Model-based detection of putative synaptic connections from spike recordings with latency and type constraints
Model-based detection of putative synaptic connections from spike recordings with latency and type constraints
Abstract Detecting synaptic connections using large-scale extracellular spike recordings presents a statistical challenge. While previous methods often treat the detection of each putative connection as a separate hypothesis test, here we develop a modeling approach that infers synaptic connections while incorporating circuit properties learned from the whole network. We use an extension of the Generalized Linear Model framework to describe the cross-correlograms between pairs of neurons and separate correlograms into two parts: a slowly varying effect due to background fluctuations and a fast, transient effect due to the synapse. We then use the observations from all putative connections in the recording to estimate two network properties: the presynaptic neuron type (excitatory or inhibitory) and the relationship between synaptic latency and distance between neurons. Constraining the presynaptic neuron’s type, synaptic latencies, and time constants improves synapse detection. In data from simulated networks, this model outperforms two previously developed synapse detection methods, especially on the weak connections. We also apply our model to in vitro multielectrode array recordings from mouse somatosensory cortex. Here our model automatically recovers plausible connections from hundreds of neurons, and the properties of the putative connections are largely consistent with previous research.
Ito Shinya、Hafizi Hadi、Stevenson Ian H.、Beggs John M.、Ren Naixin
Santa Cruz Institute for Particle Physics, University of CaliforniaDepartment of Physics, Indiana UniversityDepartment of Psychological Sciences, University of ConnecticutDepartment of Physics, Indiana UniversityDepartment of Psychological Sciences, University of Connecticut
生物科学研究方法、生物科学研究技术生物物理学计算技术、计算机技术
Ito Shinya,Hafizi Hadi,Stevenson Ian H.,Beggs John M.,Ren Naixin.Model-based detection of putative synaptic connections from spike recordings with latency and type constraints[EB/OL].(2025-03-28)[2025-05-01].https://www.biorxiv.org/content/10.1101/2020.02.12.944496.点此复制
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