Obesity and Gastro-Esophageal Reflux voice disorders: a Machine Learning approach

F. Amato, Maria Fasani, Glauco Raffaelli, Valerio Cesarini, Gabriella Olmo, N. Lorenzo, G. Costantini, G. Saggio
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Abstract

Automatic assessment of speech disorders is a cutting-edge topic in vocal analysis. Recent studies indicated possible connections between eating disorders and voice alterations. In this work, we assessed the influence of obesity and Gastro- Esophageal Reflux Disease (GERD) on voice, being the former a risk factor for the latter. Moreover, we investigated the mutual influence of the diseases working with a consistent set of features. To these aims, we used vocal tests from 92 subjects, with vocal tests consisting of vowel phonation and sentence repetition, and subjects including healthy controls, obese patients, patients with GERD, and obese patients with GERD. Machine Learning models, consisting of Naive Bayes and Support Vector Machine, were successfully employed on extracted features in binary classifications, resulting in 0.86 and 0.82 of accuracies on validation set in scoring the presence of GERD and obesity, respectively. The absence of performance deterioration when moving to the test set denoted a lack of overfitting. As for the tasks and the features employed, the sentence repetition proved to be more effective than the vowel phonation, while Mel Frequency Cepstral Coefficients, Perceptual Linear Prediction Coefficients, Bark Band Energy Coefficients, and noise measures appear to be among the most significant features for the application at hand.
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肥胖和胃食管反流性语音障碍:机器学习方法
语音障碍的自动评估是语音分析领域的一个前沿课题。最近的研究表明,饮食失调和声音变化之间可能存在联系。在这项工作中,我们评估了肥胖和胃食管反流病(GERD)对声音的影响,前者是后者的危险因素。此外,我们还研究了具有一致特征的疾病的相互影响。为了达到这些目的,我们使用了92名受试者的声音测试,声音测试包括元音发音和句子重复,受试者包括健康对照组、肥胖患者、胃食管反流患者和肥胖的胃食管反流患者。采用朴素贝叶斯(Naive Bayes)和支持向量机(Support Vector Machine)组成的机器学习模型,成功地对提取的特征进行二元分类,验证集对GERD和肥胖的评分准确率分别为0.86和0.82。当移动到测试集时,没有性能下降表示缺乏过拟合。就所使用的任务和特征而言,句子重复被证明比元音发声更有效,而Mel频率倒谱系数、感知线性预测系数、吠带能量系数和噪声测量似乎是当前应用中最重要的特征。
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