Abstract
This paper describes an exploratory technique to identify mild dementia by assessing the degree of speech deficits. A total of twenty participants were used for this experiment, ten patients with a diagnosis of mild dementia and ten participants like healthy control. The audio session for each subject was recorded following a methodology developed for the present study. Prosodic features in patients with mild dementia and healthy elderly controls were measured using automatic prosodic analysis on a reading task. A novel method was carried out to gather twelve prosodic features over speech samples. The best classification rate achieved was of 85% accuracy using four prosodic features. The results attained show that the proposed computational speech analysis offers a viable alternative for automatic identification of dementia features in elderly adults.
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CITATION STYLE
Gonzalez-Moreira, E., Torres-Boza, D., Kairuz, H. A., Ferrer, C., Garcia-Zamora, M., Espinoza-Cuadros, F., & Hernandez-Gómez, L. A. (2015). Automatic prosodic analysis to identify mild dementia. BioMed Research International, 2015. https://doi.org/10.1155/2015/916356
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