Presentation Transcript
Multi-levelHuman Brain Modeling :Multi-levelHuman Brain Modeling Jerome Swartz
The Swartz Foundation Rancho Santa Fe
9/30/06
Multi-level Brain Modeling :Multi-level Brain Modeling Everyone agrees there ARE multiple levels of description
Science IS modeling
Science is intrinsically multi-level in nature (e.g. neurons – behavior; genes – disease; atoms – molecules; etc.)
Understanding how the brain works means modeling the dynamics of multi-level Information flow (not so easy!)
Defining the Information processed by each brain element at each Level is essential
Dynamic brain modelingwill increasingly suffer
from Information overload: Successful Modeling New
Measurements New Dynamics
Phenomena
Brain Research Must Be Multi-level :Brain Research Must Be Multi-level Brains are active and multi-scale/multi-level
The dominant multi-level model: the computer’s physical/ logical hierarchy (viz OSI computer ‘stack’ multi-level description)
Scientific collaboration is needed
Across spatial scales
Across time scales
Across measurement techniques
Across models
Current field borders should not remain boundaries …Curtail Scale Chauvinism!
Level Chauvinism is Endemic… :Level Chauvinism is Endemic… Dirac on discovering the positron: “the rest is chemistry”… molecular structure is an epiphenomenon!
Systems neuroscience & neural networks: ‘the molecular level is implementational detail’… neural oscillations are epiphenomena
Genetics/Evolutionary Psychology: genetic basis for behavior
Cognitive Psychology: largely ignores the brain itself
Almost everyone: quantum phenomena are irrelevant to biology
To progress beyond this, we must ask if there are any invariant mathematical principles underlying biological multiple level interaction
Multi-level Modeling Futures I :Multi-level Modeling Futures I To understand, both theoretically and practically, how brains support behavior and experience
To model brain / behavior dynamics as Active requires:
Better behavioral measures and modeling
Better brain dynamic imaging / analysis
Better joint brain / behavior analysis
Today’s (‘hardcore’ neurobiological) large scale computational models do not (yet) explain cognitive functions and complex behavior…. Stay tuned!
Circuit modelers mostly work on simple *physiological phenomena* that don’t directly translate into behavioral performance
Theorists interested in cognition predominantly use abstract mathematical models that are not constrained by neurobiology … the next research frontiers
Multi-level Modeling Futures II :Multi-level Modeling Futures II Microcircuit models of cognitive processes (relating microscopic-to-macroscopic) to link the biology of synapses and neurons to behavior through network dynamics
Cognitive-type circuit models detailed enough to account for neuronal data and high-level enough to reproduce behavioral events correlated to EEG and fMRI measurement and provide a unified framework
Linear filter models are powerful for sensory processing, but cognitive-type computations involving nonlinear dynamical systems, multiple attractors, bifurcations, etc., will play an important role
Multi-level Modeling Futures III :Multi-level Modeling Futures III How do top-down ‘cognitive’ signals interact with bottom-up external stimuli? How do signals flow in a reciprocal loop between thalamocortical sensory circuits and working memory/‘decision’ circuits
Another challenge is to expand circuit modeling to large-scale brain networks with interconnected areas/‘modules’
Multi-level Open Questions I :Multi-level Open Questions I Is there a corresponding (comparable?) temporal scale to our spatially-scaled Multi-level description ?
At what time scales does Information flow between levels (how fast up & down?)?
Are local field synchronies multi-scale?
Do local fields index shape synchronicity?
Are there any direct relationships between these processes and nonconscious/conscious mental processing…. e.g. ‘Aha!’/‘eureka’; ‘REST’; selective attention; decision-making; problem solving; etc.
Multi-level Open Questions II :Multi-level Open Questions II How does Information cross spatial scales?
Up
Spike & decision ‘ramp-to-threshold’
Stochastic resonance?
Avalanche behavior?
Within & between area synchronization avalanches?
Down
Synaptic reshaping
Frequency nesting
Ephaptic and neuromodulator influences
Slide 10:Organisms Neurons Membrane Protein Complexes Macromolecules emergence boundary
condition behavior spikes conformational
changes Information Flow in the
Levels-hierarchy
Human Multi-level (“Brain Stack”) Framework :Cortical hemispheres
Cerebral cortex (ACC,PFC, etc.)
Thalamus/sensory afferents
Hippocampus-working memory
Sensorimotor system Human Multi-level (“Brain Stack”) Framework Level Additional Description Components Spatial Scale Human Behavioral Levels Information-Theoretic/System Levels Physical/Coding Levels Social Neuroscience
(Neuro-anthropology) Human Interaction
(Physical/Electronic) Cognitive/
Psychological
(Whole Brain) Socio-Political
(Geographical/Cyber) Neurophysiological
(Anatomical “maps”) Network Circuit Neuronal
Synaptic Molecular Evolution-driven m:n (many:many)
Global/Nation-States Closed System Interconnect Model Evolution/macro-plasticity km-MMm Emotional/Rational/
Innerthought 1:1 (one:one)
“mirror neurons” Evolution-driver “Network of Networks”/CNS Communication/System sublevels Macrodynamics Interneuronal sublevel
Synaptic/axonal/dendritic
Myelination/ganglia Neurogenetic sublevel
Physical/coding sublevel Cortical microcircuits
Thalamocortical circuits (1k neuron) Mini-columns
Neo-cortical columns (10-100k)
Synfire chains [ 1:self Conscious sublevel
(presentation sublevel) Unconscious processing (MM:
million) dm-MMm 1 m 1cm-dm 1cm-dm 1mm-cm 1 μ -100 μ 1 Å ] [ Neuromodulators
Proteins
Amino Acids [ ] ] ] ] ] Emotion
Language
Decision making
(“Thin/thick slices”)
Attention/awareness
Sleep/awake [ ] ] [ [ ] 1:n (one:many)
Regional/cities Cellular microdynamic level
Spike time dependent plasticity/Learning [ ] [ [ Microscopic Mesoscopic Macroscopic [ [