This report presents a spectral analysis of resting-state high-density EEG recordings from participants with Mild Cognitive Impairment (MCI), part of a larger dataset involving Healthy Elders, People with Subjective and Mild Cognitive Impairment, and Alzheimer's Disease. The dataset, provided by Lazarou et al.[1], consists of recordings from various groups, with this analysis focusing exclusively on the MCI group.
The dataset is not publicly available, but can be requested from the authors.
The dataset came with two types of files, raw data and preprocessed by authors. This report focues on the preprocessed by authors data, for report of insights from raw data, see here.
From the total pool of 79 MCI participants, 40 subjects were meticulously chosen based on the quality and properties of their EEG recordings, as outlined in the dataset description by the authors. Each subject's recording was manually inspected, and segments ranging from 1 to 6 (40-second intervals) were selected based on recording quality.
The authors of the dataset provided a detailed description of the experimental design, that can be summarized as follows: Subject were instructed to sit comfortably in a chair. They alternately open and close their eyes at the experimenter's request. The exact timing of the eye opening and closing was not specified to one template, but rather left to the experimenter's discretion. The experiment lasted for ~9 minutes.
- Independent Component Analysis (ICA) was employed to remove eye blinks and other artifacts.
- Bad channels were identified, marked, and interpolated using the nearest neighbors.
- A bandpass filter of 0.5 - 70 Hz was applied, in line with the dataset authors' pre-filtering.
These preprocessing steps ensured the extraction of high-quality data segments for further analysis.
Spectral analysis was conducted to investigate the distribution of power across different frequency bands. The following frequency bands were analyzed: Delta, Theta, Alpha, Sigma, Beta, and Gamma. The analysis included:
- Calculation of relative band powers for each EEG recording.
- Generation of Power Spectral Density (PSD) plots and topographic maps.
- Visualization of bandpower distribution across subjects.
- MNE-Python [2] library was extensively used for data processing and visualization.
- mne-icalabel [2] [3] was used for ICA-based artifact removal.
- YASA [4] [5] (Yet Another Spindle Algorithm) was employed for bandpower calculation.
- Matplotlib [6] and Seaborn [7] were used for data visualization.
- Pandas [8] was used for data manipulation.
The analysis revealed distinct patterns in the distribution of power across different EEG frequency bands in subjects with MCI.
- Relative Bandpowers: Stacked barplot for relative bandpowers for each subject - shows the variability in the distribution of power across frequency bands.
Fig.1: Relative bandpowers for each subject. The variability in the distribution of power across frequency bands is evident.
- Total Power: Total power for each subject - shows the variability in the quality of the EEG recordings.
Fig.2: Total power for each subject.
This visualization offers insights into the variability and commonality in EEG spectral profiles among MCI subjects.
For each selected segment of the EEG recordings, detailed spectral profiles were generated, including:
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Relative Bandpowers: Barplot showing relative bandpowers for each subject and segment. Frequency bands of interest:
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$Delta$ (0.5 - 4 Hz) -
$Theta$ (4 - 8 Hz) -
$Alpha$ (8 - 12 Hz) -
$Sigma$ (12 - 16 Hz) -
$Beta$ (16 - 30 Hz) -
$Gamma$ (30 - 70 Hz)
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Power Spectral Density: Power Spectral Density plot for each subject and segment. The x-axis represents the frequency range, while the y-axis represents the power spectral density. The power spectral density was calculated using Welch's method, with a window size of 8.192 seconds. X-axis range is 0.5 - 49 Hz (log scale) - cropped to 49Hz upper range for visualization purposes.
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Topographic Maps: Topographic maps showing the distribution of power across the scalp for each subject and segment. The maps were normalized:
where
Each figure captures the unique spectral characteristics of the EEG recording, providing a granular view of the neural activity in MCI. Below 40 figures are presented, one for each subject and segment:
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The spectral analysis of EEG recordings in subjects with Mild Cognitive Impairment (MCI) yields significant insights into the neurophysiological changes associated with cognitive deficits. The observed variability in frequency band powers among subjects may indicate underlying neuropathological alterations typical of MCI. Differences in Total Power (TP) across subjects could stem from variances in EEG recording quality and the duration of the recordings. Analysis at the individual level unveiled distinctive spectral patterns; some subjects exhibited pronounced Alpha peaks in the occipital region, while others displayed dominant Alpha activity in the frontal region.
This report presents a thorough spectral analysis of EEG recordings from individuals with Mild Cognitive Impairment.
To acquire 40 seconds of high-quality hdEEG, several preprocessing steps were undertaken:
- Initially, all subjects were vetted according to the dataset description.
- Appropriate subjects underwent a second review, during which bad channels were identified.
- These bad channels were then interpolated.
- Subsequently, ICA (Infomax ICA [2] [3]) was employed to mitigate eye blinks and other artifacts.
- A bandpass filter ranging from 0.5 to 70 Hz was applied.
- Segments of 40 seconds of high-quality hdEEG were meticulously selected and manually inspected.
- Segments that met the quality criteria were used for further analysis, while the rest underwent reprocessing. (This step was iteratively applied to some subjects.)
The meticulousness of this process is undeniable.
Thus, the selection of high-quality data for analysis is crucial, underscoring the importance of manual data inspection. How ever proposed filtered EED data files and its spectral profiles are far from being perfect. Some recording indicated overshot of the filter, some of them are not properly filtered, other still contain artifacts but are hard to detect by InforMax ICA, due to fact that data was preprocessed by the authors.
- Ioulietta Lazarou, Kostas Georgiadis, Spiros Nikolopoulos, Vangelis Oikonomoui Ioannis Kompatsiaris, „Resting-State High-Density EEG using EGI GES 300 with 256 Channels of Healthy Elders, People with Subjective and Mild Cognitive Impairment and Alzheimer's Disease”, Brain Science MDPI, t. 10, nr 6. Zenodo, s. 392, grudz. 23, 2020. doi: 10.5281/zenodo.4316608.
- Alexandre Gramfort, Martin Luessi, Eric Larson, Denis A. Engemann, Daniel Strohmeier, Christian Brodbeck, Roman Goj, Mainak Jas, Teon Brooks, Lauri Parkkonen, and Matti S. Hämäläinen. MEG and EEG data analysis with MNE-Python. Frontiers in Neuroscience, 7(267):1–13, 2013. doi:10.3389/fnins.2013.00267.
- https://mne.tools/mne-icalabel/stable/index.html#
- Vallat, Raphael, and Matthew P. Walker. "An open-source, high-performance tool for automated sleep staging." Elife 10 (2021). doi: https://doi.org/10.7554/eLife.70092
- https://github.com/raphaelvallat/yasa
- Thomas A Caswell, „matplotlib/matplotlib: REL: v3.7.4”. Zenodo, lis. 18, 2023. doi: 10.5281/zenodo.10152802.
- Waskom, M. L., (2021). seaborn: statistical data visualization. Journal of Open Source Software, 6(60), 3021, https://doi.org/10.21105/joss.03021.
- The pandas development team, „pandas-dev/pandas: Pandas”. Zenodo, sty. 20, 2024. doi: 10.5281/zenodo.10537285.