| Literature DB >> 36249900 |
Francesco Edoardo Vaccari1, Stefano Diomedi1, Matteo Filippini1,2, Kostas Hadjidimitrakis1, Patrizia Fattori1,2.
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 microscale, individual neurons remain the computational components of these networks, thus the study of population dynamics cannot prescind from studying also individual neurons which represent their natural substrate. In this new framework, ideas such as the capability of single cells to encode a specific stimulus (neural selectivity) may become obsolete and need to be profoundly revised. One step in this direction was made by introducing the concept of "mixed selectivity," the capacity of single cells to integrate multiple variables in a flexible way, allowing individual neurons to participate in different networks. In this review, we outline the most important features of mixed selectivity and we also present recent works demonstrating its presence in the associative areas of the posterior parietal cortex. Finally, in discussing these findings, we present some open questions that could be addressed by future studies.Entities:
Keywords: mixed selectivity; motor control; multisensory integration; neural code; neural networks; posterior parietal cortex
Year: 2022 PMID: 36249900 PMCID: PMC9554653 DOI: 10.3389/fnint.2022.929052
Source DB: PubMed Journal: Front Integr Neurosci ISSN: 1662-5145
Figure 1Schematic representation of neural populations with different types of encoding. Left: a population composed of neurons selective for one feature of the stimulus (blue circles) or responding to a fixed combination of features (yellow/red circles). In this situation, two cell categories can be identified. Right: a population characterized by mixed selectivity for the three features: a few units are strictly selective for a specific feature (e.g., the wide red circle), but most of them respond to different combinations of features. In this case, it is not possible to identify cell categories and the information is distributed across the network.
Figure 2Mixed selectivity studies in the posterior parietal cortex across different animal species. (A–C) In rodents; (D–F) in macaques; and (G) in humans. Due to the heterogeneity of this region, the features tested in each work depended on the parietal area of interest. Mixed selectivity has been found in all studies, but not in the human AIP (“partially mixed selectivity”). (A) Navigation-based decision task. (B) Decision-making task. (C) Pursuit vs. foraging navigation task. (D) Dot motion discrimination task. (E) Delayed match-to category task. (F) Delayed foveated reaching task. (G) Delayed movement task.