Literature DB >> 35360178

Caveats and Nuances of Model-Based and Model-Free Representational Connectivity Analysis.

Hamid Karimi-Rouzbahani1,2, Alexandra Woolgar1, Richard Henson1,3, Hamed Nili4,5.   

Abstract

Brain connectivity analyses have conventionally relied on statistical relationship between one-dimensional summaries of activation in different brain areas. However, summarizing activation patterns within each area to a single dimension ignores the potential statistical dependencies between their multi-dimensional activity patterns. Representational Connectivity Analyses (RCA) is a method that quantifies the relationship between multi-dimensional patterns of activity without reducing the dimensionality of the data. We consider two variants of RCA. In model-free RCA, the goal is to quantify the shared information for two brain regions. In model-based RCA, one tests whether two regions have shared information about a specific aspect of the stimuli/task, as defined by a model. However, this is a new approach and the potential caveats of model-free and model-based RCA are still understudied. We first explain how model-based RCA detects connectivity through the lens of models, and then present three scenarios where model-based and model-free RCA give discrepant results. These conflicting results complicate the interpretation of functional connectivity. We highlight the challenges in three scenarios: complex intermediate models, common patterns across regions, and transformation of representational structure across brain regions. The article is accompanied by scripts (https://osf.io/3nxfa/) that reproduce the results. In each case, we suggest potential ways to mitigate the difficulties caused by inconsistent results. The results of this study shed light on some understudied aspects of RCA, and allow researchers to use the method more effectively.
Copyright © 2022 Karimi-Rouzbahani, Woolgar, Henson and Nili.

Entities:  

Keywords:  functional connectivity; multi-dimensional connectivity; multivariate pattern analysis; representational connectivity analysis; representational similarity analysis

Year:  2022        PMID: 35360178      PMCID: PMC8960982          DOI: 10.3389/fnins.2022.755988

Source DB:  PubMed          Journal:  Front Neurosci        ISSN: 1662-453X            Impact factor:   5.152


  35 in total

1.  Representational dynamics of object recognition: Feedforward and feedback information flows.

Authors:  Erin Goddard; Thomas A Carlson; Nadene Dermody; Alexandra Woolgar
Journal:  Neuroimage       Date:  2016-01-13       Impact factor: 6.556

2.  Spatiotemporal analysis of category and target-related information processing in the brain during object detection.

Authors:  Hamid Karimi-Rouzbahani; Ehsan Vahab; Reza Ebrahimpour; Mohammad Bagher Menhaj
Journal:  Behav Brain Res       Date:  2019-01-14       Impact factor: 3.332

Review 3.  Multi-dimensional connectivity: a conceptual and mathematical review.

Authors:  Alessio Basti; Hamed Nili; Olaf Hauk; Laura Marzetti; Richard N Henson
Journal:  Neuroimage       Date:  2020-07-17       Impact factor: 6.556

4.  Hard-wired feed-forward visual mechanisms of the brain compensate for affine variations in object recognition.

Authors:  Hamid Karimi-Rouzbahani; Nasour Bagheri; Reza Ebrahimpour
Journal:  Neuroscience       Date:  2017-02-27       Impact factor: 3.590

5.  How does the brain solve visual object recognition?

Authors:  James J DiCarlo; Davide Zoccolan; Nicole C Rust
Journal:  Neuron       Date:  2012-02-09       Impact factor: 17.173

6.  Invariant object recognition is a personalized selection of invariant features in humans, not simply explained by hierarchical feed-forward vision models.

Authors:  Hamid Karimi-Rouzbahani; Nasour Bagheri; Reza Ebrahimpour
Journal:  Sci Rep       Date:  2017-10-31       Impact factor: 4.379

7.  Recurrence is required to capture the representational dynamics of the human visual system.

Authors:  Tim C Kietzmann; Courtney J Spoerer; Lynn K A Sörensen; Radoslaw M Cichy; Olaf Hauk; Nikolaus Kriegeskorte
Journal:  Proc Natl Acad Sci U S A       Date:  2019-10-07       Impact factor: 11.205

8.  Spatial and Feature-selective Attention Have Distinct, Interacting Effects on Population-level Tuning.

Authors:  Erin Goddard; Thomas A Carlson; Alexandra Woolgar
Journal:  J Cogn Neurosci       Date:  2022-01-05       Impact factor: 3.420

9.  Resolving human object recognition in space and time.

Authors:  Radoslaw Martin Cichy; Dimitrios Pantazis; Aude Oliva
Journal:  Nat Neurosci       Date:  2014-01-26       Impact factor: 24.884

10.  Multivariate pattern dependence.

Authors:  Stefano Anzellotti; Alfonso Caramazza; Rebecca Saxe
Journal:  PLoS Comput Biol       Date:  2017-11-20       Impact factor: 4.475

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