| Literature DB >> 29423454 |
Jun Wang1,2, Prasanna V Kothalkar1, Myungjong Kim1, Yana Yunusova3, Thomas F Campbell2, Daragh Heitzman4, Jordan R Green5.
Abstract
Amyotrophic lateral sclerosis (ALS) is a rapidly progressive neurological disease that affects the speech motor functions, resulting in dysarthria, a motor speech disorder. Speech and articulation deterioration is an indicator of the disease progression of ALS; timely monitoring of the disease progression is critical for clinical management of these patients. This paper investigated machine prediction of intelligible speaking rate of nine individuals with ALS based on a small number of speech acoustic and articulatory samples. Two feature selection techniques - decision tree and gradient boosting - were used with support vector regression for predicting the intelligible speaking rate. Experimental results demonstrated the feasibility of predicting intelligible speaking rate from only a small number of speech samples. Furthermore, adding articulatory features to acoustic features improved prediction performance, when decision tree was used as the feature selection technique.Entities:
Keywords: amyotrophic lateral sclerosis; intelligible speaking rate; support vector regression
Year: 2016 PMID: 29423454 PMCID: PMC5800530 DOI: 10.21437/SLPAT.2016-16
Source DB: PubMed Journal: Workshop Speech Lang Process Assist Technol ISSN: 2411-9962