32,125 research outputs found
Excitable Media Seminar
The simulation data presented here, and the conceptual framework developed for their interpretation are, both, in need of substantial refinement and extension. However, granting that they are initial pointers of some merit, and elementary indicators of general principles, several implications follow: the activity patterns of neurons and their assemblies are\ud
interdependent with the extracellular milieu in which they are embedded, and to whose time varying composition they contribute. The complexity of this interdependence in the temporal dimension forecloses any time and context invariant relation between what the experimenter may consider stimulus input and its representation in neural activity. Hence, ideas of coding by (quasi)-digital neurons are called in question by the mutual interdependence of neurons and their\ud
humoral milieu. Instead, concepts of 'mass action' in the Nervous system gain a new perspective: this time augmented by including the chemical medium surrounding neurons as part of the dynamics of the system as a whole. Accordingly, a meaningful way to describe activity in a neuron assembly would be in terms of a state space in which it can move along an infinite number of trajectories.\u
Understanding Epileptiform After-Discharges as Rhythmic Oscillatory Transients
Electro-cortical activity in patients with epilepsy may show abnormal
rhythmic transients in response to stimulation. Even when using the same
stimulation parameters in the same patient, wide variability in the duration of
transient response has been reported. These transients have long been
considered important for the mapping of the excitability levels in the
epileptic brain but their dynamic mechanism is still not well understood.
To understand the occurrence of abnormal transients dynamically, we use a
thalamo-cortical neural population model of epileptic spike-wave activity and
study the interaction between slow and fast subsystems.
In a reduced version of the thalamo-cortical model, slow wave oscillations
arise from a fold of cycles (FoC) bifurcation. This marks the onset of a region
of bistability between a high amplitude oscillatory rhythm and the background
state. In vicinity of the bistability in parameter space, the model has
excitable dynamics, showing prolonged rhythmic transients in response to
suprathreshold pulse stimulation. We analyse the state space geometry of the
bistable and excitable states, and find that the rhythmic transient arises when
the impending FoC bifurcation deforms the state space and creates an area of
locally reduced attraction to the fixed point. This area essentially allows
trajectories to dwell there before escaping to the stable steady state, thus
creating rhythmic transients. In the full thalamo-cortical model, we find a
similar FoC bifurcation structure.
Based on the analysis, we propose an explanation of why stimulation induced
epileptiform activity may vary between trials, and predict how the variability
could be related to ongoing oscillatory background activity.Comment: http://journal.frontiersin.org/article/10.3389/fncom.2017.00025/ful
DScentTrail: A new way of viewing deception
The DScentTrail System has been created to support and demonstrate research theories in the joint disciplines of computational inference, forensic psychology and expert decision-making in the area of counter-terrorism. DScentTrail is a decision support system, incorporating artificial intelligence, and is intended to be used by investigators. The investigator is presented with a visual representation of a suspect‟s behaviour over time, allowing them to present multiple challenges from which they may prove the suspect guilty outright or receive cognitive or emotional clues of deception. There are links into a neural network, which attempts to identify deceptive behaviour of individuals; the results are fed back into DScentTrail hence giving further enrichment to the information available to the investigator
Computational physics of the mind
In the XIX century and earlier such physicists as Newton, Mayer, Hooke, Helmholtz and Mach were actively engaged in the research on psychophysics, trying to relate psychological sensations to intensities of physical stimuli. Computational physics allows to simulate complex neural processes giving a chance to answer not only the original psychophysical questions but also to create models of mind. In this paper several approaches relevant to modeling of mind are outlined. Since direct modeling of the brain functions is rather limited due to the complexity of such models a number of approximations is introduced. The path from the brain, or computational neurosciences, to the mind, or cognitive sciences, is sketched, with emphasis on higher cognitive functions such as memory and consciousness. No fundamental problems in understanding of the mind seem to arise. From computational point of view realistic models require massively parallel architectures
Informational Mode of the Brain Operation and Consciousness as an Informational Related System
Introduction: the objective of the investigation is to analyse the informational operating-mode of the brain and to extract conclusions on the
structure of the informational system of the human body and consciousness.
Analysis: the mechanisms and processes of the transmission of information in the body both by electrical and non-electrical ways are analysed
in order to unify the informational concepts and to identify the specific essential requirements supporting the life. It is shown that the electrical
transmission can be described by typical YES/NO (all or nothing) binary units as defined by the information science, while the inter and intra
cell communication, including within the synaptic junction, by mechanisms of embodiment/disembodiment of information. The virtual received
or operated information can be integrated in the cells as matter-related information, with a maximum level of integration as genetically codified
info. Therefore, in terms of information, the human appears as a reactive system changing information with the environment and between inner
informational subsystems which are: the centre of acquisition and storing of information (acquired data), the centre of decision and command
(decision), the info-emotional system (emotions), the maintenance informational system (matter absorption/desorption/distribution), the genetic
transmission system (reproduction) and info-genetic generator (genetically assisted body evolution). The dedicated areas and components of the
brain are correlated with such systems and their functions are specified.
Result: the corresponding cognitive centres projected into consciousness are defined and described according to their specific functions. The
cognitive centres, suggestively named to appropriately include their main characteristics are detected at the conscious level respectively as: memory,
decisional operation (attitude), emotional state, power/energy status and health, associativity and offspring formation, inherited predispositions,
skills and mentality. The near-death and religious experiences can be explained by an Info-Connection pole.
Conclusion: consciousness could be fully described and understood in informational terms
The dissipative quantum model of brain: how do memory localize in correlated neuronal domains
The mechanism of memory localization in extended domains is described in the
framework of the parametric dissipative quantum model of brain. The size of the
domains and the capability in memorizing depend on the number of links the
system is able to establish with the external world.Comment: 19 PostScript pages, in press on a special issue of Information
Science Journal, S. Kak and D. Ventura Ed
Flexible couplings: diffusing neuromodulators and adaptive robotics
Recent years have seen the discovery of freely diffusing gaseous neurotransmitters, such as nitric oxide (NO), in biological nervous systems. A type of artificial neural network (ANN) inspired by such gaseous signaling, the GasNet, has previously been shown to be more evolvable than traditional ANNs when used as an artificial nervous system in an evolutionary robotics setting, where evolvability means consistent speed to very good solutionsÂżhere, appropriate sensorimotor behavior-generating systems. We present two new versions of the GasNet, which take further inspiration from the properties of neuronal gaseous signaling. The plexus model is inspired by the extraordinary NO-producing cortical plexus structure of neural fibers and the properties of the diffusing NO signal it generates. The receptor model is inspired by the mediating action of neurotransmitter receptors. Both models are shown to significantly further improve evolvability. We describe a series of analyses suggesting that the reasons for the increase in evolvability are related to the flexible loose coupling of distinct signaling mechanisms, one ÂżchemicalÂż and one Âżelectrical.
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