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hMT+ Localizer

Demonstrated features

Feature This example
MEG processing
EEG processing
Maxwell filter
Frequency filter
Artifact regression
SSP
ICA
Evoked contrasts
Time-by-time decoding
Time-generalization decoding
CSP decoding
Time-frequency analysis
BEM surface creation
Template MRI

Dataset source

This dataset was acquired from https://openneuro.org/datasets/ds003392

How to download this dataset

Run in your terminal:

Run in your terminal
openneuro-py download \
             --dataset=ds003392 \
             --include=sub-01 \
             --include=sub-emptyroom/ses-19111211

Configuration

Click to expand
Python
.

bids_root = "~/mne_data/ds003392"
deriv_root = "~/mne_data/derivatives/mne-bids-pipeline/ds003392"

subjects = ["01"]

task = "localizer"
# usually a good idea to use True, but we know no bads are detected for this dataset
find_flat_channels_meg = False
find_noisy_channels_meg = False
use_maxwell_filter = True
ch_types = ["meg"]

l_freq = 1.0
h_freq = 40.0
raw_resample_sfreq = 250
crop_runs = (0, 180)

# Artifact correction.
spatial_filter = "ica"
ica_algorithm = "picard-extended_infomax"
ica_max_iterations = 1000
ica_l_freq = 1.0
ica_n_components = 0.99

# Epochs
epochs_tmin = -0.2
epochs_tmax = 1.0
baseline = (None, 0)

# Conditions / events to consider when epoching
conditions = ["coherent", "incoherent"]

# Decoding
decode = True
decoding_time_generalization = True
decoding_time_generalization_decim = 4
contrasts = [("incoherent", "coherent")]
decoding_csp = True
decoding_csp_times = []
decoding_csp_freqs = {
    "alpha": (8, 12),
}

# Noise estimation
noise_cov = "emptyroom"

Generated output

Summary reports

sub-01_task-localizer_report.html

sub-average_task-localizer_report.html