Litcius/Paper detail

Scalable and accurate method for neuronal ensemble detection in spiking neural networks

Rubén Herzog, Arturo Morales, Soraya Mora, Joaquín Araya, María-José Escobar, Adrián G. Palacios, Rodrigo Cofré

2021PLoS ONE12 citationsDOIOpen Access PDF

Abstract

We propose a novel, scalable, and accurate method for detecting neuronal ensembles from a population of spiking neurons. Our approach offers a simple yet powerful tool to study ensemble activity. It relies on clustering synchronous population activity (population vectors), allows the participation of neurons in different ensembles, has few parameters to tune and is computationally efficient. To validate the performance and generality of our method, we generated synthetic data, where we found that our method accurately detects neuronal ensembles for a wide range of simulation parameters. We found that our method outperforms current alternative methodologies. We used spike trains of retinal ganglion cells obtained from multi-electrode array recordings under a simple ON-OFF light stimulus to test our method. We found a consistent stimuli-evoked ensemble activity intermingled with spontaneously active ensembles and irregular activity. Our results suggest that the early visual system activity could be organized in distinguishable functional ensembles. We provide a Graphic User Interface, which facilitates the use of our method by the scientific community.

Topics & Concepts

Computer scienceScalabilityPopulationSpiking neural networkArtificial intelligenceCluster analysisArtificial neural networkPattern recognition (psychology)Machine learningDatabaseDemographySociologyNeural dynamics and brain functionNeuroscience and Neural EngineeringPhotoreceptor and optogenetics research