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Data-driven discovery of canonical large-scale brain dynamics. | LitMetric

AI Article Synopsis

  • Human behavior and cognitive functions are linked to complex brain dynamics that can be modeled using computational simulations with varying realism.
  • A data-driven optimization algorithm was used to analyze local brain dynamics, leading to findings of stable spiral attractors that help replicate data obtained from functional magnetic resonance imaging (fMRI).
  • The study revealed that brain states like wakefulness benefit from being close to a bifurcation which enhances simulation accuracy, while deep sleep shows more stability, suggesting noise-driven dynamics are important for understanding brain activity patterns.

Article Abstract

Human behavior and cognitive function correlate with complex patterns of spatio-temporal brain dynamics, which can be simulated using computational models with different degrees of biophysical realism. We used a data-driven optimization algorithm to determine and classify the types of local dynamics that enable the reproduction of different observables derived from functional magnetic resonance recordings. The phase space analysis of the resulting equations revealed a predominance of stable spiral attractors, which optimized the similarity to the empirical data in terms of the synchronization, metastability, and functional connectivity dynamics. For stable limit cycles, departures from harmonic oscillations improved the fit in terms of functional connectivity dynamics. Eigenvalue analyses showed that proximity to a bifurcation improved the accuracy of the simulation for wakefulness, whereas deep sleep was associated with increased stability. Our results provide testable predictions that constrain the landscape of suitable biophysical models, while supporting noise-driven dynamics close to a bifurcation as a canonical mechanism underlying the complex fluctuations that characterize endogenous brain activity.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9721525PMC
http://dx.doi.org/10.1093/texcom/tgac045DOI Listing

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