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Huntington Disease Automatic Speech Recognition with Biomarker Supervision

Research compares different automatic speech recognition architectures for Huntington's disease speech, demonstrating improved accuracy through specialized adaptation techniques and biomarker-based supervision.

Year
2026
Venue
arXiv 2026
Authors
4
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arxiv.org/abs/2603.11168ARXIV-DEFAULT
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Abstract

Automatic speech recognition (ASR) for pathological speech remains underexplored, especially for Huntington's disease (HD), where irregular timing, unstable phonation, and articulatory distortion challenge current models. We present a systematic HD-ASR study using a high-fidelity clinical speech corpus not previously used for end-to-end ASR training. We compare multiple ASR families under a unified evaluation, analyzing WER as well as substitution, deletion, and insertion patterns. HD speech induces architecture-specific error regimes, with Parakeet-TDT outperforming encoder-decoder and CTC baselines. HD-specific adaptation reduces WER from 6.99% to 4.95% and we also propose a method for using biomarker-based auxiliary supervision and analyze how error behavior is reshaped in severity-dependent ways rather than uniformly improving WER. We open-source all code and models.

Authors

4