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Article type: Review Article
Authors: Perez-Valero, Eduardoa; b | Lopez-Gordo, Miguel A.c; d; * | Morillas, Christiana; b | Pelayo, Franciscoa; b | Vaquero-Blasco, Miguel A.a; c
Affiliations: [a] Research Centre for Information and Communications Technologies (CITIC), University of Granada, Granada, Spain | [b] Department of Computer Architecture and Technology, University of Granada, Granada, Spain | [c] Department of Signal Theory, Telematics and Communications, University of Granada, Granada,Spain | [d] Nicolo Association, Churriana de la Vega, Spain
Correspondence: [*] Correspondence to: Miguel A. Lopez-Gordo, Department of Signal Theory, Telematics and Communications, University of Granada, C/ Periodista Daniel Saucedo Aranda, s/n, 18014 Granada, Spain. Tel.: +34 958 249 721; E-mail: [email protected].
Abstract: In this paper, we review state-of-the-art approaches that apply signal processing (SP) and machine learning (ML) to automate the detection of Alzheimer’s disease (AD) and its prodromal stages. In the first part of the document, we describe the economic and social implications of the disease, traditional diagnosis techniques, and the fundaments of automated AD detection. Then, we present electroencephalography (EEG) as an appropriate alternative for the early detection of AD, owing to its reduced cost, portability, and non-invasiveness. We also describe the main time and frequency domain EEG features that are employed in AD detection. Subsequently, we examine some of the main studies of the last decade that aim to provide an automatic detection of AD and its previous stages by means of SP and ML. In these studies, brain data was acquired using multiple medical techniques such as magnetic resonance imaging, positron emission tomography, and EEG. The main aspects of each approach, namely feature extraction, classification model, validation approach, and performance metrics, are compiled and discussed. Lastly, a set of conclusions and recommendations for future research on AD automatic detection are drawn in the final section of the paper.
Keywords: Alzheimer’s disease, early diagnosis, electroencephalography, machine learning
DOI: 10.3233/JAD-201455
Journal: Journal of Alzheimer's Disease, vol. 80, no. 4, pp. 1363-1376, 2021
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