False facts about the brain and neural code are often repeated and tought to be correct. Unfortunately, journals with high impact factor are among the ones which have frequently reinforced these misconceptions.
1. Myth: Action potentials are digital signals
Hopfield JJ. 1995 Pattern recognition computation using action potential timing for stimulus representation. Nature. Jul 6;376(6535):33-6.
Gerstner, W, 2007, A framework for spiking neuron models: The spike response model, Handbook of Biological Physics, Volume 4, 2001, Pages 469–516,
Gerstner, W, 2007, A framework for spiking neuron models: The spike response model, Handbook of Biological Physics, Volume 4, 2001, Pages 469–516,
Truth: Action potentials are fast (<1 millisecond) all or none phenomena, however they are not digital events http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html. The spatial modulation of APs, the recorded shape carry meaningful information. Our convenience (digital action potentials) is our MISTAKE that has separated the generation of electrical patterns from neural computation and molecular biology.
Note: Experimental data show clear evidence of spatial, meaningful modulation of action potentials see http://www.sciencedirect.com/science/article/pii/S0165027012001021?v=s5 and references at bottom of page http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html ,
Dorian Aur, A Comparative Analysis of Integrating Visual Information in Local Neuronal Ensembles, Journal of Neuroscience Methods, 2012, Volume 207, Issue 1, 30, Pages 23–30, http://www.sciencedirect.com/science/article/pii/S0165027012001021
Note: Experimental data show clear evidence of spatial, meaningful modulation of action potentials see http://www.sciencedirect.com/science/article/pii/S0165027012001021?v=s5 and references at bottom of page http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html ,
Dorian Aur, A Comparative Analysis of Integrating Visual Information in Local Neuronal Ensembles, Journal of Neuroscience Methods, 2012, Volume 207, Issue 1, 30, Pages 23–30, http://www.sciencedirect.com/science/article/pii/S0165027012001021
2.Myth: The neural code is hidden in temporal patterns
Shadlen M.N., Newsome W.T. Noise, neural codes and cortical organization
(1994) Current Opinion in Neurobiology, 4 (4), pp. 569-579.
W Gerstner, R Kempter, JL Van Hemmen, 1996, : A neuronal learning rule for sub-millisecond temporal coding, NATURE Volume: 383 Issue: 6595 Pages: 76-78
Friedrich RW; Laurent G, 2001, Dynamic optimization of odor representations by slow temporal patterning of mitral cell activity, SCIENCE, Volume: 291 Issue: 5505 Pages: 889-894
Jones LM; Depireux DA; Simons DJ; 2004, Robust temporal coding in the trigeminal system, SCIENCE Volume: 304 Issue: 5679 Pages: 1986-1989
Kayser Christoph; Montemurro Marcelo A.; Logothetis Nikos K.; 2009 Spike-Phase Coding Boosts and Stabilizes Information Carried by Spatial and Temporal Spike Patterns, NEURON Volume: 61 Issue: 4 Pages: 597-608
Jones LM; Depireux DA; Simons DJ; 2004, Robust temporal coding in the trigeminal system, SCIENCE Volume: 304 Issue: 5679 Pages: 1986-1989
Kayser Christoph; Montemurro Marcelo A.; Logothetis Nikos K.; 2009 Spike-Phase Coding Boosts and Stabilizes Information Carried by Spatial and Temporal Spike Patterns, NEURON Volume: 61 Issue: 4 Pages: 597-608
Truth: They forgot to mention that recorded temporal patterns were in fact generated by a series of complex electrical events. Since information is intracellularly processed (inside neurons) then temporal patterns carry little information http://neuroelectrodynamics.blogspot.com/p/temporal-coding-realistic-model-of.html. The required fragments of information are distributed within macromolecular structures in many neurons. Therefore, the sub-millisecond temporal occurrence of APs is required to electrically integrate in the brain information read from molecular structure during spiking activity (action potentials, synaptic activity) http://neuroelectrodynamics.blogspot.com/p/from-spike-timing-dogma-to.html . The ‘synchronous’ activation provides the ‘short term memory’ access needed to recognize objects, understand concepts... http://neuroelectrodynamics.blogspot.com/p/cognition-and-consciousness.html.
3.Myth: There is ‘noise’ in temporal patterns
London M, Roth A, Beeren L, Hausser M, and Latham PE (2010) Sensitivity to
perturbations in vivo implies high noise and suggests rate coding in cortex.
Nature 466: 123–127.
perturbations in vivo implies high noise and suggests rate coding in cortex.
Nature 466: 123–127.
Truth: The presence of “noise” in neuronal activity is another flaw generated by a false hypothesis --- digital, stereotyped spike. Indeed, if solely temporal patterns are considered then neuronal activity may appear random since information (semantics) is elsewhere http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html
The activity in the brain is less random than expected. Periods with increased randomness are rare events in the brain- persistent chaotic dynamics occurs right before seizure generation http://www.ncbi.nlm.nih.gov/pubmed/21679727 . In addition, chaotic behavior is not a completely random phenomenon.
The activity in the brain is less random than expected. Periods with increased randomness are rare events in the brain- persistent chaotic dynamics occurs right before seizure generation http://www.ncbi.nlm.nih.gov/pubmed/21679727 . In addition, chaotic behavior is not a completely random phenomenon.
4.Myth: Our memories are preferentially stored in the hippocampus
Jensen, O. and Lisman, J.E. 2005, Hippocampal sequence-encoding driven by a cortical multi-item working memory buffer. Trends in Neuroscience, 26, 696-705.
Squire LR, Memory and the Hippocampus - A Synthesis From Findings With Rats, Monkeys and Humans Psychological Review Volume: 99 Issue: 2 Pages: 195-231
Truth: All neurons can store different fragments of information (memory) in their molecular structure (proteins) not only neurons from hippocampus http://neuroelectrodynamics.blogspot.com/p/computing-by-interaction.html. Information is integrated during spike generation (APs, synaptic activities) http://neuroelectrodynamics.blogspot.com/p/cognition-and-consciousness.html
5.Myth: The memories can be ‘read’ by knowing the connectivity between neurons
Sebastian Seung 2012 Connectome: How the Brain's Wiring Makes Us Who We Are, New York: Houghton Mifflin Harcout.
Seung H. S., 2009, Reading the Book of Memory: Sparse Sampling versus Dense Mapping of Connectomes, Neuron, Volume 62, Issue 1, , Pages 17–29
Truth: The entire attempt to read memories is based on a false hypothesis that memories are solely written in the connections between neurons . This assumption excludes the most important part -- the neuron where information is stored and processed http://neuroelectrodynamics.blogspot.com/p/computing-by-interaction.html . This information stored within molecular structure is 'read' during AP propagation which shows fast meaningful dynamics on the submillisecond time scale http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html. The resulting ‘connectivity’ follows AP propagation ( information processing) which can change with every generated spike. In addition, the function of neurons can be totally reshaped during learning (3-4 days to one week). The effect is a local change in interactions between neurons (connectivity). Therefore, the entire gimmick to "read" out memories at the brain scale based on ‘connectivity’ represents a naïve, obsolete idea.
(i) We are who we are since simple cells have evolved into complex neurons, are densely packed in the brain to allow electrical integration of information during spiking activity.
(ii) We are unique in the way we operate among animal species. We are who we are since our brain architecture and molecular structure embedded in neurons reflect genetically encoded information from DNA segments, a result of evolutionary processes.
(iii) We are who we are since a continuous process of interaction with our peers has shaped our behavior from the first day we were born
6.Myth: Memory is stored in synaptic connections between neurons
Bliss TVP; Collingridge GL 1993, Experimental data A Synaptic Model Of Memory - Long-Term Potentiation In The Hippocampus, NATURE Volume: 361 Issue: 6407 Pages: 31-39
Truth: The absolute number of synapses per neuron is reached by age 1 year and strongly decreases during the preschool years. The dynamics of AP generation and spatial propagation makes synaptic connectivity between neurons highly variable. While information stored in the brain increases with time, the number of synapses reduces with age. Our memories are stored within molecular structure (proteins) distributed in neurons http://neuroelectrodynamics.blogspot.com/p/from-spike-timing-dogma-to.html in addition to molecular layer embedded in synapses http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html
7.Myth: This neuron responds to a specific concept - Concept cells
Quiroga, R.Q., Reddy, L., Kreiman, G., Koch, C., Fried, I. (2005) Invariant visual representation by single neurons in the human brain Nature 435 (7045), pp. 1102-1107
http://www.scientificamerican.com/article.cfm?id=being-john-malkovich (Christof Koch)
http://www.scientificamerican.com/article.cfm?id=being-john-malkovich (Christof Koch)
Truth: The firing rate analysis is not sensitive enough to detect which information is intracellularly processed http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html . Concept cells are grandmother cells http://neuroelectrodynamics.blogspot.com/p/concept-cells.html . The existence of grandmother behavior was previously strongly rejected by Jerome Lettvin
8.Myth: Artificial neural networks (ANNs) describe computations performed by biological neurons
Mahowald M; Douglas R, A Silicon Neuron, 1991, Nature, Volume: 354 Issue: 6354 Pages: 515-518
Truth: The claim that artificial neurons are simplified models of their biological counterparts is untrue. Artificial neurons are abstract mathematical models (spiking neurons, weight type connection) they represent attempts to build optimal, adaptive systems, unfortunately they do not describe biophysical properties of neurons http://neuroelectrodynamics.blogspot.com/p/from-spike-timing-dogma-to.html or computations performed by biological neurons
9. Myth: Axons, dendrites function as electrical cables
Mahowald M; Douglas R, A Silicon Neuron, 1991, Nature, Volume: 354 Issue: 6354 Pages: 515-518
Truth: The process of computation in neurons is not just information transmission through cables http://neuroelectrodynamics.blogspot.com/p/from-spike-timing-dogma-to.html , it involves a complex process of interaction http://neuroelectrodynamics.blogspot.com/p/computing-by-interaction.html
Electrical conduction (wiring) does not model any transfer of information between molecular structures and electric flow which occurs in neurons within dendrites, axons during AP propagation.
10. Myth: There is a unique flow of information from genes by transcription translation to protein structures
Crick F. (1970) Central dogma of molecular biology, Nature, 227 (5258), pp. 561-563.
Truth: The presence of posttranslational modifications, epigenetic effects of chemical signal at several levels (e.g. chemical modifications to DNA) regulatory interactions that operate at gene and protein level disprove the central dogma. In addition the effect of electrical interactions indicates a more complex mechanism for information flow than earlier proposed and contradicts the main dogma which limits genetic-causal explanations.
12. Myth: Brains are essentially connectionist models of computation - fundamentally prediction machines - perform Bayesian inference
Knill DC; Pouget A, 2004 The Bayesian brain: the role of uncertainty in neural coding and computation, Trends in Neurosciences Volume: 27 Issue: 12 Pages: 712-719
13. Myth: The brain shows a strict hierarchy of information processing
14. Myth: Always mathematical (statistical) models help us to understand complex processes that occur in the brain
Knill DC; Pouget A, 2004 The Bayesian brain: the role of uncertainty in neural coding and computation, Trends in Neurosciences Volume: 27 Issue: 12 Pages: 712-719
Truth: False hypotheses about a phenomenon may strongly limit the explanatory power of any mathematical model. Theoretical constructs regarding Bayes theory, nonlinear dynamics ... HAVE NO REAL VALUE in understanding information processing in neurons, in the brain if they are attached to a false hypothesis (DIGITAL spike) http://neuroelectrodynamics. blogspot.com/p/temporal- coding-realistic-model-of.html
15. Myth: Learning can be mainly described by changes in synapses
11. Myth: Neuroscientists Capture Real-Time Brain Dynamics Via .....
Lin LN; Osan R; Shoham S; 2005, Identification of network-level coding units for real-time representation of episodic experiences in the hippocampus, PNAS, Volume: 102 Issue: 17 Pages: 6125-6130
Truth: Information processing and communication are extremely dynamic phenomena in the brain. Within neurons relevant information is processed on the sub-millisecond time scale. Many technique cannot capture these fast dynamics. In addition statistical methods and averaging technique over several repetitions of stimuli or behaviors hide relevant, specific details. Therefore, in spite of many claims only few techniques are able to capture meaningful dynamics related to information processing or memory encoding http://neuroelectrodynamics. blogspot.com/p/spike- directivity.html. In addition the role of neurons can significantly change with learning during several repetitions of stimuli or behaviors over few days of training.
Direct Consequence: Unreliable outcome regarding brain dynamics
12. Myth: Brains are essentially connectionist models of computation - fundamentally prediction machines - perform Bayesian inference
Knill DC; Pouget A, 2004 The Bayesian brain: the role of uncertainty in neural coding and computation, Trends in Neurosciences Volume: 27 Issue: 12 Pages: 712-719
Truth: Connectionist models represent an attempt to provide the simplest model of mind/ brain. From connectivity in proteins or between genes to the association of planets and days of the week, all types of interactions can be approximated by weight type connections. Therefore, the idea of weight type connectivity presents a general, non-specific model . However, the brain has a specific model of computation by physical (electrical) interaction mediated by molecular changes in neurotransmitters levels http://neuroelectrodynamics. blogspot.com/p/computing-by- interaction.html. The continuous (non-Turing) model of computation by electric interaction intrinsically exhibits many features such as parallelism, fuzziness, fractality in addition to predictive or Bayesian appearance. Digital principles borrowed from engineering or machine learning (e.g. prediction error) reflect just tiny parts of multiple computational features expressed by biological neurons http://neuroelectrodynamics. blogspot.com/p/computing-by- interaction.html
13. Myth: The brain shows a strict hierarchy of information processing
Bodegard A; Geyer S; Grefkes C; Hierarchical processing of tactile shape in the human brain, NEURON Volume: 31 , Pages: 317-328
Truth: The idea of hierarchy in connectionist models has represented an attempt to model anatomical (hierarchical) organization. Currently, little experimental data supports the notion of a strict hierarchy in information processing. The presence of various forms of computation at the sub-cellular level http://neuroelectrodynamics. blogspot.com/p/computing-by- interaction.html and continuous electrical integration of information within neurons http://neuroelectrodynamics. blogspot.com/p/from-spike- timing-dogma-to.html do not highlight a strict hierarchy. Related to a specific task or behavior the simultaneous activation of neurons in the brain does not seem to follow a strict anatomical (hierarchical) propagation. Since fragments of information are distributed in various neurons then sequential/ parallel activation of specific cells is required to integrate information needed for perception or action. Either they spike or not all neurons process received information . The brain in all its entirety is the computing machine that exploits parallel distributed processing within many neurons. A strict hierarchy of information processing represents a non-specific reductionist model of developed interactions http://neuroelectrodynamics. blogspot.com/p/cognition-and- consciousness.html
14. Myth: Always mathematical (statistical) models help us to understand complex processes that occur in the brain
Truth: False hypotheses about a phenomenon may strongly limit the explanatory power of any mathematical model. Theoretical constructs regarding Bayes theory, nonlinear dynamics ... HAVE NO REAL VALUE in understanding information processing in neurons, in the brain if they are attached to a false hypothesis (DIGITAL spike) http://neuroelectrodynamics.
15. Myth: Learning can be mainly described by changes in synapses
Bliss TVP; Collingridge GL, 1993, A Synaptic Model Of Memory - Long-Term Potentiation In The Hippocampus,NATURE Volume: 361 Issue: 6407 Pages: 31-39
Truth: Learning is a result of reorganization at a molecular level that occurs in neurons in addition to synaptic changes. The entire learning process is deeply rooted within specific molecular and genetic mechanisms of protein synthesis that include gene selection, regulation and expression related to DNA-RNA transcription, mediated by electrical interactions, neurotransmitters and hormone levels. The effect of above changes is partially reflected in well observed re-organization of spike patterns measured by common electrophysiological recording techniques and interpreted as forms of learning (habituation, sensitization, classical conditioning).
Temporal patterns indicate solely WHEN electrical events occur which PARTIALLY characterize any electric event, does not tell WHAT information was electrically communicated. Few have realized that temporal patterns were in fact the moments when meaningful electrical patterns occur within the neuron http://neuroelectrodynamics.blogspot.com/p/spike-directivity.html .
The entire framework, the analysis of various time scales ( firing rate, ISI, spike timing dependent plasticity ) represent just a tiny part of information needed to characterize electrical events - that's the fundamental problem with temporal coding. Therefore, these myths about the brain represent a gentle introduction to NeuroElectroDynamics
Max Planck ---- “A new scientific truth does not triumph by convincing its opponents and making them see the light......"
David Deutsch -----" There is indeed an objective difference between a false explanation and a true one, between chronic failure to solve a problem and solving it, and also between wrong and right, ugly and beautiful, ......."
NeuroElectroDynamics or NED is the study of the dynamics and interaction of electrical charges in the brain
[1]. The word neuroelectrodynamics is derived from neuro- meaning neurons, electro- electric
field and -dynamics meaning movement.
The main idea of NED is that under the influence of electric
fields, charges that interact perform computations and are capable to read, write and
store information in their spatial distribution at molecular level within
active neurons. The universal physical laws from classical mechanics,
thermodynamics to quantum
theory can be applied to
generate a consistent mathematical model of brain computation.
The fundamental claim of NED is that temporal observables
associated with neural
coding ( temporal
coding, spike timing occurrence, spike-timing-dependent plasticity,
) are epiphenomena determined by the dynamics and interaction of electric
charges modulated by molecular changes in neurotransmitters levels, regulatory
mechanisms of gene expression from DNA
to proteins synthesis.
NED highlights a specific form of
computation by interaction which is a general physical model of computation
extensively present in nature [6].
A spontaneous generation of action potentials and synaptic
activities is needed to maintain physical interaction. Meaningful information
encoded (written) within neurons and synapses at a molecular level can be
transmitted synaptically and non-synaptically during action
potential propagation [1][5].
During these events, the required information is exchanged between
molecular structures (proteins), which store
fragments of information, and the generated electric flux, which carries and
integrates meaningful information in the brain [5].
History
Early work started with a fundamental electrophysiological observation. Contrary to common
belief, action
potentials generated by the
same neuron are not alike, they display changes in electrical patterns not just
temporal variability.
Every recorded action potential can be characterized by a new
measure, spike
directivity that describes
electrical activity in a biological neuron [2]. Significant changes in spike
directivity are correlated with changes in behavior [3]. Since information is
carried by electric
charges [4], then their
dynamics and interaction characterize complex computational processes in the brain.
References
[1] Aur D., Jog, MS., 2010 Neuroelectrodynamics: Understanding the
brain language, IOS Press, 2010.
[2] Aur D., Connolly C.I., and Jog M.S., 2005 Computing spike
directivity with tetrodes. J. Neurosci. Vol. 149, Issue 1, pp. 57–63.
[3] Aur D., Jog, M.S., 2007 Reading the Neural Code: What do
Spikes Mean for Behavior? Nature Precedings, http://dx.doi.org/10.1038/npre.2007.61.1
[4] Aur D., Connolly C.I. and Jog M.S., 2006 Computing Information
in Neuronal Spikes, Neural Processing Letters, 23:183-199.
[5] Aur, D. 2012, A comparative analysis of integrating
visual information in local neuronal ensembles. Journal of neuroscience
methods, 207(1), 23-30. http://www.ncbi.nlm.nih.gov/pubmed/22480985
[6] Aur D, Jog MS, Poznanski, R, Computing by physical
interaction in neurons, Journal of integrative Neuroscience, vol. 10, Issue: 4,
2011, pp. 413-422http://www.ncbi.nlm.nih.gov/pubmed/22262533
Very enlightening this topics here. I want to thank you for show us the mits and to put the links for us to find the paper that support the texts.
ReplyDeleteMarielza
Excellent tally of profound challenges to contemporary paradigm. Thank you! Demonstrates the urgent need for alternative paradigmatic proposals. You focus on neuroelectrodynamics, a spatial field-like phenomenon. I approve and extend: I propose oscillatory neuroelectrodynamics, spatiotemporal standing waves in the brain that mimic the spatial structures of our perceptual experience. Spatial standing waves can be communicated from region to region by shaped spikes, as you propose, provided that the communication is established between similar oscillatory resonators at either end, where the spatial vibration in one resonator stimulates a similar standing wave in the other resonator by entrainment, communicated by the waveform of the pulse trains of action potentials. Oscillatory communication also provides a mechanism for another of your themes, molecular memory. Consider that a protein molecule, RNA, DNA, behave like giant slinkys. Surely their vibratory dance must be part of the mechanism of molecular encryption in the nature of an RF ID tag: Specific molecular bonds have specific vibrational frequencies. Perhaps a sufficiently intense electrodynamic oscillation at the cellular level, with higher harmonics at still higher frequencies, might be able to fuse or sever molecular bonds at a scale many orders of magnitude smaller than the cellular or network resonances.
ReplyDeleteBut the principal feature of an oscillatory standing wave model of neurocomputation is the extraordinary richness and flexibility of standing waves as a template for geometrical shape.
http://cns-alumni.bu.edu/~slehar/HRezBook/HRezBook.html
Harmonic Resonance seems an interesting prospect for another reason too. While people spend millions in D-Wave and quantum computation most of them are ignorant of the fact that "digital/symbolic" computations can be embedded into analog machines but quite different from the (in)famous Shannon's GPAC who just extended the old Leibnizian paradigm. The key is in the spectral encoding of symbolic information which can be done by a variety of methods but hasn't been recognized as yet.
ReplyDeletehttp://cag.dat.demokritos.gr/research.php#Complex