A self-driven approach for multi-class discrimination in Alzheimer's disease based on wearable EEG

•EEG acquired from a wearable device allow the discrimination of AD cohorts.•Automated artifact rejection is suitable for the classification of AD cohorts.•Self-driven AD detection approaches may contribute to single-session diagnosis. Early detection is critical to control Alzheimer's disease...

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Published inComputer methods and programs in biomedicine Vol. 220; p. 106841
Main Authors Perez-Valero, Eduardo, Lopez-Gordo, Miguel Ángel, Gutiérrez, Christian Morillas, Carrera-Muñoz, Ismael, Vílchez-Carrillo, Rosa M.
Format Journal Article
LanguageEnglish
Published Ireland Elsevier B.V 01.06.2022
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Summary:•EEG acquired from a wearable device allow the discrimination of AD cohorts.•Automated artifact rejection is suitable for the classification of AD cohorts.•Self-driven AD detection approaches may contribute to single-session diagnosis. Early detection is critical to control Alzheimer's disease (AD) progression and postpone cognitive decline. Traditional medical procedures such as magnetic resonance imaging are costly, involve long waiting lists, and require complex analysis. Alternatively, for the past years, researchers have successfully evaluated AD detection approaches based on machine learning and electroencephalography (EEG). Nonetheless, these approaches frequently rely upon manual processing or involve non-portable EEG hardware. These aspects are suboptimal regarding automated diagnosis, since they require additional personnel and hinder portability. In this work, we report the preliminary evaluation of a self-driven AD multi-class discrimination approach based on a commercial EEG acquisition system using sixteen channels. For this purpose, we recorded the EEG of three groups of participants: mild AD, mild cognitive impairment (MCI) non-AD, and controls, and we implemented a self-driven analysis pipeline to discriminate the three groups. First, we applied automated artifact rejection algorithms to the EEG recordings. Then, we extracted power, entropy, and complexity features from the preprocessed epochs. Finally, we evaluated a multi-class classification problem using a multi-layer perceptron through leave-one-subject-out cross-validation. The preliminary results that we obtained are comparable to the best in literature (0.88 F1-score), what suggests that AD can potentially be detected through a self-driven approach based on commercial EEG and machine learning. We believe this work and further research could contribute to opening the door for the detection of AD in a single consultation session, therefore reducing the costs associated to AD screening and potentially advancing medical treatment.
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ISSN:0169-2607
1872-7565
1872-7565
DOI:10.1016/j.cmpb.2022.106841