Perceptual Classification of Motor Speech Disorders: The Role of Severity, Speech Task, and Listener's Expertise

Author:

Pernon Michaela1234ORCID,Assal Frédéric12ORCID,Kodrasi Ina5ORCID,Laganaro Marina6ORCID

Affiliation:

1. Neurology Department, Geneva University Hospitals, Switzerland

2. Faculty of Medicine, University of Geneva, Switzerland

3. Laboratoire de Phonétique et Phonologie, UMR 7018, CNRS-Université Sorbonne Nouvelle, Paris, France

4. CRMR Wilson & Parkinson Unit, Neurology Department, Hôpital Fondation Adolphe de Rothschild, Paris, France

5. Signal Processing for Communication Group, Idiap Research Institute, Martigny, Switzerland

6. Faculty of Psychology and Educational Sciences, University of Geneva, Switzerland

Abstract

Purpose: The clinical diagnosis of motor speech disorders (MSDs) is mainly based on perceptual approaches. However, studies on perceptual classification of MSDs often indicate low classification accuracy. The aim of this study was to determine in a forced-choice dichotomous decision-making task (a) how accuracy of speech-language pathologists (SLPs) in perceptually classifying apraxia of speech (AoS) and dysarthria is impacted by speech task, severity of MSD, and listener's expertise and (b) which perceptual features they use to classify. Method: Speech samples from 29 neurotypical speakers, 14 with hypokinetic dysarthria associated with Parkinson's disease (HD), 10 with poststroke AoS, and six with mixed dysarthria associated with amyotrophic lateral sclerosis (MD-FlSp [combining flaccid and spastic dysarthria]), were classified by 20 expert SLPs and 20 student SLPs. Speech samples were elicited in spontaneous speech, text reading, oral diadochokinetic (DDK) tasks, and a sample concatenating text reading and DDK. For each recorded speech sample, SLPs answered three dichotomic questions following a diagnostic approach, (a) neurotypical versus pathological speaker, (b) AoS versus dysarthria, and (c) MD-FlSp versus HD, and a multiple-choice question on the features their decision was based on. Results: Overall classification accuracy was 72% with good interrater reliability, varying with SLP expertise, speech task, and MSD severity. Correct classification of speech samples was higher for speakers with dysarthria than for AoS and higher for HD than for MD-FlSp. Samples elicited with continuous speech reached the best classification rates. An average number of three perceptual features were used for correct classifications, and their type and combination differed between the three MSDs. Conclusions: The auditory-perceptual classification of MSDs in a diagnostic approach reaches substantial performance only in expert SLPs with continuous speech samples, albeit with lower accuracy for AoS. Specific training associated with objective classification tools seems necessary to improve recognition of neurotypical speech and distinction between AoS and dysarthria.

Publisher

American Speech Language Hearing Association

Subject

Speech and Hearing,Linguistics and Language,Language and Linguistics

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1. Deep learning and machine learning methods for patients with language and speech disorders;Computational Intelligence and Deep Learning Methods for Neuro-rehabilitation Applications;2024

2. The Reliability of Expert Diagnosis of Childhood Apraxia of Speech;Journal of Speech, Language, and Hearing Research;2023-08-29

3. Clinical Assessment of Communication-Related Speech Parameters in Dysarthria: The Impact of Perceptual Adaptation;Journal of Speech, Language, and Hearing Research;2023-08-03

4. Dynamic association between phonemic awareness and disordered speech recognition moderated by transcription training;International Journal of Language & Communication Disorders;2023-07-18

5. Oromotor Nonverbal Performance and Speech Motor Control: Theory and Review of Empirical Evidence;Brain Sciences;2023-05-06

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