Latest

SeminarNeuroscienceRecording

Virtual Brain Twins for Brain Medicine and Epilepsy

Viktor Jirsa
Aix Marseille Université - Inserm
Nov 8, 2023

Over the past decade we have demonstrated that the fusion of subject-specific structural information of the human brain with mathematical dynamic models allows building biologically realistic brain network models, which have a predictive value, beyond the explanatory power of each approach independently. The network nodes hold neural population models, which are derived using mean field techniques from statistical physics expressing ensemble activity via collective variables. Our hybrid approach fuses data-driven with forward-modeling-based techniques and has been successfully applied to explain healthy brain function and clinical translation including aging, stroke and epilepsy. Here we illustrate the workflow along the example of epilepsy: we reconstruct personalized connectivity matrices of human epileptic patients using Diffusion Tensor weighted Imaging (DTI). Subsets of brain regions generating seizures in patients with refractory partial epilepsy are referred to as the epileptogenic zone (EZ). During a seizure, paroxysmal activity is not restricted to the EZ, but may recruit other healthy brain regions and propagate activity through large brain networks. The identification of the EZ is crucial for the success of neurosurgery and presents one of the historically difficult questions in clinical neuroscience. The application of latest techniques in Bayesian inference and model inversion, in particular Hamiltonian Monte Carlo, allows the estimation of the EZ, including estimates of confidence and diagnostics of performance of the inference. The example of epilepsy nicely underwrites the predictive value of personalized large-scale brain network models. The workflow of end-to-end modeling is an integral part of the European neuroinformatics platform EBRAINS and enables neuroscientists worldwide to build and estimate personalized virtual brains.

SeminarNeuroscienceRecording

Nonlinear neural network dynamics accounts for human confidence in a sequence of perceptual decisions

Kevin Berlemont
Wang Lab, NYU Center for Neural Science
Sep 21, 2022

Electrophysiological recordings during perceptual decision tasks in monkeys suggest that the degree of confidence in a decision is based on a simple neural signal produced by the neural decision process. Attractor neural networks provide an appropriate biophysical modeling framework, and account for the experimental results very well. However, it remains unclear whether attractor neural networks can account for confidence reports in humans. We present the results from an experiment in which participants are asked to perform an orientation discrimination task, followed by a confidence judgment. Here we show that an attractor neural network model quantitatively reproduces, for each participant, the relations between accuracy, response times and confidence. We show that the attractor neural network also accounts for confidence-specific sequential effects observed in the experiment (participants are faster on trials following high confidence trials), as well as non confidence-specific sequential effects. Remarkably, this is obtained as an inevitable outcome of the network dynamics, without any feedback specific to the previous decision (that would result in, e.g., a change in the model parameters before the onset of the next trial). Our results thus suggest that a metacognitive process such as confidence in one’s decision is linked to the intrinsically nonlinear dynamics of the decision-making neural network.

SeminarNeuroscienceRecording

Does human perception rely on probabilistic message passing?

Alex Hyafil
CRM, Barcelona
Dec 22, 2021

The idea that perception in humans relies on some form of probabilistic computations has become very popular over the last decades. It has been extremely difficult however to characterize the extent and the nature of the probabilistic representations and operations that are manipulated by neural populations in the human cortex. Several theoretical works suggest that probabilistic representations are present from low-level sensory areas to high-level areas. According to this view, the neural dynamics implements some forms of probabilistic message passing (i.e. neural sampling, probabilistic population coding, etc.) which solves the problem of perceptual inference. Here I will present recent experimental evidence that human and non-human primate perception implements some form of message passing. I will first review findings showing probabilistic integration of sensory evidence across space and time in primate visual cortex. Second, I will show that the confidence reports in a hierarchical task reveal that uncertainty is represented both at lower and higher levels, in a way that is consistent with probabilistic message passing both from lower to higher and from higher to lower representations. Finally, I will present behavioral and neural evidence that human perception takes into account pairwise correlations in sequences of sensory samples in agreement with the message passing hypothesis, and against standard accounts such as accumulation of sensory evidence or predictive coding.

SeminarNeuroscienceRecording

Timing errors and decision making

Fuat Balci
University of Manitoba
Nov 30, 2021

Error monitoring refers to the ability to monitor one's own task performance without explicit feedback. This ability is studied typically in two-alternative forced-choice (2AFC) paradigms. Recent research showed that humans can also keep track of the magnitude and direction of errors in different magnitude domains (e.g., numerosity, duration, length). Based on the evidence that suggests a shared mechanism for magnitude representations, we aimed to investigate whether metric error monitoring ability is commonly governed across different magnitude domains. Participants reproduced/estimated temporal, numerical, and spatial magnitudes after which they rated their confidence regarding first order task performance and judged the direction of their reproduction/estimation errors. Participants were also tested in a 2AFC perceptual decision task and provided confidence ratings regarding their decisions. Results showed that variability in reproductions/estimations and metric error monitoring ability, as measured by combining confidence and error direction judgements, were positively related across temporal, spatial, and numerical domains. Metacognitive sensitivity in these metric domains was also positively associated with each other but not with metacognitive sensitivity in the 2AFC perceptual decision task. In conclusion, the current findings point at a general metric error monitoring ability that is shared across different metric domains with limited generalizability to perceptual decision-making.

SeminarNeuroscienceRecording

Detecting Covert Cognitive States from Neural Population Recordings in Prefrontal Cortex

William Newsome
Stanford University
Jul 1, 2020

The neural mechanisms underlying decision-making are typically examined by statistical analysis of large numbers of trials from sequentially recorded single neurons. Averaging across sequential recordings, however, obscures important aspects of decision-making such as variations in confidence and 'changes of mind' (CoM) that occur at variable times on different trials. I will show that the covert decision variables (DV) can be tracked dynamically on single behavioral trials via simultaneous recording of large neural populations in prefrontal cortex. Vacillations of the neural DV, in turn, identify candidate CoM in monkeys, which closely match the known properties of human CoM. Thus simultaneous population recordings can provide insight into transient, internal cognitive states that are otherwise undetectable.

ePosterNeuroscience

Confidence-guided waiting as an evidence accumulation process

Tyler Boyd-Meredith,Carlos D. Brody,Alex Piet

COSYNE 2022

ePosterNeuroscience

Rats employ a task general strategy to report calibrated confidence during learning

Amelia Christensen,Torben Ott,Steven Ryu,Adam Kepecs

COSYNE 2022

ePosterNeuroscience

Rats employ a task general strategy to report calibrated confidence during learning

Amelia Christensen,Torben Ott,Steven Ryu,Adam Kepecs

COSYNE 2022

ePosterNeuroscience

Population activity in sensory cortex informs confidence in a perceptual decision

Zoe Boundy-Singer, Corey M Ziemba, Robbe Goris

COSYNE 2023

ePosterNeuroscience

Sensory population activity reveals confidence computations in the primate visual system

Zoe Boundy-Singer, Corey Ziemba, Robbe Goris

COSYNE 2025

ePosterNeuroscience

Anatomical and functional dissection of orbitofrontal cortex neurons' contributions to decision confidence

Paul Anderson, Mirjam Lambourne, Romana Hauer, Thomas Klausberger

FENS Forum 2024

ePosterNeuroscience

Extrastriatal dopamine differentially modulates erroneous perceptual confidence

Matthaeus Willeit, Irena Dajic, Ulrich Sauerzopf, Lukas Nics, Wolfgang Wadsak, Markus Mitterhauser, Cecile Philippe, Marcus Hacker, Chris Mathys, Chris Eisenegger, Nicole Praschak-Rieder, Nace Mikus, Ana Weidenauer

FENS Forum 2024

ePosterNeuroscience

Self-reported cognitive confidence and negative beliefs about thinking predict metacognitive sensitivity in a pilot transcranial direct current stimulation (tDCS) experiment

Daniele Saccenti, Andrea Stefano Moro, Sandra Sassaroli, Mattia Ferro, Jacopo Lamanna

FENS Forum 2024

ePosterNeuroscience

Confidence-weighted nociceptive learning: behavioral evidences and EEG correlates

Dounia Mulders

Neuromatch 5

ePosterNeuroscience

Putting the Bayesian confidence hypothesis to rest

Kai Xue

Neuromatch 5

confidence coverage

16 items

ePoster10
Seminar6
Domain spotlight

Explore how confidence research is advancing inside Neuro.

Visit domain