Metadata-Version: 1.1
Name: mne-hcp
Version: 0.1.dev8
Summary: MNE HCP project for accessing the human connectome MEG data in Python.
Home-page: http://github.com/mne-tools/mne-hcp
Author: Denis A. Engemann
Author-email: denis.engemann@gmail.com
License: BSD (3-clause)
Download-URL: http://github.com/mne-tools/mne-hcp
Description: |Travis|_ |Zenodo|_ |Codecov|_
        
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        .. _Travis: https://travis-ci.org/mne-tools/mne-hcp
        
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        MNE-HCP
        =======
        
        We provide Python tools for seamless integration of MEG data from the `Human Connectome Project  <http://www.humanconnectome.org>`_ into the Python ecosystem.
        In only a few lines of code, complex data retrieval requests can be readily executed on the resources from this neuroimaging reference dataset. Raw HCP data are translated into actionable MNE objects that we know and love. MNE-HCP abstracts away difficulties due to diverging coordinate systems, distributed information, and file format conventions. Providing a simple and consistent access to HCP MEG data will facilitate emergence of standardized data analysis practices.
        By building on the `MNE software package <http://martinos.org/mne/>`_, MNE-HCP naturally supplements a fast growing stack of Python data science toolkits.
        
        Fast interface to MEG data
        --------------------------
        Allow us to give you a flavor by a few example queries of MEG HCP data from subject 1003007:
        
        
        .. code-block:: python
        
          # Get all entries from the MEG data header
          info = hcp.read_info('1003007', 'task_motor')
        
          # Get continuous MEG time series
          raw = hcp.read_raw('1003007', 'task_motor')
        
          # Get segmented MEG time series
          epochs = hcp.read_epochs('1003007', 'task_motor')
        
          # Get all MEG time series averaged across events
          list_of_evoked = hcp.read_evokeds('1003007', 'task_motor')
        
          # Get details on contamination and noise sources
          annotations_dict = hcp.read_annot('1003007', 'task_motor')
        
          # Get precomputed independent components that compose the signal time series
          ica_mat = hcp.read_ica('1003007', 'task_motor')
        
        Scope and Disclaimer
        --------------------
        This code is under active research-driven development. The API is still changing,
        but is getting closer to a stable release.
        
        .. note::
        
            For now please consider the following caveats:
        
            - We only intend to support a subset of the files shipped with HCP.
            - Specifically, for now it is not planned to support io and processing for any outputs of the HCP source space pipelines.
            - This library breaks with some of MNE conventions in order to make the HCP outputs compatible with MNE.
        
        Installation
        ============
        
        We recommend the `Anaconda Python distribution <https://www.continuum.io/downloads>`_, which comes with the necessary dependencies. Alternatively, to install ``mne-hcp``, you first need to install its dependencies::
        
        	$ pip install numpy matplotlib scipy scikit-learn mne joblib pandas
        
        Then clone the repository::
        
        	$ git clone http://github.com/mne-tools/mne-hcp
        
        and finally run `setup.py` to install the package::
        
        	$ cd mne-hcp/
        	$ python setup.py install
        
        If you do not have admin privileges on the computer, use the ``--user`` flag
        with `setup.py`.
        
        Alternatively, for a devoloper install based on symbolic links (which simplifies keeping up with code changes), do::
        
        	$ cd mne-hcp/
        	$ python setup.py develop
        
        To check if everything worked fine, you can do::
        
        	$ python -c 'import hcp'
        
        and it should not give any error messages.
        
        Dependencies
        ------------
        
        The following main and additional dependencies are required to use MNE-HCP:
        
            - MNE-Python master branch
            - the MNE-Python dependencies, specifically
                - scipy
                - numpy
                - matplotlib
            - scikit-learn (optional)
        
        Quickstart
        ==========
        
        The following data layout is expected: a folder that contains the HCP data
        as they are unpacked by a zip, subject wise.
        When data were downloaded via the Aspera connect client, the following
        command should produce the expected layout:
        
        .. code-block:: bash
        
           $ for fname in $(ls *zip); do
           $    echo unpacking $fname;
           $    unzip -o $fname; rm $fname;
           $ done
        
        When files are downloaded using the `Amazon webservice tools <http://s3tools.org/s3cmd>`_, e.g. `s3rcmd`,
        all should be fine.
        
        The code is organized by different modules.
        The `io` module includes readers for sensor space data at different processing
        stages and annotations for bad data.
        
        
        Types of Data
        -------------
        
        MNE-HCP uses custom names for values that are more MNE-pythonic, the following
        table gives an overview:
        
        +-----------------------+-------------------------------------+----------------+
        | **name**              | **readers**                         | **HCP jargon** |
        +-----------------------+-------------------------------------+----------------+
        | 'rest'                | raw, epochs, info, annotations, ica | 'Restin'       |
        +-----------------------+-------------------------------------+----------------+
        | 'task_working_memory' | raw, epochs, info, annotations, ica | 'Wrkmem'       |
        +-----------------------+-------------------------------------+----------------+
        | 'task_story_math'     | raw, epochs, info, annotations, ica | 'StoryM'       |
        +-----------------------+-------------------------------------+----------------+
        | 'task_motor'          | raw, epochs, info, annotations, ica | 'Motor'        |
        +-----------------------+-------------------------------------+----------------+
        | 'noise_subject'       | raw, info                           | 'Pnoise'       |
        +-----------------------+-------------------------------------+----------------+
        | 'noise_empty_room'    | raw, info                           | 'Rnoise'       |
        +-----------------------+-------------------------------------+----------------+
        
        Functionality to make the HCP datasets compatible with MNE
        ----------------------------------------------------------
        
        MNE HCP comes with convenience functions such as `hcp.make_mne_anatomy`. This one will create an
        MNE friendly anatomy directories and extracts the head model and
        coregistration MEG to MRI coregistration.
        (Yes, it maps to MRI, not to the helmet -- a peculiarity of the HCP data.)
        It can be used as follows:
        
        .. code-block:: python
        
           >>> import os.path as op
           >>> import hcp
           >>> storage_dir = op.expanduser('~/data/MNE-HCP')
           >>> hcp.make_mne_anatomy(
           >>>     '100307', subjects_dir=storage_dir + '/subjects',
           >>>     hcp_path=storage_dir + '/HCP',
           >>>     recordings_path=storage_dir + '/hcp-meg')
           reading extended structural processing ...
           reading RAS freesurfer transform
           Combining RAS transform and coregistration
           extracting head model
           coregistring head model to MNE-HCP coordinates
           extracting coregistration
        
        
        File Mapping
        ------------
        
        MNE-HCP supports a low level file mapping that allows for quick compilations
        of sets of files for a given subejct and data context.
        This is done in :func:`hcp.io.file_mapping.get_file_paths`, think of it as a
        file name synthesizer that takes certain data description parameters as inputs
        and lists all corresponding files.
        
        Example usage:
        
        .. code-block:: python
        
           >>> import hcp
           >>> files = hcp.file_mapping.et_file_paths(
           >>>     subject='123455', data_type='task_motor', output='raw',
           >>>     hcp_path='/media/storage/HCP')
           ['/media/storage/HCP/123455/unprocessed/MEG/10-Motor/4D/c,rfDC',
            '/media/storage/HCP/123455/unprocessed/MEG/10-Motor/4D/config']
        
        Why we are not globbing files? Because the HCP-MEG data are fixed, all file
        patterns are known and access via Amazon web services easier if the files
        to be accessed are known in advance.
        
        Gotchas
        =======
        
        Native coordinates and resulting plotting and processing peculartities
        ----------------------------------------------------------------------
        
        The HCP for MEG provides coregistration information for native BTI/4D
        setting. MNE-Python expects coordinates in meters and the Neuromag
        right anterior superior (RAS) coordinates. However, essential information is
        missing to compute all transforms needed to easily perform the conversions.
        
        For now, the way things work, all processing is performed in native BTI/4D
        coordinates with the device-to-head transform skipped (set to identity matrix),
        such that the coregistration directly maps from the native 4D sensors,
        represented in head coordinates, to the freesurfer space. This has a few minor
        consequences that may be confusing to MNE-Python users.
        
        1. In the reader code you will see many flags set to ```convert=False```, etc.
        This is not a bug.
        
        2. All channel names and positions are native. Topographic plotting might not
        work as as expected. First of all, the layout file is not recognized. Second,
        the coordinates are not regonized as native ones, eventually rotating and
        distorting the graphical display. To fix this, either a proper layout can be
        computed with :func:`hcp.viz.make_hcp_bti_layout`.
        Or the conversion to MNE can also be
        performed using :func:`hcp.preprocessing.map_ch_coords_to_mne`.
        But note that source localization will be wrong when computed on data in
        Neuromag coordinates. As things are, coordinates have to be kept in the native
        space to be aligned with the HCP outputs.
        
        Reproducing HCP sensor space outputs
        ------------------------------------
        
        A couple of steps are necessary to reproduce the original sensor space outputs.
        
        1. Reference channels should be regressed out. Checkout :func:`hcp.preprocessing.apply_ref_correction`.
        
        2. The trial info structure gives the correct latencies of the events
           The latencies in the trigger channel are shifted by around 18 ms.
           For now we'd recommend using the events from the function :func:`hcp.read_trial_info`.
        
        3. The default filters in MNE and FieldTrip are different.
           FieldTrip uses a 4th order butterworth filter. In MNE you might need
           to adjust the `*_trans_bandwidth` parameter to avoid numerical errors.
           In the HCP outputs, evoked responses were filtered between 0.5 and 30Hz prior
           to baseline correction.
        
        4. Annotations need to be loaded and registered. The HCP consortium ships annotations of bad segments and bad channels.
           These have to be read and used. Check out `hcp.read_annot` and add bad
           channel names to `raw.info['bads']` and create and set an `mne.Annotations`
           object as attribute to `raw`, see below.
        
            .. code-block:: python
        
                annots = hcp.read_annot(subject, data_type, hcp_path=hcp_path,
                                        run_index=run_index)
                bad_segments = annots['segments']['all'] / raw.info['sfreq']
                raw.annotations = mne.Annotations(
                    bad_segments[:, 0], (bad_segments[:, 1] - bad_segments[:, 0]),
                    description='bad')
        
        5. ICA components related to eye blinks and heart beats need to be removed
           from the data. Checkout the ICA slot in the output of
           `hcp.read_annot` to get the HCP ICA components.
        
        
        Convenience functions
        ---------------------
        
        NNE-HCP includes convenience functions that help setting up directory and file layouts
        expected by MNE-Python.
        
        :func:`hcp.make_mne_anatomy` will produce an MNE and Freesurfer compatible directory layout and will create the following outputs by default, mostly using sympbolic links:
        
        .. code-block:: bash
        
            $subjects_dir/$subject/bem/inner_skull.surf
            $subjects_dir/$subject/label/*
            $subjects_dir/$subject/mri/*
            $subjects_dir/$subject/surf/*
            $recordings_path/$subject/$subject-head_mri-trans.fif
        
        These can then be set as $SUBJECTS_DIR and as MEG directory, consistent
        with MNE examples.
        Here, `inner_skull.surf` and `$subject-head_mri-trans.fif` are written by the function such that they can be used by MNE. The latter is the coregistration matrix.
        
        Python Indexing
        ^^^^^^^^^^^^^^^
        
        MNE-HCP corrects on reading the indices it finds for data segments, events, or
        components. The indices it reads from the files will already be mapped to
        Python conventions by subtracting 1.
        
        Contributions
        -------------
        - currently `@dengemann` is pushing frequently to master, if you plan to contribute, open issues and pull requests, or contact `@dengemann` directly. Discussions are welcomed.
        
        Acknowledgements
        ================
        
        This project is supported by the Amazon Webservices Research grant issued to Denis A. Engemann and
        by the ERC starting grant ERC StG 263584 issued to Virginie van Wassenhove.
        
        I acknowledge support by Alex Gramfort, Mainak Jas, Jona Sassenhagen, Giorgos Michalareas,
        Eric Larson, Danilo Bzdok, and Jan-Mathijs Schoffelen for discussions,
        inputs and help with finding the best way to map
        HCP data to the MNE world.
        
Platform: any
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved
Classifier: Programming Language :: Python
Classifier: Topic :: Software Development
Classifier: Topic :: Scientific/Engineering
Classifier: Operating System :: Microsoft :: Windows
Classifier: Operating System :: POSIX
Classifier: Operating System :: Unix
Classifier: Operating System :: MacOS
