Department of Psychiatry, Albert Szent-Györgyi Medical School, University of Szeged, Szeged, Hungary.
Department of Psychiatry, Columbia University Medical Center, New York, NY, United States.
Curr Alzheimer Res. 2022;19(5):373-386. doi: 10.2174/1567205019666220418155130.
The development of automatic speech recognition (ASR) technology allows the analysis of temporal (time-based) speech parameters characteristic of mild cognitive impairment (MCI). However, no information has been available on whether the analysis of spontaneous speech can be used with the same efficiency in different language environments.
The main goal of this international pilot study is to address the question of whether the Speech-Gap Test® (S-GAP Test®), previously tested in the Hungarian language, is appropriate for and applicable to the recognition of MCI in other languages such as English.
After an initial screening of 88 individuals, English-speaking (n = 33) and Hungarianspeaking (n = 33) participants were classified as having MCI or as healthy controls (HC) based on Petersen's criteria. The speech of each participant was recorded via a spontaneous speech task. Fifteen temporal parameters were determined and calculated through ASR.
Seven temporal parameters in the English-speaking sample and 5 in the Hungarian-speaking sample showed significant differences between the MCI and the HC groups. Receiver operating characteristics (ROC) analysis clearly distinguished the English-speaking MCI cases from the HC group based on speech tempo and articulation tempo with 100% sensitivity, and on three more temporal parameters with high sensitivity (85.7%). In the Hungarian-speaking sample, the ROC analysis showed similar sensitivity rates (92.3%).
The results of this study in different native-speaking populations suggest that changes in acoustic parameters detected by the S-GAP Test® might be present across different languages.
自动语音识别(ASR)技术的发展使得对轻度认知障碍(MCI)特征的时间(基于时间)语音参数的分析成为可能。然而,关于自发语音的分析是否可以在不同的语言环境中同样高效地使用,还没有信息。
这项国际试点研究的主要目标是探讨 Speech-Gap Test®(S-GAP Test®)是否适用于和可用于识别其他语言(如英语)中的 MCI,该测试之前已经在匈牙利语中进行了测试。
在对 88 名个体进行初步筛选后,根据彼得森的标准,将英语(n=33)和匈牙利语(n=33)的参与者分为 MCI 或健康对照组(HC)。每位参与者的语音通过自发语音任务进行记录。通过 ASR 确定并计算了 15 个时间参数。
在英语样本中,有 7 个时间参数,在匈牙利语样本中,有 5 个时间参数在 MCI 和 HC 组之间存在显著差异。基于语音节奏和发音节奏的接收器工作特征(ROC)分析能够以 100%的灵敏度清楚地区分英语 MCI 病例和 HC 组,同时还可以基于另外三个时间参数进行高灵敏度(85.7%)的区分。在匈牙利语样本中,ROC 分析显示出类似的灵敏度率(92.3%)。
这项在不同母语人群中的研究结果表明,S-GAP Test®检测到的声学参数变化可能存在于不同的语言中。