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机器学习及脑电图数据的时间响应函数建模在原发性进行性失语鉴别诊断中的应用

Application of machine learning and temporal response function modeling of EEG data for differential diagnosis in primary progressive aphasia.

作者信息

Dial Heather, Pugalenthi Lokesha S, Gnanateja G Nike, Li Junyi Jessy, Henry Maya L

机构信息

Department of Communication Sciences and Disorders, University of Houston, 3871 Holman St, Houston, TX, 77204, USA.

Department of Speech, Language, and Hearing Sciences, The University of Texas at Austin, 2504a Whitis Ave a1100, Austin, TX, 78712, USA.

出版信息

Sci Rep. 2025 Aug 12;15(1):29539. doi: 10.1038/s41598-025-13000-8.

Abstract

Primary progressive aphasia (PPA) is a neurodegenerative syndrome characterized by progressive decline in speech and/or language. There are three PPA subtypes with distinct speech-language profiles. Early diagnosis is essential for optimal provision of care but differential diagnosis by PPA subtype can be difficult and time consuming. We investigated the diagnostic utility of a novel electroencephalography (EEG)-based biomarker in conjunction with machine learning. Individuals with semantic, logopenic, or nonfluent/agrammatic variant PPA and healthy controls (n = 10 per group) listened to a continuous narrative while EEG responses were recorded. The speech envelope and linguistic features representing core language processes were extracted from the narrative speech and temporal response function (TRF) modeling was used to estimate the neural responses to these features. Although TRF modeling has shown promise for clinical applications, research is lacking regarding its diagnostic utility in populations like PPA. This study sought to provide preliminary evidence to address this gap. The resulting TRFs for channel Cz were used as input to machine learning algorithms for classification of PPA vs. healthy controls, three-way classification by PPA subtype, classification of a single PPA subtype relative to the other two (e.g., semantic vs. logopenic/nonfluent variant), and pairwise classification by PPA subtype. F1 scores were highest for the latter tasks (F1's from 0.73 to 0.74), with better-than-chance classification in all tasks. Additional analyses determined that the TRF beta weights significantly improved classification over preprocessed EEG waveforms alone for all but one task (PPA vs. healthy controls). Our preliminary findings demonstrate the potential utility of this approach for differential diagnosis of PPA, warranting further investigation.

摘要

原发性进行性失语(PPA)是一种神经退行性综合征,其特征是言语和/或语言功能逐渐衰退。PPA有三种亚型,具有不同的言语-语言特征。早期诊断对于提供最佳护理至关重要,但按PPA亚型进行鉴别诊断可能困难且耗时。我们研究了一种基于脑电图(EEG)的新型生物标志物与机器学习相结合的诊断效用。患有语义性、语音性或非流利/语法缺失型PPA的个体以及健康对照者(每组n = 10)在听一段连续叙述时记录EEG反应。从叙述性言语中提取代表核心语言过程的言语包络和语言特征,并使用时间响应函数(TRF)建模来估计对这些特征的神经反应。尽管TRF建模已显示出在临床应用中的前景,但关于其在PPA等人群中的诊断效用的研究仍很缺乏。本研究旨在提供初步证据以填补这一空白。将通道Cz处得到的TRF用作机器学习算法的输入,用于PPA与健康对照者的分类、按PPA亚型进行的三分类、相对于其他两种亚型(例如语义性与语音性/非流利型)的单一PPA亚型的分类以及按PPA亚型进行的两两分类。后几项任务的F1分数最高(F1值在0.73至0.74之间),所有任务的分类效果均优于随机分类。进一步分析确定,除一项任务(PPA与健康对照者)外,TRF的β权重相对于单独的预处理EEG波形显著改善了分类效果。我们的初步研究结果证明了这种方法在PPA鉴别诊断中的潜在效用,值得进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ead/12344008/308e99e85256/41598_2025_13000_Fig1_HTML.jpg

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