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DOC: Add epoch quality example #13710
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add Epochs.score_quality() for data-driven epoch quality scoring
aman-coder03 db8a176
[pre-commit.ci] auto fixes from pre-commit.com hooks
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DOC: Fix encoding of changelog file
aman-coder03 c76aa84
adding example for exploring epoch quality before rejection
aman-coder03 518b6b1
updating newfeature.rst file
aman-coder03 d7b5581
remove score_quality method, keep example only per review feedback
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updating .rst file
aman-coder03 3fdddec
rename changelog file to match PR number
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add footcite references and update bib
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Merge branch 'main' into enh-epoch-score-quality
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build docs
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Merge branch 'main' into enh-epoch-score-quality
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restructure as how-to guide
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Merge branch 'main' into enh-epoch-score-quality
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Merge branch 'main' into enh-epoch-score-quality
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switching to EEGBCI
aman-coder03 4ba980a
update thresholds
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address review comments
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Merge branch 'main' into enh-epoch-score-quality
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Merge branch 'main' into enh-epoch-score-quality
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Update thresholds
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Merge branch 'main' into enh-epoch-score-quality
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Minor text update [skip azp][skip actions]
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| Add a preprocessing example showing how to explore epoch quality before rejection using robust statistics (peak-to-peak amplitude, variance, and kurtosis) inspired by FASTER (Nolan et al., 2010) and Delorme et al. (2007), by `Aman Srivastava`_. |
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| """ | ||
| .. _ex-epoch-quality: | ||
|
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||
| ======================================== | ||
| Exploring epoch quality before rejection | ||
| ======================================== | ||
|
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| This example shows an approach for identifying epochs containing potential artifacts and | ||
| rejecting these bad epochs. We compute per-epoch outlier scores from peak-to-peak | ||
| amplitude, variance, and kurtosis — inspired by FASTER :footcite:`NolanEtAl2010` and | ||
| :footcite:t:`DelormeEtAl2007` — and use them to rank epochs from cleanest to noisiest to | ||
| inform rejection decisions. | ||
| """ | ||
| # Authors: Aman Srivastava | ||
| # | ||
| # License: BSD-3-Clause | ||
| # Copyright the MNE-Python contributors. | ||
|
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| # %% | ||
| import matplotlib.pyplot as plt | ||
| import numpy as np | ||
| from scipy.stats import kurtosis | ||
|
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| import mne | ||
| from mne.datasets import eegbci | ||
|
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| print(__doc__) | ||
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| # %% | ||
| # Load the EEGBCI dataset and create epochs | ||
| # ----------------------------------------- | ||
| raw_fname = eegbci.load_data(subjects=3, runs=(3,))[0] | ||
| raw = mne.io.read_raw(raw_fname, preload=True) | ||
| eegbci.standardize(raw) | ||
| montage = mne.channels.make_standard_montage("standard_1005") | ||
| raw.set_montage(montage) | ||
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| events, event_id = mne.events_from_annotations(raw) | ||
| epochs = mne.Epochs(raw, events, tmin=-0.2, tmax=0.5, preload=True, baseline=(None, 0)) | ||
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| # %% | ||
| # Compute per-epoch outlier scores | ||
| # -------------------------------- | ||
| # Peak-to-peak amplitude, variance, and kurtosis are computed per epoch. Each feature is | ||
| # z-scored robustly using median absolute deviation across epochs, and averaged into a | ||
| # single outlier score normalised between [0, 1]. Scores close to 1 indicate a likely | ||
| # presence of artifacts in the epoch. | ||
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| data = epochs.get_data() # (n_epochs, n_channels, n_times) | ||
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| ptp = np.ptp(data, axis=-1).mean(axis=-1) | ||
| var = data.var(axis=-1).mean(axis=-1) | ||
| kurt = np.array([kurtosis(data[i].ravel()) for i in range(len(data))]) | ||
|
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| features = np.column_stack([ptp, var, kurt]) | ||
| median = np.median(features, axis=0) | ||
| mad = np.median(np.abs(features - median), axis=0) + 1e-10 | ||
| z = np.abs((features - median) / mad) | ||
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| raw_score = z.mean(axis=-1) | ||
| scores = (raw_score - raw_score.min()) / (raw_score.max() - raw_score.min() + 1e-10) | ||
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| # %% | ||
| # Determining outlier epochs | ||
| # -------------------------- | ||
| # Below, epochs are ranked from cleanest to noisiest. We need to find an appropriate | ||
| # threshold to flag those epochs likely containing artifacts. In the plot, we show two | ||
| # example thresholds: a more lenient threshold of 0.8; and a stricter threshold of 0.6. | ||
| fig, ax = plt.subplots(layout="constrained") | ||
| sorted_idx = np.argsort(scores) | ||
| ax.bar(np.arange(len(scores)), scores[sorted_idx], color="steelblue") | ||
| ax.axhline(0.8, color="red", linestyle="--", label="More lenient threshold (0.8)") | ||
| ax.axhline(0.6, color="orange", linestyle="--", label="Stricter threshold (0.6)") | ||
| ax.set( | ||
| xlabel="Epoch (sorted by score)", | ||
| ylabel="Outlier score", | ||
| title="Epoch quality scores (0 = clean, 1 = likely artifact)", | ||
| ) | ||
| ax.legend() | ||
|
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| for threshold in [0.8, 0.6]: | ||
| bad_epochs = np.where(scores > threshold)[0] | ||
| print( | ||
| f"Threshold {threshold}: {len(bad_epochs)} epochs flagged " | ||
| f"out of {len(epochs)} total" | ||
| ) | ||
|
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| # %% | ||
| # Epochs flagged by the thresholds can be inspected using the :meth:`~mne.Epochs.plot` | ||
| # method. First, we show those epochs with the worst scores (≥ 0.8), containing a number | ||
| # of amplitude spikes. | ||
| epochs[np.where(scores >= 0.8)[0]].plot(title="Scores ≥ 0.8", scalings=dict(eeg=70e-6)) | ||
| # %% | ||
| # In contrast, the threshold of 0.6 captures epochs with less severe artifact activity, | ||
| # which may be overly conservative to exclude from the analysis. | ||
| epochs[np.where((scores >= 0.6) & (scores < 0.8))[0]].plot( | ||
| title="0.6 ≤ scores < 0.8", scalings=dict(eeg=70e-6) | ||
| ) | ||
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| # %% | ||
| # Identify and handle suspicious epochs | ||
| # -------------------------------------- | ||
| # Epochs scoring above the threshold can be inspected visually using | ||
| # :meth:`mne.Epochs.plot`, or dropped directly using | ||
| # :meth:`mne.Epochs.drop`. The threshold to use to flag epochs as outliers varies | ||
| # depending on the dataset and analysis goals, and inspecting the flagged epochs is a | ||
| # crucial step in identifying the optimal threshold. | ||
| epochs.drop(np.where(scores >= 0.8)[0]) | ||
| print(f"Epochs remaining after dropping scores ≥ 0.8: {len(epochs)}") | ||
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| # %% | ||
| # References | ||
| # ---------- | ||
| # .. footbibliography:: | ||
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Now there should be a brief point on actually dropping the flagged epochs.