Comparison of Speech Tasks for Automatic Classification of Patients with Amyotrophic Lateral Sclerosis and Healthy Subjects

Aravind Illa, Deep Patel, B. Yamini, Meera ss, N. Shivashankar, P. Veeramani, Seena vengalii, Kiran Polavarapui, S. Nashi, A. Nalini, P. Ghosh
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引用次数: 20

Abstract

In this work, we consider the task of acoustic and articulatory feature based automatic classification of Amyotrophic Lateral Sclerosis (ALS) patients and healthy subjects using speech tasks. In particular, we compare the roles of different types of speech tasks, namely rehearsed speech, spontaneous speech and repeated words for this purpose. Simultaneous articulatory and speech data were recorded from 8 healthy controls and 8 ALS patients using AG501 for the classification experiments. In addition to typical acoustic and articulatory features, new articulatory features are proposed for classification. As classifiers, both Deep Neural Networks (DNN) and Support Vector Machines (SVM) are examined. Classification experiments reveal that the proposed articulatory features outperform other acoustic and articulatory features using both DNN and SVM classifier. However, SVM performs better than DNN classifier using the proposed feature. Among three different speech tasks considered, the rehearsed speech was found to provide the highest F-score of 1, followed by an F-score of 0.92 when both repeated words and spontaneous speech are used for classification.
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肌萎缩侧索硬化症患者与健康受试者语音自动分类任务的比较
在这项工作中,我们考虑使用语音任务对肌萎缩侧索硬化症(ALS)患者和健康受试者进行基于声学和发音特征的自动分类。我们特别比较了不同类型的言语任务的作用,即排练的言语、自发的言语和重复的话语。使用AG501记录8例健康对照和8例ALS患者的同时发音和言语数据,进行分类实验。除了典型的声学和发音特征外,还提出了新的发音特征进行分类。作为分类器,深度神经网络(DNN)和支持向量机(SVM)都进行了研究。分类实验表明,使用DNN和SVM分类器,所提出的发音特征优于其他声学和发音特征。然而,使用所提出的特征,SVM的性能优于DNN分类器。在考虑的三种不同的语音任务中,发现排练的语音提供了最高的f分,为1,其次是使用重复单词和自发语音进行分类的f分为0.92。
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