| Literature DB >> 30341589 |
Han Wang1, Kun Xie2, Li Xie3, Xiang Li4, Meng Li2, Cheng Lyu4, Hanbo Chen4, Yaowu Chen5, Xuesong Liu6, Joe Tsien2, Tianming Liu7.
Abstract
Exploration of brain dynamics patterns has attracted increasing attention due to its fundamental significance in understanding the working mechanism of the brain. However, due to the lack of effective modeling methods, how the simultaneously recorded LFP can inform us about the brain dynamics remains a general challenge. In this paper, we propose a novel sparse coding based method to investigate brain dynamics of freely-behaving mice from the perspective of functional connectivity, using super-long local field potential (LFP) recordings from 13 distinct regions of the mouse brain. Compared with surrogate datasets, six and four reproducible common functional connectivities were discovered to represent the space of brain dynamics in the frequency bands of alpha and theta respectively. Modeled by a finite state machine, temporal transition framework of functional connectivities was inferred for each frequency band, and evident preference was discovered. Our results offer a novel perspective for analyzing neural recording data at such high temporal resolution and recording length, as common functional connectivities and their transition framework discovered in this work reveal the nature of the brain dynamics in freely behaving mice.Entities:
Keywords: Brain dynamics; Freely behaving; Local field potential (LFP); Sparse coding; Volume conduction
Mesh:
Year: 2018 PMID: 30341589 PMCID: PMC6374165 DOI: 10.1007/s10548-018-0682-3
Source DB: PubMed Journal: Brain Topogr ISSN: 0896-0267 Impact factor: 3.020