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Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study

Background. Primary progressive aphasia (PPA) is a neurodegenerative syndrome in which diagnosis is usually challenging. Biomarkers are needed for diagnosis and monitoring. In this study, we aimed to evaluate Electroencephalography (EEG) as a biomarker for the diagnosis of PPA. Methods. We conducted...

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Autores principales: Moral-Rubio, Carlos, Balugo, Paloma, Fraile-Pereda, Adela, Pytel, Vanesa, Fernández-Romero, Lucía, Delgado-Alonso, Cristina, Delgado-Álvarez, Alfonso, Matias-Guiu, Jorge, Matias-Guiu, Jordi A., Ayala, José Luis
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8534262/
https://www.ncbi.nlm.nih.gov/pubmed/34679327
http://dx.doi.org/10.3390/brainsci11101262
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author Moral-Rubio, Carlos
Balugo, Paloma
Fraile-Pereda, Adela
Pytel, Vanesa
Fernández-Romero, Lucía
Delgado-Alonso, Cristina
Delgado-Álvarez, Alfonso
Matias-Guiu, Jorge
Matias-Guiu, Jordi A.
Ayala, José Luis
author_facet Moral-Rubio, Carlos
Balugo, Paloma
Fraile-Pereda, Adela
Pytel, Vanesa
Fernández-Romero, Lucía
Delgado-Alonso, Cristina
Delgado-Álvarez, Alfonso
Matias-Guiu, Jorge
Matias-Guiu, Jordi A.
Ayala, José Luis
author_sort Moral-Rubio, Carlos
collection PubMed
description Background. Primary progressive aphasia (PPA) is a neurodegenerative syndrome in which diagnosis is usually challenging. Biomarkers are needed for diagnosis and monitoring. In this study, we aimed to evaluate Electroencephalography (EEG) as a biomarker for the diagnosis of PPA. Methods. We conducted a cross-sectional study with 40 PPA patients categorized as non-fluent, semantic, and logopenic variants, and 20 controls. Resting-state EEG with 32 channels was acquired and preprocessed using several procedures (quantitative EEG, wavelet transformation, autoencoders, and graph theory analysis). Seven machine learning algorithms were evaluated (Decision Tree, Elastic Net, Support Vector Machines, Random Forest, K-Nearest Neighbors, Gaussian Naive Bayes, and Multinomial Naive Bayes). Results. Diagnostic capacity to distinguish between PPA and controls was high (accuracy 75%, F1-score 83% for kNN algorithm). The most important features in the classification were derived from network analysis based on graph theory. Conversely, discrimination between PPA variants was lower (Accuracy 58% and F1-score 60% for kNN). Conclusions. The application of ML to resting-state EEG may have a role in the diagnosis of PPA, especially in the differentiation from controls. Future studies with high-density EEG should explore the capacity to distinguish between PPA variants.
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spelling pubmed-85342622021-10-23 Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study Moral-Rubio, Carlos Balugo, Paloma Fraile-Pereda, Adela Pytel, Vanesa Fernández-Romero, Lucía Delgado-Alonso, Cristina Delgado-Álvarez, Alfonso Matias-Guiu, Jorge Matias-Guiu, Jordi A. Ayala, José Luis Brain Sci Article Background. Primary progressive aphasia (PPA) is a neurodegenerative syndrome in which diagnosis is usually challenging. Biomarkers are needed for diagnosis and monitoring. In this study, we aimed to evaluate Electroencephalography (EEG) as a biomarker for the diagnosis of PPA. Methods. We conducted a cross-sectional study with 40 PPA patients categorized as non-fluent, semantic, and logopenic variants, and 20 controls. Resting-state EEG with 32 channels was acquired and preprocessed using several procedures (quantitative EEG, wavelet transformation, autoencoders, and graph theory analysis). Seven machine learning algorithms were evaluated (Decision Tree, Elastic Net, Support Vector Machines, Random Forest, K-Nearest Neighbors, Gaussian Naive Bayes, and Multinomial Naive Bayes). Results. Diagnostic capacity to distinguish between PPA and controls was high (accuracy 75%, F1-score 83% for kNN algorithm). The most important features in the classification were derived from network analysis based on graph theory. Conversely, discrimination between PPA variants was lower (Accuracy 58% and F1-score 60% for kNN). Conclusions. The application of ML to resting-state EEG may have a role in the diagnosis of PPA, especially in the differentiation from controls. Future studies with high-density EEG should explore the capacity to distinguish between PPA variants. MDPI 2021-09-24 /pmc/articles/PMC8534262/ /pubmed/34679327 http://dx.doi.org/10.3390/brainsci11101262 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Moral-Rubio, Carlos
Balugo, Paloma
Fraile-Pereda, Adela
Pytel, Vanesa
Fernández-Romero, Lucía
Delgado-Alonso, Cristina
Delgado-Álvarez, Alfonso
Matias-Guiu, Jorge
Matias-Guiu, Jordi A.
Ayala, José Luis
Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title_full Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title_fullStr Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title_full_unstemmed Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title_short Application of Machine Learning to Electroencephalography for the Diagnosis of Primary Progressive Aphasia: A Pilot Study
title_sort application of machine learning to electroencephalography for the diagnosis of primary progressive aphasia: a pilot study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8534262/
https://www.ncbi.nlm.nih.gov/pubmed/34679327
http://dx.doi.org/10.3390/brainsci11101262
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