Analysis of Brain States from Multi-Region LFP Time-Series

Ulrich, Kyle R., Carlson, David E., Lian, Wenzhao, Borg, Jana S., Dzirasa, Kafui, Carin, Lawrence

Neural Information Processing Systems 

The local field potential (LFP) is a source of information about the broad patterns of brain activity, and the frequencies present in these time-series measurements are often highly correlated between regions. It is believed that these regions may jointly constitute a brain state,'' relating to cognition and behavior. An infinite hidden Markov model (iHMM) is proposed to model the evolution of brain states, based on electrophysiological LFP data measured at multiple brain regions. A brain state influences the spectral content of each region in the measured LFP. A new state-dependent tensor factorization is employed across brain regions, and the spectral properties of the LFPs are characterized in terms of Gaussian processes (GPs).