Modeling Dynamic Neural Activity by combining Naturalistic Video Stimuli and Stimulus-independent Latent Factors
- URL: http://arxiv.org/abs/2410.16136v2
- Date: Tue, 11 Mar 2025 18:54:53 GMT
- Title: Modeling Dynamic Neural Activity by combining Naturalistic Video Stimuli and Stimulus-independent Latent Factors
- Authors: Finn Schmidt, Polina Turishcheva, Suhas Shrinivasan, Fabian H. Sinz,
- Abstract summary: We propose a probabilistic model that predicts the joint distribution of the neuronal responses from video stimuli and stimulus-independent latent factors.<n>We find that it outperforms video-only models in terms of log-likelihood and achieves improvements in likelihood and correlation when conditioned on responses from other neurons.
- Score: 5.967290675400836
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Understanding how visual processing of natural stimuli and internal brain states interact in populations of neurons remains an open question in neuroscience. Currently there are no dynamic encoding models that explicitly model a latent state and the entire neuronal response distribution. We address this gap by proposing a probabilistic model that predicts the joint distribution of the neuronal responses from video stimuli and stimulus-independent latent factors. After training and testing our model on mouse V1 neuronal responses, we find that it outperforms video-only models in terms of log-likelihood and achieves improvements in likelihood and correlation when conditioned on responses from other neurons. Furthermore, we find that the learned latent factors strongly correlate with mouse behavior and that they exhibits patterns related to the neurons position on visual cortex, although the model was trained without behavior and cortical coordinates. Our findings demonstrate that unsupervised learning of latent factors from population responses can reveal biologically meaningful structure that bridges sensory processing and behavior, without requiring explicit behavioral annotations during training. Code will be available upon publication.
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