57 research outputs found

    The Spatial Structure of Stimuli Shapes the Timescale of Correlations in Population Spiking Activity

    Get PDF
    Throughout the central nervous system, the timescale over which pairs of neural spike trains are correlated is shaped by stimulus structure and behavioral context. Such shaping is thought to underlie important changes in the neural code, but the neural circuitry responsible is largely unknown. In this study, we investigate a stimulus-induced shaping of pairwise spike train correlations in the electrosensory system of weakly electric fish. Simultaneous single unit recordings of principal electrosensory cells show that an increase in the spatial extent of stimuli increases correlations at short (~10 ms) timescales while simultaneously reducing correlations at long (~100 ms) timescales. A spiking network model of the first two stages of electrosensory processing replicates this correlation shaping, under the assumptions that spatially broad stimuli both saturate feedforward afferent input and recruit an open-loop inhibitory feedback pathway. Our model predictions are experimentally verified using both the natural heterogeneity of the electrosensory system and pharmacological blockade of descending feedback projections. For weak stimuli, linear response analysis of the spiking network shows that the reduction of long timescale correlation for spatially broad stimuli is similar to correlation cancellation mechanisms previously suggested to be operative in mammalian cortex. The mechanism for correlation shaping supports population-level filtering of irrelevant distractor stimuli, thereby enhancing the population response to relevant prey and conspecific communication inputs. Β© 2012 Litwin-Kumar et al

    Hierarchical architecture of dopaminergic circuits enables second-order conditioning in Drosophila

    Get PDF
    Dopaminergic neurons with distinct projection patterns and physiological properties compose memory subsystems in a brain. However, it is poorly understood whether or how they interact during complex learning. Here, we identify a feedforward circuit formed between dopamine subsystems and show that it is essential for second-order conditioning, an ethologically important form of higher-order associative learning. The Drosophila mushroom body comprises a series of dopaminergic compartments, each of which exhibits distinct memory dynamics. We find that a slow and stable memory compartment can serve as an effective 'teacher' by instructing other faster and transient memory compartments via a single key interneuron, which we identify by connectome analysis and neurotransmitter prediction. This excitatory interneuron acquires enhanced response to reward-predicting odor after first-order conditioning and, upon activation, evokes dopamine release in the 'student' compartments. These hierarchical connections between dopamine subsystems explain distinct properties of first- and second-order memory long known by behavioral psychologists

    Balanced Synaptic Input Shapes the Correlation between Neural Spike Trains

    Get PDF
    Stimulus properties, attention, and behavioral context influence correlations between the spike times produced by a pair of neurons. However, the biophysical mechanisms that modulate these correlations are poorly understood. With a combined theoretical and experimental approach, we show that the rate of balanced excitatory and inhibitory synaptic input modulates the magnitude and timescale of pairwise spike train correlation. High rate synaptic inputs promote spike time synchrony rather than long timescale spike rate correlations, while low rate synaptic inputs produce opposite results. This correlation shaping is due to a combination of enhanced high frequency input transfer and reduced firing rate gain in the high input rate state compared to the low state. Our study extends neural modulation from single neuron responses to population activity, a necessary step in understanding how the dynamics and processing of neural activity change across distinct brain states

    Relationship between neuronal architecture and variability in cortical circuits

    No full text
    <p>The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs and ensembles of neurons with high connection probability. However, the significance of these connectivity properties for computation and dynamics in cortex is unclear. In this thesis, I present several studies concerning the behavior of model cortical neurons receiving input from a surrounding network. I begin by studying pairs of neurons, investigating how overlapping excitatory and inhibitory inputs control the statistics of their outputs. I then study fully recurrent networks of neurons with nonuniform connection structures in the form of highly connected neuronal assemblies. These assemblies represent functionally related subsets of neurons, and I investigate their collective behavior in both spontaneously generated activity and evoked conditions. I show that the presence of assembly structure in recurrently coupled, balanced excitatory-inhibitory networks introduces slow timescales in the networks’ dynamics and relate these modeling results to the experimental literature. Next, I present results on how these assemblies form and are maintained with realistic models of synaptic plasticity. In total, these results represent a step toward understanding how connectivity can be modified by sensory experience, and how these changes in turn shape cortical dynamics.</p
    • …
    corecore