, the release of vesicles containing neurotransmitters are probabilistic in nature. The number of vesicles released by a single synapse is random in response to a specific input signal and is further influenced by the firing history of the pre- and post-synaptic neurons. This means that neurotransmitters can be released in the absence of an input signal.[17]
  • Synaptic bombardment: The large number of incoming spikes add a fluctuating amount of charge to the cell, which depends on the structure of the incoming spike trains and affects the cell's excitability.[22]
  • Chaos: Chaotic dynamics can occur in single cells (due to periodic inputs or bursting due to intrinsic currents).[23] Simple networks of neurons can also exhibit chaotic dynamics.[24] Even if the chaos is deterministic, it can amplify noise from the other sources to macroscopic levels due to sensitive dependence on initial conditions.
  • Connectivity noise: Noise that arises from the number of connections and non-uniformity that a neuron has with other neurons within a neuronal network. There is a stronger presence of sub-threshold noise when the interconnectivity is strengthened, or the number of connection to other neurons is increased.[10] The opposite remains true, too. If the interconnectivity of the neurons is decreased so then is the level of sub-threshold noise.
  • Environmental stimuli: Noise can be produced on a larger scale due to fluctuations in CO2, which lead to variations in blood flow.[25] The level of CO2 in the blood allows for either vasoconstriction or vasodilation, which can encroach, or expand, into nearby neural networks producing noise.

Recording methods edit

Global recording edit

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.

  • Electroencephalogram or EEG can be used to measure the brain since the signal-to-noise ratio is poor, so noise produced by the brain can be detected in vivo.
  • Local field potentials can be used to test the noise present in large neuronal networks. This measure of voltage can be used to determine the interconnectivity by the level of noise.[10]

Local recording edit

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

  • Patch clamp technique was crucial to determine shot noise because the use of intercellular recording was not able to show the movement or detection of the few ions escaping at a time.

See also edit

References edit

  1. ^ Jacobson, G. A. (2005). "Subthreshold voltage noise of rat neocortical pyramidal neurones". J Physiol. 564 (Pt 1): 145–160. doi:10.1113/jphysiol.2004.080903. PMC 1456039. PMID 15695244.
  2. ^ a b Ko, C. H. (2010). "Emergence of Noise-Induced Oscillations in the Central Circadian Pacemaker". PLOS Biology. 8 (10): e1000513. doi:10.1371/journal.pbio.1000513. PMC 2953532. PMID 20967239.
  3. ^ Mazzoni, E. O. (2005). "Circadian Pacemaker Neurons Transmit and Modulate Visual Information to Control a Rapid Behavioral Response". Neuron. 45 (2): 293–300. doi:10.1016/j.neuron.2004.12.038. PMID 15664180. S2CID 9568853.
  4. ^ a b 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. doi:10.1038/nrn1668. PMID 15861181. S2CID 205500218.
  6. ^ Softky, W. R.; Koch, C. (1993). "The highly irregular firing of cortical cells is inconsistent with temporal integration of random EPSPs" (PDF). J Neurosci. 13 (1): 334–350. doi:10.1523/JNEUROSCI.13-01-00334.1993. PMC 6576320. PMID 8423479.
  7. ^ McDonnell, Mark D. (2011). "The Benefits Of Noise In Neural Systems: Bridging Theory And Experiment". Nature Reviews Neuroscience. 12 (7): 415–426. doi:10.1038/nrn3061. PMID 21685932. S2CID 1699918.
  8. ^ Parnas, B. R. (1996). "Noise and neuronal populations conspire to encode simple waveforms reliably". IEEE Trans Biomed Eng. 43 (3): 313–318. doi:10.1109/10.486289. PMID 8682544. S2CID 8594684.
  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. doi:10.1126/science.290.5498.1968. PMID 11110664. S2CID 15983514.
  10. ^ a b c Serletis, D. (2011). "Complexity in neuronal noise depends on network interconnectivity". Ann Biomed Eng. 39 (6): 1768–1778. doi:10.1007/s10439-011-0281-x. PMID 21347547. S2CID 25516931.
  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. doi:10.1038/nn1790. PMID 17057707. S2CID 11562994.
  13. ^ See the "High-conductance state" article in Scholarpedia.
  14. ^ Wainrib, Gilles; Thieullen, Michèle; Pakdaman, Khashayar (2011). "Reduction of stochastic conductance-based neuron models with time-scales separation". Journal of Computational Neuroscience. 32 (2): 327–346. doi:10.1007/s10827-011-0355-7. PMID 21842259. S2CID 17271489.
  15. ^ Randall, D. J., et al. (2002). Eckert animal physiology: mechanisms and adaptations. New York, W.H. Freeman and Co.
  16. ^ Fatt, P.; Katz, B. (1952). "Spontaneous subthreshold activity at motor nerve endings". J Physiol. 117 (1): 109–128. doi:10.1113/jphysiol.1952.sp004735. PMC 1392564. PMID 14946732.
  17. ^ a b c KochChristoph (1999) Biophysics of Computation. Oxford University Press, New York.
  18. ^ Manwani A, Koch C (1999) "Signal detection in noisy weakly active dendrites", in Kearns MS, Solla SA, Cohn DA (eds.) Advances in Neural Information Processing Systems 11. MIT Press, Cambridge, MA.
  19. ^ Cao, X. J.; Oertel D. (2005). "Temperature affects voltage-sensitive conductances differentially in octopus cells of the mammalian cochlear nucleus". J Neurophysiol. 94 (1): 821–832. doi:10.1152/jn.01049.2004. PMID 15800074. S2CID 9141608.
  20. ^ a b Lauger, P. (1984). "Current noise generated by electrogenic ion pumps". Eur Biophys J. 11 (2): 117–128. doi:10.1007/BF00276627. PMID 6100543. S2CID 35431682.
  21. ^ Brunetti, R. (2007). "Shot noise in single open ion channels: A computational approach based on atomistic simulations". Journal of Computational Electronics. 6 (1): 391–394. doi:10.1007/s10825-006-0140-4. S2CID 51896278.
  22. ^ Ho N, Destexhe A (2000). "Synaptic background activity enhances the responsiveness of neocortical pyramidal neurons". J. Neurophysiol. 84 (3): 1488–96. doi:10.1152/jn.2000.84.3.1488. PMID 10980021. S2CID 3133375.
  23. ^ Longtin, A (1997). "Autonomous stochastic resonance in bursting neurons". Phys. Rev. E. 55 (1): 868–876. Bibcode:1997PhRvE..55..868L. doi:10.1103/PhysRevE.55.868. S2CID 7256148.
  24. ^ Li, C., Yu, J., & Liao, X. (2001). "Chaos in a three‐neuron hysteresis hopfield‐type neural networks". Physics Letters A. 285 (5–6): 368–372. Bibcode:2001PhLA..285..368L. doi:10.1016/S0375-9601(01)00381-4.{{cite journal}}: CS1 maint: multiple names: authors list (link)
  25. ^ Birn, R. M. (2012). "The role of physiological noise in resting-state functional connectivity". NeuroImage. 62 (2): 864–70. doi:10.1016/j.neuroimage.2012.01.016. PMID 22245341. S2CID 20590747.

External links edit

neuronal, noise, neural, noise, refers, random, intrinsic, electrical, fluctuations, within, neuronal, networks, these, fluctuations, associated, with, encoding, response, internal, external, stimuli, from, orders, magnitude, most, noise, commonly, occurs, bel. 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 This shows how noise affects the transmission of signals when non spiking neurons are propagating the signal Contents 1 Background 2 Types 3 Sources 4 Recording methods 4 1 Global recording 4 2 Local recording 5 See also 6 References 7 External linksBackground editNeuronal 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 enable noise induced dynamical phenomena which cannot be observed in a noise free system For instance channel noise has been shown to induce oscillations in the stochastic Hodgkin Huxley model 14 Types editIons exist inside and outside of the neuron and are subject to many bodily conditions One major source of noise arises from ions or molecules in response to the third law of thermodynamics This law states that the entropy of a system approaches a constant value as the temperature approaches zero Since the body maintains temperatures above 0K the molecules are subjected to increased kinetic energy or motion The stochastic or random movements give rise to receptor noise produced by the constant bombardment of ions as described by Brownian motion Ions are constantly being leaked across the membrane in efforts to equalize the ionic gradient produced by ATPase channels embedded in the membrane These leaky channels permit the movement of ions across the membrane leading to small fluctuations or noise in the membrane potential 15 Synapses are another major source of neural noise More than often there is random exocytosis of vesicles containing neurotransmitters which eventually bind to the postsynaptic membrane leading to a spontaneous action potential by graded potentials in the postsynaptic neuron 16 It is considered the largest amplitude noise source in the cerebral cortex 4 Sources editNoise 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 Thermal noise Johnson Nyquist noise occurs due to the thermal motions of ions and other charge carriers producing voltage fluctuations proportional to temperature This source of noise is attributed to the third law of thermodynamics stating that kinetic energy of molecules increases with a raise in temperature Thermal noise is the weakest source of noise and can be considered negligible 18 Ionic conductance noise Ion channels in the membrane undergo spontaneous changes in conformation between different states and can open or close due to thermal fluctuations The transmembrane embedded protein channels are made up of small subunits that undergo conformational changes and are affected by thermal fluctuations When temperature drops below 33 C the rate at which the channel becomes active or inactive decreases In contrast when the temperature is increased above 33 C the rate at which the channel becomes active or inactive increases 19 Ion pump noise Membrane embedded ATPase ion pumps produce fluctuating potentials by transporting ions against their concentration gradient The multistep process in which ions are transported across their gradient requires ATP 20 The steps involved in active transport have a net forward direction but small stochastic steps still exist in the conformational process that move backwards 20 These backward steps contribute to neuronal noise present in all dynamic neuronal circuits Ion channel shot noise The number of ions that migrate through an open ion channel are discrete and random 21 In synapses the number of calcium ions that enter the postsynaptic side after a spike is on the order of 250 ions 17 potentially making potentiation processes noisy This noise is also associated with thermal fluctuations affecting the protein channels as previously mentioned This is not to be confused with shot noise which is noise produced by the random generation of action potentials in neurons Synaptic release noise Generally action potentials are transferred down a neuron which then are converted to either electrical or chemical signals between neurons Chemical synapses are not deterministic which means that every action potential produced does not result in the release of neurotransmitters Rather the release of vesicles containing neurotransmitters are probabilistic in nature The number of vesicles released by a single synapse is random in response to a specific input signal and is further influenced by the firing history of the pre and post synaptic neurons This means that neurotransmitters can be released in the absence of an input signal 17 Synaptic bombardment The large number of incoming spikes add a fluctuating amount of charge to the cell which depends on the structure of the incoming spike trains and affects the cell s excitability 22 Chaos Chaotic dynamics can occur in single cells due to periodic inputs or bursting due to intrinsic currents 23 Simple networks of neurons can also exhibit chaotic dynamics 24 Even if the chaos is deterministic it can amplify noise from the other sources to macroscopic levels due to sensitive dependence on initial conditions Connectivity noise Noise that arises from the number of connections and non uniformity that a neuron has with other neurons within a neuronal network There is a stronger presence of sub threshold noise when the interconnectivity is strengthened or the number of connection to other neurons is increased 10 The opposite remains true too If the interconnectivity of the neurons is decreased so then is the level of sub threshold noise Environmental stimuli Noise can be produced on a larger scale due to fluctuations in CO2 which lead to variations in blood flow 25 The level of CO2 in the blood allows for either vasoconstriction or vasodilation which can encroach or expand into nearby neural networks producing noise Recording methods editGlobal recording edit 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 Electroencephalogram or EEG can be used to measure the brain since the signal to noise ratio is poor so noise produced by the brain can be detected in vivo Local field potentials can be used to test the noise present in large neuronal networks This measure of voltage can be used to determine the interconnectivity by the level of noise 10 Local recording edit Local recording has contributed much to discovering many of the new sources of ion channel noise Patch clamp technique was crucial to determine shot noise because the use of intercellular recording was not able to show the movement or detection of the few ions escaping at a time See also editSynaptic noise Ganzfeld effectReferences edit Jacobson G A 2005 Subthreshold voltage noise of rat neocortical pyramidal neurones J Physiol 564 Pt 1 145 160 doi 10 1113 jphysiol 2004 080903 PMC 1456039 PMID 15695244 a b Ko C H 2010 Emergence of Noise Induced Oscillations in the Central Circadian Pacemaker PLOS Biology 8 10 e1000513 doi 10 1371 journal pbio 1000513 PMC 2953532 PMID 20967239 Mazzoni E O 2005 Circadian Pacemaker Neurons Transmit and Modulate Visual Information to Control a Rapid Behavioral Response Neuron 45 2 293 300 doi 10 1016 j neuron 2004 12 038 PMID 15664180 S2CID 9568853 a b Destexhe A 2012 Neuronal noise New York Springer Stein R B 2005 Neuronal variability noise or part of the signal Nature Reviews Neuroscience 6 5 389 397 doi 10 1038 nrn1668 PMID 15861181 S2CID 205500218 Softky W R Koch C 1993 The highly irregular firing of cortical cells is inconsistent with temporal integration of random EPSPs PDF J Neurosci 13 1 334 350 doi 10 1523 JNEUROSCI 13 01 00334 1993 PMC 6576320 PMID 8423479 McDonnell Mark D 2011 The Benefits Of Noise In Neural Systems Bridging Theory And Experiment Nature Reviews Neuroscience 12 7 415 426 doi 10 1038 nrn3061 PMID 21685932 S2CID 1699918 Parnas B R 1996 Noise and neuronal populations conspire to encode simple waveforms reliably IEEE Trans Biomed Eng 43 3 313 318 doi 10 1109 10 486289 PMID 8682544 S2CID 8594684 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 doi 10 1126 science 290 5498 1968 PMID 11110664 S2CID 15983514 a b c Serletis D 2011 Complexity in neuronal noise depends on network interconnectivity Ann Biomed Eng 39 6 1768 1778 doi 10 1007 s10439 011 0281 x PMID 21347547 S2CID 25516931 Mysterious Neural Noise Primes Brain for Peak Performance rochester edu November 10 2006 Ma B 2006 Bayesian inference with probabilistic population codes PDF Nature Neuroscience 9 11 1432 1438 doi 10 1038 nn1790 PMID 17057707 S2CID 11562994 See the High conductance state article in Scholarpedia Wainrib Gilles Thieullen Michele Pakdaman Khashayar 2011 Reduction of stochastic conductance based neuron models with time scales separation Journal of Computational Neuroscience 32 2 327 346 doi 10 1007 s10827 011 0355 7 PMID 21842259 S2CID 17271489 Randall D J et al 2002 Eckert animal physiology mechanisms and adaptations New York W H Freeman and Co Fatt P Katz B 1952 Spontaneous subthreshold activity at motor nerve endings J Physiol 117 1 109 128 doi 10 1113 jphysiol 1952 sp004735 PMC 1392564 PMID 14946732 a b c KochChristoph 1999 Biophysics of Computation Oxford University Press New York Manwani A Koch C 1999 Signal detection in noisy weakly active dendrites in Kearns MS Solla SA Cohn DA eds Advances in Neural Information Processing Systems 11 MIT Press Cambridge MA Cao X J Oertel D 2005 Temperature affects voltage sensitive conductances differentially in octopus cells of the mammalian cochlear nucleus J Neurophysiol 94 1 821 832 doi 10 1152 jn 01049 2004 PMID 15800074 S2CID 9141608 a b Lauger P 1984 Current noise generated by electrogenic ion pumps Eur Biophys J 11 2 117 128 doi 10 1007 BF00276627 PMID 6100543 S2CID 35431682 Brunetti R 2007 Shot noise in single open ion channels A computational approach based on atomistic simulations Journal of Computational Electronics 6 1 391 394 doi 10 1007 s10825 006 0140 4 S2CID 51896278 Ho N Destexhe A 2000 Synaptic background activity enhances the responsiveness of neocortical pyramidal neurons J Neurophysiol 84 3 1488 96 doi 10 1152 jn 2000 84 3 1488 PMID 10980021 S2CID 3133375 Longtin A 1997 Autonomous stochastic resonance in bursting neurons Phys Rev E 55 1 868 876 Bibcode 1997PhRvE 55 868L doi 10 1103 PhysRevE 55 868 S2CID 7256148 Li C Yu J amp Liao X 2001 Chaos in a three neuron hysteresis hopfield type neural networks Physics Letters A 285 5 6 368 372 Bibcode 2001PhLA 285 368L doi 10 1016 S0375 9601 01 00381 4 a href Template Cite journal html title Template Cite journal cite journal a CS1 maint multiple names authors list link Birn R M 2012 The role of physiological noise in resting state functional connectivity NeuroImage 62 2 864 70 doi 10 1016 j neuroimage 2012 01 016 PMID 22245341 S2CID 20590747 External links editNeuronal Noise article in Scholarpedia High Conductance State article in Scholarpedia Retrieved from https en wikipedia org w index php title Neuronal noise amp oldid 1181814603, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.