Tese de Doutoramento
Inter-area communication in the brain: a population-level approach
2018
—Informações chave
Autores:
Orientadores:
Publicado em
24/04/2018
Resumo
All brain functions, from seeing and moving to thinking, rely on the interaction of multiple, functionally distinct brain areas. We know, however, very little about how different areas interact at the level of networks of neurons, or what mechanisms are used to control the routing of information through the brain. Only very recently has technology evolved to the point where we can simultaneously monitor multiple neurons in various brain areas. While such experiments enable a host of new and exciting questions about inter-area interaction, they also pose significant analysis and interpretation challenges. Here, we approach the problem of studying population-level interactions across brain areas using dimensionality reduction methods. In short, dimensionality reductions methods extract a small set of latent variables that summarize a given aspect of the data. Traditionally, these methods have been used to extract low-dimensional summaries of the population activity structure within a brain area. We propose to instead extract a set of latent variables that summarize the interaction between brain areas, i.e., instead of capturing the dominant features of the activity within an area, they capture the features that are relevant to its downstream targets. We used this approach to characterize both the population-level structure and the dynamics of the interactions between populations of neurons in two cortical areas, visual areas V1 and V2. We found that V1-V2 interactions occur through a communication subspace: V2 fluctuations are related to a small subset of V1 population activity patterns, distinct from the largest fluctuations shared among neurons within V1. We propose that the communication subspace may be a general, population-level mechanism by which activity can be selectively routed across brain areas. Furthermore, we found these interactions to be dynamic and flexible, changing rapidly under different stimulus contexts. This work thus provides a foundation for studying how multiple populations of neurons interact and how this interaction supports brain function.
Detalhes da publicação
Autores da comunidade :
João Miguel Dias Marques Semedo
ist162839
Orientadores desta instituição:
RENATES TID
101607741
Designação
Doutoramento em Engenharia Electrotécnica e de Computadores
Domínio Científico (FOS)
electrical-engineering-electronic-engineering-information-engineering - Engenharia Eletrotécnica, Eletrónica e Informática
Idioma da publicação (código ISO)
eng - Inglês
Acesso à publicação:
Embargo levantado
Data do fim do embargo:
24/01/2019
Nome da instituição
Instituto Superior Técnico
Entidade financiadora da bolsa/projeto
Fundação para a Ciência e a Tecnologia
Entidade financiadora da bolsa/projeto
Simons Foundation