认知风险因素分类的分段和超分段语音基础模型:评估开箱即用的性能。

Si-Ioi Ng, Lingfeng Xu, Kimberly D Mueller, Julie Liss, Visar Berisha
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引用次数: 0

摘要

语音基础模型在各种消费者应用中非常成功,促使其扩展到临床用例。这受到小型临床数据集的挑战,这妨碍了有效的微调。我们测试了两种模型通过分段(Wav2Vec2.0)和超分段(Trillsson)语音分析窗口对参与者进行分类的有效性。在这两个时间尺度上的分析显示了认知能力下降的背景差异。演讲者被分类为健康对照(HC)、淀粉样蛋白-β+ (Aβ+)、轻度认知障碍(MCI)或痴呆。W2V2和Trillsson表示的子集显示HC与每个风险因素之间的效应量很大。交叉验证表明,W2V2的性能始终优于Trillsson。平均宏观f1分别为54.1%、63.5%和72.0%,用于区分Aβ+、MCI和HC型痴呆。Trillsson和W2V2的重复性为0.30和0.41。这些模型的可靠性必须提高临床语音分析和纵向跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmental and Suprasegmental Speech Foundation Models for Classifying Cognitive Risk Factors: Evaluating Out-of-the-Box Performance.

Speech foundation models are remarkably successful in various consumer applications, prompting their extension to clinical use-cases. This is challenged by small clinical datasets, which precludes effective fine-tuning. We tested the efficacy of two models to classify participants by segmental (Wav2Vec2.0) and suprasegmental (Trillsson) speech analysis windows. Analysis at both time scales has shown differences in the context of cognitive decline. Speakers were classified as healthy controls (HC), Amyloid-β+ (Aβ+), mild cognitive impairment (MCI), or dementia. A subset of W2V2 and Trillsson representations showed large effect size between HC and each risk factor. Cross-validation showed W2V2 consistently outperforms Trillsson. Mean macro-F1 of 54.1%, 63.5%, and 72.0% in were found for classifying Aβ+, MCI, and dementia from HC. Repeatability of Trillsson and W2V2 showed intraclass correlations of 0.30 and 0.41. Reliability of such models must be enhanced for clinical speech analysis and longitudinal tracking.

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