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Automatic speech analysis to early detect functional cognitive decline in elderly population

机译:自动语音分析可及早发现老年人的功能性认知功能下降

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This study aimed at evaluating whether people with a normal cognitive function can be discriminated from subjects with a mild impairment of cognitive function based on a set of acoustic features derived from spontaneous speech. Voice recordings from 90 Italian subjects (age >65 years; group 1: 47 subjects with MMSE>26; group 2: 43 subjects with 20≤ MMSE ≤26) were collected. Voice samples were processed using a MATLAB-based custom software to derive a broad set of known acoustic features. Linear mixed model analyses were performed to select the features able to significantly distinguish between groups. The selected features (% of unvoiced segments, duration of unvoiced segments, % of voice breaks, speech rate, and duration of syllables), alone or in addition to age and years of education, were used to build a learning-based classifier. The leave-one-out cross validation was used for testing and the classifier accuracy was computed. When the voice features were used alone, an overall classification accuracy of 0.73 was achieved. When age and years of education were additionally used, the overall accuracy increased up to 0.80. These performances were lower than the accuracy of 0.86 found in a recent study. However, in that study the classification was based on several tasks, including more cognitive demanding tasks. Our results are encouraging because acoustic features, derived for the first time only from an ecologic continuous speech task, were able to discriminate people with a normal cognitive function from people with a mild cognitive decline. This study poses the basis for the development of a mobile application performing automatic voice analysis on-the-fly during phone calls, which might potentially support the detection of early signs of functional cognitive decline.
机译:这项研究旨在评估是否可以根据自发性言语的一组声学特征,将认知功能正常的人与认知功能轻度受损的人区分开。收集了来自90名意大利受试者(年龄> 65岁;第1组:MMSE> 26的47个受试者;第2组:20≤MMSE≤26的43个受试者)的录音。使用基于MATLAB的定制软件处理语音样本,以导出广泛的已知声学特征。进行线性混合模型分析以选择能够显着区分组的特征。单独使用或除年龄和受教育年限之外,还使用选定的功能(清音段的百分比,清音段的持续时间,语音中断的百分比,语音速率和音节的持续时间)来构建基于学习的分类器。留一法交叉验证用于测试,并计算分类器的准确性。当单独使用语音功能时,总体分类精度为0.73。当另外使用年龄和受教育年限时,总体准确性提高到0.80。这些性能低于最近的研究中发现的0.86的准确度。但是,在该研究中,分类基于多项任务,包括更多的认知要求较高的任务。我们的结果令人鼓舞,因为声学特征首次仅源自生态连续语音任务,能够将具有正常认知功能的人与具有轻度认知下降的人区分开。这项研究为移动应用程序的开发奠定了基础,该应用程序可以在通话过程中即时进行自动语音分析,这可能支持检测功能性认知功能下降的早期迹象。

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