cs.AI updates on arXiv.org 07月08日
RECA-PD: A Robust Explainable Cross-Attention Method for Speech-based Parkinson's Disease Classification
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本文提出RECA-PD模型,结合可解释语音特征与自监督表示,实现高准确率帕金森病早期检测,并提高临床应用中的解释性,缓解语音任务性能下降问题。

arXiv:2507.03594v1 Announce Type: cross Abstract: Parkinson's Disease (PD) affects over 10 million people globally, with speech impairments often preceding motor symptoms by years, making speech a valuable modality for early, non-invasive detection. While recent deep-learning models achieve high accuracy, they typically lack the explainability required for clinical use. To address this, we propose RECA-PD, a novel, robust, and explainable cross-attention architecture that combines interpretable speech features with self-supervised representations. RECA-PD matches state-of-the-art performance in Speech-based PD detection while providing explanations that are more consistent and more clinically meaningful. Additionally, we demonstrate that performance degradation in certain speech tasks (e.g., monologue) can be mitigated by segmenting long recordings. Our findings indicate that performance and explainability are not necessarily mutually exclusive. Future work will enhance the usability of explanations for non-experts and explore severity estimation to increase the real-world clinical relevance.

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帕金森病 语音检测 深度学习 可解释性 早期诊断
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