Xiu Noé, Li Wenmei, Liu Lu, Liu Zhaoqi, Cai Zhuo, Li Lanlan, Vaxelaire Béatrice, Sock Rudolph, Ling Zhenhua, Chen Juluo, Wang Youmeng
Interdisciplinary Research Center for Linguistic Sciences - University of Science and Technology of China, Hefei, China; U.R. 1339 Linguistique, Langues et Parole (LiLPa) and Institut de Phonétique de Strasbourg (IPS) - University of Strasbourg, Strasbourg, France.
Interdisciplinary Research Center for Linguistic Sciences - University of Science and Technology of China, Hefei, China.
J Voice. 2024 Jun 17. doi: 10.1016/j.jvoice.2024.05.018.
This research aims to identify acoustic features which can distinguish patients with Parkinson's disease (PD patients) and healthy speakers.
Thirty PD patients and 30 healthy speakers were recruited in the experiment, and their speech was collected, including three vowels (/i/, /a/, and /u/) and nine consonants (/p/, /pʰ/, /t/, /tʰ/, /k/, /kʰ/, /l/, /m/, and /n/). Acoustic features like fundamental frequency (F0), Jitter, Shimmer, harmonics-to-noise ratio (HNR), first formant (F1), second formant (F2), third formant (F3), first bandwidth (B1), second bandwidth (B2), third bandwidth (B3), voice onset, voice onset time were analyzed in our experiment. Two-sample independent t test and the nonparametric Mann-Whitney U (MWU) test were carried out alternatively to compare the acoustic measures between the PD patients and healthy speakers. In addition, after figuring out the effective acoustic features for distinguishing PD patients and healthy speakers, we adopted two methods to detect PD patients: (1) Built classifiers based on the effective acoustic features and (2) Trained support vector machine classifiers via the effective acoustic features.
Significant differences were found between the male PD group and the male health control in vowel /i/ (Jitter and Shimmer) and /a/ (Shimmer and HNR). Among female subjects, significant differences were observed in F0 standard deviation (F0 SD) of /u/ between the two groups. Additionally, significant differences between PD group and health control were also found in the F3 of /i/ and /n/, whereas other acoustic features showed no significant differences between the two groups. The HNR of vowel /a/ performed the best classification accuracy compared with the other six acoustic features above found to distinguish PD patients and healthy speakers.
PD can cause changes in the articulation and phonation of PD patients, wherein increases or decreases occur in some acoustic features. Therefore, the use of acoustic features to detect PD is expected to be a low-cost and large-scale diagnostic method.
本研究旨在识别能够区分帕金森病患者(PD患者)和健康说话者的声学特征。
实验招募了30名PD患者和30名健康说话者,收集他们的语音,包括三个元音(/i/、/a/和/u/)和九个辅音(/p/、/pʰ/、/t/、/tʰ/、/k/、/kʰ/、/l/、/m/和/n/)。在我们的实验中分析了诸如基频(F0)、抖动、闪烁、谐波噪声比(HNR)、第一共振峰(F1)、第二共振峰(F2)、第三共振峰(F3)、第一带宽(B1)、第二带宽(B2)、第三带宽(B3)、起音、起音时间等声学特征。交替进行两样本独立t检验和非参数曼-惠特尼U(MWU)检验,以比较PD患者和健康说话者之间的声学测量值。此外,在找出区分PD患者和健康说话者的有效声学特征后,我们采用两种方法来检测PD患者:(1)基于有效声学特征构建分类器;(2)通过有效声学特征训练支持向量机分类器。
在男性PD组和男性健康对照组之间,在元音/i/(抖动和闪烁)和/a/(闪烁和HNR)方面发现了显著差异。在女性受试者中,两组之间在/u/的F0标准差(F0 SD)方面观察到显著差异。此外,在/i/和/n/的F3方面,PD组和健康对照组之间也发现了显著差异,而其他声学特征在两组之间没有显著差异。与上述发现的用于区分PD患者和健康说话者的其他六个声学特征相比,元音/a/的HNR表现出最佳的分类准确率。
帕金森病会导致PD患者的发音和发声发生变化,其中一些声学特征会增加或减少。因此,利用声学特征检测帕金森病有望成为一种低成本、大规模的诊断方法。