Analysis of Jitter and Shimmer for Parkinson’s Disease Diagnosis Using Telehealth
Date
2017-12-20
Journal Title
Journal ISSN
Volume Title
Publisher
International Conference on Cognitive Informatics & Soft Computing (CISC-2017)
Abstract
The future of telecommunications is premised on high
fidelity net-works with extreme precision, which in turn capacitates
deployment of tele-diagnostic tools. Parkinson’s disease (PD) clinical
characterization is based on, speech problems, tremors in hands,
arms, legs and face, body swelling, muscle rigidity and movement
problems. Speech problems are cited as one of the earliest prodromal
for PD. However, using clinical diagnosis it takes upto five or more
years to detect PD. Therefore with this regard speech can be used as
an early biomarker for PD. Features of interest for detecting PD will
be prosodic, spectral, vocal tract and excitation source speech
features. We infer from the analysis, MFFC with jitter and shimmer
feature extraction provides a promising method that can help the
clinicians in diagnostic process.
Description
Keywords
Biomarker, Feature extraction, Parkinson’s disease, Speech features, Speech signal, telehealth
Citation
Kuresan, H. Masunda, S & Samiappan, D. 2017. Analysis of Jitter and Shimmer for Parkinson’s Disease Diagnosis Using Telehealth.International Conference on Cognitive Informatics & Soft Computing (CISC-2017)