Concurrent Validity of Automatic Speech and Pause Measures During Passage Reading in ALS

S. Naeini, Leif E. R. Simmatis, Y. Yunusova, B. Taati
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Abstract

The analysis of speech measures in individuals with amyotrophic lateral sclerosis (ALS) can provide essential information for early diagnosis and tracking disease progression. However, current methods for extracting speech and pause features are manual or semi-automatic, which makes them time-consuming and labour-intensive. The advent of speech-text alignment algorithms provides an opportunity for inex-pensive, automated, and accurate analysis of speech measures in individuals with ALS. There is a need to validate speech and pause features calculated by these algorithms against current gold standard methods. In this study, we extracted 8 speech/pause features from 646 audio files of individuals with ALS and healthy controls performing passage reading. Two pretrained forced alignment models - one using transformers and another using a Gaussian mixture / hidden Markov architecture - were used for automatic feature extraction. The results were then validated against semi-automatic speech/pause analysis software, with further subgroup analyses based on audio quality and disease severity. Features extracted using transformer-based forced alignment had the highest agreement with gold standards, including in terms of audio quality and disease severity. This study lays the groundwork for future intelligent diagnostic support systems for clinicians, and for novel methods of tracking disease progression remotely from home.
肌萎缩侧索硬化症患者阅读文章时自动语音和停顿措施的同步有效性
分析肌萎缩侧索硬化症(ALS)患者的言语测量可以为早期诊断和跟踪疾病进展提供重要信息。然而,目前提取语音和暂停特征的方法是手动或半自动的,这使得它们既耗时又费力。语音-文本对齐算法的出现为廉价、自动化和准确地分析ALS患者的语音测量提供了机会。需要根据当前的金标准方法验证这些算法计算的语音和暂停特征。在这项研究中,我们从646个ALS患者和健康对照者进行文章阅读的音频文件中提取了8个语音/暂停特征。两个预训练的强制对齐模型——一个使用变压器,另一个使用高斯混合/隐马尔可夫结构——用于自动特征提取。然后通过半自动语音/停顿分析软件验证结果,并根据音频质量和疾病严重程度进行进一步的亚组分析。使用基于变压器的强制对齐提取的特征与金标准的一致性最高,包括在音频质量和疾病严重程度方面。本研究为临床医生未来的智能诊断支持系统以及远程跟踪疾病进展的新方法奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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