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A Computational Linguistic Measure of Clustering Behavior on Semantic Verbal Fluency Task Predicts Risk of Future Dementia in the Nun Study

机译:Nun研究中语义言语流利性任务的聚类行为的计算语言测度预测未来痴呆症的风险

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摘要

Generative semantic verbal fluency (SVF) tests show early and disproportionate decline relative to other abilities in individuals developing Alzheimer’s disease. Optimal performance on SVF tests depends on the efficiency of using clustered organization of semantically related items and the ability to switch between clusters. Traditional approaches to clustering and switching have relied on manual determination of clusters. We evaluated a novel automated computational linguistic approach for quantifying clustering behavior. Our approach is based on Latent Semantic Analysis (LSA) for computing strength of semantic relatedness between pairs of words produced in response to SVF test. The mean size of semantic clusters (MCS) and semantic chains (MChS) are calculated based on pairwise relatedness values between words. We evaluated the predictive validity of these measures on a set of 239 participants in the Nun Study, a longitudinal study of aging. All were cognitively intact at baseline assessment, measured with the CERAD battery, and were followed in 18 month waves for up to 20 years. The onset of either dementia or memory impairment were used as outcomes in Cox proportional hazards models adjusted for age and education and censored at follow up waves 5 (6.3 years) and 13 (16.96 years). Higher MCS was associated with 38% reduction in dementia risk at wave 5 and 26% reduction at wave 13, but not with the onset of memory impairment. Higher (+1 SD) MChS was associated with 39% dementia risk reduction at wave 5 but not wave 13, and association with memory impairment was not significant. Higher traditional SVF scores were associated with 22–29% memory impairment and 35–40% dementia risk reduction. SVF scores were not correlated with either MCS or MChS. Our study suggests that an automated approach to measuring clustering behavior can be used to estimate dementia risk in cognitively normal individuals.
机译:生成性语义口语流利度(SVF)测试显示,与其他能力相比,患阿尔茨海默氏病的人的早期能力下降不成比例。 SVF测试的最佳性能取决于使用语义相关项目的群集组织的效率以及在群集之间进行切换的能力。传统的集群和交换方法依靠手动确定集群。我们评估了一种新颖的自动计算语言方法,用于量化聚类行为。我们的方法基于潜在语义分析(LSA),用于计算响应SVF测试而生成的单词对之间的语义相关性强度。基于单词之间的成对相关性值来计算语义聚类(MCS)和语义链(MChS)的平均大小。我们在“ Nun研究”(一项针对衰老的纵向研究)中对一组239名参与者进行了评估,评估了这些措施的预测有效性。所有患者在基线评估时均认知完好,使用CERAD电池进行测量,并在18个月的电波中随访长达20年。在针对年龄和教育程度进行了调整的Cox比例风险模型中,将痴呆症或记忆力障碍的发作用作结果,并在随访第5浪(6.3岁)和第13浪(16.96岁)时进行了检查。较高的MCS与第5波时痴呆风险降低38%和第13波时降低26%相关,但与记忆力减退的发生无关。较高(+1 SD)的MChS与第5波时降低39%的痴呆风险相关,而与第13波无关,并且与记忆障碍的相关性不显着。传统的SVF分数较高与记忆力减退22–29%和痴呆症风险降低35–40%相关。 SVF分数与MCS或MChS均不相关。我们的研究表明,一种自动的聚类行为测量方法可用于估计认知正常个体中痴呆症的风险。

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