def test_ica_labels(): """Test ICA labels.""" # The CTF data are uniquely well suited to testing the ICA.find_bads_ # methods raw = read_raw_ctf(ctf_fname, preload=True) # set the appropriate EEG channels to EOG and ECG raw.set_channel_types({'EEG057': 'eog', 'EEG058': 'eog', 'EEG059': 'ecg'}) ica = ICA(n_components=4, random_state=0, max_iter=2, method='fastica', allow_ref_meg=True) with pytest.warns(UserWarning, match='did not converge'): ica.fit(raw) _assert_ica_attributes(ica) ica.find_bads_eog(raw, l_freq=None, h_freq=None) picks = list(pick_types(raw.info, meg=False, eog=True)) for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('eog', idx, raw.ch_names[ch]) in ica.labels_ assert 'eog' in ica.labels_ for key in ('ecg', 'ref_meg', 'ecg/ECG-MAG'): assert key not in ica.labels_ ica.find_bads_ecg(raw, l_freq=None, h_freq=None, method='correlation', threshold='auto') picks = list(pick_types(raw.info, meg=False, ecg=True)) for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('ecg', idx, raw.ch_names[ch]) in ica.labels_ for key in ('ecg', 'eog'): assert key in ica.labels_ for key in ('ref_meg', 'ecg/ECG-MAG'): assert key not in ica.labels_ # derive reference ICA components and append them to raw ica_rf = ICA(n_components=2, random_state=0, max_iter=2, allow_ref_meg=True) with pytest.warns(UserWarning, match='did not converge'): ica_rf.fit(raw.copy().pick_types(meg=False, ref_meg=True)) icacomps = ica_rf.get_sources(raw) # rename components so they are auto-detected by find_bads_ref icacomps.rename_channels({c: 'REF_' + c for c in icacomps.ch_names}) # and add them to raw raw.add_channels([icacomps]) ica.find_bads_ref(raw, l_freq=None, h_freq=None, method="separate") picks = pick_channels_regexp(raw.ch_names, 'REF_ICA*') for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('ref_meg', idx, raw.ch_names[ch]) in ica.labels_ ica.find_bads_ref(raw, l_freq=None, h_freq=None, method="together") assert 'ref_meg' in ica.labels_ for key in ('ecg', 'eog', 'ref_meg'): assert key in ica.labels_ assert 'ecg/ECG-MAG' not in ica.labels_ ica.find_bads_ecg(raw, l_freq=None, h_freq=None, threshold='auto') for key in ('ecg', 'eog', 'ref_meg', 'ecg/ECG-MAG'): assert key in ica.labels_
def test_ica_labels(): """Test ICA labels.""" # The CTF data are uniquely well suited to testing the ICA.find_bads_ # methods raw = read_raw_ctf(ctf_fname, preload=True) # derive reference ICA components and append them to raw icarf = ICA(n_components=2, random_state=0, max_iter=2, allow_ref_meg=True) with pytest.warns(UserWarning, match='did not converge'): icarf.fit(raw.copy().pick_types(meg=False, ref_meg=True)) icacomps = icarf.get_sources(raw) # rename components so they are auto-detected by find_bads_ref icacomps.rename_channels({c: 'REF_' + c for c in icacomps.ch_names}) # and add them to raw raw.add_channels([icacomps]) # set the appropriate EEG channels to EOG and ECG raw.set_channel_types({'EEG057': 'eog', 'EEG058': 'eog', 'EEG059': 'ecg'}) ica = ICA(n_components=4, random_state=0, max_iter=2, method='fastica') with pytest.warns(UserWarning, match='did not converge'): ica.fit(raw) ica.find_bads_eog(raw, l_freq=None, h_freq=None) picks = list(pick_types(raw.info, meg=False, eog=True)) for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('eog', idx, raw.ch_names[ch]) in ica.labels_ assert 'eog' in ica.labels_ for key in ('ecg', 'ref_meg', 'ecg/ECG-MAG'): assert key not in ica.labels_ ica.find_bads_ecg(raw, l_freq=None, h_freq=None, method='correlation') picks = list(pick_types(raw.info, meg=False, ecg=True)) for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('ecg', idx, raw.ch_names[ch]) in ica.labels_ for key in ('ecg', 'eog'): assert key in ica.labels_ for key in ('ref_meg', 'ecg/ECG-MAG'): assert key not in ica.labels_ ica.find_bads_ref(raw, l_freq=None, h_freq=None) picks = pick_channels_regexp(raw.ch_names, 'REF_ICA*') for idx, ch in enumerate(picks): assert '{}/{}/{}'.format('ref_meg', idx, raw.ch_names[ch]) in ica.labels_ for key in ('ecg', 'eog', 'ref_meg'): assert key in ica.labels_ assert 'ecg/ECG-MAG' not in ica.labels_ ica.find_bads_ecg(raw, l_freq=None, h_freq=None) for key in ('ecg', 'eog', 'ref_meg', 'ecg/ECG-MAG'): assert key in ica.labels_
# %% # Run the "together" algorithm. raw_tog = raw.copy() ica_kwargs = dict( method='picard', fit_params=dict(tol=1e-4), # use a high tol here for speed ) all_picks = mne.pick_types(raw_tog.info, meg=True, ref_meg=True) ica_tog = ICA(n_components=60, max_iter='auto', allow_ref_meg=True, **ica_kwargs) ica_tog.fit(raw_tog, picks=all_picks) # low threshold (2.0) here because of cropped data, entire recording can use # a higher threshold (2.5) bad_comps, scores = ica_tog.find_bads_ref(raw_tog, threshold=2.0) # Plot scores with bad components marked. ica_tog.plot_scores(scores, bad_comps) # Examine the properties of removed components. It's clear from the time # courses and topographies that these components represent external, # intermittent noise. ica_tog.plot_properties(raw_tog, picks=bad_comps) # Remove the components. raw_tog = ica_tog.apply(raw_tog, exclude=bad_comps) # %% # Cleaned data: raw_tog.plot_psd(fmax=30)