ICA Cleaning procedure for EEG signals analysis: application to Alzheimer's disease detection
Author
Other authors
Publication date
2010Abstract
To develop systems in order to detect Alzheimer’s disease we want to use EEG signals. Available database
is raw, so the first step must be to clean signals properly. We propose a new way of ICA cleaning on a
database recorded from patients with Alzheimer's disease (mildAD, early stage). Two researchers visually
inspected all the signals (EEG channels), and each recording's least corrupted (artefact-clean) continuous 20
sec interval were chosen for the analysis. Each trial was then decomposed using ICA. Sources were ordered
using a kurtosis measure, and the researchers cleared up to seven sources per trial corresponding to artefacts
(eye movements, EMG corruption, EKG, etc), using three criteria: (i) Isolated source on the scalp (only a
few electrodes contribute to the source), (ii) Abnormal wave shape (drifts, eye blinks, sharp waves, etc.),
(iii) Source of abnormally high amplitude (�100 �V). We then evaluated the outcome of this cleaning by
means of the classification of patients using multilayer perceptron neural networks. Results are very
satisfactory and performance is increased from 50.9% to 73.1% correctly classified data using ICA cleaning
procedure.
Document Type
Object of conference
Language
English
Keywords
Alzheimer, Malaltia d'
Pages
6 p.
Citation
Sole-Casals, J., Vialatte, F., Pantel, J., Prvulovic, D., Haenschel, C., & Cichocki, A. (2010). ICA cleaning procedure for EEG signals analysis: Application to Alzheimer's disease detection. , València 485-490.
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