Linguistic changes in spontaneous speech for detecting Parkinson's disease using large language models.

PLOS digital health Pub Date : 2025-02-10 eCollection Date: 2025-02-01 DOI:10.1371/journal.pdig.0000757
Jonathan L Crawford
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Abstract

Parkinson's disease is the second most prevalent neurodegenerative disorder with over ten million active cases worldwide and one million new diagnoses per year. Detecting and subsequently diagnosing the disease is challenging because of symptom heterogeneity with respect to complexity, as well as the type and timing of phenotypic manifestations. Typically, language impairment can present in the prodromal phase and precede motor symptoms suggesting that a linguistic-based approach could serve as a diagnostic method for incipient Parkinson's disease. Additionally, improved linguistic models may enhance other approaches through fusion techniques. The field of large language models is advancing rapidly, presenting the opportunity to explore the use of these new models for detecting Parkinson's disease and to improve on current linguistic approaches with high-dimensional representations of linguistics. We evaluate the application of state-of-the-art large language models to detect Parkinson's disease automatically from spontaneous speech with up to 78% accuracy. We also demonstrate that large language models can be used to predict the severity of PD in a regression task. We further demonstrate that the better performance of large language models is due to their ability to extract more relevant linguistic features and not due to increased dimensionality of the feature space.

使用大型语言模型检测帕金森病的自发语言变化。
帕金森氏病是第二大最常见的神经退行性疾病,全世界有超过1000万活跃病例,每年有100万新诊断。由于症状的异质性和复杂性,以及表型表现的类型和时间,检测和随后诊断该疾病具有挑战性。通常,语言障碍可以出现在前驱期和运动症状之前,这表明基于语言的方法可以作为早期帕金森病的诊断方法。此外,改进的语言模型可以通过融合技术增强其他方法。大型语言模型领域正在迅速发展,为探索这些新模型在帕金森病检测中的应用以及利用语言学的高维表示改进当前的语言方法提供了机会。我们评估了最先进的大型语言模型在从自发语音自动检测帕金森病方面的应用,准确率高达78%。我们还证明,在回归任务中,大型语言模型可以用于预测PD的严重程度。我们进一步证明,大型语言模型的更好性能是由于它们能够提取更多相关的语言特征,而不是由于特征空间的维数增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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