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Diagnosing people with dementia using automatic conversation analysis

机译:使用自动对话分析诊断痴呆症的人

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A recent study using Conversation Analysis (CA) has demonstrated that communication problems may be picked up during conversations between patients and neurologists, and that this can be used to differentiate between patients with (progressive neurodegenerative dementia) ND and those with (nonprogressive) functional memory disorders (FMD). This paper presents a novel automatic method for transcribing such conversations and extracting CA-style features. A range of acoustic, syntactic, semantic and visual features were automatically extracted and used to train a set of classifiers. In a proof-of-principle style study, using data recording during real neurologist-patient consultations, we demonstrate that automatically extracting CA-style features gives a classification accuracy of 95 % when using verbatim transcripts. Replacing those transcripts with automatic speech recognition transcripts, we obtain a classification accuracy of 79 % which improves to 90 % when feature selection is applied. This is a first and encouraging step towards replacing inaccurate, potentially stressful cognitive tests with a test based on monitoring conversation capabilities that could be conducted in e.g. the privacy of the patient's own home.
机译:最近使用会话分析(CA)的研究表明,在患者和神经病学家之间的对话期间可能会拾取通信问题,并且这可以用于区分(进行性神经变性痴呆症)ND和具有(非进口)功能记忆的患者之间的患者障碍(FMD)。本文提出了一种用于转录此类对话并提取CA式功能的新型方法。自动提取一系列声学,句法,语义和视觉功能,并用于培训一组分类器。在原则上的验证样式研究中,使用真正的神经科医生患者咨询期间的数据录制,我们证明了在使用逐字转录物时自动提取的分类精度为95%。用自动语音识别成绩符替换那些成绩单,我们获得79%的分类精度,当应用特征选择时,可以提高90%。这是朝着更换不准确,潜在的压力认知的认知测试的第一个和令人鼓舞的步骤,以基于监测的对话能力,例如可以在例如例如在例如在例如,以便在例如:患者自己家的隐私。

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