Adapting Self-Supervised Speech Representations for Cross-lingual Dysarthria Detection in Parkinson's Disease

arXiv cs.CL / 3/24/2026

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Key Points

  • Dysarthric speech data is scarce, so the study targets cross-lingual dysarthria detection in Parkinson’s disease as a way to generalize beyond limited language-specific datasets.
  • It introduces a representation-level language shift (LS) method that aligns self-supervised speech embeddings from a source language to the target-language distribution using centroid-based adaptation derived from healthy-control speech.
  • Experiments on oral DDK recordings across Czech, German, and Spanish show LS markedly improves sensitivity and F1 in cross-lingual transfer settings, with smaller but consistent improvements in multilingual training.
  • Representation analysis indicates LS reduces language identity within the embedding space, suggesting the method mitigates language-dependent structure that can otherwise confound dysarthria detection.

Abstract

The limited availability of dysarthric speech data makes cross-lingual detection an important but challenging problem. A key difficulty is that speech representations often encode language-dependent structure that can confound dysarthria detection. We propose a representation-level language shift (LS) that aligns source-language self-supervised speech representations with the target-language distribution using centroid-based vector adaptation estimated from healthy-control speech. We evaluate the approach on oral DDK recordings from Parkinson's disease speech datasets in Czech, German, and Spanish under both cross-lingual and multilingual settings. LS substantially improves sensitivity and F1 in cross-lingual settings, while yielding smaller but consistent gains in multilingual settings. Representation analysis further shows that LS reduces language identity in the embedding space, supporting the interpretation that LS removes language-dependent structure.