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Automated classification of primary progressive aphasia subtypes from narrative speech transcripts

机译:从叙事性语音记录中自动分类原发性进行性失语症亚型

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In the early stages of neurodegenerative disorders, individuals may exhibit a decline in language abilities that is difficult to quantify with standardized tests. Careful analysis of connected speech can provide valuable information about a patient's language capacities. To date, this type of analysis has been limited by its time-consuming nature. In this study, we present a method for evaluating and classifying connected speech in primary progressive aphasia using computational techniques. Syntactic and semantic features were automatically extracted from transcriptions of narrative speech for three groups: semantic dementia (SD), progressive nonfluent aphasia (PNFA), and healthy controls. Features that varied significantly between the groups were used to train machine learning classifiers, which were then tested on held-out data. We achieved accuracies well above baseline on the three binary classification tasks. An analysis of the influential features showed that in contrast with controls, both patient groups tended to use words which were higher in frequency (especially nouns for SD, and verbs for PNFA). The SD patients also tended to use words (especially nouns) that were higher in familiarity, and they produced fewer nouns, but more demonstratives and adverbs, than controls. The speech of the PNFA group tended to be slower and incorporate shorter words than controls. The patient groups were distinguished from each other by the SD patients' relatively increased use of words which are high in frequency and/or familiarity.
机译:在神经退行性疾病的早期,个体可能会表现出语言能力的下降,这很难用标准化的测试来量化。对连接的语音进行仔细的分析可以提供有关患者语言能力的有价值的信息。迄今为止,这种类型的分析由于其耗时的性质而受到限制。在这项研究中,我们提出了一种使用计算技术对原发进行性失语症的关联语音进行评估和分类的方法。从三组叙事语音的转录中自动提取句法和语义特征:语义痴呆(SD),进行性非流利性失语(PNFA)和健康对照。两组之间差异显着的功能用于训练机器学习分类器,然后对保留的数据进行测试。我们在三项二元分类任务中获得了远远高于基线的准确度。对影响特征的分析表明,与对照组相比,两个患者组都倾向于使用频率较高的单词(特别是SD的名词和PNFA的动词)。 SD患者还倾向于使用熟悉度更高的单词(尤其是名词),并且与对照组相比,他们产生的名词更少,但指示词和副词却更多。 PNFA小组的演讲往往较对照组慢,且单词短。 SD患者对频率和/或熟悉度较高的单词的使用相对增加,从而使患者群体彼此区分。

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