2022
DOI: 10.3389/fnint.2022.929052
|View full text |Cite
|
Sign up to set email alerts
|

New insights on single-neuron selectivity in the era of population-level approaches

Abstract: In the past, neuroscience was focused on individual neurons seen as the functional units of the nervous system, but this approach fell short over time to account for new experimental evidence, especially for what concerns associative and motor cortices. For this reason and thanks to great technological advances, a part of modern research has shifted the focus from the responses of single neurons to the activity of neural ensembles, now considered the real functional units of the system. However, on a microscal… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
1
1

Citation Types

0
2
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
3
2
2

Relationship

0
7

Authors

Journals

citations
Cited by 9 publications
(2 citation statements)
references
References 74 publications
0
2
0
Order By: Relevance
“…The analysis of the selectivity of neuronal activity at single neuron and network levels has contributed greatly to our understanding of cognitive function and representations learned by the brain (Watkins and Berkley, 1974 ; De Baene et al, 2008 ; Decramer et al, 2019 ; Packheiser et al, 2021 ; Vaccari et al, 2022 ). Similarly, understanding the representations learned by Deep RL agents and how they relate to the current task has been of great interest early on (Mnih et al, 2015 ), and they have proven to be a useful tool in understanding the emergence of spatial representations, e.g., grid cells (Banino et al, 2018 ) and place cells (Vijayabaskaran and Cheng, 2022 ), and units encoding for other task-relevant variables (Wang et al, 2018 ; Cross et al, 2021 ), e.g., time cells (Lin and Richards, 2021 ).…”
Section: Discussionmentioning
confidence: 99%
“…The analysis of the selectivity of neuronal activity at single neuron and network levels has contributed greatly to our understanding of cognitive function and representations learned by the brain (Watkins and Berkley, 1974 ; De Baene et al, 2008 ; Decramer et al, 2019 ; Packheiser et al, 2021 ; Vaccari et al, 2022 ). Similarly, understanding the representations learned by Deep RL agents and how they relate to the current task has been of great interest early on (Mnih et al, 2015 ), and they have proven to be a useful tool in understanding the emergence of spatial representations, e.g., grid cells (Banino et al, 2018 ) and place cells (Vijayabaskaran and Cheng, 2022 ), and units encoding for other task-relevant variables (Wang et al, 2018 ; Cross et al, 2021 ), e.g., time cells (Lin and Richards, 2021 ).…”
Section: Discussionmentioning
confidence: 99%
“…Previous studies have primarily focused on the processing and integration of independent features (Campo et al, 2021; Spence, 2020), such as smell, touch, taste, and sight, to fabricate the unified experience of enjoying a cup of coffee. This integration typically involves neurons that exhibit either pure selectivity, allowing for precise processing and interpretation of specific features (Vaccari et al, 2022; Weinberger, 1995), or mixed selectivity, encoding combinations of multiple features to enhance the brain’s computational flexibility and efficiency (Fusi et al, 2016; Kira et al, 2023; Ledergerber et al, 2021; Ma et al, 2023; Rigotti et al, 2013). Nonetheless, the simultaneous encoding of interdependent features, exemplified by HD and its temporal derivative, AHV, poses a great challenge, which requires a delicate balance between preserving specificity for each individual feature to prevent mutual interference and maintaining their interdependency nature, given the crucial role of AHV in updating HD.…”
Section: Introductionmentioning
confidence: 99%