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Fully Automatic Speech-Based Analysis of the Semantic Verbal Fluency Task

机译:基于自动语音的语言语音分析对语义口头流畅性任务

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Background: Semantic verbal fluency (SVF) tests are routinely used in screening for mild cognitive impairment (MCI). In this task, participants name as many items as possible of a semantic category under a time constraint. Clinicians measure task performance manually by summing the number of correct words and errors. More fine-grained variables add valuable information to clinical assessment, but are time-consuming. Therefore, the aim of this study is to investigate whether automatic analysis of the SVF could provide these as accurate as manual and thus, support qualitative screening of neurocognitive impairment. Methods: SVF data were collected from 95 older people with MCI (n = 47), Alzheimer's or related dementias (ADRD; n = 24), and healthy controls (HC; n = 24). All data were annotated manually and automatically with clusters and switches. The obtained metrics were validated using a classifier to distinguish HC, MCI, and ADRD. Results: Automatically extracted clusters and switches were highly correlated (r = 0.9) with manually established values, and performed as well on the classification task separating HC from persons with ADRD (area under curve [AUC] = 0.939) and MCI (AUC = 0.758). Conclusion: The results show that it is possible to automate fine-grained analyses of SVF data for the assessment of cognitive decline. (C) 2018 S. Karger AG, Basel
机译:背景:语义言语流畅性(SVF)测试通常用于筛选轻度认知障碍(MCI)。在此任务中,参与者在时间约束下的语义类别中的数量响起。临床医生通过总结正确的单词和错误的数量来手动测量任务性能。更细粒度的变量将有价值的信息添加到临床评估中,但耗时。因此,本研究的目的是调查SVF的自动分析是否可以作为手动提供准确的,从而支持神经认知障碍的定性筛选。方法:从95名较老年人收集SVF数据,含有MCI(n = 47),阿尔茨海默氏症或相关痴呆(ADRD; n = 24)和健康对照(HC; n = 24)。所有数据都是手动和自动注释的群集和交换机。使用分类器验证所获得的度量标准,以区分HC,MCI和ADRD。结果:自动提取的集群和开关具有高度相关的(R = 0.9),手动建立的值以及在分类任务中执行的分类任务,将HC与ADRD的人分开(曲线[AUC] = 0.939的区域)和MCI(AUC = 0.758 )。结论:结果表明,可以自动化SVF数据的细粒度分析,以评估认知下降。 (c)2018年S. Karger AG,巴塞尔

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