Skip to yearly menu bar Skip to main content


Poster

Scalable Spike Source Localization in Extracellular Recordings using Amortized Variational Inference

Cole Hurwitz · Kai Xu · Akash Srivastava · Alessio Buccino · Matthias Hennig

East Exhibition Hall B, C #148

Keywords: [ Neuroscience and Cognitive Science ] [ Neuroscience ]


Abstract:

Determining the positions of neurons in an extracellular recording is useful for investigating functional properties of the underlying neural circuitry. In this work, we present a Bayesian modelling approach for localizing the source of individual spikes on high-density, microelectrode arrays. To allow for scalable inference, we implement our model as a variational autoencoder and perform amortized variational inference. We evaluate our method on both biophysically realistic simulated and real extracellular datasets, demonstrating that it is more accurate than and can improve spike sorting performance over heuristic localization methods such as center of mass.

Live content is unavailable. Log in and register to view live content