Spontaneous persistent activity and inactivity in vivo reveals differential cortico-entorhinal functional connectivity.
Krishna ChoudharySven BerberichThomas T G HahnJames M McFarlandMayank R MehtaPublished in: Nature communications (2024)
Understanding the functional connectivity between brain regions and its emergent dynamics is a central challenge. Here we present a theory-experiment hybrid approach involving iteration between a minimal computational model and in vivo electrophysiological measurements. Our model not only predicted spontaneous persistent activity (SPA) during Up-Down-State oscillations, but also inactivity (SPI), which has never been reported. These were confirmed in vivo in the membrane potential of neurons, especially from layer 3 of the medial and lateral entorhinal cortices. The data was then used to constrain two free parameters, yielding a unique, experimentally determined model for each neuron. Analytic and computational analysis of the model generated a dozen quantitative predictions about network dynamics, which were all confirmed in vivo to high accuracy. Our technique predicted functional connectivity; e. g. the recurrent excitation is stronger in the medial than lateral entorhinal cortex. This too was confirmed with connectomics data. This technique uncovers how differential cortico-entorhinal dialogue generates SPA and SPI, which could form an energetically efficient working-memory substrate and influence the consolidation of memories during sleep. More broadly, our procedure can reveal the functional connectivity of large networks and a theory of their emergent dynamics.
Keyphrases
- functional connectivity
- resting state
- working memory
- minimally invasive
- electronic health record
- multiple sclerosis
- high resolution
- gene expression
- risk assessment
- spinal cord
- depressive symptoms
- spinal cord injury
- dna methylation
- climate change
- single cell
- deep learning
- sleep quality
- energy transfer
- network analysis