102 research outputs found
Traveling waves in visual cortex.
Electrode recordings and imaging studies have revealed that localized visual stimuli elicit waves of activity that travel across primary visual cortex. Traveling waves are present also during spontaneous activity, but they can be greatly reduced by widespread and intensive visual stimulation. In this Review, we summarize the evidence in favor of these traveling waves. We suggest that their substrate may lie in long-range horizontal connections and that their functional role may involve the integration of information over large regions of space
Contrast dependence and differential contributions from somatostatin- and parvalbumin-expressing neurons to spatial integration in mouse v1
A characteristic feature in the primary visual cortex is that visual responses are suppressed as a stimulus extends beyond the classical receptive field. Here, we examined the role of inhibitory neurons expressing somatostatin (SOM(+)) or parvalbumin (PV(+)) on surround suppression and preferred receptive field size. We recorded multichannel extracellular activity in V1 of transgenic mice expressing channelrhodopsin in SOM(+) neurons or PV(+) neurons. Preferred size and surround suppression were measured using drifting square-wave gratings of varying radii and at two contrasts. Consistent with findings in primates, we found that the preferred size was larger for lower contrasts across all cortical depths, whereas the suppression index (SI) showed a trend to decrease with contrast. We then examined the effect of these metrics on units that were suppressed by photoactivation of either SOM(+) or PV(+) neurons. When activating SOM(+) neurons, we found a significant increase in SI at cortical depths >400 mum, whereas activating PV(+) neurons caused a trend toward lower SIs regardless of cortical depth. Conversely, activating PV(+) neurons significantly increased preferred size across all cortical depths, similar to lowering contrast, whereas activating SOM(+) neurons had no systematic effect on preferred size across all depths. These data suggest that SOM(+) and PV(+) neurons contribute differently to spatial integration. Our findings are compatible with the notion that SOM(+) neurons mediate surround suppression, particularly in deeper cortex, whereas PV(+) activation decreases the drive of the input to cortex and therefore resembles the effects on spatial integration of lowering contrast
Spontaneous Local Gamma Oscillation Selectively Enhances Neural Network Responsiveness
Synchronized oscillation is very commonly observed in many neuronal systems and
might play an important role in the response properties of the system. We have
studied how the spontaneous oscillatory activity affects the responsiveness of a
neuronal network, using a neural network model of the visual cortex built from
Hodgkin-Huxley type excitatory (E-) and inhibitory (I-) neurons. When the
isotropic local E-I and I-E synaptic connections were sufficiently strong, the
network commonly generated gamma frequency oscillatory firing patterns in
response to random feed-forward (FF) input spikes. This spontaneous oscillatory
network activity injects a periodic local current that could amplify a weak
synaptic input and enhance the network's responsiveness. When E-E
connections were added, we found that the strength of oscillation can be
modulated by varying the FF input strength without any changes in single neuron
properties or interneuron connectivity. The response modulation is proportional
to the oscillation strength, which leads to self-regulation such that the
cortical network selectively amplifies various FF inputs according to its
strength, without requiring any adaptation mechanism. We show that this
selective cortical amplification is controlled by E-E cell interactions. We also
found that this response amplification is spatially localized, which suggests
that the responsiveness modulation may also be spatially selective. This
suggests a generalized mechanism by which neural oscillatory activity can
enhance the selectivity of a neural network to FF inputs
Predicted contextual modulation varies with distance from pinwheel centers in the orientation preference map
In the primary visual cortex (V1) of some mammals, columns of neurons with the full range of orientation preferences converge at the center of a pinwheel-like arrangement, the βpinwheel center' (PWC). Because a neuron receives abundant inputs from nearby neurons, the neuron's position on the cortical map likely has a significant impact on its responses to the layout of orientations inside and outside its classical receptive field (CRF). To understand the positional specificity of responses, we constructed a computational model based on orientation preference maps in monkey V1 and hypothetical neuronal connections. The model simulations showed that neurons near PWCs displayed weaker but detectable orientation selectivity within their CRFs, and strongly reduced contextual modulation from extra-CRF stimuli, than neurons distant from PWCs. We suggest that neurons near PWCs robustly extract local orientation within their CRF embedded in visual scenes, and that contextual information is processed in regions distant from PWCs
Predicting Spike Occurrence and Neuronal Responsiveness from LFPs in Primary Somatosensory Cortex
Local Field Potentials (LFPs) integrate multiple neuronal events like synaptic inputs and intracellular potentials. LFP spatiotemporal features are particularly relevant in view of their applications both in research (e.g. for understanding brain rhythms, inter-areal neural communication and neronal coding) and in the clinics (e.g. for improving invasive Brain-Machine Interface devices). However the relation between LFPs and spikes is complex and not fully understood. As spikes represent the fundamental currency of neuronal communication this gap in knowledge strongly limits our comprehension of neuronal phenomena underlying LFPs. We investigated the LFP-spike relation during tactile stimulation in primary somatosensory (S-I) cortex in the rat. First we quantified how reliably LFPs and spikes code for a stimulus occurrence. Then we used the information obtained from our analyses to design a predictive model for spike occurrence based on LFP inputs. The model was endowed with a flexible meta-structure whose exact form, both in parameters and structure, was estimated by using a multi-objective optimization strategy. Our method provided a set of nonlinear simple equations that maximized the match between models and true neurons in terms of spike timings and Peri Stimulus Time Histograms. We found that both LFPs and spikes can code for stimulus occurrence with millisecond precision, showing, however, high variability. Spike patterns were predicted significantly above chance for 75% of the neurons analysed. Crucially, the level of prediction accuracy depended on the reliability in coding for the stimulus occurrence. The best predictions were obtained when both spikes and LFPs were highly responsive to the stimuli. Spike reliability is known to depend on neuron intrinsic properties (i.e. on channel noise) and on spontaneous local network fluctuations. Our results suggest that the latter, measured through the LFP response variability, play a dominant role
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