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一种用于测量多模态语音信号复杂性和不规则性的新的层次框架及其在肌萎缩侧索硬化症语音障碍评估中的应用。

A Novel Hierarchical Framework for Measuring the Complexity and Irregularity of Multimodal Speech Signals and Its Application in the Assessment of Speech Impairment in Amyotrophic Lateral Sclerosis.

机构信息

Department of Speech-Language-Hearing: Sciences & Disorders, University of Kansas, Lawrence.

出版信息

J Speech Lang Hear Res. 2021 Aug 9;64(8):2996-3014. doi: 10.1044/2021_JSLHR-20-00743. Epub 2021 Jul 22.

DOI:10.1044/2021_JSLHR-20-00743
PMID:34293265
Abstract

Purpose The purposes of this study are to develop a novel multimodal framework for measuring variability at the muscular, kinematic, and acoustic levels of the motor speech hierarchy and evaluate the utility of this framework in detecting speech impairment in amyotrophic lateral sclerosis (ALS). Method The myoelectric activities of three bilateral jaw muscle pairs (masseter, anterior temporalis, and anterior belly of digastric), jaw kinematics, and speech acoustics were recorded in 13 individuals with ALS and 10 neurologically healthy controls during sentence reading. Thirteen novel measures (six muscular, three kinematic, four acoustic), which characterized two different but interrelated aspects of variability-complexity and irregularity-were derived using linear and nonlinear methods. Exploratory factor analysis was applied to identify the latent factors underlying these measures. Based on the latent factors, three supervised classifiers-support vector machine (SVM), random forest (RF), and logistic regression (Logit)-were used to differentiate between the speech samples for patients and controls. Results Four interpretable latent factors were identified, representing the complexity of jaw kinematics, the irregularity of jaw antagonists functioning, the irregularity of jaw agonists functioning, and the irregularity of subband acoustic signals, respectively. Based on these latent factors, the speech samples for patients and controls were classified with high accuracy (> 96% for SVM and RF; 88.64% for Logit), outperforming the unimodal measures. Two factors showed significant between-groups differences, as characterized by decreased complexity of jaw kinematics and increased irregularity of jaw antagonists functioning in patients versus controls. Conclusions Decreased complexity of jaw kinematics presumably reflects impaired fine control of jaw movement, while increased irregularity of jaw antagonists functioning could be attributed to reduced synchronization of motor unit firing in ALS. The findings provide preliminary evidence for the utility of the multimodal framework as a novel quantitative assessment tool for detecting speech impairment in ALS and (potentially) in other neuromotor disorders.

摘要

目的 本研究旨在开发一种新的多模态框架,用于测量运动言语层次结构在肌肉、运动学和声学水平上的变异性,并评估该框架在检测肌萎缩侧索硬化症 (ALS) 中的言语障碍中的效用。

方法 在句子阅读期间,记录了 13 名 ALS 患者和 10 名神经健康对照者的三个双侧下颌肌肉对(咬肌、前颞肌和二腹肌前腹)的肌电活动、下颌运动学和言语声学。使用线性和非线性方法,从这三个方面导出了 13 个新的测量值(6 个肌肉,3 个运动学,4 个声学),这些测量值描述了变异性的两个不同但相关的方面——复杂性和不规则性。进行探索性因子分析以确定这些测量值的潜在因素。基于潜在因素,使用支持向量机(SVM)、随机森林(RF)和逻辑回归(Logit)三种监督分类器来区分患者和对照组的语音样本。

结果 确定了四个可解释的潜在因素,分别代表下颌运动学的复杂性、下颌拮抗肌功能的不规则性、下颌协同肌功能的不规则性以及子带声信号的不规则性。基于这些潜在因素,患者和对照组的语音样本的分类准确率很高(SVM 和 RF 大于 96%;Logit 为 88.64%),优于单模态测量值。两个因素在组间存在显著差异,表现为患者的下颌运动学复杂性降低,下颌拮抗肌功能不规则性增加。

结论 下颌运动学复杂性的降低可能反映了下颌运动精细控制的受损,而下颌拮抗肌功能不规则性的增加可能归因于 ALS 中运动单位放电的同步性降低。这些发现为多模态框架作为一种新的定量评估工具,用于检测 ALS 中的言语障碍(以及潜在的)其他神经运动障碍提供了初步证据。

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