TL;DR
This study develops an automatic voice analysis system using acoustic features from sustained vowels to accurately distinguish ALS patients from healthy individuals, achieving up to 99.7% accuracy.
Contribution
It introduces a new set of harmonic structure features and demonstrates high classification accuracy using LDA with feature selection, advancing early ALS detection methods.
Findings
LDA with 32 features achieves 99.7% accuracy
New harmonic structure features improve classification
Feature selection optimizes model performance
Abstract
Amyotrophic lateral sclerosis (ALS) is incurable neurological disorder with rapidly progressive course. Common early symptoms of ALS are difficulty in swallowing and speech. However, early acoustic manifestation of speech and voice symptoms is very variable, that making their detection very challenging, both by human specialists and automatic systems. This study presents an approach to voice assessment for automatic system that separates healthy people from patients with ALS. In particular, this work focus on analysing of sustain phonation of vowels /a/ and /i/ to perform automatic classification of ALS patients. A wide range of acoustic features such as MFCC, formants, jitter, shimmer, vibrato, PPE, GNE, HNR, etc. were analysed. We also proposed a new set of acoustic features for characterizing harmonic structure of the vowels. Calculation of these features is based on pitch…
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Taxonomy
MethodsFeature Selection · Adaptive Label Smoothing · Linear Discriminant Analysis
