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Frontiers in neurology. 2023 Jun 13:14:1198058. doi: 10.3389/fneur.2023.1198058 Q32.72024

Robust and language-independent acoustic features in Parkinson's disease

帕金森病的鲁棒且与语言无关的声学特征 翻译改进

Sabrina Scimeca  1, Federica Amato  1, Gabriella Olmo  1, Francesco Asci  2, Antonio Suppa  2  3, Giovanni Costantini  4, Giovanni Saggio  4

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作者单位

  • 1 Department of Control and Computer Engineering, Polytechnic University of Turin, Turin, Italy.
  • 2 Department of Human Neuroscience, Sapienza University of Rome, Rome, Italy.
  • 3 IRCCS Neuromed Institute, Pozzilli, Italy.
  • 4 Department of Electronic Engineering, University of Rome Tor Vergata, Rome, Italy.
  • DOI: 10.3389/fneur.2023.1198058 PMID: 37384279

    摘要 翻译

    Introduction: The analysis of vocal samples from patients with Parkinson's disease (PDP) can be relevant in supporting early diagnosis and disease monitoring. Intriguingly, speech analysis embeds several complexities influenced by speaker characteristics (e.g., gender and language) and recording conditions (e.g., professional microphones or smartphones, supervised, or non-supervised data collection). Moreover, the set of vocal tasks performed, such as sustained phonation, reading text, or monologue, strongly affects the speech dimension investigated, the feature extracted, and, as a consequence, the performance of the overall algorithm.

    Methods: We employed six datasets, including a cohort of 176 Healthy Control (HC) participants and 178 PDP from different nationalities (i.e., Italian, Spanish, Czech), recorded in variable scenarios through various devices (i.e., professional microphones and smartphones), and performing several speech exercises (i.e., vowel phonation, sentence repetition). Aiming to identify the effectiveness of different vocal tasks and the trustworthiness of features independent of external co-factors such as language, gender, and data collection modality, we performed several intra- and inter-corpora statistical analyses. In addition, we compared the performance of different feature selection and classification models to evaluate the most robust and performing pipeline.

    Results: According to our results, the combined use of sustained phonation and sentence repetition should be preferred over a single exercise. As for the set of features, the Mel Frequency Cepstral Coefficients demonstrated to be among the most effective parameters in discriminating between HC and PDP, also in the presence of heterogeneous languages and acquisition techniques.

    Conclusion: Even though preliminary, the results of this work can be exploited to define a speech protocol that can effectively capture vocal alterations while minimizing the effort required to the patient. Moreover, the statistical analysis identified a set of features minimally dependent on gender, language, and recording modalities. This discloses the feasibility of extensive cross-corpora tests to develop robust and reliable tools for disease monitoring and staging and PDP follow-up.

    Keywords: Parkinson's disease; acoustic features; machine learning; speech analysis; statistical analysis.

    Keywords:acoustic features

    关键词:声学特征

    Copyright © Frontiers in neurology. 中文内容为AI机器翻译,仅供参考!

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    期刊名:Frontiers in neurology

    缩写:FRONT NEUROL

    ISSN:1664-2295

    e-ISSN:1664-2295

    IF/分区:2.7/Q3

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    Robust and language-independent acoustic features in Parkinson's disease