osl-dynamics, a toolbox for modeling fast dynamic brain activity

Chetan Gohil*, Rukuang Huang, Evan Roberts, Mats WJ van Es, Andrew J Quinn, Diego Vidaurre, Mark W Woolrich, Floris P de Lange

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Neural activity contains rich spatiotemporal structure that corresponds to cognition. This includes oscillatory bursting and dynamic activity that span across networks of brain regions, all of which can occur on timescales of tens of milliseconds. While these processes can be accessed through brain recordings and imaging, modeling them presents methodological challenges due to their fast and transient nature. Furthermore, the exact timing and duration of interesting cognitive events are often a priori unknown. Here, we present the OHBA Software Library Dynamics Toolbox (osl-dynamics), a Python-based package that can identify and describe recurrent dynamics in functional neuroimaging data on timescales as fast as tens of milliseconds. At its core are machine learning generative models that are able to adapt to the data and learn the timing, as well as the spatial and spectral characteristics, of brain activity with few assumptions. osl-dynamics incorporates state-of-the-art approaches that can be, and have been, used to elucidate brain dynamics in a wide range of data types, including magneto/electroencephalography, functional magnetic resonance imaging, invasive local field potential recordings, and electrocorticography. It also provides novel summary measures of brain dynamics that can be used to inform our understanding of cognition, behavior, and disease. We hope osl-dynamics will further our understanding of brain function, through its ability to enhance the modeling of fast dynamic processes.
Original languageEnglish
Article numberRP91949
Number of pages25
JournaleLife
Volume12
Early online date29 Jan 2024
DOIs
Publication statusE-pub ahead of print - 29 Jan 2024

Bibliographical note

Funding:
Wellcome Trust (10.35802/215573), Engineering and Physical Sciences Research Council (EP/S02428X/1), Engineering and Physical Sciences Research Council (EP/L016044/1), Wellcome Trust (10.35802/106183), Dementia Research UK (RG94383/RG89702) & Novo Nordisk Fonden (NNF19OC-0054895).

Keywords

  • bursts
  • dynamics
  • machine learning
  • networks
  • Human
  • oscillations
  • brain

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