mne_bids.write_raw_bids#
- mne_bids.write_raw_bids(raw, bids_path, events=None, event_id=None, *, anonymize=None, format='auto', symlink=False, empty_room=None, allow_preload=False, montage=None, acpc_aligned=False, overwrite=False, verbose=None)[source]#
- Save raw data to a BIDS-compliant folder structure. - Warning - The original file is simply copied over if the original file format is BIDS-supported for that datatype. Otherwise, this function will convert to a BIDS-supported file format while warning the user. For EEG and iEEG data, conversion will be to BrainVision format; for MEG, conversion will be to FIFF. 
- mne-bidswill infer the manufacturer information from the file extension. If your file format is non-standard for the manufacturer, please update the manufacturer field in the sidecars manually.
 - Parameters:
- rawmne.io.Raw
- The raw data. It must be an instance of - mne.io.Rawthat is not already loaded from disk unless- allow_preloadis explicitly set to- True. See warning for the- allow_preloadparameter.
- bids_pathBIDSPath
- The file to write. The - mne_bids.BIDSPathinstance passed here must have the- subject,- task, and- rootattributes set. If the- datatypeattribute is not set, it will be inferred from the recording data type found in- raw. In case of multiple data types, the- .datatypeattribute must be set. Example:- bids_path = BIDSPath(subject='01', session='01', task='testing', acquisition='01', run='01', datatype='meg', root='/data/BIDS') - This will write the following files in the correct subfolder - root:- sub-01_ses-01_task-testing_acq-01_run-01_meg.fif sub-01_ses-01_task-testing_acq-01_run-01_meg.json sub-01_ses-01_task-testing_acq-01_run-01_channels.tsv sub-01_ses-01_acq-01_coordsystem.json - and the following one if - eventsis not- None:- sub-01_ses-01_task-testing_acq-01_run-01_events.tsv - and add a line to the following files: - participants.tsv scans.tsv - Note that the extension is automatically inferred from the raw object. 
- eventspath-like | np.ndarray|None
- Use this parameter to specify events to write to the - *_events.tsvsidecar file, additionally to the object’s- Annotations(which are always written). If- path-like, specifies the location of an MNE events file. If an array, the MNE events array (shape:- (n_events, 3)). If a path or an array and- raw.annotationsexist, the union of- eventsand- raw.annotationswill be written. Mappings from event names to event codes (listed in the third column of the MNE events array) must be specified via the- event_idparameter; otherwise, an exception is raised. If- Annotationsare present, their descriptions must be included in- event_idas well. If- None, events will only be inferred from the raw object’s- Annotations.- Note - If specified, writes the union of - eventsand- raw.annotations. If you wish to only write- raw.annotations, pass- events=None. If you want to exclude the events in- raw.annotationsfrom being written, call- raw.set_annotations(None)before invoking this function.- Note - Descriptions of all event codes must be specified via the - event_idparameter.
- event_iddict|None
- Descriptions or names describing the event codes, if you passed - events. The descriptions will be written to the- trial_typecolumn in- *_events.tsv. The dictionary keys correspond to the event description,s and the values to the event codes. You must specify a description for all event codes appearing in- events. If your data contains- Annotations, you can use this parameter to assign event codes to each unique annotation description (mapping from description to event code).
- anonymizedict|None
- If None (default), no anonymization is performed. If a dictionary, data will be anonymized depending on the dictionary keys: - daysbackis a required key,- keep_hisis optional.- daysbackint
- Number of days by which to move back the recording date in time. In studies with multiple subjects the relative recording date differences between subjects can be kept by using the same number of - daysbackfor all subject anonymizations.- daysbackshould be great enough to shift the date prior to 1925 to conform with BIDS anonymization rules.
- keep_hisbool
- If - False(default), all subject information next to the recording date will be overwritten as well. If- True, keep subject information apart from the recording date.
- keep_sourcebool
- Whether to store the name of the - rawinput file in the- sourcecolumn of- scans.tsv. By default, this information is not stored.
 
- format‘auto’ | ‘BrainVision’ | ‘EDF’ | ‘FIF’ | ‘EEGLAB’
- Controls the file format of the data after BIDS conversion. If - 'auto', MNE-BIDS will attempt to convert the input data to BIDS without a change of the original file format. A conversion to a different file format will then only take place if the original file format lacks some necessary features. Conversion may be forced to BrainVision, EDF, or EEGLAB for (i)EEG, and to FIF for MEG data.
- symlinkbool
- Instead of copying the source files, only create symbolic links to preserve storage space. This is only allowed when not anonymizing the data (i.e., - anonymizemust be- None).- Note - Symlinks currently only work with FIFF files. In case of split files, only a link to the first file will be created, and - mne_bids.read_raw_bids()will correctly handle reading the data again.- Note - Symlinks are currently only supported on macOS and Linux. We will add support for Windows 10 at a later time. 
- empty_roommne.io.Raw|BIDSPath|None
- The empty-room recording to be associated with this file. This is only supported for MEG data. If - Raw, you may pass raw data that was not preloaded (otherwise, pass- allow_preload=True); i.e., it behaves similar to the- rawparameter. The session name will be automatically generated from the raw object’s- info['meas_date']. If a- BIDSPath, the- rootattribute must be the same as in- bids_path. Pass- None(default) if you do not wish to specify an associated empty-room recording.- Changed in version 0.11: Accepts - Rawdata.
- allow_preloadbool
- If - True, allow writing of preloaded raw objects (i.e.,- raw.preloadis- True). Because the original file is ignored, you must specify what- formatto write (not- auto).- Warning - BIDS was originally designed for unprocessed or minimally processed data. For this reason, by default, we prevent writing of preloaded data that may have been modified. Only use this option when absolutely necessary: for example, manually converting from file formats not supported by MNE or writing preprocessed derivatives. Be aware that these use cases are not fully supported. 
- montagemne.channels.DigMontage|None
- The montage with channel positions if channel position data are to be stored in a format other than “head” (the internal MNE coordinate frame that the data in - rawis stored in).
- acpc_alignedbool
- It is difficult to check whether the T1 scan is ACPC aligned which means that “mri” coordinate space is “ACPC” BIDS coordinate space. So, this flag is required to be True when the digitization data is in “mri” for intracranial data to confirm that the T1 is ACPC-aligned. 
- overwritebool
- Whether to overwrite existing files or data in files. Defaults to - False.- If - True, any existing files with the same BIDS parameters will be overwritten with the exception of the- *_participants.tsvand- *_scans.tsvfiles. For these files, parts of pre-existing data that match the current data will be replaced. For- *_participants.tsv, specifically, age, sex and hand fields will be overwritten, while any manually added fields in- participants.jsonand- participants.tsvby a user will be retained. If- False, no existing data will be overwritten or replaced.
- verbosebool|str|int|None
- Control verbosity of the logging output. If - None, use the default verbosity level. See the logging documentation and- mne.verbose()for details. Should only be passed as a keyword argument.
 
- raw
- Returns:
 - Notes - You should ensure that - raw.info['subject_info']and- raw.info['meas_date']are set to proper (not-- None) values to allow for the correct computation of each participant’s age when creating- *_participants.tsv.- This function will convert existing - mne.Annotationsfrom- raw.annotationsto events. Additionally, any events supplied via- eventswill be written too. To avoid writing of annotations, remove them from the raw file via- raw.set_annotations(None)before invoking- write_raw_bids.- To write events encoded in a - STIMchannel, you first need to create the events array manually and pass it to this function:- See the documentation of - mne.find_events()for more information on event extraction from- STIMchannels.- When anonymizing - .edffiles, then the file format for EDF limits how far back we can set the recording date. Therefore, all anonymized EDF datasets will have an internal recording date of- 01-01-1985, and the actual recording date will be stored in the- scans.tsvfile’s- acq_timecolumn.- write_raw_bidswill generate a- dataset_description.jsonfile if it does not already exist. Minimal metadata will be written there. If one sets- overwriteto- Truehere, it will not overwrite an existing- dataset_description.jsonfile. If you need to add more data there, or overwrite it, then you should call- mne_bids.make_dataset_description()directly.- When writing EDF or BDF files, all file extensions are forced to be lower-case, in compliance with the BIDS specification. 
Examples using mne_bids.write_raw_bids#
 
03. Interactive data inspection and bad channel selection
 
07. Save and load T1-weighted MRI scan along with anatomical landmarks in BIDS
 
 
 
 
 
 
