Oh Chorong, Morris Richard, Wang Xianhui, Raskin Morgan S
School of Rehabilitation and Communication Sciences, Ohio University, Athens, OH, United States.
School of Communication Science and Disorders, Florida State University, Tallahassee, FL, United States.
Front Psychol. 2023 Jun 22;14:1129406. doi: 10.3389/fpsyg.2023.1129406. eCollection 2023.
This pilot research was designed to investigate if prosodic features from running spontaneous speech could differentiate dementia of the Alzheimer's type (DAT), vascular dementia (VaD), mild cognitive impairment (MCI), and healthy cognition. The study included acoustic measurements of prosodic features (Study 1) and listeners' perception of emotional prosody differences (Study 2).
For Study 1, prerecorded speech samples describing the picture from 10 individuals with DAT, 5 with VaD, 9 with MCI, and 10 neurologically healthy controls (NHC) were obtained from the DementiaBank. The descriptive narratives by each participant were separated into utterances. These utterances were measured on 22 acoustic features the Praat software and analyzed statistically using the principal component analysis (PCA), regression, and Mahalanobis distance measures.
The analyses on acoustic data revealed a set of five factors and four salient features (i.e., pitch, amplitude, rate, and syllable) that discriminate the four groups. For Study 2, a group of 28 listeners served as judges of emotions expressed by the speakers. After a set of training and practice sessions, they were instructed to indicate the emotions they heard. Regression measures were used to analyze the perceptual data. The perceptual data indicated that the factor underlying pitch measures had the greatest strength for the listeners to separate the groups.
The present pilot work showed that using acoustic measures of prosodic features may be a functional method for differentiating among DAT, VaD, MCI, and NHC. Future studies with data collected under a controlled environment using better stimuli are warranted.
这项初步研究旨在调查自发连续言语的韵律特征是否能够区分阿尔茨海默病型痴呆(DAT)、血管性痴呆(VaD)、轻度认知障碍(MCI)和健康认知。该研究包括韵律特征的声学测量(研究1)以及听众对情感韵律差异的感知(研究2)。
对于研究1,从痴呆症数据库中获取了预先录制的言语样本,这些样本来自10名DAT患者、5名VaD患者、9名MCI患者以及10名神经功能正常的对照者(NHC),内容是描述图片。每个参与者的描述性叙述被分成话语。使用Praat软件对这些话语的22个声学特征进行测量,并使用主成分分析(PCA)、回归分析和马氏距离测量进行统计分析。
声学数据分析揭示了一组五个因素和四个显著特征(即音高、振幅、语速和音节),这些因素和特征能够区分这四组。对于研究2,一组28名听众作为说话者所表达情感的评判者。经过一系列培训和练习后,他们被要求指出所听到的情感。使用回归分析来分析感知数据。感知数据表明,音高测量所依据的因素对听众区分各组的影响最大。
目前的初步研究表明,使用韵律特征的声学测量可能是区分DAT、VaD、MCI和NHC的一种有效方法。有必要在未来的研究中,在可控环境下使用更好的刺激材料收集数据。