DocumentCode
43080
Title
Automatic Evaluation of Articulatory Disorders in Parkinson’s Disease
Author
Novotny, M. ; Rusz, J. ; Cmejla, R. ; Ruzicka, Evzen
Author_Institution
Dept. of Circuit Theor., Czech Tech. Univ. in Prague, Prague, Czech Republic
Volume
22
Issue
9
fYear
2014
fDate
Sept. 2014
Firstpage
1366
Lastpage
1378
Abstract
Although articulatory deficits represent an important manifestation of dysarthria in Parkinson´s disease (PD), the most widely used methods currently available for the automatic evaluation of speech performance are focused on the assessment of dysphonia. The aim of the present study was to design a reliable automatic approach for the precise estimation of articulatory deficits in PD. Twenty-four individuals diagnosed with de novo PD and twenty-two age-matched healthy controls were recruited. Each participant performed diadochokinetic tasks based upon the fast repetition of /pa/-/ta/-/ka/ syllables. All phonemes were manually labeled and an algorithm for their automatic detection was designed. Subsequently, 13 features describing six different articulatory aspects of speech including vowel quality, coordination of laryngeal and supralaryngeal activity, precision of consonant articulation, tongue movement, occlusion weakening, and speech timing were analyzed. In addition, a classification experiment using a support vector machine based on articulatory features was proposed to differentiate between PD patients and healthy controls. The proposed detection algorithm reached approximately 80% accuracy for a 5 ms threshold of absolute difference between manually labeled references and automatically detected positions. When compared to controls, PD patients showed impaired articulatory performance in all investigated speech dimensions ( ). Moreover, using the six features representing different aspects of articulation, the best overall classification result attained a success rate of 88% in separating PD from controls. Imprecise consonant articulation was found to be the most powerful indicator of PD-related dysarthria. We envisage our approach as the first step towards development of acoustic methods allowing the automated assessment of articulatory features in dysarthrias.
Keywords
diseases; medical disorders; speech; speech processing; Parkinson disease; articulatory disorders; automatic evaluation; consonant articulation; diadochokinetic tasks; dysarthria; laryngeal activity; occlusion weakening; speech performance; speech timing; support vector machine; supralaryngeal activity; tongue movement; Algorithm design and analysis; IEEE transactions; Parkinson´s disease; Spectrogram; Speech; Speech processing; Acoustic analysis; Parkinson’s disease; automatic segmentation; diadochokinetic task; hypokinetic dysarthria; speech disorders;
fLanguage
English
Journal_Title
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
Publisher
ieee
ISSN
2329-9290
Type
jour
DOI
10.1109/TASLP.2014.2329734
Filename
6827910
Link To Document