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Predicting Single Neuron Responses of the Primary Visual Cortex with Deep Learning Model.


ABSTRACT: Modeling neuron responses to stimuli can shed light on next-generation technologies such as brain-chip interfaces. Furthermore, high-performing models can serve to help formulate hypotheses and reveal the mechanisms underlying neural responses. Here the state-of-the-art computational model is presented for predicting single neuron responses to natural stimuli in the primary visual cortex (V1) of mice. The algorithm incorporates object positions and assembles multiple models with different train-validation data, resulting in a 15%-30% improvement over the existing models in cross-subject predictions and ranking first in the SENSORIUM 2022 Challenge, which benchmarks methods for neuron-specific prediction based on thousands of images. Importantly, The model reveals evidence that the spatial organizations of V1 are conserved across mice. This model will serve as an important noninvasive tool for understanding and utilizing the response patterns of primary visual cortex neurons.

SUBMITTER: Deng K 

PROVIDER: S-EPMC11022733 | biostudies-literature | 2024 Apr

REPOSITORIES: biostudies-literature

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Predicting Single Neuron Responses of the Primary Visual Cortex with Deep Learning Model.

Deng Kaiwen K   Schwendeman Peter S PS   Guan Yuanfang Y  

Advanced science (Weinheim, Baden-Wurttemberg, Germany) 20240213 15


Modeling neuron responses to stimuli can shed light on next-generation technologies such as brain-chip interfaces. Furthermore, high-performing models can serve to help formulate hypotheses and reveal the mechanisms underlying neural responses. Here the state-of-the-art computational model is presented for predicting single neuron responses to natural stimuli in the primary visual cortex (V1) of mice. The algorithm incorporates object positions and assembles multiple models with different train-  ...[more]

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2022-02-11 | PXD031598 |