Evoked fNIRS Signals for Isolated Pain Event Classification in Thermal Quantitative Sensory Testing
收藏DataCite Commons2026-03-24 更新2026-05-04 收录
下载链接:
https://data.mendeley.com/datasets/kb9pb6tzkg
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资源简介:
1. Preprocessing
Contains the data and code used for preprocessing.
The raw data is stored in the following structure in "nirsc.mat".
- (16,1) cell : 16 subject
└ (1,4) struct : 4 task (Cold Threshold Test, Heat Threshold Test, Cold Tolerance Test, Heat Tolerance Test)
└ headers, time, task, mark, count, oxyHb, deoxyHb, totalHb, chanlabs, srate
nirsc_filtered.mat
Data with wavelet-mdl applied using matlab's nirs-spm and a 0.01-0.09 bandpass filter applied using the matlab function.
py_MakePythonData.m
Generate h5 files by window size by segmentation from mat file.
2. Train Model
Contains files for training the model. The files described below are the code you run to train, while the other files are included for dependencies. Needs output files of 'py_MakePythonData.m'.
main_Train.py
This code runs k-fold and LOSO CV training on the HbO, HbR, and HbO&HbR datasets.
wandb-ORC-T-KFOLD_trialwise_valid-Concentration.py
This code runs k-fold CV training on the HbO† datasets.
wandb-ORC-T-LOSO16_valid-Concentration.py
This code runs LOSO CV training on the HbO† datasets.
main_Saliency.py
This code calculates saliency for trained model parameters. Need the output file of 'main_Train.py', 'wandb-ORC-T-KFOLD_trialwise_valid-Concentration.py', or 'wandb-ORC-T-LOSO16_valid-Concentration.py'.
3. Figure
This is the code that creates the figure and supplementary figure. Need the output file of '2. Train Model'.
提供机构:
Mendeley Data
创建时间:
2024-10-18



