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Abstract

Dendrites have always fascinated researchers: from the artistic drawings by Ramon y Cajal to the beautiful recordings of today, neuroscientists have been striving to unravel the mysteries of these structures. Theoretical work in the 1960s predicted important dendritic effects on neuronal processing, establishing computational modelling as a powerful technique for their investigation. Since then, modelling of dendrites has been instrumental in driving neuroscience research in a targeted manner, providing experimentally testable predictions that range from the subcellular level to the systems level, and their relevance extends to fields beyond neuroscience, such as machine learning and artificial intelligence. Validation of modelling predictions often requires — and drives — new technological advances, thus closing the loop with theory-driven experimentation that moves the field forward. This Review features the most important, to our understanding, contributions of modelling of dendritic computations, including those pending experimental verification, and highlights studies of successful interactions between the modelling and experimental neuroscience communities.

Models of dendrites have been instrumental in our understanding of their functions. Poirazi and Papoutsi review the major contributions of dendritic models, including those already proved or waiting to be experimentally verified, and highlight successful interactions between the modelling and experimental neuroscience communities.

Details

Title
Illuminating dendritic function with computational models
Author
Poirazi Panayiota 1   VIAFID ORCID Logo  ; Papoutsi Athanasia 1 

 Foundation for Research & Technology — Hellas, Institute of Molecular Biology & Biotechnology, Heraklion, Greece (GRID:grid.4834.b) (ISNI:0000 0004 0635 685X) 
Pages
303-321
Publication year
2020
Publication date
Jun 2020
Publisher
Nature Publishing Group
ISSN
1471003X
e-ISSN
14710048
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2405595582
Copyright
© Springer Nature Limited 2020.