Main Menu (Mobile)- Block
- Overview
-
Support Teams
- Overview
- Anatomy and Histology
- Cryo-Electron Microscopy
- Electron Microscopy
- Flow Cytometry
- Gene Targeting and Transgenics
- High Performance Computing
- Immortalized Cell Line Culture
- Integrative Imaging
- Invertebrate Shared Resource
- Janelia Experimental Technology
- Mass Spectrometry
- Media Prep
- Molecular Genomics
- Primary & iPS Cell Culture
- Project Pipeline Support
- Project Technical Resources
- Quantitative Genomics
- Scientific Computing
- Viral Tools
- Vivarium
- Open Science
- You + Janelia
- About Us
Main Menu - Block
- Overview
- Anatomy and Histology
- Cryo-Electron Microscopy
- Electron Microscopy
- Flow Cytometry
- Gene Targeting and Transgenics
- High Performance Computing
- Immortalized Cell Line Culture
- Integrative Imaging
- Invertebrate Shared Resource
- Janelia Experimental Technology
- Mass Spectrometry
- Media Prep
- Molecular Genomics
- Primary & iPS Cell Culture
- Project Pipeline Support
- Project Technical Resources
- Quantitative Genomics
- Scientific Computing
- Viral Tools
- Vivarium
Abstract
fMRI signals were traditionally seen as slow and sampled in the order of seconds, but recent technological advances have enabled much faster sampling rates. We hypothesized that high-frequency fMRI signals can capture spontaneous neural activity that index brain states. Using fast fMRI (TR=378ms) and simultaneous EEG in 27 humans drifting between sleep and wakefulness, we found that fMRI spectral power increased during NREM sleep (compared to wakefulness) across several frequency ranges as fast as 1Hz. This fast fMRI power was correlated with canonical arousal-linked EEG rhythms (alpha and delta), with spatiotemporal correlation patterns for each rhythm reflecting a combination of shared arousal dynamics and rhythm-specific neural signatures. Using machine learning, we found that alpha and delta EEG rhythms can be decoded from fast fMRI signals, in subjects held-out from the training set, showing that fMRI as fast as 0.9Hz (alpha) and 0.7Hz (delta) contains reliable neurally-coupled information that generalizes across individuals. Finally, we demonstrate that this fast fMRI acquisition allows for EEG rhythms to be decoded from 3.8s windows of fMRI data. These results reveal that high-frequency fMRI signals are coupled to dynamically varying brain states, and that fast fMRI sampling allows for more temporally precise quantification of spontaneous neural activity than previously thought possible.

