Modelling thalamocortical circuitry shows that visually induced LTP changes laminar connectivity in human visual cortex.
Rachael L SumnerMeg J SpriggsAlexander D ShawPublished in: PLoS computational biology (2021)
Neuroplasticity is essential to learning and memory in the brain; it has therefore also been implicated in numerous neurological and psychiatric disorders, making measuring the state of neuroplasticity of foremost importance to clinical neuroscience. Long-term potentiation (LTP) is a key mechanism of neuroplasticity and has been studied extensively, and invasively in non-human animals. Translation to human application largely relies on the validation of non-invasive measures of LTP. The current study presents a generative thalamocortical computational model of visual cortex for investigating and replicating interlaminar connectivity changes using non-invasive EEG recording of humans. The model is combined with a commonly used visual sensory LTP paradigm and fit to the empirical EEG data using dynamic causal modelling. The thalamocortical model demonstrated remarkable accuracy recapitulating post-tetanus changes seen in invasive research, including increased excitatory connectivity from thalamus to layer IV and from layer IV to II/III, established major sites of LTP in visual cortex. These findings provide justification for the implementation of the presented thalamocortical model for ERP research, including to provide increased detail on the nature of changes that underlie LTP induced in visual cortex. Future applications include translating rodent findings to non-invasive research in humans concerning deficits to LTP that may underlie neurological and psychiatric disease.
Keyphrases
- resting state
- functional connectivity
- endothelial cells
- high glucose
- white matter
- induced pluripotent stem cells
- healthcare
- diabetic rats
- mental health
- pluripotent stem cells
- drug induced
- traumatic brain injury
- machine learning
- multidrug resistant
- working memory
- cerebral ischemia
- multiple sclerosis
- oxidative stress
- subarachnoid hemorrhage
- brain injury
- deep learning