Neural tracking of natural speech: an effective marker for post-stroke aphasia.

IF 4.1 Q1 CLINICAL NEUROLOGY
Brain communications Pub Date : 2025-03-10 eCollection Date: 2025-01-01 DOI:10.1093/braincomms/fcaf095
Pieter De Clercq, Jill Kries, Ramtin Mehraram, Jonas Vanthornhout, Tom Francart, Maaike Vandermosten
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引用次数: 0

Abstract

After a stroke, approximately one-third of patients suffer from aphasia, a language disorder that impairs communication ability. Behavioural tests are the current standard to detect aphasia, but they are time-consuming, have limited ecological validity and require active patient cooperation. To address these limitations, we tested the potential of EEG-based neural envelope tracking of natural speech. The technique investigates the neural response to the temporal envelope of speech, which is critical for speech understanding by encompassing cues for detecting and segmenting linguistic units (e.g. phrases, words and phonemes). We recorded EEG from 26 individuals with aphasia in the chronic phase after stroke (>6 months post-stroke) and 22 healthy controls while they listened to a 25-min story. We quantified neural envelope tracking in a broadband frequency range as well as in the delta, theta, alpha, beta and gamma frequency bands using mutual information analyses. Besides group differences in neural tracking measures, we also tested its suitability for detecting aphasia at the individual level using a support vector machine classifier. We further investigated the reliability of neural envelope tracking and the required recording length for accurate aphasia detection. Our results showed that individuals with aphasia had decreased encoding of the envelope compared to controls in the broad, delta, theta and gamma bands, which aligns with the assumed role of these bands in auditory and linguistic processing of speech. Neural tracking in these frequency bands effectively captured aphasia at the individual level, with a classification accuracy of 83.33% and an area under the curve of 89.16%. Moreover, we demonstrated that high-accuracy detection of aphasia can be achieved in a time-efficient (5-7 min) and highly reliable manner (split-half reliability correlations between R = 0.61 and R = 0.96 across frequency bands). In this study, we identified specific neural response characteristics to natural speech that are impaired in individuals with aphasia, holding promise as a potential biomarker for the condition. Furthermore, we demonstrate that the neural tracking technique can discriminate aphasia from healthy controls at the individual level with high accuracy, and in a reliable and time-efficient manner. Our findings represent a significant advance towards more automated, objective and ecologically valid assessments of language impairments in aphasia.

自然语言的神经追踪:中风后失语症的有效标记。
中风后,大约三分之一的患者患有失语症,这是一种损害沟通能力的语言障碍。行为测试是目前检测失语症的标准,但它们耗时,生态有效性有限,并且需要患者积极配合。为了解决这些限制,我们测试了基于脑电图的神经包络跟踪自然语音的潜力。该技术研究了语音时间包络的神经反应,这对于语音理解至关重要,因为它包含了检测和分割语言单位(如短语、单词和音素)的线索。我们记录了26名中风后慢性期失语症患者(中风后6个月)和22名健康对照者的脑电图,同时他们听了25分钟的故事。我们使用互信息分析量化了宽带频率范围以及delta、theta、alpha、beta和gamma频段的神经包络跟踪。除了神经跟踪测量的组差异外,我们还使用支持向量机分类器测试了其在个体水平上检测失语症的适用性。我们进一步研究了神经包膜跟踪的可靠性和准确检测失语症所需的记录长度。我们的研究结果表明,与对照组相比,失语症患者在宽、delta、theta和gamma波段的包膜编码减少,这与这些波段在语音听觉和语言处理中的作用一致。这些频带的神经跟踪在个体水平上有效捕获失语,分类准确率为83.33%,曲线下面积为89.16%。此外,我们证明了失语症的高精度检测可以以高效的时间(5-7分钟)和高可靠的方式实现(各频段间R = 0.61和R = 0.96的二分信度相关性)。在这项研究中,我们确定了失语症患者对自然语言的特定神经反应特征,这些特征在失语症患者中受损,有望成为该疾病的潜在生物标志物。此外,我们证明了神经跟踪技术可以在个体水平上以高精度、可靠和高效的方式区分失语症和健康对照。我们的研究结果代表了对失语症语言障碍进行更自动化、客观和生态有效评估的重大进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
7.00
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