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机器学习识别美国成年人的频率跟随反应:参考语谱图和刺激标记的影响。

Machine Learning Recognizes Frequency-Following Responses in American Adults: Effects of Reference Spectrogram and Stimulus Token.

机构信息

Communication Sciences and Disorders, Ohio University, Athens, OH, USA.

出版信息

Percept Mot Skills. 2024 Oct;131(5):1584-1602. doi: 10.1177/00315125241273993. Epub 2024 Aug 16.

Abstract

Electrophysiological research has been widely utilized to study brain responses to acoustic stimuli. The frequency-following response (FFR), a non-invasive reflection of how the brain encodes acoustic stimuli, is a particularly propitious electrophysiologic measure. While the FFR has been studied extensively, there are limitations in obtaining and analyzing FFR recordings that recent machine learning algorithms may address. In this study, we aimed to investigate whether FFRs can be enhanced using an "improved" source-separation machine learning algorithm. For this study, we recruited 28 native speakers of American English with normal hearing. We obtained two separate FFRs from each participant while they listened to two stimulus tokens /i/ and /da/. Electroencephalographic signals were pre-processed and analyzed using a source-separation non-negative matrix factorization (SSNMF) machine learning algorithm. The algorithm was trained using individual, grand-averaged, or stimulus token spectrograms as a reference. A repeated measures analysis of variance revealed that FFRs were significantly enhanced ( < .001) when the "improved" SSNMF algorithm was trained using both individual and grand-averaged spectrograms, but not when utilizing the stimulus token spectrogram. Similar results were observed when extracting FFRs elicited by using either stimulus token, /i/ or /da/. This demonstration shows how the SSNMF machine learning algorithm, using individual and grand-averaged spectrograms as references in training the algorithm, significantly enhanced FFRs. This improvement has important implications for the obtainment and analytical processes of FFR, which may lead to advancements in clinical applications of FFR testing.

摘要

电生理学研究广泛应用于研究大脑对声音刺激的反应。频率跟随反应(FFR)是大脑对声音刺激进行编码的非侵入性反映,是一种特别有利的电生理测量方法。虽然已经对 FFR 进行了广泛的研究,但在获取和分析 FFR 记录方面存在一些限制,而最近的机器学习算法可能会解决这些限制。在这项研究中,我们旨在研究使用“改进”的源分离机器学习算法是否可以增强 FFR。在这项研究中,我们招募了 28 名母语为美式英语且听力正常的美国成年人。我们让每位参与者分别聆听两个刺激音 /i/ 和 /da/,同时获取他们的两个独立 FFR。我们使用源分离非负矩阵分解(SSNMF)机器学习算法对脑电信号进行预处理和分析。该算法使用个体、总平均或刺激音频谱图作为参考进行训练。重复测量方差分析显示,当“改进”的 SSNMF 算法使用个体和总平均频谱图进行训练时,FFR 显著增强( <.001),但当使用刺激音频谱图时则不然。当使用任何一个刺激音,即 /i/ 或 /da/ 来提取 FFR 时,都可以观察到类似的结果。这一演示表明,使用个体和总平均频谱图作为参考来训练 SSNMF 机器学习算法,可以显著增强 FFR。这一改进对 FFR 的获取和分析过程具有重要意义,可能会推动 FFR 测试在临床应用方面的发展。

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