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dc.contributorUniversitat de Vic. Escola Politècnica Superior
dc.contributor.authorGallego Jutglà, Esteve
dc.contributor.authorSolé-Casals, Jordi
dc.contributor.authorVialatte, François B.
dc.contributor.authorElgendi, Mohamed
dc.contributor.authorCichocki, Andrej
dc.contributor.authorDauwels, Justin
dc.date.accessioned2015-02-16T13:08:26Z
dc.date.available2016-01-02T00:03:52Z
dc.date.created2015
dc.date.issued2015
dc.identifier.citationGallego-Jutglà, E., Solé-Casals, J., Vialatte, F. -., Elgendi, M., Cichocki, A., & Dauwels, J. (2015). A hybrid feature selection approach for the early diagnosis of alzheimer's disease. Journal of Neural Engineering, 12(1)ca_ES
dc.identifier.issn1741-2560
dc.identifier.issn1741-2552
dc.identifier.urihttp://hdl.handle.net/10854/3893
dc.description.abstractObjective. Recently, significant advances have been made in the early diagnosis of Alzheimer’s disease from EEG. However, choosing suitable measures is a challenging task. Among other measures, frequency Relative Power and loss of complexity have been used with promising results. In the present study we investigate the early diagnosis of AD using synchrony measures and frequency Relative Power on EEG signals, examining the changes found in different frequency ranges. Approach. We first explore the use of a single feature for computing the classification rate, looking for the best frequency range. Then, we present a multiple feature classification system that outperforms all previous results using a feature selection strategy. These two approaches are tested in two different databases, one containing MCI and healthy subjects (patients age: 71.9 ± 10.2, healthy subjects age: 71.7 ± 8.3), and the other containing Mild AD and healthy subjects (patients age: 77.6 ± 10.0; healthy subjects age: 69.4± 11.5). Main Results. Using a single feature to compute classification rates we achieve a performance of 78.33% for the MCI data set and of 97.56 % for Mild AD. Results are clearly improved using the multiple feature classification, where a classification rate of 95% is found for the MCI data set using 11 features, and 100% for the Mild AD data set using 4 features. Significance. The new features selection method described in this work may be a reliable tool that could help to design a realistic system that does not require prior knowledge of a patient's status. With that aim, we explore the standardization of features for MCI and Mild AD data sets with promising results.en
dc.formatapplication/pdf
dc.format.extent37 p.ca_ES
dc.language.isoengca_ES
dc.publisherIOS Pressca_ES
dc.rights© IOP Publishing. The published version of the article is available at http://iopscience.iop.org/1741-2552/12/1/016018/article
dc.rightsTots els drets reservatsca_ES
dc.subject.otherAlzheimer, Malaltia d'ca_ES
dc.titleA hybrid feature selection approach for the early diagnosis of Alzheimer's diseaseen
dc.typeinfo:eu-repo/semantics/articleca_ES
dc.embargo.terms12 mesosca_ES
dc.identifier.doihttps://doi.org/10.1088/1741-2560/12/1/016018
dc.rights.accessRightsinfo:eu-repo/semantics/openAccessca_ES
dc.titol.revistaIndexat a WOS/JCR
dc.type.versioninfo:eu-repo/acceptedVersionca_ES
dc.indexacioIndexat a SCOPUSca_ES
dc.indexacioIndexat a WOS/JCR


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