mne.preprocessing.ICA#

class mne.preprocessing.ICA(n_components=None, *, noise_cov=None, random_state=None, method='fastica', fit_params=None, max_iter='auto', allow_ref_meg=False, verbose=None)[source]#

Data decomposition using Independent Component Analysis (ICA).

This object estimates independent components from mne.io.Raw, mne.Epochs, or mne.Evoked objects. Components can optionally be removed (for artifact repair) prior to signal reconstruction.

Warning

ICA is sensitive to low-frequency drifts and therefore requires the data to be high-pass filtered prior to fitting. Typically, a cutoff frequency of 1 Hz is recommended.

Parameters:
n_componentsint | float | None

Number of principal components (from the pre-whitening PCA step) that are passed to the ICA algorithm during fitting:

  • int

    Must be greater than 1 and less than or equal to the number of channels.

  • float between 0 and 1 (exclusive)

    Will select the smallest number of components required to explain the cumulative variance of the data greater than n_components. Consider this hypothetical example: we have 3 components, the first explaining 70%, the second 20%, and the third the remaining 10% of the variance. Passing 0.8 here (corresponding to 80% of explained variance) would yield the first two components, explaining 90% of the variance: only by using both components the requested threshold of 80% explained variance can be exceeded. The third component, on the other hand, would be excluded.

  • None

    0.999999 will be used. This is done to avoid numerical stability problems when whitening, particularly when working with rank-deficient data.

Defaults to None. The actual number used when executing the ICA.fit() method will be stored in the attribute n_components_ (note the trailing underscore).

Changed in version 0.22: For a float, the number of components will account for greater than the given variance level instead of less than or equal to it. The default (None) will also take into account the rank deficiency of the data.

noise_covNone | instance of Covariance

Noise covariance used for pre-whitening. If None (default), channels are scaled to unit variance (“z-standardized”) as a group by channel type prior to the whitening by PCA.

random_stateNone | int | instance of RandomState

A seed for the NumPy random number generator (RNG). If None (default), the seed will be obtained from the operating system (see RandomState for details), meaning it will most likely produce different output every time this function or method is run. To achieve reproducible results, pass a value here to explicitly initialize the RNG with a defined state.

method‘fastica’ | ‘infomax’ | ‘picard’

The ICA method to use in the fit method. Use the fit_params argument to set additional parameters. Specifically, if you want Extended Infomax, set method='infomax' and fit_params=dict(extended=True) (this also works for method='picard'). Defaults to 'fastica'. For reference, see [1][2][3][4].

fit_paramsdict | None

Additional parameters passed to the ICA estimator as specified by method. Allowed entries are determined by the various algorithm implementations: see FastICA, picard(), infomax().

max_iterint | ‘auto’

Maximum number of iterations during fit. If 'auto', it will set maximum iterations to 1000 for 'fastica' and to 500 for 'infomax' or 'picard'. The actual number of iterations it took ICA.fit() to complete will be stored in the n_iter_ attribute.

allow_ref_megbool

Allow ICA on MEG reference channels. Defaults to False.

New in v0.18.

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.

Notes

Changed in version 0.23: Version 0.23 introduced the max_iter='auto' settings for maximum iterations. With version 0.24 'auto' will be the new default, replacing the current max_iter=200.

Changed in version 0.23: Warn if Epochs were baseline-corrected.

Note

If you intend to fit ICA on Epochs, it is recommended to high-pass filter, but not baseline correct the data for good ICA performance. A warning will be emitted otherwise.

A trailing _ in an attribute name signifies that the attribute was added to the object during fitting, consistent with standard scikit-learn practice.

ICA fit() in MNE proceeds in two steps:

  1. Whitening the data by means of a pre-whitening step (using noise_cov if provided, or the standard deviation of each channel type) and then principal component analysis (PCA).

  2. Passing the n_components largest-variance components to the ICA algorithm to obtain the unmixing matrix (and by pseudoinversion, the mixing matrix).

ICA apply() then:

  1. Unmixes the data with the unmixing_matrix_.

  2. Includes ICA components based on ica.include and ica.exclude.

  3. Re-mixes the data with mixing_matrix_.

  4. Restores any data not passed to the ICA algorithm, i.e., the PCA components between n_components and n_pca_components.

n_pca_components determines how many PCA components will be kept when reconstructing the data when calling apply(). This parameter can be used for dimensionality reduction of the data, or dealing with low-rank data (such as those with projections, or MEG data processed by SSS). It is important to remove any numerically-zero-variance components in the data, otherwise numerical instability causes problems when computing the mixing matrix. Alternatively, using n_components as a float will also avoid numerical stability problems.

The n_components parameter determines how many components out of the n_channels PCA components the ICA algorithm will actually fit. This is not typically used for EEG data, but for MEG data, it’s common to use n_components < n_channels. For example, full-rank 306-channel MEG data might use n_components=40 to find (and later exclude) only large, dominating artifacts in the data, but still reconstruct the data using all 306 PCA components. Setting n_pca_components=40, on the other hand, would actually reduce the rank of the reconstructed data to 40, which is typically undesirable.

If you are migrating from EEGLAB and intend to reduce dimensionality via PCA, similarly to EEGLAB’s runica(..., 'pca', n) functionality, pass n_components=n during initialization and then n_pca_components=n during apply(). The resulting reconstructed data after apply() will have rank n.

Note

Commonly used for reasons of i) computational efficiency and ii) additional noise reduction, it is a matter of current debate whether pre-ICA dimensionality reduction could decrease the reliability and stability of the ICA, at least for EEG data and especially during preprocessing [5]. (But see also [6] for a possibly confounding effect of the different whitening/sphering methods used in this paper (ZCA vs. PCA).) On the other hand, for rank-deficient data such as EEG data after average reference or interpolation, it is recommended to reduce the dimensionality (by 1 for average reference and 1 for each interpolated channel) for optimal ICA performance (see the EEGLAB wiki).

Caveat! If supplying a noise covariance, keep track of the projections available in the cov or in the raw object. For example, if you are interested in EOG or ECG artifacts, EOG and ECG projections should be temporally removed before fitting ICA, for example:

>> projs, raw.info['projs'] = raw.info['projs'], []
>> ica.fit(raw)
>> raw.info['projs'] = projs

Methods currently implemented are FastICA (default), Infomax, and Picard. Standard Infomax can be quite sensitive to differences in floating point arithmetic. Extended Infomax seems to be more stable in this respect, enhancing reproducibility and stability of results; use Extended Infomax via method='infomax', fit_params=dict(extended=True). Allowed entries in fit_params are determined by the various algorithm implementations: see FastICA, picard(), infomax().

Note

Picard can be used to solve the same problems as FastICA, Infomax, and extended Infomax, but typically converges faster than either of those methods. To make use of Picard’s speed while still obtaining the same solution as with other algorithms, you need to specify method='picard' and fit_params as a dictionary with the following combination of keys:

  • dict(ortho=False, extended=False) for Infomax

  • dict(ortho=False, extended=True) for extended Infomax

  • dict(ortho=True, extended=True) for FastICA

Reducing the tolerance (set in fit_params) speeds up estimation at the cost of consistency of the obtained results. It is difficult to directly compare tolerance levels between Infomax and Picard, but for Picard and FastICA a good rule of thumb is tol_fastica == tol_picard ** 2.

References

Attributes:
current_fit‘unfitted’ | ‘raw’ | ‘epochs’

Which data type was used for the fit.

ch_nameslist-like

Channel names resulting from initial picking.

n_components_int

If fit, the actual number of PCA components used for ICA decomposition.

pre_whitener_ndarray, shape (n_channels, 1) or (n_channels, n_channels)

If fit, array used to pre-whiten the data prior to PCA.

pca_components_ndarray, shape (n_channels, n_channels)

If fit, the PCA components.

pca_mean_ndarray, shape (n_channels,)

If fit, the mean vector used to center the data before doing the PCA.

pca_explained_variance_ndarray, shape (n_channels,)

If fit, the variance explained by each PCA component.

mixing_matrix_ndarray, shape (n_components_, n_components_)

If fit, the whitened mixing matrix to go back from ICA space to PCA space. It is, in combination with the pca_components_, used by ICA.apply() and ICA.get_components() to re-mix/project a subset of the ICA components into the observed channel space. The former method also removes the pre-whitening (z-scaling) and the de-meaning.

unmixing_matrix_ndarray, shape (n_components_, n_components_)

If fit, the whitened matrix to go from PCA space to ICA space. Used, in combination with the pca_components_, by the methods ICA.get_sources() and ICA.apply() to unmix the observed data.

excludearray_like of int

List or np.array of sources indices to exclude when re-mixing the data in the ICA.apply() method, i.e. artifactual ICA components. The components identified manually and by the various automatic artifact detection methods should be (manually) appended (e.g. ica.exclude.extend(eog_inds)). (There is also an exclude parameter in the ICA.apply() method.) To scrap all marked components, set this attribute to an empty list.

infomne.Info | None

The mne.Info object with information about the sensors and methods of measurement.

n_samples_int

The number of samples used on fit.

labels_dict

A dictionary of independent component indices, grouped by types of independent components. This attribute is set by some of the artifact detection functions.

n_iter_int

If fit, the number of iterations required to complete ICA.

Methods

__contains__(ch_type)

Check channel type membership.

apply(inst[, include, exclude, ...])

Remove selected components from the signal.

copy()

Copy the ICA object.

find_bads_ecg(inst[, ch_name, threshold, ...])

Detect ECG related components.

find_bads_eog(inst[, ch_name, threshold, ...])

Detect EOG related components using correlation.

find_bads_muscle(inst[, threshold, start, ...])

Detect muscle related components.

find_bads_ref(inst[, ch_name, threshold, ...])

Detect MEG reference related components using correlation.

fit(inst[, picks, start, stop, decim, ...])

Run the ICA decomposition on raw data.

get_channel_types([picks, unique, only_data_chs])

Get a list of channel type for each channel.

get_components()

Get ICA topomap for components as numpy arrays.

get_explained_variance_ratio(inst, *[, ...])

Get the proportion of data variance explained by ICA components.

get_sources(inst[, add_channels, start, stop])

Estimate sources given the unmixing matrix.

plot_components([picks, ch_type, inst, ...])

Project mixing matrix on interpolated sensor topography.

plot_overlay(inst[, exclude, picks, start, ...])

Overlay of raw and cleaned signals given the unmixing matrix.

plot_properties(inst[, picks, axes, dB, ...])

Display component properties.

plot_scores(scores[, exclude, labels, ...])

Plot scores related to detected components.

plot_sources(inst[, picks, start, stop, ...])

Plot estimated latent sources given the unmixing matrix.

save(fname, *[, overwrite, verbose])

Store ICA solution into a fiff file.

score_sources(inst[, target, score_func, ...])

Assign score to components based on statistic or metric.

__contains__(ch_type)[source]#

Check channel type membership.

Parameters:
ch_typestr

Channel type to check for. Can be e.g. 'meg', 'eeg', 'stim', etc.

Returns:
inbool

Whether or not the instance contains the given channel type.

Examples

Channel type membership can be tested as:

>>> 'meg' in inst  
True
>>> 'seeg' in inst  
False
apply(inst, include=None, exclude=None, n_pca_components=None, start=None, stop=None, *, on_baseline='warn', verbose=None)[source]#

Remove selected components from the signal.

Given the unmixing matrix, transform the data, zero out all excluded components, and inverse-transform the data. This procedure will reconstruct M/EEG signals from which the dynamics described by the excluded components is subtracted.

Parameters:
instinstance of Raw, Epochs or Evoked

The data to be processed (i.e., cleaned). It will be modified in-place.

includearray_like of int

The indices referring to columns in the ummixing matrix. The components to be kept. If None (default), all components will be included (minus those defined in ica.exclude and the exclude parameter, see below).

excludearray_like of int

The indices referring to columns in the ummixing matrix. The components to be zeroed out. If None (default) or an empty list, only components from ica.exclude will be excluded. Else, the union of exclude and ica.exclude will be excluded.

n_pca_componentsint | float | None

The number of PCA components to be kept, either absolute (int) or fraction of the explained variance (float). If None (default), the ica.n_pca_components from initialization will be used in 0.22; in 0.23 all components will be used.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample.

on_baselinestr

How to handle baseline-corrected epochs or evoked data. Can be 'raise' to raise an error, 'warn' (default) to emit a warning, 'ignore' to ignore, or “reapply” to reapply the baseline after applying ICA.

New in v1.2.

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.

Returns:
outinstance of Raw, Epochs or Evoked

The processed data.

Notes

Note

Applying ICA may introduce a DC shift. If you pass baseline-corrected Epochs or Evoked data, the baseline period of the cleaned data may not be of zero mean anymore. If you require baseline-corrected data, apply baseline correction again after cleaning via ICA. A warning will be emitted to remind you of this fact if you pass baseline-corrected data.

Changed in version 0.23: Warn if instance was baseline-corrected.

Examples using apply:

Overview of MEG/EEG analysis with MNE-Python

Overview of MEG/EEG analysis with MNE-Python

Repairing artifacts with ICA

Repairing artifacts with ICA

Find MEG reference channel artifacts

Find MEG reference channel artifacts

Removing muscle ICA components

Removing muscle ICA components
property compensation_grade#

The current gradient compensation grade.

copy()[source]#

Copy the ICA object.

Returns:
icainstance of ICA

The copied object.

Examples using copy:

Find MEG reference channel artifacts

Find MEG reference channel artifacts
find_bads_ecg(inst, ch_name=None, threshold='auto', start=None, stop=None, l_freq=8, h_freq=16, method='ctps', reject_by_annotation=True, measure='zscore', verbose=None)[source]#

Detect ECG related components.

Cross-trial phase statistics [7] or Pearson correlation can be used for detection.

Note

If no ECG channel is available, routine attempts to create an artificial ECG based on cross-channel averaging.

Parameters:
instinstance of Raw, Epochs or Evoked

Object to compute sources from.

ch_namestr

The name of the channel to use for ECG peak detection. The argument is mandatory if the dataset contains no ECG channels.

thresholdfloat | ‘auto’

Value above which a feature is classified as outlier. See Notes.

Changed in version 0.21.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample. When working with Epochs or Evoked objects, must be float or None.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample. When working with Epochs or Evoked objects, must be float or None.

l_freqfloat

Low pass frequency.

h_freqfloat

High pass frequency.

method‘ctps’ | ‘correlation’

The method used for detection. If 'ctps', cross-trial phase statistics [7] are used to detect ECG-related components. See Notes.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

New in v0.14.0.

measure‘zscore’ | ‘correlation’

Which method to use for finding outliers among the components:

  • 'zscore' (default) is the iterative z-scoring method. This method computes the z-score of the component’s scores and masks the components with a z-score above threshold. This process is repeated until no supra-threshold component remains.

  • 'correlation' is an absolute raw correlation threshold ranging from 0 to 1.

New in v0.21.

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.

Returns:
ecg_idxlist of int

The indices of ECG-related components.

scoresnp.ndarray of float, shape (n_components_)

If method is ‘ctps’, the normalized Kuiper index scores. If method is ‘correlation’, the correlation scores.

Notes

The threshold, method, and measure parameters interact in the following ways:

  • If method='ctps', threshold refers to the significance value of a Kuiper statistic, and threshold='auto' will compute the threshold automatically based on the sampling frequency.

  • If method='correlation' and measure='correlation', threshold refers to the Pearson correlation value, and threshold='auto' sets the threshold to 0.9.

  • If method='correlation' and measure='zscore', threshold refers to the z-score value (i.e., standard deviations) used in the iterative z-scoring method, and threshold='auto' sets the threshold to 3.0.

References

Examples using find_bads_ecg:

Repairing artifacts with ICA

Repairing artifacts with ICA
find_bads_eog(inst, ch_name=None, threshold=3.0, start=None, stop=None, l_freq=1, h_freq=10, reject_by_annotation=True, measure='zscore', verbose=None)[source]#

Detect EOG related components using correlation.

Detection is based on Pearson correlation between the filtered data and the filtered EOG channel. Thresholding is based on adaptive z-scoring. The above threshold components will be masked and the z-score will be recomputed until no supra-threshold component remains.

Parameters:
instinstance of Raw, Epochs or Evoked

Object to compute sources from.

ch_namestr

The name of the channel to use for EOG peak detection. The argument is mandatory if the dataset contains no EOG channels.

thresholdfloat | str

Value above which a feature is classified as outlier.

  • If measure is 'zscore', defines the threshold on the z-score used in the iterative z-scoring method.

  • If measure is 'correlation', defines the absolute threshold on the correlation between 0 and 1.

  • If 'auto', defaults to 3.0 if measure is 'zscore' and 0.9 if measure is 'correlation'.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample.

l_freqfloat

Low pass frequency.

h_freqfloat

High pass frequency.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

New in v0.14.0.

measure‘zscore’ | ‘correlation’

Which method to use for finding outliers among the components:

  • 'zscore' (default) is the iterative z-scoring method. This method computes the z-score of the component’s scores and masks the components with a z-score above threshold. This process is repeated until no supra-threshold component remains.

  • 'correlation' is an absolute raw correlation threshold ranging from 0 to 1.

New in v0.21.

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.

Returns:
eog_idxlist of int

The indices of EOG related components, sorted by score.

scoresnp.ndarray of float, shape (n_components_) | list of array

The correlation scores.

Examples using find_bads_eog:

Getting started with mne.Report

Getting started with mne.Report

Repairing artifacts with ICA

Repairing artifacts with ICA
find_bads_muscle(inst, threshold=0.5, start=None, stop=None, l_freq=7, h_freq=45, sphere=None, verbose=None)[source]#

Detect muscle related components.

Detection is based on [8] which uses data from a subject who has been temporarily paralyzed [9]. The criteria are threefold: 1) Positive log-log spectral slope from 7 to 45 Hz 2) Peripheral component power (farthest away from the vertex) 3) A single focal point measured by low spatial smoothness

The threshold is relative to the slope, focal point and smoothness of a typical muscle-related ICA component. Note the high frequency of the power spectral density slope was 75 Hz in the reference but has been modified to 45 Hz as a default based on the criteria being more accurate in practice.

Parameters:
instinstance of Raw, Epochs or Evoked

Object to compute sources from.

thresholdfloat | str

Value above which a component should be marked as muscle-related, relative to a typical muscle component.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample.

l_freqfloat

Low frequency for muscle-related power.

h_freqfloat

High frequency for msucle related power.

spherefloat | array_like | instance of ConductorModel | None | ‘auto’ | ‘eeglab’

The sphere parameters to use for the head outline. Can be array-like of shape (4,) to give the X/Y/Z origin and radius in meters, or a single float to give just the radius (origin assumed 0, 0, 0). Can also be an instance of a spherical ConductorModel to use the origin and radius from that object. If 'auto' the sphere is fit to digitization points. If 'eeglab' the head circle is defined by EEG electrodes 'Fpz', 'Oz', 'T7', and 'T8' (if 'Fpz' is not present, it will be approximated from the coordinates of 'Oz'). None (the default) is equivalent to 'auto' when enough extra digitization points are available, and (0, 0, 0, 0.095) otherwise.

New in v0.20.

Changed in version 1.1: Added 'eeglab' option.

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.

Returns:
muscle_idxlist of int

The indices of EOG related components, sorted by score.

scoresnp.ndarray of float, shape (n_components_) | list of array

The correlation scores.

Notes

New in v1.1.

Examples using find_bads_muscle:

Removing muscle ICA components

Removing muscle ICA components
find_bads_ref(inst, ch_name=None, threshold=3.0, start=None, stop=None, l_freq=None, h_freq=None, reject_by_annotation=True, method='together', measure='zscore', verbose=None)[source]#

Detect MEG reference related components using correlation.

Parameters:
instinstance of Raw, Epochs or Evoked

Object to compute sources from. Should contain at least one channel i.e. component derived from MEG reference channels.

ch_namelist of str

Which MEG reference components to use. If None, then all channels that begin with REF_ICA.

thresholdfloat | str

Value above which a feature is classified as outlier.

  • If measure is 'zscore', defines the threshold on the z-score used in the iterative z-scoring method.

  • If measure is 'correlation', defines the absolute threshold on the correlation between 0 and 1.

  • If 'auto', defaults to 3.0 if measure is 'zscore' and 0.9 if measure is 'correlation'.

Warning

If method is 'together', the iterative z-score method is always used.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample.

l_freqfloat

Low pass frequency.

h_freqfloat

High pass frequency.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

method‘together’ | ‘separate’

Method to use to identify reference channel related components. Defaults to 'together'. See notes.

New in v0.21.

measure‘zscore’ | ‘correlation’

Which method to use for finding outliers among the components:

  • 'zscore' (default) is the iterative z-scoring method. This method computes the z-score of the component’s scores and masks the components with a z-score above threshold. This process is repeated until no supra-threshold component remains.

  • 'correlation' is an absolute raw correlation threshold ranging from 0 to 1.

New in v0.21.

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.

Returns:
ref_idxlist of int

The indices of MEG reference related components, sorted by score.

scoresnp.ndarray of float, shape (n_components_) | list of array

The correlation scores.

Notes

ICA decomposition on MEG reference channels is used to assess external magnetic noise and remove it from the MEG. Two methods are supported:

With the 'together' method, only one ICA fit is used, which encompasses both MEG and reference channels together. Components which have particularly strong weights on the reference channels may be thresholded and marked for removal.

With 'separate' selected components from a separate ICA decomposition on the reference channels are used as a ground truth for identifying bad components in an ICA fit done on MEG channels only. The logic here is similar to an EOG/ECG, with reference components replacing the EOG/ECG channels. Recommended procedure is to perform ICA separately on reference channels, extract them using get_sources(), and then append them to the inst using add_channels(), preferably with the prefix REF_ICA so that they can be automatically detected.

With 'together', thresholding is based on adaptative z-scoring.

With 'separate':

  • If measure is 'zscore', thresholding is based on adaptative z-scoring.

  • If measure is 'correlation', threshold defines the absolute threshold on the correlation between 0 and 1.

Validation and further documentation for this technique can be found in [10].

New in v0.18.

References

Examples using find_bads_ref:

Find MEG reference channel artifacts

Find MEG reference channel artifacts
fit(inst, picks=None, start=None, stop=None, decim=None, reject=None, flat=None, tstep=2.0, reject_by_annotation=True, verbose=None)[source]#

Run the ICA decomposition on raw data.

Caveat! If supplying a noise covariance keep track of the projections available in the cov, the raw or the epochs object. For example, if you are interested in EOG or ECG artifacts, EOG and ECG projections should be temporally removed before fitting the ICA.

Parameters:
instinstance of Raw or Epochs

The data to be decomposed.

picksstr | array_like | slice | None

Channels to include. Slices and lists of integers will be interpreted as channel indices. In lists, channel type strings (e.g., ['meg', 'eeg']) will pick channels of those types, channel name strings (e.g., ['MEG0111', 'MEG2623'] will pick the given channels. Can also be the string values “all” to pick all channels, or “data” to pick data channels. None (default) will pick good data channels (excluding reference MEG channels). Note that channels in info['bads'] will be included if their names or indices are explicitly provided. This selection remains throughout the initialized ICA solution.

start, stopint | float | None

First and last sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample and to the last sample, respectively.

Note

These parameters only have an effect if inst is Raw data.

decimint | None

Increment for selecting only each n-th sampling point. If None, all samples between start and stop (inclusive) are used.

reject, flatdict | None

Rejection parameters based on peak-to-peak amplitude (PTP) in the continuous data. Signal periods exceeding the thresholds in reject or less than the thresholds in flat will be removed before fitting the ICA.

Note

These parameters only have an effect if inst is Raw data. For Epochs, perform PTP rejection via drop_bad().

Valid keys are all channel types present in the data. Values must be integers or floats.

If None, no PTP-based rejection will be performed. Example:

reject = dict(
    grad=4000e-13, # T / m (gradiometers)
    mag=4e-12, # T (magnetometers)
    eeg=40e-6, # V (EEG channels)
    eog=250e-6 # V (EOG channels)
)
flat = None  # no rejection based on flatness
tstepfloat

Length of data chunks for artifact rejection in seconds.

Note

This parameter only has an effect if inst is Raw data.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

Has no effect if inst is not a mne.io.Raw object.

New in v0.14.0.

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.

Returns:
selfinstance of ICA

Returns the modified instance.

Examples using fit:

Overview of MEG/EEG analysis with MNE-Python

Overview of MEG/EEG analysis with MNE-Python

Getting started with mne.Report

Getting started with mne.Report

Repairing artifacts with ICA

Repairing artifacts with ICA

Find MEG reference channel artifacts

Find MEG reference channel artifacts

Removing muscle ICA components

Removing muscle ICA components
get_channel_types(picks=None, unique=False, only_data_chs=False)[source]#

Get a list of channel type for each channel.

Parameters:
picksstr | array_like | slice | None

Channels to include. Slices and lists of integers will be interpreted as channel indices. In lists, channel type strings (e.g., ['meg', 'eeg']) will pick channels of those types, channel name strings (e.g., ['MEG0111', 'MEG2623'] will pick the given channels. Can also be the string values “all” to pick all channels, or “data” to pick data channels. None (default) will pick all channels. Note that channels in info['bads'] will be included if their names or indices are explicitly provided.

uniquebool

Whether to return only unique channel types. Default is False.

only_data_chsbool

Whether to ignore non-data channels. Default is False.

Returns:
channel_typeslist

The channel types.

get_components()[source]#

Get ICA topomap for components as numpy arrays.

Returns:
componentsarray, shape (n_channels, n_components)

The ICA components (maps).

Examples using get_components:

Repairing artifacts with ICA

Repairing artifacts with ICA
get_explained_variance_ratio(inst, *, components=None, ch_type=None)[source]#

Get the proportion of data variance explained by ICA components.

Parameters:
instmne.io.BaseRaw | mne.BaseEpochs | mne.Evoked

The uncleaned data.

componentsarray_like of int | int | None

The component(s) for which to do the calculation. If more than one component is specified, explained variance will be calculated jointly across all supplied components. If None (default), uses all available components.

ch_type‘mag’ | ‘grad’ | ‘planar1’ | ‘planar2’ | ‘eeg’ | array_like of str | None

The channel type(s) to include in the calculation. If None, all available channel types will be used.

Returns:
dict (str, float)

The fraction of variance in inst that can be explained by the ICA components, calculated separately for each channel type. Dictionary keys are the channel types, and corresponding explained variance ratios are the values.

Notes

A value similar to EEGLAB’s pvaf (percent variance accounted for) will be calculated for the specified component(s).

Since ICA components cannot be assumed to be aligned orthogonally, the sum of the proportion of variance explained by all components may not be equal to 1. In certain situations, the proportion of variance explained by a component may even be negative.

New in v1.2.

Examples using get_explained_variance_ratio:

Repairing artifacts with ICA

Repairing artifacts with ICA
get_sources(inst, add_channels=None, start=None, stop=None)[source]#

Estimate sources given the unmixing matrix.

This method will return the sources in the container format passed. Typical usecases:

  1. pass Raw object to use raw.plot for ICA sources

  2. pass Epochs object to compute trial-based statistics in ICA space

  3. pass Evoked object to investigate time-locking in ICA space

Parameters:
instinstance of Raw, Epochs or Evoked

Object to compute sources from and to represent sources in.

add_channelsNone | list of str

Additional channels to be added. Useful to e.g. compare sources with some reference. Defaults to None.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, the entire data will be used.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, the entire data will be used.

Returns:
sourcesinstance of Raw, Epochs or Evoked

The ICA sources time series.

Examples using get_sources:

Find MEG reference channel artifacts

Find MEG reference channel artifacts
plot_components(picks=None, ch_type=None, *, inst=None, plot_std=True, reject='auto', sensors=True, show_names=False, contours=6, outlines='head', sphere=None, image_interp='cubic', extrapolate='auto', border='mean', res=64, size=1, cmap='RdBu_r', vlim=(None, None), cnorm=None, colorbar=False, cbar_fmt='%3.2f', axes=None, title=None, nrows='auto', ncols='auto', show=True, image_args=None, psd_args=None, verbose=None)[source]#

Project mixing matrix on interpolated sensor topography.

Parameters:
picksint | list of int | slice | None

Indices of the independent components (ICs) to visualize. If an integer, represents the index of the IC to pick. Multiple ICs can be selected using a list of int or a slice. The indices are 0-indexed, so picks=1 will pick the second IC: ICA001. None will pick all independent components in the order fitted.

ch_type‘mag’ | ‘grad’ | ‘planar1’ | ‘planar2’ | ‘eeg’ | None

The channel type to plot. For 'grad', the gradiometers are collected in pairs and the RMS for each pair is plotted. If None the first available channel type from order shown above is used. Defaults to None.

instRaw | Epochs | None

To be able to see component properties after clicking on component topomap you need to pass relevant data - instances of Raw or Epochs (for example the data that ICA was trained on). This takes effect only when running matplotlib in interactive mode.

plot_stdbool | float

Whether to plot standard deviation in ERP/ERF and spectrum plots. Defaults to True, which plots one standard deviation above/below. If set to float allows to control how many standard deviations are plotted. For example 2.5 will plot 2.5 standard deviation above/below.

reject'auto' | dict | None

Allows to specify rejection parameters used to drop epochs (or segments if continuous signal is passed as inst). If None, no rejection is applied. The default is ‘auto’, which applies the rejection parameters used when fitting the ICA object.

sensorsbool | str

Whether to add markers for sensor locations. If str, should be a valid matplotlib format string (e.g., 'r+' for red plusses, see the Notes section of plot()). If True (the default), black circles will be used.

show_namesbool | callable()

If True, show channel names next to each sensor marker. If callable, channel names will be formatted using the callable; e.g., to delete the prefix ‘MEG ‘ from all channel names, pass the function lambda x: x.replace('MEG ', ''). If mask is not None, only non-masked sensor names will be shown.

contoursint | array_like

The number of contour lines to draw. If 0, no contours will be drawn. If a positive integer, that number of contour levels are chosen using the matplotlib tick locator (may sometimes be inaccurate, use array for accuracy). If array-like, the array values are used as the contour levels. The values should be in µV for EEG, fT for magnetometers and fT/m for gradiometers. If colorbar=True, the colorbar will have ticks corresponding to the contour levels. Default is 6.

outlines‘head’ | dict | None

The outlines to be drawn. If ‘head’, the default head scheme will be drawn. If dict, each key refers to a tuple of x and y positions, the values in ‘mask_pos’ will serve as image mask. Alternatively, a matplotlib patch object can be passed for advanced masking options, either directly or as a function that returns patches (required for multi-axis plots). If None, nothing will be drawn. Defaults to ‘head’.

spherefloat | array_like | instance of ConductorModel | None | ‘auto’ | ‘eeglab’

The sphere parameters to use for the head outline. Can be array-like of shape (4,) to give the X/Y/Z origin and radius in meters, or a single float to give just the radius (origin assumed 0, 0, 0). Can also be an instance of a spherical ConductorModel to use the origin and radius from that object. If 'auto' the sphere is fit to digitization points. If 'eeglab' the head circle is defined by EEG electrodes 'Fpz', 'Oz', 'T7', and 'T8' (if 'Fpz' is not present, it will be approximated from the coordinates of 'Oz'). None (the default) is equivalent to 'auto' when enough extra digitization points are available, and (0, 0, 0, 0.095) otherwise.

New in v0.20.

Changed in version 1.1: Added 'eeglab' option.

image_interpstr

The image interpolation to be used. Options are 'cubic' (default) to use scipy.interpolate.CloughTocher2DInterpolator, 'nearest' to use scipy.spatial.Voronoi or 'linear' to use scipy.interpolate.LinearNDInterpolator.

extrapolatestr

Options:

  • 'box'

    Extrapolate to four points placed to form a square encompassing all data points, where each side of the square is three times the range of the data in the respective dimension.

  • 'local' (default for MEG sensors)

    Extrapolate only to nearby points (approximately to points closer than median inter-electrode distance). This will also set the mask to be polygonal based on the convex hull of the sensors.

  • 'head' (default for non-MEG sensors)

    Extrapolate out to the edges of the clipping circle. This will be on the head circle when the sensors are contained within the head circle, but it can extend beyond the head when sensors are plotted outside the head circle.

New in v1.3.

borderfloat | ‘mean’

Value to extrapolate to on the topomap borders. If 'mean' (default), then each extrapolated point has the average value of its neighbours.

New in v1.3.

resint

The resolution of the topomap image (number of pixels along each side).

sizefloat

Side length of each subplot in inches.

New in v1.3.

cmapmatplotlib colormap | (colormap, bool) | ‘interactive’ | None

Colormap to use. If tuple, the first value indicates the colormap to use and the second value is a boolean defining interactivity. In interactive mode the colors are adjustable by clicking and dragging the colorbar with left and right mouse button. Left mouse button moves the scale up and down and right mouse button adjusts the range. Hitting space bar resets the range. Up and down arrows can be used to change the colormap. If None, 'Reds' is used for data that is either all-positive or all-negative, and 'RdBu_r' is used otherwise. 'interactive' is equivalent to (None, True). Defaults to None.

Warning

Interactive mode works smoothly only for a small amount of topomaps. Interactive mode is disabled by default for more than 2 topomaps.

vlimtuple of length 2

Colormap limits to use. If a tuple of floats, specifies the lower and upper bounds of the colormap (in that order); providing None for either entry will set the corresponding boundary at the min/max of the data. Defaults to (None, None).

New in v1.3.

cnormmatplotlib.colors.Normalize | None

How to normalize the colormap. If None, standard linear normalization is performed. If not None, vmin and vmax will be ignored. See Matplotlib docs for more details on colormap normalization, and the ERDs example for an example of its use.

New in v1.3.

colorbarbool

Plot a colorbar in the rightmost column of the figure.

cbar_fmtstr

Formatting string for colorbar tick labels. See Format Specification Mini-Language for details.

axesAxes | array of Axes | None

The subplot(s) to plot to. Either a single Axes or an iterable of Axes if more than one subplot is needed. The number of subplots must match the number of selected components. If None, new figures will be created with the number of subplots per figure controlled by nrows and ncols.

titlestr | None

The title of the generated figure. If None (default) and axes=None, a default title of “ICA Components” will be used.

nrows, ncolsint | ‘auto’

The number of rows and columns of topographies to plot. If both nrows and ncols are 'auto', will plot up to 20 components in a 5×4 grid, and return multiple figures if more than 20 components are requested. If one is 'auto' and the other a scalar, a single figure is generated. If scalars are provided for both arguments, will plot up to nrows*ncols components in a grid and return multiple figures as needed. Default is nrows='auto', ncols='auto'.

New in v1.3.

showbool

Show the figure if True.

image_argsdict | None

Dictionary of arguments to pass to plot_epochs_image() in interactive mode. Ignored if inst is not supplied. If None, nothing is passed. Defaults to None.

psd_argsdict | None

Dictionary of arguments to pass to compute_psd() in interactive mode. Ignored if inst is not supplied. If None, nothing is passed. Defaults to None.

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.

Returns:
figinstance of matplotlib.figure.Figure | list of matplotlib.figure.Figure

The figure object(s).

Notes

When run in interactive mode, plot_ica_components allows to reject components by clicking on their title label. The state of each component is indicated by its label color (gray: rejected; black: retained). It is also possible to open component properties by clicking on the component topomap (this option is only available when the inst argument is supplied).

Examples using plot_components:

Repairing artifacts with ICA

Repairing artifacts with ICA
plot_overlay(inst, exclude=None, picks=None, start=None, stop=None, title=None, show=True, n_pca_components=None, *, on_baseline='warn', verbose=None)[source]#

Overlay of raw and cleaned signals given the unmixing matrix.

This method helps visualizing signal quality and artifact rejection.

Parameters:
instinstance of Raw or Evoked

The signal to plot. If Raw, the raw data per channel type is displayed before and after cleaning. A second panel with the RMS for MEG sensors and the GFP for EEG sensors is displayed. If Evoked, butterfly traces for signals before and after cleaning will be superimposed.

excludearray_like of int | None (default)

The components marked for exclusion. If None (default), the components listed in ICA.exclude will be used.

picksstr | array_like | slice | None

Channels to include. Slices and lists of integers will be interpreted as channel indices. In lists, channel type strings (e.g., ['meg', 'eeg']) will pick channels of those types, channel name strings (e.g., ['MEG0111', 'MEG2623'] will pick the given channels. Can also be the string values “all” to pick all channels, or “data” to pick data channels. None (default) will pick all channels that were included during fitting.

start, stopfloat | None

The first and last time point (in seconds) of the data to plot. If inst is a Raw object, start=None and stop=None will be translated into start=0. and stop=3., respectively. For Evoked, None refers to the beginning and end of the evoked signal.

titlestr | None

The title of the generated figure. If None (default), no title is displayed.

showbool

Show the figure if True.

n_pca_componentsint | float | None

The number of PCA components to be kept, either absolute (int) or fraction of the explained variance (float). If None (default), the ica.n_pca_components from initialization will be used in 0.22; in 0.23 all components will be used.

New in v0.22.

on_baselinestr

How to handle baseline-corrected epochs or evoked data. Can be 'raise' to raise an error, 'warn' (default) to emit a warning, 'ignore' to ignore, or “reapply” to reapply the baseline after applying ICA.

New in v1.2.

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.

Returns:
figinstance of Figure

The figure.

Examples using plot_overlay:

Repairing artifacts with ICA

Repairing artifacts with ICA

Removing muscle ICA components

Removing muscle ICA components
plot_properties(inst, picks=None, axes=None, dB=True, plot_std=True, log_scale=False, topomap_args=None, image_args=None, psd_args=None, figsize=None, show=True, reject='auto', reject_by_annotation=True, *, verbose=None)[source]#

Display component properties.

Properties include the topography, epochs image, ERP/ERF, power spectrum, and epoch variance.

Parameters:
instinstance of Epochs or Raw

The data to use in plotting properties.

Note

You can interactively cycle through topographic maps for different channel types by pressing T.

picksint | list of int | slice | None

Indices of the independent components (ICs) to visualize. If an integer, represents the index of the IC to pick. Multiple ICs can be selected using a list of int or a slice. The indices are 0-indexed, so picks=1 will pick the second IC: ICA001. None will pick the first 5 components.

axeslist of Axes | None

List of five matplotlib axes to use in plotting: [topomap_axis, image_axis, erp_axis, spectrum_axis, variance_axis]. If None a new figure with relevant axes is created. Defaults to None.

dBbool

Whether to plot spectrum in dB. Defaults to True.

plot_stdbool | float

Whether to plot standard deviation/confidence intervals in ERP/ERF and spectrum plots. Defaults to True, which plots one standard deviation above/below for the spectrum. If set to float allows to control how many standard deviations are plotted for the spectrum. For example 2.5 will plot 2.5 standard deviation above/below. For the ERP/ERF, by default, plot the 95 percent parametric confidence interval is calculated. To change this, use ci in ts_args in image_args (see below).

log_scalebool

Whether to use a logarithmic frequency axis to plot the spectrum. Defaults to False.

Note

You can interactively toggle this setting by pressing L.

New in v1.1.

topomap_argsdict | None

Dictionary of arguments to plot_topomap. If None, doesn’t pass any additional arguments. Defaults to None.

image_argsdict | None

Dictionary of arguments to plot_epochs_image. If None, doesn’t pass any additional arguments. Defaults to None.

psd_argsdict | None

Dictionary of arguments to compute_psd(). If None, doesn’t pass any additional arguments. Defaults to None.

figsizearray_like, shape (2,) | None

Allows to control size of the figure. If None, the figure size defaults to [7., 6.].

showbool

Show figure if True.

reject‘auto’ | dict | None

Allows to specify rejection parameters used to drop epochs (or segments if continuous signal is passed as inst). If None, no rejection is applied. The default is ‘auto’, which applies the rejection parameters used when fitting the ICA object.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

Has no effect if inst is not a mne.io.Raw object.

New in v0.21.0.

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.

Returns:
figlist

List of matplotlib figures.

Notes

New in v0.13.

Examples using plot_properties:

Overview of MEG/EEG analysis with MNE-Python

Overview of MEG/EEG analysis with MNE-Python

Repairing artifacts with ICA

Repairing artifacts with ICA

Find MEG reference channel artifacts

Find MEG reference channel artifacts

Removing muscle ICA components

Removing muscle ICA components
plot_scores(scores, exclude=None, labels=None, axhline=None, title='ICA component scores', figsize=None, n_cols=None, show=True)[source]#

Plot scores related to detected components.

Use this function to asses how well your score describes outlier sources and how well you were detecting them.

Parameters:
scoresarray_like of float, shape (n_ica_components,) | list of array

Scores based on arbitrary metric to characterize ICA components.

excludearray_like of int

The components marked for exclusion. If None (default), ICA.exclude will be used.

labelsstr | list | ‘ecg’ | ‘eog’ | None

The labels to consider for the axes tests. Defaults to None. If list, should match the outer shape of scores. If ‘ecg’ or ‘eog’, the labels_ attributes will be looked up. Note that ‘/’ is used internally for sublabels specifying ECG and EOG channels.

axhlinefloat

Draw horizontal line to e.g. visualize rejection threshold.

titlestr

The figure title.

figsizetuple of int | None

The figure size. If None it gets set automatically.

n_colsint | None

Scores are plotted in a grid. This parameter controls how many to plot side by side before starting a new row. By default, a number will be chosen to make the grid as square as possible.

showbool

Show figure if True.

Returns:
figinstance of Figure

The figure object.

Examples using plot_scores:

Repairing artifacts with ICA

Repairing artifacts with ICA

Find MEG reference channel artifacts

Find MEG reference channel artifacts

Removing muscle ICA components

Removing muscle ICA components
plot_sources(inst, picks=None, start=None, stop=None, title=None, show=True, block=False, show_first_samp=False, show_scrollbars=True, time_format='float', precompute=None, use_opengl=None, *, theme=None, overview_mode=None, splash=True)[source]#

Plot estimated latent sources given the unmixing matrix.

Typical usecases:

  1. plot evolution of latent sources over time based on (Raw input)

  2. plot latent source around event related time windows (Epochs input)

  3. plot time-locking in ICA space (Evoked input)

Parameters:
instinstance of Raw, Epochs or Evoked

The object to plot the sources from.

picksint | list of int | slice | None

Indices of the independent components (ICs) to visualize. If an integer, represents the index of the IC to pick. Multiple ICs can be selected using a list of int or a slice. The indices are 0-indexed, so picks=1 will pick the second IC: ICA001. None will pick all independent components in the order fitted.

start, stopfloat | int | None

If inst is a Raw or an Evoked object, the first and last time point (in seconds) of the data to plot. If inst is a Raw object, start=None and stop=None will be translated into start=0. and stop=3., respectively. For Evoked, None refers to the beginning and end of the evoked signal. If inst is an Epochs object, specifies the index of the first and last epoch to show.

titlestr | None

The window title. If None a default is provided.

showbool

Show figure if True.

blockbool

Whether to halt program execution until the figure is closed. Useful for interactive selection of components in raw and epoch plotter. For evoked, this parameter has no effect. Defaults to False.

show_first_sampbool

If True, show time axis relative to the raw.first_samp.

show_scrollbarsbool

Whether to show scrollbars when the plot is initialized. Can be toggled after initialization by pressing z (“zen mode”) while the plot window is focused. Default is True.

New in v0.19.0.

time_format‘float’ | ‘clock’

Style of time labels on the horizontal axis. If 'float', labels will be number of seconds from the start of the recording. If 'clock', labels will show “clock time” (hours/minutes/seconds) inferred from raw.info['meas_date']. Default is 'float'.

New in v0.24.

precomputebool | str

Whether to load all data (not just the visible portion) into RAM and apply preprocessing (e.g., projectors) to the full data array in a separate processor thread, instead of window-by-window during scrolling. The default None uses the MNE_BROWSER_PRECOMPUTE variable, which defaults to 'auto'. 'auto' compares available RAM space to the expected size of the precomputed data, and precomputes only if enough RAM is available. This is only used with the Qt backend.

New in v0.24.

Changed in version 1.0: Support for the MNE_BROWSER_PRECOMPUTE config variable.

use_openglbool | None

Whether to use OpenGL when rendering the plot (requires pyopengl). May increase performance, but effect is dependent on system CPU and graphics hardware. Only works if using the Qt backend. Default is None, which will use False unless the user configuration variable MNE_BROWSER_USE_OPENGL is set to 'true', see mne.set_config().

New in v0.24.

themestr | path-like

Can be “auto”, “light”, or “dark” or a path-like to a custom stylesheet. For Dark-Mode and automatic Dark-Mode-Detection, qdarkstyle and darkdetect, respectively, are required. If None (default), the config option MNE_BROWSER_THEME will be used, defaulting to “auto” if it’s not found. Only supported by the 'qt' backend.

New in v1.0.

overview_modestr | None

Can be “channels”, “empty”, or “hidden” to set the overview bar mode for the 'qt' backend. If None (default), the config option MNE_BROWSER_OVERVIEW_MODE will be used, defaulting to “channels” if it’s not found.

New in v1.1.

splashbool

If True (default), a splash screen is shown during the application startup. Only applicable to the qt backend.

New in v1.6.

Returns:
figmatplotlib.figure.Figure | mne_qt_browser.figure.MNEQtBrowser

Browser instance.

Notes

For raw and epoch instances, it is possible to select components for exclusion by clicking on the line. The selected components are added to ica.exclude on close.

MNE-Python provides two different backends for browsing plots (i.e., raw.plot(), epochs.plot(), and ica.plot_sources()). One is based on matplotlib, and the other is based on PyQtGraph. You can set the backend temporarily with the context manager mne.viz.use_browser_backend(), you can set it for the duration of a Python session using mne.viz.set_browser_backend(), and you can set the default for your computer via mne.set_config('MNE_BROWSER_BACKEND', 'matplotlib') (or 'qt').

Note

For the PyQtGraph backend to run in IPython with block=False you must run the magic command %gui qt5 first.

Note

To report issues with the PyQtGraph backend, please use the issues of mne-qt-browser.

New in v0.10.0.

Examples using plot_sources:

Repairing artifacts with ICA

Repairing artifacts with ICA

Removing muscle ICA components

Removing muscle ICA components
save(fname, *, overwrite=False, verbose=None)[source]#

Store ICA solution into a fiff file.

Parameters:
fnamepath-like

The absolute path of the file name to save the ICA solution into. The file name should end with -ica.fif or -ica.fif.gz.

overwritebool

If True (default False), overwrite the destination file if it exists.

New in v1.0.

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.

Returns:
icainstance of ICA

The object.

See also

read_ica

Examples using save:

Repairing artifacts with ICA

Repairing artifacts with ICA
score_sources(inst, target=None, score_func='pearsonr', start=None, stop=None, l_freq=None, h_freq=None, reject_by_annotation=True, verbose=None)[source]#

Assign score to components based on statistic or metric.

Parameters:
instinstance of Raw, Epochs or Evoked

The object to reconstruct the sources from.

targetarray_like | str | None

Signal to which the sources shall be compared. It has to be of the same shape as the sources. If str, a routine will try to find a matching channel name. If None, a score function expecting only one input-array argument must be used, for instance, scipy.stats.skew (default).

score_funccallable() | str

Callable taking as arguments either two input arrays (e.g. Pearson correlation) or one input array (e. g. skewness) and returns a float. For convenience the most common score_funcs are available via string labels: Currently, all distance metrics from scipy.spatial and All functions from scipy.stats taking compatible input arguments are supported. These function have been modified to support iteration over the rows of a 2D array.

startint | float | None

First sample to include. If float, data will be interpreted as time in seconds. If None, data will be used from the first sample.

stopint | float | None

Last sample to not include. If float, data will be interpreted as time in seconds. If None, data will be used to the last sample.

l_freqfloat

Low pass frequency.

h_freqfloat

High pass frequency.

reject_by_annotationbool

Whether to omit bad segments from the data before fitting. If True (default), annotated segments whose description begins with 'bad' are omitted. If False, no rejection based on annotations is performed.

New in v0.14.0.

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.

Returns:
scoresndarray

Scores for each source as returned from score_func.

Examples using mne.preprocessing.ICA#

Overview of MEG/EEG analysis with MNE-Python

Overview of MEG/EEG analysis with MNE-Python

Getting started with mne.Report

Getting started with mne.Report

Repairing artifacts with ICA

Repairing artifacts with ICA

Find MEG reference channel artifacts

Find MEG reference channel artifacts

Compare the different ICA algorithms in MNE

Compare the different ICA algorithms in MNE

Removing muscle ICA components

Removing muscle ICA components

From raw data to dSPM on SPM Faces dataset

From raw data to dSPM on SPM Faces dataset