Classification of muscle tension dysphonia (MTD) female speech and normal speech using cepstrum variables and random forest algorithm*

Joowon Yun, Hee-Jeong Shim, Cheol-jae Seong
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引用次数: 1

Abstract

This study investigated the acoustic characteristics of sustained vowel /a/ and sentence utterance produced by patients with muscle tension dysphonia (MTD) using cepstrum-based acoustic variables. 36 women diagnosed with MTD and the same number of women with normal voice participated in the study and the data were recorded and measured by ADSV ™ . The results demonstrated that cepstral peak prominence (CPP) and CPP_F0 among all of the variables were statistically significantly lower than those of control group. When it comes to the GRBAS scale, overall severity (G) was most prominent, and roughness (R), breathiness (B), and strain (S) indices followed in order in the voice quality of MTD patients. As these characteristics increased, a statistically significant negative correlation was observed in CPP. We tried to classify MTD and control group using CPP and CPP_F0 variables. As a result of statistic modeling with a Random Forest machine learning algorithm, much higher classification accuracy (100% in training data and 83.3% in test data) was found in the sentence reading task, with CPP being proved to be playing a more crucial role in both vowel and sentence reading tasks.
肌张力性语音障碍(MTD)女性语音和正常语音的倒谱变量和随机森林算法分类*
本研究利用基于倒谱的声学变量研究了肌张力性语音障碍(MTD)患者发出的持续元音/a/和句子的声学特征。36名诊断为MTD的女性和相同数量的正常声音的女性参加了研究,数据由ADSV™记录和测量。结果表明,各变量中倒谱峰突出值(CPP)和CPP_F0均显著低于对照组。在GRBAS量表中,MTD患者的语音质量总体严重程度(G)最为突出,粗糙度(R)、呼吸度(B)、应变(S)指标次之。随着这些特征的增加,在CPP中观察到统计学上显著的负相关。我们尝试用CPP和CPP_F0变量对MTD和对照组进行分类。通过随机森林机器学习算法的统计建模,在句子阅读任务中发现了更高的分类准确率(训练数据为100%,测试数据为83.3%),证明了CPP在元音和句子阅读任务中都起着更重要的作用。
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