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Predicting Mini-Mental Status Examination Scores through Paralinguistic Acoustic Features of Spontaneous Speech

机译:通过自发性语音的旁语声学特征预测小心理状态考试成绩

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Speech analysis could provide an indicator of cognitive health and help develop clinical tools for automatically detecting and monitoring cognitive health progression. The Mini Mental Status Examination (MMSE) is the most widely used screening tool for cognitive health. But the manual operation of MMSE restricts its screening within primary care facilities. An automatic screening tool has the potential to remedy this situation. This study aims to assess the association between acoustic features of spontaneous speech and assess whether acoustic features can be used to automatically predict MMSE score. We assessed the effectiveness of paralinguistic feature set for MMSE score prediction on a balanced sample of DementiaBank’s Pitt spontaneous speech dataset, with patients matched by gender and age. Linear regression analysis shows that fusion of acoustic features, age, sex and years of education provides better results (mean absolute error, MAE = 4.97, and R2 = 0.261) than acoustic features alone (MAE = 5.66 and R2 =0.125) and age, gender and education level alone (MAE of 5.36 and R2 =0.17). This suggests that the acoustic features of spontaneous speech are an important part of an automatic screening tool for cognitive impairment detection.Clinical relevance— We hereby present a method for automatic screening of cognitive health. It is based on acoustic information of speech, a ubiquitous source of data, therefore being cost-efficient, non-invasive and with little infrastructure required.
机译:语音分析可以提供认知健康的指标,并有助于开发用于自动检测和监测认知健康进展的临床工具。迷你心理状态检查(MMSE)是认知健康最广泛使用的筛查工具。但是,MMSE的手动操作限制了其在初级保健机构中的筛查。自动筛选工具有可能纠正这种情况。这项研究旨在评估自发语音的声学特征之间的关联,并评估声学特征是否可用于自动预测MMSE得分。我们评估了DementiaBank Pitt自发语音数据集的均衡样本中按性别和年龄相匹配的样本,使用语言功能对MMSE分数预测的有效性。线性回归分析表明,声学特征,年龄,性别和受教育年限的融合提供了更好的结果(平均绝对误差,MAE = 4.97和R 2 = 0.261)比仅声学特征(MAE = 5.66和R 2 = 0.125)和年龄,性别和受教育程度(MAE为5.36和R) 2 = 0.17)。这表明自发性语音的声学特征是用于认知障碍检测的自动筛选工具的重要组成部分。临床意义—我们在此提出一种自动筛选认知健康的方法。它基于语音的声音信息(一种无处不在的数据源),因此具有成本效益,无创且几乎不需要基础设施。

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