A curious case of retrogenesis in language: Automated analysis of language patterns observed in dementia patients and young children

Changye Li , Jacob Solinsky , Trevor Cohen , Serguei Pakhomov
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Abstract

Introduction

While linguistic retrogenesis has been extensively investigated in the neuroscientific and behavioral literature, there has been little work on retrogenesis using computerized approaches to language analysis.

Methods

We bridge this gap by introducing a method based on comparing output of a pre-trained neural language model (NLM) with an artificially degraded version of itself to examine the transcripts of speech produced by seniors with and without dementia and healthy children during spontaneous language tasks. We compare a range of linguistic characteristics including language model perplexity, syntactic complexity, lexical frequency and part-of-speech use across these groups.

Results

Our results indicate that healthy seniors and children older than 8 years share similar linguistic characteristics, as do dementia patients and children who are younger than 8 years.

Discussion

Our study aligns with the growing evidence that language deterioration in dementia mirrors language acquisition in development using computational linguistic methods based on NLMs. This insight underscores the importance of further research to refine its application in guiding developmentally appropriate patient care, particularly in early stages.

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语言追溯的奇特案例:对痴呆症患者和幼儿语言模式的自动分析
方法我们通过比较预先训练好的神经语言模型(NLM)的输出结果和人工降级版本的输出结果,研究了患有痴呆症的老年人和没有痴呆症的老年人以及健康儿童在自发语言任务中的语音记录,从而弥补了这一空白。我们比较了这些群体的一系列语言特征,包括语言模型的复杂性、句法复杂性、词汇频率和语音部分的使用。讨论我们的研究与越来越多的证据相一致,这些证据表明痴呆症患者的语言退化反映了使用基于 NLM 的计算语言学方法在发育过程中语言习得的情况。这一观点强调了进一步研究的重要性,以完善其在指导适合发展的患者护理方面的应用,尤其是在早期阶段。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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