RECRUITING

Investigating The Role of Noise Correlations in Learning

Study Overview

This clinical trial focuses on testing the efficacy of different digital interventions to promote re-engagement in cancer-related long-term follow-up care for adolescent and young adult (AYA) survivors of childhood cancer.

Description

A fundamental problem in neuroscience is how the brain computes with noisy neurons. An advantage of population codes is that downstream neurons can pool across multiple neurons to reduce the impact of noise. However, this benefit depends on the noise associated with each neuron being independent. Noise correlations refer to the covariance of noise between pairs of neurons, and such correlations can limit the advantages gained from pooling across large neural populations. Indeed, a large body of theoretical work argues that positive noise correlations between similarly tuned neurons reduce the representational capacity of neural populations and are thus detrimental to neural computation. Despite this apparent disadvantage, such noise correlations are observed across many different brain regions, persist even in well-trained subjects, and are dynamically altered in complex tasks. The investigators have advanced the hypothesis that noise correlations may be a neural mechanism for reducing the dimensionality of learning problems. The viability of this hypothesis has been demonstrated in neural network simulations where noise correlations, when embedded in populations with fixed signal-to-noise ratio, enhance the speed and robustness of learning. Here the investigators aim to empirically test this hypothesis, using a combination of computational modeling, fMRI and pupillometry. Establishing a link between noise correlations and learning would open the door to an investigation into how brains navigate a tradeoff between representational capacity and the speed of learning.

Official Title

Cognitive and Molecular Challenges to Statistical Inference Across Healthy Aging

Quick Facts

Study Start:2024-11-10
Study Completion:2025-05
Study Type:Not specified
Phase:Not Applicable
Enrollment:Not specified
Status:RECRUITING

Study ID

NCT06673303

Participation Criteria

Researchers look for people who fit a certain description, called eligibility criteria. Some examples of these criteria are a person's general health condition or prior treatments.

Ages Eligible for Study:18 Years
Sexes Eligible for Study:ALL
Accepts Healthy Volunteers:Yes
Standard Ages:ADULT, OLDER_ADULT
Inclusion CriteriaExclusion Criteria
  1. * Age above 18
  2. * Normal or correctable vision
  1. * Age under 18
  2. * Claustrophobia
  3. * Color blindness
  4. * Neuroleptics medications
  5. * History of drug abuse and/or alcoholism
  6. * Conditions contraindicated for MRI such as:
  7. * Surgical implant that is not MRI compatible
  8. * Metal fragments in the body
  9. * Tattoo with metallic ink
  10. * Eye diseases / impairment:
  11. * Cataracts
  12. * Macular degeneration
  13. * Retinopathies
  14. * Partial vision loss
  15. * Medical history:
  16. * Stroke
  17. * Traumatic brain injury
  18. * Epilepsy
  19. * Schizophrenia
  20. * Manic depression with symptoms including but not limited to psychosis, mania, delusional thinking, and audio/visual hallucinations.

Contacts and Locations

Study Contact

Matthew Nassar, PhD
CONTACT
6073164932
matthew_nassar@brown.edu
Apoorva Bhandari, PhD
CONTACT
3104631179
apoorva_bhandari@brown.edu

Principal Investigator

Matthew Nassar, PhD
PRINCIPAL_INVESTIGATOR
Brown University

Study Locations (Sites)

Brown University
Providence, Rhode Island, 02906
United States

Collaborators and Investigators

Sponsor: Brown University

  • Matthew Nassar, PhD, PRINCIPAL_INVESTIGATOR, Brown University

Study Record Dates

These dates track the progress of study record and summary results submissions to ClinicalTrials.gov. Study records and reported results are reviewed by the National Library of Medicine (NLM) to make sure they meet specific quality control standards before being posted on the public website.

Study Registration Dates

Study Start Date2024-11-10
Study Completion Date2025-05

Study Record Updates

Study Start Date2024-11-10
Study Completion Date2025-05

Terms related to this study

Keywords Provided by Researchers

  • noise correlations
  • perceptual learning
  • neural network
  • feature dimensions

Additional Relevant MeSH Terms

  • Noise Correlations
  • Learning Quality