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Atypical Repetition in Daily Conversation on Different Days for Detecting Alzheimer Disease: Evaluation of Phone-Call Data From a Regular Monitoring Service

机译:在不同天的日常谈话中进行非典型重复,用于检测阿尔茨海默病:从常规监控服务中的电话数据评估

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Background Identifying signs of Alzheimer disease (AD) through longitudinal and passive monitoring techniques has become increasingly important. Previous studies have succeeded in quantifying language dysfunctions and identifying AD from speech data collected during neuropsychological tests. However, whether and how we can quantify language dysfunction in daily conversation remains unexplored. Objective The objective of this study was to explore the linguistic features that can be used for differentiating AD patients from daily conversations. Methods We analyzed daily conversational data of seniors with and without AD obtained from longitudinal follow-up in a regular monitoring service (from n=15 individuals including 2 AD patients at an average follow-up period of 16.1 months; 1032 conversational data items obtained during phone calls and approximately 221 person-hours). In addition to the standard linguistic features used in previous studies on connected speech data during neuropsychological tests, we extracted novel features related to atypical repetition of words and topics reported by previous observational and descriptive studies as one of the prominent characteristics in everyday conversations of AD patients. Results When we compared the discriminative power of AD, we found that atypical repetition in two conversations on different days outperformed other linguistic features used in previous studies on speech data during neuropsychological tests. It was also a better indicator than atypical repetition in single conversations as well as that in two conversations separated by a specific number of conversations. Conclusions Our results show how linguistic features related to atypical repetition across days could be used for detecting AD from daily conversations in a passive manner by taking advantage of longitudinal data.
机译:背景技术通过纵向和被动监测技术鉴定Alzheimer疾病(AD)的迹象已经变得越来越重要。以前的研究成功地定量了语言功能障碍并从神经心理学测试期间收集的语音数据识别广告。但是,我们如何以及如何在日常对话中量化语言功能障碍仍未开发。目的本研究的目的是探讨可用于区分广告患者从日常谈话中的语言特征。方法对常规监测服务中的纵向随访中获得的老年人的日常会话数据(来自N = 15个个体,其中包括2名AD患者的平均随访时间为16.1个月,在16.1个月的平均随访期间; 1032期间电话和大约221人小时)。除了在神经心理测试期间连接语音数据的标准语言特征外,我们提取了与先前观察和描述性研究报告的单词和主题相关的新颖功能,作为广告患者日常对话中的突出特征之一。结果当我们比较广告的歧视力量时,我们发现两种对话中的非典型重复在不同日的两种对话中表现出在神经心理学测试期间的先前研究中使用的其他语言特征。它也比单一对话中的非典型重复更好的指标,也是在两种对话中分隔的两种对话。结论我们的结果表明,通过利用纵向数据,可以用于如何使用与天数的非典型重复相关的语言特征如何以被动方式从日常对话中检测广告。

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