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1.
PLoS Comput Biol ; 18(3): e1009753, 2022 03.
Article in English | MEDLINE | ID: mdl-35324886

ABSTRACT

Being permanently confronted with an uncertain world, brains have faced evolutionary pressure to represent this uncertainty in order to respond appropriately. Often, this requires visiting multiple interpretations of the available information or multiple solutions to an encountered problem. This gives rise to the so-called mixing problem: since all of these "valid" states represent powerful attractors, but between themselves can be very dissimilar, switching between such states can be difficult. We propose that cortical oscillations can be effectively used to overcome this challenge. By acting as an effective temperature, background spiking activity modulates exploration. Rhythmic changes induced by cortical oscillations can then be interpreted as a form of simulated tempering. We provide a rigorous mathematical discussion of this link and study some of its phenomenological implications in computer simulations. This identifies a new computational role of cortical oscillations and connects them to various phenomena in the brain, such as sampling-based probabilistic inference, memory replay, multisensory cue combination, and place cell flickering.


Subject(s)
Models, Neurological , Neurons , Action Potentials , Brain , Computer Simulation , Neural Networks, Computer
2.
PLoS Comput Biol ; 16(7): e1008087, 2020 07.
Article in English | MEDLINE | ID: mdl-32701953

ABSTRACT

The dynamics and the sharp onset of action potential (AP) generation have recently been the subject of intense experimental and theoretical investigations. According to the resistive coupling theory, an electrotonic interplay between the site of AP initiation in the axon and the somato-dendritic load determines the AP waveform. This phenomenon not only alters the shape of APs recorded at the soma, but also determines the dynamics of excitability across a variety of time scales. Supporting this statement, here we generalize a previous numerical study and extend it to the quantification of the input-output gain of the neuronal dynamical response. We consider three classes of multicompartmental mathematical models, ranging from ball-and-stick simplified descriptions of neuronal excitability to 3D-reconstructed biophysical models of excitatory neurons of rodent and human cortical tissue. For each model, we demonstrate that increasing the distance between the axonal site of AP initiation and the soma markedly increases the bandwidth of neuronal response properties. We finally consider the Liquid State Machine paradigm, exploring the impact of altering the site of AP initiation at the level of a neuronal population, and demonstrate that an optimal distance exists to boost the computational performance of the network in a simple classification task.


Subject(s)
Action Potentials , Axon Initial Segment/physiology , Axons/physiology , Neurons/physiology , Algorithms , Animals , Cerebral Cortex/pathology , Computational Biology , Computer Simulation , Dendrites/physiology , Humans , Imaging, Three-Dimensional , Linear Models , Machine Learning , Models, Neurological , Neocortex/physiology , Potassium Channels/physiology , Rats
3.
eNeuro ; 7(3)2020.
Article in English | MEDLINE | ID: mdl-32381648

ABSTRACT

Humans can reason at an abstract level and structure information into abstract categories, but the underlying neural processes have remained unknown. Recent experimental data provide the hint that this is likely to involve specific subareas of the brain from which structural information can be decoded. Based on this data, we introduce the concept of assembly projections, a general principle for attaching structural information to content in generic networks of spiking neurons. According to the assembly projections principle, structure-encoding assemblies emerge and are dynamically attached to content representations through Hebbian plasticity mechanisms. This model provides the basis for explaining a number of experimental data and provides a basis for modeling abstract computational operations of the brain.


Subject(s)
Models, Neurological , Neural Networks, Computer , Brain , Humans , Neurons
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