Feature selection for spontaneous speech analysis to aid in Alzheimer’s disease diagnosis: A fractal dimension approach
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Author
Other authors
Publication date
2015ISSN
0885-2308
Abstract
Alzheimer’s disease (AD) is the most prevalent form of degenerative dementia; it has a high socio-economic impact in Westerncountries. The purpose of our project is to contribute to earlier diagnosis of AD and allow better estimates of its severity by usingautomatic analysis performed through new biomarkers extracted through non-invasive intelligent methods. The method selectedis based on speech biomarkers derived from the analysis of spontaneous speech (SS). Thus the main goal of the present work isfeature search in SS, aiming at pre-clinical evaluation whose results can be used to select appropriate tests for AD diagnosis. Thefeature set employed in our earlier work offered some hopeful conclusions but failed to capture the nonlinear dynamics of speechthat are present in the speech waveforms. The extra information provided by the nonlinear features could be especially useful whentraining data is limited. In this work, the fractal dimension (FD) of the observed time series is combined with linear parameters inthe feature vector in order to enhance the performance of the original system while controlling the computational cost.© 2014 Elsevier Ltd. All rights reserved.
Document Type
Article
Language
English
Keywords
Alzheimer, Malaltia d'
Processament de la parla
Pages
18 p.
Publisher
Elsevier
Citation
López-De-Ipiña, K., Solé-Casals, J., Eguiraun, H., Alonso, J. B., Travieso, C. M., Ezeiza, A., et al. (2015). Feature selection for spontaneous speech analysis to aid in alzheimer's disease diagnosis: A fractal dimension approach. Computer Speech and Language, 30(1), 43-60.
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(c) 2015 Elsevier. Published article is available at: http://dx.doi.org/doi:10.1016/j.csl.2014.08.002