MVPA approach¶
mbfmri.core.mvpa¶
- mbfmri.core.mvpa.run_mbmvpa(bids_layout, config=None, mvpa_model='elasticnet', report_path=None, overwrite=False, overwrite_latent_process=True, refit_compmodel=False, **kwargs)¶
Callable function of the package to enable a single line usage. The following procedures are done by MBMVPA class.
process fMRI & behavioral data to generate multi-voxel bold signals and latent process signals
load processed signals.
fit MVPA models and interprete the models to make a brain map.
By running this code, users can expect to get a brain activation pattern attributed to the target latent process defined in the computational model.
- Parameters
bids_layout (str or pathlib.PosixPath or bids.layout.layout.BIDSLayout or BIDSController) – Root for input data. It should follow BIDS convention.
config (dict or str or pathlib.PosixPath, default=None) – Dictionary for keyworded configuration, or path for yaml file. The configuration input will override the default configuration.
mvpa_model (str, default=”elasticnet”) – Name for MVPA model. Currently, “elasticnet,” “mlp” and “cnn” are allowed.
report_path (str or pathlib.PosixPath, defualt=None) – Path for saving outputs of MVPA_CV module. please refer to mbmvpa.models.mvpa_general.MVPA_CV Default path will be set as bids_root/mbmvpa/mvpa/ (If None)
overwrite (bool, default=False) – Indicate if processing multi-voxel signals is required though the files exist.
overwrite_latent (bool, default=False) – Indicate if generating latent process signals is required though the files exist.
refit_compmodel (bool, default=False) – Indicate if fitting computational model is required though the fitted results (indiv. params. and LOOIC) exist.
**kwargs (dict) – Dictionary for keywarded arguments. This allows users to override default configuration and config input. Argument names are same as those of wrapped modules.
Generating multi-voxel signals document
Generating latent process signals document
MVPA model document (Please refer to the corresponding model according to mvpa_model.)
Parameters of the above modules can be controlled by input paramter by keywords. (e.g. run_mbfmri(…, mask_smoothing_fwhm=6, …, alpha=0.01) means mask_smoothing_fwhm will be set in VoxelFeatureGenerator and alpha will be set in ElasticNet.) Please check full list of configuration parameters <https://project-model-based-fmri.readthedocs.io/en/latest/mbfmri.core.html#full-list-of-configuration>_.
Examples
from mbfmri.core.mvpa import run_mbmvpa import hbayesdm _ = run_mbmvpa(analysis='mvpa', # name of analysis, "mvpa" or "glm" bids_layout='mini_bornstein2017', # data mvpa_model='elasticnet', # MVPA model, "mlp" or "cnn" for DNN dm_model= 'banditNarm_lapse_decay', # computational model feature_name='zoom2rgrout', # indentifier for processed fMRI data task_name='multiarmedbandit', # identifier for task process_name='PEchosen', # identifier for target latent process subjects='all', # list of subjects to include method='5-fold', # type of cross-validation report_path=report_path, # save path for reporting results confounds=["trans_x", "trans_y", # list of confounds to regress out "trans_z", "rot_x", "rot_y", "rot_z"], n_core=4, # number of core for multi-processing in hBayesDM n_thread=4, # number of thread for multi-threading in generating voxel features overwrite=True, # indicate if re-run and overwriting are required refit_compmodel=True, # indicate if refitting comp. model is required )
}
- class mbfmri.core.mvpa.MBMVPA(bids_layout, config=None, mvpa_model='elasticnet', report_path=None, logistic=False, **kwargs)¶
Bases:
mbfmri.core.base.MBFMRIWrapper of functions in the package to enable a single line usage. The following procedures are done by MBMVPA class.
process fMRI & behavioral data to generate multi-voxel bold signals and latent process signals
load processed signals.
fit MVPA models and interprete the models to make a brain map.
By running this code, users can expect to get a brain activation pattern attributed to the target latent process defined in the computational model.
- Parameters
bids_layout (str or pathlib.PosixPath or bids.layout.layout.BIDSLayout or BIDSController) – Root for input data. It should follow BIDS convention.
config (dict or str or pathlib.PosixPath, default=None) – Dictionary for keyworded configuration, or path for yaml file. The configuration input will override the default configuration.
mvpa_model (str, default=”elasticnet”) – Name for MVPA model. Currently, “elasticnet,” “mlp” and “cnn” are allowed.
report_path (str or pathlib.PosixPath, defualt=None) – Path for saving outputs of MVPA_CV module. please refer to mbmvpa.models.mvpa_general.MVPA_CV Default path will be set as bids_root/mbmvpa/mvpa/ (If None)
**kwargs (dict) – Dictionary for keywarded arguments. This allows users to override default configuration and config input. Argument names are same as those of wrapped modules.
Generating multi-voxel signals document
Generating latent process signals document
MVPA model document (Please refer to the corresponding model according to mvpa_model.)
Parameters of the above modules can be controlled by input paramter by keywords. (e.g. run_mbfmri(…, mask_smoothing_fwhm=6, …, alpha=0.01) means mask_smoothing_fwhm will be set in VoxelFeatureGenerator and alpha will be set in ElasticNet.) Please check full list of configuration parameters <https://project-model-based-fmri.readthedocs.io/en/latest/mbfmri.core.html#full-list-of-configuration>_.
- run(overwrite=False, overwrite_latent_process=True, refit_compmodel=False)¶
run the following procedures.
preprocess fMRI & behavioral data
load preprocessed data
fit MVPA models and interprete the models
- Parameters
overwrite (bool, default=False) – Indicate if processing multi-voxel signals is required though the files exist.
overwrite_latent (bool, default=False) – Indicate if generating latent process signals is required though the files exist.
refit_compmodel (bool, default=False) – Indicate if fitting computational model is required though the fitted results (indiv. params. and LOOIC) exist.