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1.
Cell Rep ; 43(2): 113785, 2024 Feb 27.
Article in English | MEDLINE | ID: mdl-38363673

ABSTRACT

Synapses preferentially respond to particular temporal patterns of activity with a large degree of heterogeneity that is informally or tacitly separated into classes. Yet, the precise number and properties of such classes are unclear. Do they exist on a continuum and, if so, when is it appropriate to divide that continuum into functional regions? In a large dataset of glutamatergic cortical connections, we perform model-based characterization to infer the number and characteristics of functionally distinct subtypes of synaptic dynamics. In rodent data, we find five clusters that partially converge with transgenic-associated subtypes. Strikingly, the application of the same clustering method in human data infers a highly similar number of clusters, supportive of stable clustering. This nuanced dictionary of functional subtypes shapes the heterogeneity of cortical synaptic dynamics and provides a lens into the basic motifs of information transmission in the brain.


Subject(s)
Lens, Crystalline , Lenses , Animals , Humans , Mice , Animals, Genetically Modified , Brain , Cluster Analysis
2.
PLoS Comput Biol ; 17(3): e1008013, 2021 03.
Article in English | MEDLINE | ID: mdl-33720935

ABSTRACT

Short-term synaptic dynamics differ markedly across connections and strongly regulate how action potentials communicate information. To model the range of synaptic dynamics observed in experiments, we have developed a flexible mathematical framework based on a linear-nonlinear operation. This model can capture various experimentally observed features of synaptic dynamics and different types of heteroskedasticity. Despite its conceptual simplicity, we show that it is more adaptable than previous models. Combined with a standard maximum likelihood approach, synaptic dynamics can be accurately and efficiently characterized using naturalistic stimulation patterns. These results make explicit that synaptic processing bears algorithmic similarities with information processing in convolutional neural networks.


Subject(s)
Linear Models , Nonlinear Dynamics , Synapses/physiology , Synaptic Transmission/physiology , Action Potentials , Algorithms , Likelihood Functions , Models, Neurological , Nerve Net , Neuronal Plasticity , Reproducibility of Results , Stochastic Processes
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