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Mouse Visual Cortex

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mouse visual cortex

Discover seminars, jobs, and research tagged with mouse visual cortex across World Wide.
35 curated items26 ePosters9 Seminars
Updated about 2 months ago
35 items · mouse visual cortex
35 results
SeminarNeuroscienceRecording

The strongly recurrent regime of cortical networks

David Dahmen
Jülich Research Centre, Germany
Mar 28, 2023

Modern electrophysiological recordings simultaneously capture single-unit spiking activities of hundreds of neurons. These neurons exhibit highly complex coordination patterns. Where does this complexity stem from? One candidate is the ubiquitous heterogeneity in connectivity of local neural circuits. Studying neural network dynamics in the linearized regime and using tools from statistical field theory of disordered systems, we derive relations between structure and dynamics that are readily applicable to subsampled recordings of neural circuits: Measuring the statistics of pairwise covariances allows us to infer statistical properties of the underlying connectivity. Applying our results to spontaneous activity of macaque motor cortex, we find that the underlying network operates in a strongly recurrent regime. In this regime, network connectivity is highly heterogeneous, as quantified by a large radius of bulk connectivity eigenvalues. Being close to the point of linear instability, this dynamical regime predicts a rich correlation structure, a large dynamical repertoire, long-range interaction patterns, relatively low dimensionality and a sensitive control of neuronal coordination. These predictions are verified in analyses of spontaneous activity of macaque motor cortex and mouse visual cortex. Finally, we show that even microscopic features of connectivity, such as connection motifs, systematically scale up to determine the global organization of activity in neural circuits.

SeminarNeuroscience

Signal in the Noise: models of inter-trial and inter-subject neural variability

Alex Williams
NYU/Flatiron
Nov 3, 2022

The ability to record large neural populations—hundreds to thousands of cells simultaneously—is a defining feature of modern systems neuroscience. Aside from improved experimental efficiency, what do these technologies fundamentally buy us? I'll argue that they provide an exciting opportunity to move beyond studying the "average" neural response. That is, by providing dense neural circuit measurements in individual subjects and moments in time, these recordings enable us to track changes across repeated behavioral trials and across experimental subjects. These two forms of variability are still poorly understood, despite their obvious importance to understanding the fidelity and flexibility of neural computations. Scientific progress on these points has been impeded by the fact that individual neurons are very noisy and unreliable. My group is investigating a number of customized statistical models to overcome this challenge. I will mention several of these models but focus particularly on a new framework for quantifying across-subject similarity in stochastic trial-by-trial neural responses. By applying this method to noisy representations in deep artificial networks and in mouse visual cortex, we reveal that the geometry of neural noise correlations is a meaningful feature of variation, which is neglected by current methods (e.g. representational similarity analysis).

SeminarNeuroscienceRecording

Mouse visual cortex as a limited resource system that self-learns an ecologically-general representation

Aran Nayebi
MIT
Nov 1, 2022

Studies of the mouse visual system have revealed a variety of visual brain areas in a roughly hierarchical arrangement, together with a multitude of behavioral capacities, ranging from stimulus-reward associations, to goal-directed navigation, and object-centric discriminations. However, an overall understanding of the mouse’s visual cortex organization, and how this organization supports visual behaviors, remains unknown. Here, we take a computational approach to help address these questions, providing a high-fidelity quantitative model of mouse visual cortex. By analyzing factors contributing to model fidelity, we identified key principles underlying the organization of mouse visual cortex. Structurally, we find that comparatively low-resolution and shallow structure were both important for model correctness. Functionally, we find that models trained with task-agnostic, unsupervised objective functions, based on the concept of contrastive embeddings were substantially better than models trained with supervised objectives. Finally, the unsupervised objective builds a general-purpose visual representation that enables the system to achieve better transfer on out-of-distribution visual, scene understanding and reward-based navigation tasks. Our results suggest that mouse visual cortex is a low-resolution, shallow network that makes best use of the mouse’s limited resources to create a light-weight, general-purpose visual system – in contrast to the deep, high-resolution, and more task-specific visual system of primates.

SeminarNeuroscienceRecording

Norepinephrine links astrocytic activity to regulation of cortical state

Michael Reitman
Poskanzer Lab, UCSF
Jan 25, 2022

Cortical state, defined by the synchrony of population-level neuronal activity, is a key determinant of sensory perception. While many arousal-associated neuromodulators—including norepinephrine (NE)—reduce cortical synchrony, how the cortex resynchronizes following NE signaling remains unknown. Using in vivo two-photon imaging and electrophysiology in mouse visual cortex, we describe a critical role for cortical astrocytes in circuit resynchronization. We characterize astrocytes’ sensitive calcium responses to changes in behavioral arousal and NE, identify that astrocyte signaling precedes increases in cortical synchrony, and demonstrate that astrocyte-specific deletion of Adra1A alters arousal-related cortical synchrony. Our findings demonstrate that astrocytic NE signaling acts as a distinct neuromodulatory pathway, regulating cortical state and linking arousal-associated desynchrony to cortical circuit resynchronization.

SeminarNeuroscienceRecording

Feature selectivity can explain mismatch signals in mouse visual cortex

Tomaso Muzzu
Saleem lab, University College London
Oct 19, 2021

Sensory experience often depends on one’s own actions, including self-motion. Theories of predictive coding postulate that actions are regulated by calculating prediction error, which is the difference between sensory experience and expectation based on self-generated actions. Signals consistent with prediction error have been reported in mouse visual cortex (V1) when visual flow coupled to running was unexpectedly stopped. Here, we show such signals can be elicited by visual stimuli uncoupled to animal’s running. We recorded V1 neurons while presenting drifting gratings that unexpectedly stopped. We found strong responses to visual perturbations, which were enhanced during running. Perturbation responses were strongest in the preferred orientation of individual neurons and perturbation responsive neurons were more likely to prefer slow visual speeds. Our results indicate that prediction error signals can be explained by the convergence of known motor and sensory signals, providing a purely sensory and motor explanation for purported mismatch signals.

SeminarNeuroscienceRecording

Cellular mechanisms behind stimulus evoked quenching of variability

Brent Doiron
University of Chicago
Jan 26, 2021

A wealth of experimental studies show that the trial-to-trial variability of neuronal activity is quenched during stimulus evoked responses. This fact has helped ground a popular view that the variability of spiking activity can be decomposed into two components. The first is due to irregular spike timing conditioned on the firing rate of a neuron (i.e. a Poisson process), and the second is the trial-to-trial variability of the firing rate itself. Quenching of the variability of the overall response is assumed to be a reflection of a suppression of firing rate variability. Network models have explained this phenomenon through a variety of circuit mechanisms. However, in all cases, from the vantage of a neuron embedded within the network, quenching of its response variability is inherited from its synaptic input. We analyze in vivo whole cell recordings from principal cells in layer (L) 2/3 of mouse visual cortex. While the variability of the membrane potential is quenched upon stimulation, the variability of excitatory and inhibitory currents afferent to the neuron are amplified. This discord complicates the simple inheritance assumption that underpins network models of neuronal variability. We propose and validate an alternative (yet not mutually exclusive) mechanism for the quenching of neuronal variability. We show how an increase in synaptic conductance in the evoked state shunts the transfer of current to the membrane potential, formally decoupling changes in their trial-to-trial variability. The ubiquity of conductance based neuronal transfer combined with the simplicity of our model, provides an appealing framework. In particular, it shows how the dependence of cellular properties upon neuronal state is a critical, yet often ignored, factor. Further, our mechanism does not require a decomposition of variability into spiking and firing rate components, thereby challenging a long held view of neuronal activity.

SeminarNeuroscienceRecording

Using large-scale physiology to explore circuit organization in the mouse visual cortex

Saskia de Vries
Allen Institute for Brain Science, Seattle
Oct 12, 2020
ePoster

Reconciling Diverse Experimental Findings on Inhibitory Tuning in the Mouse Visual Cortex

Fereshteh Lagzi, Adrienne Fairhall

Bernstein Conference 2024

ePoster

Coarse-to-fine processing drives the efficient coding of natural scenes in mouse visual cortex

COSYNE 2022

ePoster

Disentangling Fast Representational Drift in Mouse Visual Cortex

COSYNE 2022

ePoster

The dynamical regime of mouse visual cortex shifts from cooperation to competition with increasing visual input

COSYNE 2022

ePoster

Predictability in the spiking activity of mouse visual cortex decreases along the processing hierarchy

COSYNE 2022

ePoster

Predictability in the spiking activity of mouse visual cortex decreases along the processing hierarchy

COSYNE 2022

ePoster

Processing of visual textures in the mouse visual cortex

COSYNE 2022

ePoster

Processing of visual textures in the mouse visual cortex

COSYNE 2022

ePoster

Locomotion is associated with straighter neural trajectories for natural movies in mouse visual cortex

Xingyu Zheng, Maxwell Ruckstuhl, Mohammad Yaghoubi

COSYNE 2023

ePoster

Mouse visual cortex as a limited-resource system that self-learns a task-general representation

Aran Nayebi, Nathan Kong, Chengxu Zhuang, Justin Gardner, Anthony Norcia, Daniel Yamins

COSYNE 2023

ePoster

The neural representation of perceptual uncertainty in mouse visual cortex

Theoklitos Amvrosiadis, Ádám Koblinger, David Liu, Nathalie Rochefort, Máté Lengyel

COSYNE 2023

ePoster

Representational Drift Across Short Timescales in the Mouse Visual Cortex

Kathleen Esfahany & Stefan Mihalas

COSYNE 2023

ePoster

A deep learning framework for center-periphery visual processing in mouse visual cortex

Yuchen Hou, Marius Schneider, Joe Canzano, Jing Peng, Spencer Smith, Michael Beyeler

COSYNE 2025

ePoster

Movie reconstruction from mouse visual cortex activity

Joel Bauer, Troy W. Margrie, Claudia Clopath

COSYNE 2025

ePoster

Structure of spontaneous activity in mouse visual cortex

Ali Haydaroglu, Valentin Schmutz, Michael Krumin, Charu Reddy, Samuel Dodgson, Lanxin Xu, David Meyer, Jingkun Guo, Andrew Landau, Maxwell Shinn, Sophie Skriabine, Alipasha Vaziri, Kenneth Harris, Matteo Carandini

COSYNE 2025

ePoster

Binocular conflict in mouse visual cortex

Mathis Bassler, Lilian Emming, Gerjan Huis In't Veld, Mototaka Suzuki, Cyriel Pennartz

FENS Forum 2024

ePoster

Context-dependent interareal synchronization across mouse visual cortex

Chockalingam Ramanathan, David Eriksson, Julia Veit

FENS Forum 2024

ePoster

Dissociated neurovascular response to microelectrode stimulation in mouse visual cortex under two-photon microscopy and epifluorescence imaging

Alexandra Yonza, Kayeon Kim, Changsi Cai, Anpan Han, Xiyuan Liu, Shelley Fried

FENS Forum 2024

ePoster

Dual-plane 3-photon microscopy in layer 2/3 and 6 of the mouse visual cortex

Matilda Cloves, Troy Margrie

FENS Forum 2024

ePoster

Local versus global illusory-contour processing in mouse visual cortex

Lilian Emming, Mathis Bassler, Gerjan Huis in 't Veld, Mototaka Suzuki, Cyriel Pennartz

FENS Forum 2024

ePoster

Mechanisms controlling representational drift in mouse visual cortex

Uwe Lewin, Joel Bauer, Elizabeth Herbert, Julijana Gjorgjieva, Carl Schoonover, Andrew Fink, Tobias Rose, Tobias Bonhoeffer, Mark Hübener

FENS Forum 2024

ePoster

Ocular dominance columns in mouse visual cortex

Pieter Goltstein, David Laubender, Tobias Bonhoeffer, Mark Hübener

FENS Forum 2024

ePoster

Plasticity of inhibitory transmission from L1 interneurons of the mouse visual cortex

Adrianna Nozownik, Andrea Aguirre, Alberto Bacci, Joana Lourenço

FENS Forum 2024

ePoster

Response modulation dynamics of multi-electrode stimulation in the mouse visual cortex under two-photon microscopy

Kayeon Kim, Alexandra Katherine Isis Yonza, Xiyuan Liu, Anpan Han, Shelley Fried, Changsi Cai

FENS Forum 2024

ePoster

Spatial organization of behavioral signals across the mouse visual cortex

Ali Haydaroglu, Michael Krumin, Jingkun Guo, Alipasha Vaziri, Kenneth Harris, Matteo Carandini

FENS Forum 2024

ePoster

Exploring the Mouse Visual Cortex

Ananna Biswas

Neuromatch 5