TopicNeuroscience
Content Overview
9Total items
5ePosters
3Seminars
1Position

Latest

PositionNeuroscience

Lorenzo Fontolan

Institute de Neuroscience de la Mediterranée (INMED), Aix-Marseille University
Marseille, France
Feb 9, 2026

We are pleased to announce the opening of a PhD position at INMED (Aix-Marseille University) through the SCHADOC program, focused on the neural coding of social interactions and memory in the cortex of behaving mice. The project will investigate how social behaviors essential for cooperation, mating, and group dynamics are encoded in the brain, and how these processes are disrupted in neurodevelopmental disorders such as autism. This project uses longitudinal calcium imaging and population-level data analysis to study how cortical circuits encode social interactions in mice. Recordings from mPFC and S1 in wild-type and Neurod2 KO mice will be used to extract neural representations of social memory. The candidate will develop and apply computational models of neural dynamics and representational geometry to uncover how these codes evolve over time and are disrupted in social amnesia.

SeminarNeuroscience

Intrinsic Geometry of a Combinatorial Sensory Neural Code for Birdsong

Tim Gentner
University of California, San Diego, USA
Nov 9, 2022

Understanding the nature of neural representation is a central challenge of neuroscience. One common approach to this challenge is to compute receptive fields by correlating neural activity with external variables drawn from sensory signals. But these receptive fields are only meaningful to the experimenter, not the organism, because only the experimenter has access to both the neural activity and knowledge of the external variables. To understand neural representation more directly, recent methodological advances have sought to capture the intrinsic geometry of sensory driven neural responses without external reference. To date, this approach has largely been restricted to low-dimensional stimuli as in spatial navigation. In this talk, I will discuss recent work from my lab examining the intrinsic geometry of sensory representations in a model vocal communication system, songbirds. From the assumption that sensory systems capture invariant relationships among stimulus features, we conceptualized the space of natural birdsongs to lie on the surface of an n-dimensional hypersphere. We computed composite receptive field models for large populations of simultaneously recorded single neurons in the auditory forebrain and show that solutions to these models define convex regions of response probability in the spherical stimulus space. We then define a combinatorial code over the set of receptive fields, realized in the moment-to-moment spiking and non-spiking patterns across the population, and show that this code can be used to reconstruct high-fidelity spectrographic representations of natural songs from evoked neural responses. Notably, we find that topological relationships among combinatorial codewords directly mirror acoustic relationships among songs in the spherical stimulus space. That is, the time-varying pattern of co-activity across the neural population expresses an intrinsic representational geometry that mirrors the natural, extrinsic stimulus space.  Combinatorial patterns across this intrinsic space directly represent complex vocal communication signals, do not require computation of receptive fields, and are in a form, spike time coincidences, amenable to biophysical mechanisms of neural information propagation.

SeminarNeuroscience

Geometry of sequence working memory in macaque prefrontal cortex

Nikita Otstavnov
HSE University
Apr 21, 2022

How the brain stores a sequence in memory remains largely unknown. We investigated the neural code underlying sequence working memory using two-photon calcium imaging to record thousands of neurons in the prefrontal cortex of macaque monkeys memorizing and then reproducing a sequence of locations after a delay. We discovered a regular geometrical organization: The high-dimensional neural state space during the delay could be decomposed into a sum of low-dimensional subspaces, each storing the spatial location at a given ordinal rank, which could be generalized to novel sequences and explain monkey behavior. The rank subspaces were distributed across large overlapping neural groups, and the integration of ordinal and spatial information occurred at the collective level rather than within single neurons. Thus, a simple representational geometry underlies sequence working memory.

SeminarNeuroscienceRecording

Geometry of Neural Computation Unifies Working Memory and Planning

John D. Murray
Yale University School of Medicine
Jun 18, 2020

Cognitive tasks typically require the integration of working memory, contextual processing, and planning to be carried out in close coordination. However, these computations are typically studied within neuroscience as independent modular processes in the brain. In this talk I will present an alternative view, that neural representations of mappings between expected stimuli and contingent goal actions can unify working memory and planning computations. We term these stored maps contingency representations. We developed a "conditional delayed logic" task capable of disambiguating the types of representations used during performance of delay tasks. Human behaviour in this task is consistent with the contingency representation, and not with traditional sensory models of working memory. In task-optimized artificial recurrent neural network models, we investigated the representational geometry and dynamical circuit mechanisms supporting contingency-based computation, and show how contingency representation explains salient observations of neuronal tuning properties in prefrontal cortex. Finally, our theory generates novel and falsifiable predictions for single-unit and population neural recordings.

ePosterNeuroscience

The representational geometry of social memory in the hippocampus

Lorenzo Posani,Lara Boyle,Sarah Irfan,Steven A. Siegelbaum,Stefano Fusi

COSYNE 2022

ePosterNeuroscience

The representational geometry of social memory in the hippocampus

Lorenzo Posani,Lara Boyle,Sarah Irfan,Steven A. Siegelbaum,Stefano Fusi

COSYNE 2022

ePosterNeuroscience

Neuronal implementation of the representational geometry in prefrontal working memory

Xiaoxiong Lin,Simon Jacob

COSYNE 2022

ePosterNeuroscience

Neuronal implementation of the representational geometry in prefrontal working memory

Xiaoxiong Lin,Simon Jacob

COSYNE 2022

ePosterNeuroscience

Predictive learning shapes the representational geometry of the human brain

Antonino Greco, Julia Moser, Hubert Preissl, Markus Siegel

FENS Forum 2024

representational geometry coverage

9 items

ePoster5
Seminar3
Position1

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