CLSDASJan 27, 2025

Applications of Artificial Intelligence for Cross-language Intelligibility Assessment of Dysarthric Speech

arXiv:2501.15858v4
Originality Synthesis-oriented
AI Analysis

This addresses the need for cross-language clinical tools in dysarthria assessment, but it is incremental as it builds on existing AI methods without presenting new empirical results.

The paper tackles the problem of assessing dysarthric speech intelligibility across languages, proposing a conceptual AI framework to overcome data and linguistic barriers for scalable, language-sensitive evaluation.

Purpose: Speech intelligibility is a critical outcome in the assessment and management of dysarthria, yet most research and clinical practices have focused on English, limiting their applicability across languages. This commentary introduces a conceptual framework--and a demonstration of how it can be implemented--leveraging artificial intelligence (AI) to advance cross-language intelligibility assessment of dysarthric speech. Method: We propose a two-tiered conceptual framework consisting of a universal speech model that encodes dysarthric speech into acoustic-phonetic representations, followed by a language-specific intelligibility assessment model that interprets these representations within the phonological or prosodic structures of the target language. We further identify barriers to cross-language intelligibility assessment of dysarthric speech, including data scarcity, annotation complexity, and limited linguistic insights into dysarthric speech, and outline potential AI-driven solutions to overcome these challenges. Conclusion: Advancing cross-language intelligibility assessment of dysarthric speech necessitates models that are both efficient and scalable, yet constrained by linguistic rules to ensure accurate and language-sensitive assessment. Recent advances in AI provide the foundational tools to support this integration, shaping future directions toward generalizable and linguistically informed assessment frameworks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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