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.
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