An Automated Approach for the Detection of Alzheimer’s Disease From Resting State Electroencephalography
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Pérez Valero, Eduardo; Morillas Gutiérrez, Christian Agustín; López Gordo, Miguel Ángel; Carrera Muñoz, Ismael; López Alcalde, Samuel; Vílchez Carrillo, Rosa M.Editorial
Frontiers
Materia
Alzheimer's disease EEG Machine learning Disease detection Classification
Date
2022-07-11Referencia bibliográfica
Perez-Valero E... [et al.] (2022) An Automated Approach for the Detection of Alzheimer’s Disease From Resting State Electroencephalography. Front. Neuroinform. 16:924547. doi: [10.3389/fninf.2022.924547]
Sponsorship
PID2021-128529OA-I00 Spanish Ministry of Science, Innovation and Universities; European Regional Development Funds; BTIC- 352-UGR20; Operative Program FEDER 2014–2020; Economy, Universities and Science Office of the Andalusian Regional GovernmentAbstract
Early detection is crucial to control the progression of Alzheimer’s disease and to
postpone intellectual decline. Most current detection techniques are costly, inaccessible,
or invasive. Furthermore, they require laborious analysis, what delays the start of medical
treatment. To overcome this, researchers have recently investigated AD detection based
on electroencephalography, a non-invasive neurophysiology technique, and machine
learning algorithms. However, these approaches typically rely on manual procedures
such as visual inspection, that requires additional personnel for the analysis, or on
cumbersome EEG acquisition systems. In this paper, we performed a preliminary
evaluation of a fully-automated approach for AD detection based on a commercial
EEG acquisition system and an automated classification pipeline. For this purpose,
we recorded the resting state brain activity of 26 participants from three groups: mild
AD, mild cognitive impairment (MCI-non-AD), and healthy controls. First, we applied
automated data-driven algorithms to reject EEG artifacts. Then, we obtained spectral,
complexity, and entropy features from the preprocessed EEG segments. Finally, we
assessed two binary classification problems: mild AD vs. controls, and MCI-non-AD
vs. controls, through leave-one-subject-out cross-validation. The preliminary results
that we obtained are comparable to the best reported in literature, what suggests
that AD detection could be automatically detected through automated processing and
commercial EEG systems. This is promising, since it may potentially contribute to
reducing costs related to AD screening, and to shortening detection times, what may
help to advance medical treatment.