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LSTM-based-Modeling and explaination of RT out of EEG

Deep Brain Behavior Mapping and Interrogation (DBBMI) Framework, Case study: RT prediction from Pre-stimulus EEG in Elderlies

Source code for Deep and milti-level regression analysis in "A Deep Method for Prediction and Modeling of Behavioral Measurement from an Arbitrary Period of EEG" paper

0-EEG Preprocessing Pipeline: Extracts EEG data from the curry loader

1-Phase-Amp Perturbation: Builds filtered data using files in the folder Phase-Amp Perturbation

2- Train/validate the LSTM models (on full frequency range and sub-bands). Then test on spatial locations by running codes in the folder TrainModels.

3-ML Confirmation and 4-Multi-level Regression Analysis of Features

5-Statistical and Correlation Analysis image