Language-Independent Acoustic Biomarkers for Quantifying Speech Impairment in Huntington's Disease

Author:

Fahed Vitória S.12ORCID,Doheny Emer P.12ORCID,Collazo Carla3ORCID,Krzysztofik Joanna4,Mann Elliot5,Morgan-Jones Philippa56ORCID,Mills Laura5,Drew Cheney5ORCID,Rosser Anne E.7ORCID,Cousins Rebecca8,Witkowski Grzegorz4,Cubo Esther3,Busse Monica5ORCID,Lowery Madeleine M.12ORCID

Affiliation:

1. School of Electrical and Electronic Engineering, University College Dublin, Ireland

2. Insight Centre for Data Analytics, University College Dublin, Ireland

3. Hospital Universitario of Burgos, Spain

4. Institute of Psychiatry and Neurology, Warsaw, Poland

5. Centre for Trials Research, Cardiff University, United Kingdom

6. School of Engineering, Cardiff University, United Kingdom

7. Brain Repair Centre and BRAIN Unit, Schools of Medicine and Biosciences, Cardiff University, United Kingdom

8. North Bristol NHS Trust, United Kingdom

Abstract

Purpose: Changes in voice and speech are characteristic symptoms of Huntington's disease (HD). Objective methods for quantifying speech impairment that can be used across languages could facilitate assessment of disease progression and intervention strategies. The aim of this study was to analyze acoustic features to identify language-independent features that could be used to quantify speech dysfunction in English-, Spanish-, and Polish-speaking participants with HD. Method: Ninety participants with HD and 83 control participants performed sustained vowel, syllable repetition, and reading passage tasks recorded with previously validated methods using mobile devices. Language-independent features that differed between HD and controls were identified. Principal component analysis (PCA) and unsupervised clustering were applied to the language-independent features of the HD data set to identify subgroups within the HD data. Results: Forty-six language-independent acoustic features that were significantly different between control participants and participants with HD were identified. Following dimensionality reduction using PCA, four speech clusters were identified in the HD data set. Unified Huntington's Disease Rating Scale (UHDRS) total motor score, total functional capacity, and composite UHDRS were significantly different for pairwise comparisons of subgroups. The percentage of HD participants with higher dysarthria score and disease stage also increased across clusters. Conclusion: The results support the application of acoustic features to objectively quantify speech impairment and disease severity in HD in multilanguage studies. Supplemental Material: https://doi.org/10.23641/asha.25447171

Publisher

American Speech Language Hearing Association

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