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  4. Task-driven neural network models predict neural dynamics of proprioception: Experimental data, activations and predictions of neural network models
 
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Task-driven neural network models predict neural dynamics of proprioception: Experimental data, activations and predictions of neural network models

Marin Vargas, Alessandro  
•
Bisi, Axel  
•
Chiappa, Alberto Silvio  
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2024
EPFL Infoscience

Here we provide the neural data, activation and predictions for the best models and result dataframes of our article "Task-driven neural network models predict neural dynamics of proprioception". It contains the behavioral and neural experimental data (cuneate nucleus and somatosensory recordings from the Miller Lab, Northwestern University), the result dataframes for task-driven and untrained models, the activations and predictions for the best models for all tasks for active and passive movements and the predictions for linear models for active and passive movements. Note, the predictions of other models can be computed from the network weights that were deposited for all trained models. The overall structure of the data is: └── exp_analysis ├── results - Contains the result dataframe of the predictions for all models, tasks and primates ├── activations │ ├── active - Contains activations related to active movements │ └── passive - Contains activations related to passive movements ├── predictions │ ├── active - Contains predictions related to active movements │ └── passive - Contains predictions related to passive movements └── beh_exp_datasets ├── matlab_data - Contains raw behavioral and neural data ├── MonkeyAlignedDatasets_new - Contains padded test behavioral input for generating network activations ├── MonkeyDatasets - Contains not aligned padded test behavioral input for generating network activations ├── MonkeySpikeRegressDatasets - Contains datasets for training data-driven models ├── MonkeySpikeRegressDatasets_new - Contains trial index for regression splits └── new_beh_exp_dataframe - Contains pre-processed behavioral and neural data

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Type
dataset
DOI
10.5281/zenodo.10542311
ACOUA ID

357a9cb3-0300-49ad-a174-7a2f9087c77e

Author(s)
Marin Vargas, Alessandro  
Bisi, Axel  
Chiappa, Alberto Silvio  
Versteeg, Christopher
Miller, Lee E.
Mathis, Alexander  
Date Issued

2024

Version

v1

Publisher

EPFL Infoscience

Subjects

proprioception

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task-driven models

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neural networks

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somatosensory cortex

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cuneate nucleus

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state-estimation

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efference copy

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goal-driven models

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biomechanics

EPFL units
UPAMATHIS  
FunderGrant NO

FNS

A theory-driven approach to understanding the neural circuits of proprioception (212516)

Other government funding

Probing somatosensory representations in the cuneate nucleus of awake primates (5R01NS095162-05)

Other government funding

Biomimetic Somatosensory Feedback through Intracorticalmicrostimulation (5R01NS095251-05)

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RelationRelated workURL/DOI

IsSupplementTo

https://infoscience.epfl.ch/record/307946

IsNewVersionOf

https://doi.org/10.5281/zenodo.10542310
Available on Infoscience
February 16, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/203763
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