Natural language processing-driven framework for the early detection of language and cognitive decline

Kulvinder Panesar , María Beatriz Pérez Cabello de Alba
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Abstract

Natural Language Processing (NLP) technology has the potential to provide a non-invasive, cost-effective method using a timely intervention for detecting early-stage language and cognitive decline in individuals concerned about their memory. The proposed pre-screening language and cognition assessment model (PST-LCAM) is based on the functional linguistic model Role and Reference Grammar (RRG) to analyse and represent the structure and meaning of utterances, via a set of language production and cognition parameters. The model is trained on a DementiaBank dataset with markers of cognitive decline aligned to the global deterioration scale (GDS). A hybrid approach of qualitative linguistic analysis and assessment is applied, which includes the mapping of participants´ tasks of speech utterances and words to RRG phenomena. It uses a metric-based scoring with resulting quantitative scores and qualitative indicators as pre-screening results. This model is to be deployed in a user-centred conversational assessment platform.

自然语言处理驱动框架对语言和认知衰退的早期检测
自然语言处理(NLP)技术有可能提供一种非侵入性的、经济有效的方法,通过及时干预来检测早期语言和认知能力下降的个体。本文提出的预筛选语言和认知评估模型(PST-LCAM)是基于功能语言模型角色和参考语法(RRG),通过一组语言产生和认知参数来分析和表征话语的结构和意义。该模型在DementiaBank数据集上进行训练,该数据集具有与全球退化量表(GDS)一致的认知衰退标记。采用了一种定性语言分析和评估的混合方法,其中包括将参与者的语音任务和单词映射到RRG现象。它使用基于度量的评分,并使用定量评分和定性指标作为预筛选结果。该模型将部署在以用户为中心的会话评估平台中。
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