DS005089: eeg dataset, 36 subjects#
Proactive selective attention across competition contexts
Access recordings and metadata through EEGDash.
Citation: Blanca Aguado-Lopez, Ana F. Palenciano, Jose M. G. Penalver, Paloma Diaz-Gutierrez, David Lopez-Garcia, Chiara Avancini, Luis F. Ciria, Maria Ruz (2024). Proactive selective attention across competition contexts. 10.18112/openneuro.ds005089.v1.0.1
Modality: eeg Subjects: 36 Recordings: 36 License: CC0 Source: openneuro Citations: 1.0
Metadata: Complete (90%)
Quickstart#
Install
pip install eegdash
Access the data
from eegdash.dataset import DS005089
dataset = DS005089(cache_dir="./data")
# Get the raw object of the first recording
raw = dataset.datasets[0].raw
print(raw.info)
Filter by subject
dataset = DS005089(cache_dir="./data", subject="01")
Advanced query
dataset = DS005089(
cache_dir="./data",
query={"subject": {"$in": ["01", "02"]}},
)
Iterate recordings
for rec in dataset:
print(rec.subject, rec.raw.info['sfreq'])
If you use this dataset in your research, please cite the original authors.
BibTeX
@dataset{ds005089,
title = {Proactive selective attention across competition contexts},
author = {Blanca Aguado-Lopez and Ana F. Palenciano and Jose M. G. Penalver and Paloma Diaz-Gutierrez and David Lopez-Garcia and Chiara Avancini and Luis F. Ciria and Maria Ruz},
doi = {10.18112/openneuro.ds005089.v1.0.1},
url = {https://doi.org/10.18112/openneuro.ds005089.v1.0.1},
}
About This Dataset#
No README content is available for this dataset.
Dataset Information#
Dataset ID |
|
Title |
Proactive selective attention across competition contexts |
Author (year) |
|
Canonical |
— |
Importable as |
|
Year |
2024 |
Authors |
Blanca Aguado-Lopez, Ana F. Palenciano, Jose M. G. Penalver, Paloma Diaz-Gutierrez, David Lopez-Garcia, Chiara Avancini, Luis F. Ciria, Maria Ruz |
License |
CC0 |
Citation / DOI |
|
Source links |
OpenNeuro | NeMAR | Source URL |
Copy-paste BibTeX
@dataset{ds005089,
title = {Proactive selective attention across competition contexts},
author = {Blanca Aguado-Lopez and Ana F. Palenciano and Jose M. G. Penalver and Paloma Diaz-Gutierrez and David Lopez-Garcia and Chiara Avancini and Luis F. Ciria and Maria Ruz},
doi = {10.18112/openneuro.ds005089.v1.0.1},
url = {https://doi.org/10.18112/openneuro.ds005089.v1.0.1},
}
Found an issue with this dataset?
If you encounter any problems with this dataset (missing files, incorrect metadata, loading errors, etc.), please let us know!
Technical Details#
Subjects: 36
Recordings: 36
Tasks: 1
Channels: 63
Sampling rate (Hz): 1000.0
Duration (hours): 68.82001666666666
Pathology: Not specified
Modality: —
Type: —
Size on disk: 68.0 GB
File count: 36
Format: BIDS
License: CC0
DOI: doi:10.18112/openneuro.ds005089.v1.0.1
Electrode Layout#
Electrode layout — EEG · 63 sensors — 63 channels
Dataset Statistics#
Age distribution (n=36, range 18–27 yr)
Sex distribution
Channel counts: 63 ch (n=36 recordings)
Sampling frequencies: 1000.0 Hz (n=36 recordings)
Total recording duration: 68 h
NEMAR Processing Statistics#
The plots below are generated by NEMAR’s automated EEG pipeline. The histogram shows pipeline success for data cleaning and ICA decomposition, the percentage of data frames and EEG channels retained after artefact removal, line noise per channel (RMS, dB), and the age/gender distribution of participants.
HED event descriptors word cloud
File Explorer#
Browse the BIDS file structure of this dataset. Records are fetched on demand from the EEGDash catalog the first time you open the explorer.
API Reference#
Use the DS005089 class to access this dataset programmatically.
- class eegdash.dataset.DS005089(cache_dir: str, query: dict | None = None, s3_bucket: str | None = None, **kwargs)[source]#
Bases:
EEGDashDatasetProactive selective attention across competition contexts
- Study:
ds005089(OpenNeuro)- Author (year):
AguadoLopez2024- Canonical:
—
Also importable as:
DS005089,AguadoLopez2024.Modality:
eeg. Subjects: 36; recordings: 36; tasks: 1.- Parameters:
cache_dir (str | Path) – Directory where data are cached locally.
query (dict | None) – Additional MongoDB-style filters to AND with the dataset selection. Must not contain the key
dataset.s3_bucket (str | None) – Base S3 bucket used to locate the data.
**kwargs (dict) – Additional keyword arguments forwarded to
EEGDashDataset.
- data_dir#
Local dataset cache directory (
cache_dir / dataset_id).- Type:
Path
Notes
Each item is a recording; recording-level metadata are available via
dataset.description.querysupports MongoDB-style filters on fields inALLOWED_QUERY_FIELDSand is combined with the dataset filter. Dataset-specific caveats are not provided in the summary metadata.References
OpenNeuro dataset: https://openneuro.org/datasets/ds005089 NeMAR dataset: https://nemar.org/dataexplorer/detail?dataset_id=ds005089 DOI: https://doi.org/10.18112/openneuro.ds005089.v1.0.1 NEMAR citation count: 1
Examples
>>> from eegdash.dataset import DS005089 >>> dataset = DS005089(cache_dir="./data") >>> recording = dataset[0] >>> raw = recording.load()
- __init__(cache_dir: str, query: dict | None = None, s3_bucket: str | None = None, **kwargs)[source]#
- save(path: str, overwrite: bool = False, offset: int = 0)[source]#
Save datasets to files by creating one subdirectory for each dataset:
path/ 0/ 0-raw.fif | 0-epo.fif description.json raw_preproc_kwargs.json (if raws were preprocessed) window_kwargs.json (if this is a windowed dataset) window_preproc_kwargs.json (if windows were preprocessed) target_name.json (if target_name is not None and dataset is raw) 1/ 1-raw.fif | 1-epo.fif description.json raw_preproc_kwargs.json (if raws were preprocessed) window_kwargs.json (if this is a windowed dataset) window_preproc_kwargs.json (if windows were preprocessed) target_name.json (if target_name is not None and dataset is raw)
- Parameters:
path (str) –
- Directory in which subdirectories are created to store
-raw.fif | -epo.fif and .json files to.
overwrite (bool) – Whether to delete old subdirectories that will be saved to in this call.
offset (int) – If provided, the integer is added to the id of the dataset in the concat. This is useful in the setting of very large datasets, where one dataset has to be processed and saved at a time to account for its original position.
See Also#
eegdash.dataset.EEGDashDataseteegdash.dataset