Learnable latent embeddings for joint behavioral and neural analysis
- URL: http://arxiv.org/abs/2204.00673v1
- Date: Fri, 1 Apr 2022 19:19:33 GMT
- Title: Learnable latent embeddings for joint behavioral and neural analysis
- Authors: Steffen Schneider, Jin Hwa Lee, Mackenzie Weygandt Mathis
- Abstract summary: We show that CEBRA can be used for the mapping of space, uncovering complex kinematic features, and rapid, high-accuracy decoding of natural movies from visual cortex.
We validate its accuracy and demonstrate its utility for both calcium and electrophysiology datasets, across sensory and motor tasks, and in simple or complex behaviors across species.
- Score: 3.6062449190184136
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Mapping behavioral actions to neural activity is a fundamental goal of
neuroscience. As our ability to record large neural and behavioral data
increases, there is growing interest in modeling neural dynamics during
adaptive behaviors to probe neural representations. In particular, neural
latent embeddings can reveal underlying correlates of behavior, yet, we lack
non-linear techniques that can explicitly and flexibly leverage joint behavior
and neural data. Here, we fill this gap with a novel method, CEBRA, that
jointly uses behavioral and neural data in a hypothesis- or discovery-driven
manner to produce consistent, high-performance latent spaces. We validate its
accuracy and demonstrate our tool's utility for both calcium and
electrophysiology datasets, across sensory and motor tasks, and in simple or
complex behaviors across species. It allows for single and multi-session
datasets to be leveraged for hypothesis testing or can be used label-free.
Lastly, we show that CEBRA can be used for the mapping of space, uncovering
complex kinematic features, and rapid, high-accuracy decoding of natural movies
from visual cortex.
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