Toth Laszlo, Hoffmann Ildiko, Gosztolya Gabor, Vincze Veronika, Szatloczki Greta, Banreti Zoltan, Pakaski Magdolna, Kalman Janos
MTA-SZTE Research Group on Artificial Intelligence, Szeged. Hungary.
Linguistics Department, University of Szeged, Szeged. Hungary.
Curr Alzheimer Res. 2018;15(2):130-138. doi: 10.2174/1567205014666171121114930.
Even today the reliable diagnosis of the prodromal stages of Alzheimer's disease (AD) remains a great challenge. Our research focuses on the earliest detectable indicators of cognitive decline in mild cognitive impairment (MCI). Since the presence of language impairment has been reported even in the mild stage of AD, the aim of this study is to develop a sensitive neuropsychological screening method which is based on the analysis of spontaneous speech production during performing a memory task. In the future, this can form the basis of an Internet-based interactive screening software for the recognition of MCI.
Participants were 38 healthy controls and 48 clinically diagnosed MCI patients. The provoked spontaneous speech by asking the patients to recall the content of 2 short black and white films (one direct, one delayed), and by answering one question. Acoustic parameters (hesitation ratio, speech tempo, length and number of silent and filled pauses, length of utterance) were extracted from the recorded speech signals, first manually (using the Praat software), and then automatically, with an automatic speech recognition (ASR) based tool. First, the extracted parameters were statistically analyzed. Then we applied machine learning algorithms to see whether the MCI and the control group can be discriminated automatically based on the acoustic features.
The statistical analysis showed significant differences for most of the acoustic parameters (speech tempo, articulation rate, silent pause, hesitation ratio, length of utterance, pause-per-utterance ratio). The most significant differences between the two groups were found in the speech tempo in the delayed recall task, and in the number of pauses for the question-answering task. The fully automated version of the analysis process - that is, using the ASR-based features in combination with machine learning - was able to separate the two classes with an F1-score of 78.8%.
The temporal analysis of spontaneous speech can be exploited in implementing a new, automatic detection-based tool for screening MCI for the community.
即使在今天,阿尔茨海默病(AD)前驱期的可靠诊断仍然是一项巨大挑战。我们的研究聚焦于轻度认知障碍(MCI)中认知衰退最早可检测到的指标。由于即使在AD的轻度阶段也有语言障碍存在的报道,本研究的目的是开发一种基于记忆任务中自发言语产出分析的敏感神经心理学筛查方法。未来,这可为基于互联网的用于识别MCI的交互式筛查软件奠定基础。
参与者包括38名健康对照者和48名临床诊断的MCI患者。通过要求患者回忆2部黑白短片(一部即时回忆,一部延迟回忆)的内容以及回答一个问题来引发自发言语。从录制的语音信号中提取声学参数(犹豫率、语速、无声和填充停顿的时长及数量、话语长度),首先手动提取(使用Praat软件),然后使用基于自动语音识别(ASR)的工具自动提取。首先,对提取的参数进行统计分析。然后应用机器学习算法,看是否能基于声学特征自动区分MCI组和对照组。
统计分析表明,大多数声学参数(语速、发音率、无声停顿、犹豫率、话语长度、每话语停顿率)存在显著差异。两组之间最显著的差异出现在延迟回忆任务中的语速以及问答任务中的停顿数量上。分析过程的全自动版本——即结合基于ASR的特征与机器学习——能够以78.8%的F1分数区分这两类。
自发言语的时间分析可用于为社区开发一种新的基于自动检测的MCI筛查工具。