-
Je něco špatně v tomto záznamu ?
Automatic speech-based assessment to discriminate Parkinson's disease from essential tremor with a cross-language approach
CD. Rios-Urrego, J. Rusz, JR. Orozco-Arroyave
Status neindexováno Jazyk angličtina Země Anglie, Velká Británie
Typ dokumentu časopisecké články
NLK
Directory of Open Access Journals
od 2018
Nature Open Access
od 2018-12-01
PubMed Central
od 2018
Europe PubMed Central
od 2018
ProQuest Central
od 2018-12-01
Nursing & Allied Health Database (ProQuest)
od 2018-12-01
Health & Medicine (ProQuest)
od 2018-12-01
ROAD: Directory of Open Access Scholarly Resources
od 2018
Springer Nature OA/Free Journals
od 2018-12-01
- Publikační typ
- časopisecké články MeSH
Parkinson's disease (PD) and essential tremor (ET) are prevalent movement disorders that mainly affect elderly people, presenting diagnostic challenges due to shared clinical features. While both disorders exhibit distinct speech patterns-hypokinetic dysarthria in PD and hyperkinetic dysarthria in ET-the efficacy of speech assessment for differentiation remains unexplored. Developing technology for automatic discrimination could enable early diagnosis and continuous monitoring. However, the lack of data for investigating speech behavior in these patients has inhibited the development of a framework for diagnostic support. In addition, phonetic variability across languages poses practical challenges in establishing a universal speech assessment system. Therefore, it is necessary to develop models robust to the phonetic variability present in different languages worldwide. We propose a method based on Gaussian mixture models to assess domain adaptation from models trained in German and Spanish to classify PD and ET patients in Czech. We modeled three different speech dimensions: articulation, phonation, and prosody and evaluated the models' performance in both bi-class and tri-class classification scenarios (with the addition of healthy controls). Our results show that a fusion of the three speech dimensions achieved optimal results in binary classification, with accuracies up to 81.4 and 86.2% for monologue and /pa-ta-ka/ tasks, respectively. In tri-class scenarios, incorporating healthy speech signals resulted in accuracies of 63.3 and 71.6% for monologue and /pa-ta-ka/ tasks, respectively. Our findings suggest that automated speech analysis, combined with machine learning is robust, accurate, and can be adapted to different languages to distinguish between PD and ET patients.
Department of Circuit Theory Czech Technical University Prague Prague Czech Republic
GITA Lab Faculty of Engineering University of Antioquia Medellín Colombia
Pattern Recognition Lab Friedrich Alexander Universität Erlangen Nürnberg Erlangen Germany
Citace poskytuje Crossref.org
- 000
- 00000naa a2200000 a 4500
- 001
- bmc24005763
- 003
- CZ-PrNML
- 005
- 20240412131027.0
- 007
- ta
- 008
- 240405s2024 enk f 000 0|eng||
- 009
- AR
- 024 7_
- $a 10.1038/s41746-024-01027-6 $2 doi
- 035 __
- $a (PubMed)38368458
- 040 __
- $a ABA008 $b cze $d ABA008 $e AACR2
- 041 0_
- $a eng
- 044 __
- $a enk
- 100 1_
- $a Rios-Urrego, Cristian David $u GITA Lab, Faculty of Engineering, University of Antioquia, Medellín, Colombia $1 https://orcid.org/0000000301741452
- 245 10
- $a Automatic speech-based assessment to discriminate Parkinson's disease from essential tremor with a cross-language approach / $c CD. Rios-Urrego, J. Rusz, JR. Orozco-Arroyave
- 520 9_
- $a Parkinson's disease (PD) and essential tremor (ET) are prevalent movement disorders that mainly affect elderly people, presenting diagnostic challenges due to shared clinical features. While both disorders exhibit distinct speech patterns-hypokinetic dysarthria in PD and hyperkinetic dysarthria in ET-the efficacy of speech assessment for differentiation remains unexplored. Developing technology for automatic discrimination could enable early diagnosis and continuous monitoring. However, the lack of data for investigating speech behavior in these patients has inhibited the development of a framework for diagnostic support. In addition, phonetic variability across languages poses practical challenges in establishing a universal speech assessment system. Therefore, it is necessary to develop models robust to the phonetic variability present in different languages worldwide. We propose a method based on Gaussian mixture models to assess domain adaptation from models trained in German and Spanish to classify PD and ET patients in Czech. We modeled three different speech dimensions: articulation, phonation, and prosody and evaluated the models' performance in both bi-class and tri-class classification scenarios (with the addition of healthy controls). Our results show that a fusion of the three speech dimensions achieved optimal results in binary classification, with accuracies up to 81.4 and 86.2% for monologue and /pa-ta-ka/ tasks, respectively. In tri-class scenarios, incorporating healthy speech signals resulted in accuracies of 63.3 and 71.6% for monologue and /pa-ta-ka/ tasks, respectively. Our findings suggest that automated speech analysis, combined with machine learning is robust, accurate, and can be adapted to different languages to distinguish between PD and ET patients.
- 590 __
- $a NEINDEXOVÁNO
- 655 _2
- $a časopisecké články $7 D016428
- 700 1_
- $a Rusz, Jan $u Department of Circuit Theory, Czech Technical University in Prague, Prague, Czech Republic. rusz.mz@gmail.com $1 https://orcid.org/0000000210363054 $7 xx0093732
- 700 1_
- $a Orozco-Arroyave, Juan Rafael $u GITA Lab, Faculty of Engineering, University of Antioquia, Medellín, Colombia. rafael.orozco@udea.edu.co $u Pattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany. rafael.orozco@udea.edu.co
- 773 0_
- $w MED00209727 $t NPJ digital medicine $x 2398-6352 $g Roč. 7, č. 1 (2024), s. 37
- 856 41
- $u https://pubmed.ncbi.nlm.nih.gov/38368458 $y Pubmed
- 910 __
- $a ABA008 $b sig $c sign $y - $z 0
- 990 __
- $a 20240405 $b ABA008
- 991 __
- $a 20240412131020 $b ABA008
- 999 __
- $a ok $b bmc $g 2076018 $s 1215525
- BAS __
- $a 3
- BAS __
- $a PreBMC-PubMed-not-MEDLINE
- BMC __
- $a 2024 $b 7 $c 1 $d 37 $e 20240217 $i 2398-6352 $m NPJ digital medicine $n NPJ Digit Med $x MED00209727
- LZP __
- $a Pubmed-20240405