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MNE-BIDS
========
MNE-BIDS is a Python package that allows you to read and write
[BIDS](https://bids.neuroimaging.io/)-compatible datasets with the help of
[MNE-Python](https://mne.tools/stable/index.html).
![Schematic: From raw data to BIDS using MNE-BIDS](http://mne.tools/mne-bids/assets/MNE-BIDS.png)
Why?
----
MNE-BIDS links BIDS and MNE-Python with the goal to make your analyses faster to code, more robust, and facilitate data and code sharing with co-workers and collaborators.
How?
----
The documentation can be found under the following links:
- for the [stable release](https://mne.tools/mne-bids/)
- for the [latest (development) version](https://mne.tools/mne-bids/dev/index.html)
Citing
------
[![JOSS publication](https://joss.theoj.org/papers/5b9024503f7bea324d5e738a12b0a108/status.svg)](https://joss.theoj.org/papers/5b9024503f7bea324d5e738a12b0a108)
If you use MNE-BIDS in your work, please cite our
[publication in JOSS](https://doi.org/10.21105/joss.01896>):
Appelhoff, S., Sanderson, M., Brooks, T., Vliet, M., Quentin, R., Holdgraf, C.,
Chaumon, M., Mikulan, E., Tavabi, K., Höchenberger, R., Welke, D., Brunner, C.,
Rockhill, A., Larson, E., Gramfort, A., & Jas, M. (2019): **MNE-BIDS: Organizing
electrophysiological data into the BIDS format and facilitating their analysis.**
*Journal of Open Source Software,* 4:1896. DOI: [10.21105/joss.01896](https://doi.org/10.21105/joss.01896)
Please also cite one of the following papers to credit BIDS, depending on which data type you used:
- [MEG-BIDS](http://doi.org/10.1038/sdata.2018.110)
- [EEG-BIDS](https://doi.org/10.1038/s41597-019-0104-8)
- [iEEG-BIDS](https://doi.org/10.1038/s41597-019-0105-7)
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共51个文件
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pkg-info:2个
资源分类:Python库 所属语言:Python 资源全名:mne-bids-0.5.tar.gz 资源来源:官方 安装方法:https://lanzao.blog.csdn.net/article/details/101784059
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mne-bids-0.5.tar.gz (51个子文件)
mne-bids-0.5
MANIFEST.in 447B
PKG-INFO 4KB
LICENSE 2KB
setup.cfg 1KB
mne_bids
report.py 18KB
dig.py 19KB
commands
mne_bids_mark_bad_channels.py 5KB
mne_bids_calibration_to_bids.py 2KB
mne_bids_crosstalk_to_bids.py 2KB
mne_bids_cp.py 2KB
tests
test_cli.py 7KB
run.py 1KB
__init__.py 22B
mne_bids_report.py 1KB
mne_bids_raw_to_bids.py 4KB
utils.py 17KB
path.py 52KB
tests
test_report.py 2KB
test_utils.py 4KB
test_write.py 74KB
test_copyfiles.py 7KB
test_read.py 28KB
test_pick.py 1KB
test_path.py 35KB
test_tsv_handler.py 3KB
read.py 21KB
__init__.py 618B
copyfiles.py 15KB
config.py 11KB
write.py 67KB
pick.py 3KB
tsv_handler.py 6KB
examples
README.rst 298B
bidspath.py 7KB
rename_brainvision_files.py 4KB
convert_group_studies.py 4KB
convert_empty_room.py 4KB
read_bids_datasets.py 7KB
mark_bad_channels.py 4KB
create_bids_folder.py 2KB
convert_mne_sample.py 5KB
convert_mri_and_trans.py 7KB
convert_ieeg_to_bids.py 9KB
convert_eeg_to_bids.py 9KB
setup.py 2KB
mne_bids.egg-info
PKG-INFO 4KB
SOURCES.txt 1KB
entry_points.txt 57B
top_level.txt 9B
dependency_links.txt 1B
README.md 3KB
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