Generalized brain-state modeling with KenazLBM
Abstract
The large-scale functional state of a human brain remains difficult to characterize, much less predict. Regardless, humans have engineered techniques to electrically neuromodulate the brain to treat a subset of neurologic and psychiatric diseases with moderate efficacy. Accurate characterization of a brain’s instantaneous functional state has stymied the development of more effective neuromodulation paradigms. Advanced computational methods are required to address this gap and enable large-scale neuroscience. Here we define the concept of generalized brain-state modeling across humans as Large Brain-State Modeling (LBM) and present KenazLBM as the world’s first example. KenazLBM can instantaneously characterize the functional state of a person’s brain with raw iEEG data, and predict future brain-states. KenazLBM was trained on over 17.9 billion unique multichannel tokens from people undergoing intracranial electroencephalography (iEEG) recordings, and has learned to meld brain-states between people into a common interpretable topology. Most importantly, the model generalizes to unseen subject data with significant recording channel heterogeneity from the training set. We offer KenazLBM as a first generalized brain-state model to serve as a new paradigm of basic neuroscience inquiry and potential translation into neuromodulation therapeutics.
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