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A Python package for working with BrainVision Recording Format (BVRF) files.

Project description

Python PyPI License

PyBVRF

PyBVRF is a Python package for working with BVRF (BrainVision Recording Format) files.

The package includes the following features:

  • Support for multi-participant recordings
  • Seamless integration with MNE-Python
  • Convenient access to metadata (including the original YAML header)
  • Support for markers and impedance data

A BVRF recording consists of multiple files which are expected to be available in the same directory. The required files are:

  • <fname>.bvrh (header file)
  • <fname>.bvrd (data file)
  • <fname>.bvrm (marker file)

Optionally, <fname>.bvri (impedance file) may also be present.

Basic usage

Use read_bvrf() to load a recording. The file extension is optional (the function accepts any of the four supported extensions or just the base filename).

from pybvrf import read_bvrf

header, data, markers, impedances = read_bvrf("recording")

Here, header is a dict containing metadata about the recording (such as sampling frequency, channel names, and participant information):

print(f"Sampling frequency: {header['fs']} Hz")
print(f"Number of channels: {header['n_channels']}")
print(f"Channel names: {header['ch_names']}")
print(f"Number of participants: {header['n_participants']}")

The entire original header information is available as header["yaml_header"] (a dict parsed from the YAML header file).

Next, data is a 2D NumPy array (channels ⨉ samples) containing the EEG signals:

print(f"Data shape: {data.shape}")

Finally, markers contains information about events in a NumPy structured array:

print(f"Number of markers: {len(markers)}")
print(f"Marker fields: {markers.dtype.names}")

If impedances are available, impedances is a dict mapping channel names to impedance values:

if impedances:
    print(f"Impedances: {impedances}")

Advanced usage

Multi-participant recordings (header["n_participants"] > 1) are available in a single data structure by default, with channels from all participants concatenated together (but suffixed with the participant ID). For example, if there are two participants P1 and P2, the channel names might be "C3 (P1)", "Cz (P1)", "C4 (P1)", "C3 (P2)", "Cz (P2)", and "C4 (P2)". You can use split_participants() to split the data into separate data structures per participant:

from pybvrf import split_participants

participant_data = split_participants(header, data, markers, impedances)

This returns a dict mapping participant IDs to their respective data (a tuple of header, data, markers, and impedances).

MNE-Python integration

PyBVRF optionally integrates with MNE-Python for advanced EEG analysis (to use this feature, make sure to install the mne extra via pybvrf[mne]). You can then use the read_raw_bvrf() function to load a BVRF recording directly into an MNE Raw object:

from pybvrf import read_raw_bvrf

raw = read_raw_bvrf("recording.bvrh")

Like read_bvrf(), read_raw_bvrf() accepts any of the four supported file extensions or just the base filename. It returns a Raw object containing the EEG data, along with the appropriate metadata and annotations.

If a recording includes multiple participants, the function returns a single Raw object by default, with all participants' data concatenated (channel names are suffixed with the participant ID as described above).

You can also load selected participants and/or split multi-participant recordings into separate Raw objects:

from pybvrf import read_raw_bvrf

# load specific participants
raw = read_raw_bvrf("multi_recording.bvrh", participants="P1")
raw = read_raw_bvrf("multi_recording.bvrh", participants=["P1", "P2"])

# split into separate Raw objects per participant
raw_dict = read_raw_bvrf("multi_recording.bvrh", split=True)
for pid, raw in raw_dict.items():
    print(f"Participant {pid}: {raw.info['nchan']} channels")
    
# load specific participants and split
raw_dict = read_raw_bvrf("multi_recording.bvrh", participants=["P1", "P3"], split=True)

Acknowledgements

The initial release of PyBVRF was sponsored by Brain Products.

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