Evaluating the Performance of wav2vec Embedding for Parkinson's Disease Detection

IF 1 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION
Ondřej Klempíř, David Příhoda, Radim Krupička
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引用次数: 0

Abstract

Speech is one of the most serious manifestations of Parkinson's disease (PD). Sophisticated language/speech models have already demonstrated impressive performance on a variety of tasks, including classification. By analysing large amounts of data from a given setting, these models can identify patterns that would be difficult for clinicians to detect. We focus on evaluating the performance of a large self-supervised speech representation model, wav2vec, for PD classification. Based on the computed wav2vec embedding for each available speech signal, we calculated two sets of 512 derived features, wav2vec-sum and wav2vec-mean. Unlike traditional signal processing methods, this approach can learn a suitable representation of the signal directly from the data without requiring manual or hand-crafted feature extraction. Using an ensemble random forest classifier, we evaluated the embedding-based features on three different healthy vs. PD datasets (participants rhythmically repeat syllables /pa/, Italian dataset and English dataset). The obtained results showed that the wav2vec signal representation was accurate, with a minimum area under the receiver operating characteristic curve (AUROC) of 0.77 for the /pa/ task and the best AUROC of 0.98 for the Italian speech classification. The findings highlight the potential of the generalisability of the wav2vec features and the performance of these features in the cross-database scenarios.
评估wav2vec嵌入在帕金森病检测中的性能
言语障碍是帕金森病(PD)最严重的表现之一。复杂的语言/语音模型已经在包括分类在内的各种任务上展示了令人印象深刻的表现。通过分析来自给定环境的大量数据,这些模型可以识别临床医生难以发现的模式。我们专注于评估一个大型自监督语音表示模型wav2vec在PD分类中的性能。基于计算的每个可用语音信号的wav2vec嵌入,我们计算了两组512个派生特征,wav2vec-sum和wav2vec-mean。与传统的信号处理方法不同,这种方法可以直接从数据中学习到合适的信号表示,而不需要手动或手工提取特征。使用集成随机森林分类器,我们在三个不同的健康与PD数据集(参与者有节奏地重复音节/pa/,意大利语数据集和英语数据集)上评估了基于嵌入的特征。结果表明,wav2vec信号表征准确,/pa/任务下的AUROC最小值为0.77,意大利语语音分类的AUROC最佳值为0.98。这些发现突出了wav2vec特性的通用性和这些特性在跨数据库场景中的性能的潜力。
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来源期刊
Measurement Science Review
Measurement Science Review INSTRUMENTS & INSTRUMENTATION-
CiteScore
2.00
自引率
11.10%
发文量
37
审稿时长
4.8 months
期刊介绍: - theory of measurement - mathematical processing of measured data - measurement uncertainty minimisation - statistical methods in data evaluation and modelling - measurement as an interdisciplinary activity - measurement science in education - medical imaging methods, image processing - biosignal measurement, processing and analysis - model based biomeasurements - neural networks in biomeasurement - telemeasurement in biomedicine - measurement in nanomedicine - measurement of basic physical quantities - magnetic and electric fields measurements - measurement of geometrical and mechanical quantities - optical measuring methods - electromagnetic compatibility - measurement in material science
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