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使用相对基频的生态瞬时评估来表征发声功能亢进

Characterizing Vocal Hyperfunction Using Ecological Momentary Assessment of Relative Fundamental Frequency.

作者信息

Cheema Ahsan J, Marks Katherine L, Ghasemzadeh Hamzeh, Van Stan Jarrad H, Hillman Robert E, Mehta Daryush D

机构信息

Speech and Hearing Bioscience and Technology Program, Harvard University, 25 Shattuck St, Boston 02115, Massachusetts; Harvard Medical School, 25 Shattuck St, Boston 02115, Massachusetts; Mass General Hospital (MGH) Voice Center, 1 Bowdoin Sq, Boston 02114, Massachusetts; Eaton-Peabody Laboratories, Massachusetts Eye and Ear, 243 Charles St, Boston 02114, Massachusetts.

Sargent College of Health and Rehabilitation Sciences, Boston University, 677 Beacon St, Boston 02215, Massachusetts.

出版信息

J Voice. 2024 Dec 14. doi: 10.1016/j.jvoice.2024.10.025.

Abstract

Many common voice disorders are associated with vocal hyperfunction (VH), with subtypes including phonotraumatic VH (leading to organic vocal fold lesions such as nodules and/or polyps) and nonphonotraumatic VH (often diagnosed as primary muscle tension dysphonia). VH has been hypothesized to influence baseline vocal fold tension during phonation, and the relative fundamental frequency (RFF) during onset and offset cycles of phonation has been related to vocal fold tension and has been shown to differentiate typical voices from patients with VH in laboratory settings. In this study, we investigated whether the laboratory sensitivity of RFF to the presence of VH found in the laboratory is preserved in naturalistic, in-field settings and whether ecological momentary assessment of RFF during daily life could be a correlate of self-reported vocal effort. RFF analysis was carried out after performing smartphone-based monitoring of anterior neck-surface vibration with accelerometer sensors in both laboratory and in-field settings. Supervised machine learning was applied to combine multiple RFF values to discriminate and classify patients with VH from vocally typical speakers. Results showed that RFF-based classification of VH can be preserved in the naturalistic environments for patients with phonotraumatic (81.3% accuracy) and nonphonotraumatic (62.5% accuracy) VH. Additionally, we used explainability techniques to understand which RFF features were clinically relevant in the classification tasks. No direct relationship was observed between RFF and self-reported vocal effort. Overall, this study advances our understanding about RFF as a potential biomarker of VH as individuals go about their daily life. Machine learning algorithms can be implemented within a monitoring device for proactive screening or in biofeedback-based voice therapy paradigms.

摘要

许多常见的嗓音障碍与嗓音功能亢进(VH)有关,其亚型包括发声创伤性VH(导致声带器质性病变,如小结和/或息肉)和非发声创伤性VH(通常被诊断为原发性肌肉紧张性发声障碍)。据推测,VH会影响发声时的基线声带张力,发声起始和结束周期中的相对基频(RFF)与声带张力有关,并且在实验室环境中已显示出能区分典型嗓音和VH患者的嗓音。在本研究中,我们调查了在实验室中发现的RFF对VH存在的敏感性在自然的现场环境中是否得以保留,以及日常生活中RFF的生态瞬时评估是否可能与自我报告的发声努力相关。在实验室和现场环境中,使用加速度计传感器对颈部前表面振动进行基于智能手机的监测后,进行RFF分析。应用监督式机器学习来组合多个RFF值,以区分和分类VH患者与嗓音正常的说话者。结果表明,基于RFF对发声创伤性VH患者(准确率81.3%)和非发声创伤性VH患者(准确率62.5%)进行分类的方法在自然环境中可以保留。此外,我们使用可解释性技术来了解在分类任务中哪些RFF特征具有临床相关性。未观察到RFF与自我报告的发声努力之间存在直接关系。总体而言,本研究增进了我们对RFF作为VH潜在生物标志物的理解,因为个体在日常生活中会涉及到它。机器学习算法可以在监测设备中实现,用于主动筛查或基于生物反馈的嗓音治疗模式。

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