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A taxonomy of neuroscientific strategies based on interaction orders
  • +10
  • Matteo Neri,
  • Andrea Brovelli,
  • Samy Castro,
  • Fausto Fraisopi,
  • Marilyn Gatica,
  • Ruben Herzog,
  • Ivan Mindlin,
  • Pedro Mediano,
  • Giovanni Petri,
  • Daniel Bor,
  • Fernando Rosas,
  • Antonella Tramacere ,
  • Mar Estarellas
Matteo Neri
Aix-Marseille Universite

Corresponding Author:matteblacks98@gmail.com

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Andrea Brovelli
Institut de Neurosciences de la Timone
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Samy Castro
UMR7364
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Fausto Fraisopi
Aix-Marseille Universite
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Marilyn Gatica
Northeastern University London
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Ruben Herzog
Paris Brain Institute
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Ivan Mindlin
Paris Brain Institute
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Pedro Mediano
Imperial College London
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Giovanni Petri
Northeastern University London
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Daniel Bor
Queen Mary University of London
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Fernando Rosas
University of Sussex
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Antonella Tramacere
Roma Tre University
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Mar Estarellas
Queen Mary University of London
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Abstract

In recent decades, neuroscience has advanced with increasingly sophisticated strategies for recording and analyzing brain activity, enabling detailed investigations into the roles of functional units, such as individual neurons, brain regions, and their interactions. Recently, new strategies for the investigation of cognitive functions regard the study of higher-order interactions---that is, the interactions involving more than two brain regions or neurons. While methods focusing on individual units and their interactions at various levels offer valuable and often complementary insights, each approach comes with its own set of limitations. In this context, a conceptual map to categorize and locate diverse strategies could be crucial to orient researchers and guide future research directions. To this end, we define the spectrum of orders of interaction, namely a framework that categorizes the interactions among neurons or brain regions based on the number of elements involved in these interactions. We use a simulation of a toy model and a few case studies to demonstrate the utility and the challenges of the exploration of the spectrum. We conclude by proposing future research directions aimed at enhancing our understanding of brain function and cognition through a more nuanced methodological framework.
19 Aug 2024Submitted to European Journal of Neuroscience
21 Aug 2024Submission Checks Completed
21 Aug 2024Assigned to Editor
25 Aug 2024Review(s) Completed, Editorial Evaluation Pending
30 Aug 2024Reviewer(s) Assigned