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基于音节的语音特征作为帕金森病、多系统萎缩和小脑共济失调鉴别诊断的潜在生物标志物。

Syllable-based speech characteristics as potential biomarker for differential diagnosis of Parkinson's disease, multiple system atrophy, and cerebellar ataxia.

作者信息

Ham Hyunsun, Jin Bora, Cha Kwang Su, Woo Kyung Ah, Shin Jung Hwan, Kim Han-Joon

机构信息

Emocog Inc., Seoul, Republic of Korea.

Department of Psychiatry, Seoul Metropolitan Government-Seoul National University Boramae Medical Center, Seoul, Republic of Korea.

出版信息

J Neurol. 2025 Sep 5;272(9):613. doi: 10.1007/s00415-025-13352-1.

Abstract

Speech disorders differ between Parkinson's disease (PD) and multiple system atrophy (MSA), but studies focusing on group differences based on syllables or including cerebellar ataxia (CA) are lacking until now. This cross-sectional study aimed to analyze syllable-based speech characteristics in patients with PD, MSA, and CA, as well as healthy controls, to determine their diagnostic utility. Speech samples were collected from 68 PD, 52 MSA, 23 CA, and 70 healthy controls. Participants performed four speech tasks: producing high- and low-pitched sounds for five Korean vowels, repeating 14 Korean consonants with the vowel /a/, raising and lowering pitch of the vowel /a/, and continuously repeating /pa-ta-ka/ for 5 s. Acoustic analysis and artificial intelligence-based exploratory analysis were conducted to identify the syllable combinations that best distinguished between disease groups. Among the four speech tasks, the sequential motion rate task (/pa-ta-ka/ repetition) demonstrated the highest classification accuracy in distinguishing PD, MSA, and CA from the other groups, with accuracies of 68.90%, 77.42%, and 73.39%, respectively. For single syllable sequence, the /ka-ka-ka/ sequence achieved the highest accuracy, distinguishing CA from other groups with an accuracy of 78.92%. Among combined syllable sequence, the /aaa-hahaha/ sequence exhibited accuracies of 78.63% and 83.33% in differentiating PD and CA, respectively, while the /dadada-aaa/ sequence showed an accuracy of 80.24% in distinguishing MSA from other groups. These findings suggest that syllable-based speech characteristics, along with acoustic parameters, can discriminate among parkinsonian disorders and CA, highlighting their potential as a promising diagnostic tool.

摘要

帕金森病(PD)和多系统萎缩(MSA)的言语障碍有所不同,但迄今为止,缺乏基于音节或纳入小脑共济失调(CA)的群体差异研究。这项横断面研究旨在分析PD、MSA、CA患者以及健康对照者基于音节的言语特征,以确定其诊断效用。收集了68例PD患者、52例MSA患者、23例CA患者和70名健康对照者的言语样本。参与者进行了四项言语任务:发出五个韩语元音的高音和低音、重复14个带元音/a/的韩语辅音、升高和降低元音/a/的音高以及连续5秒重复/pa-ta-ka/。进行了声学分析和基于人工智能的探索性分析,以确定最能区分疾病组的音节组合。在这四项言语任务中,连续运动速率任务(/pa-ta-ka/重复)在区分PD、MSA和CA与其他组方面表现出最高的分类准确率,分别为68.90%、77.42%和73.39%。对于单音节序列,/ka-ka-ka/序列的准确率最高,将CA与其他组区分开来的准确率为78.92%。在组合音节序列中,/aaa-hahaha/序列在区分PD和CA方面的准确率分别为78.63%和83.33%,而/dadada-aaa/序列在区分MSA与其他组方面的准确率为80.24%。这些发现表明,基于音节的言语特征以及声学参数可以区分帕金森病性障碍和CA,凸显了它们作为一种有前景的诊断工具的潜力。

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