Artificial Intelligence-based Speech Signal for COVID-19 Diagnostics

Aseel Alfaidi, Abdullah Alshahrani, Maha Aljohani
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Abstract

The speech signal has numerous features that represent the characteristics of a specific language and recognize emotions. It also contains information that can be used to identify the mental, psychological, and physical states of the speaker. Recently, the acoustic analysis of speech signals offers a practical, automated, and scalable method for medical diagnosis and monitoring symptoms of many diseases. In this paper, we explore the deep acoustic features from confirmed positive and negative cases of COVID-19 and compare the performance of the acoustic features and COVID-19 symptoms in terms of their ability to diagnose COVID-19. The proposed methodology consists of the pre-trained Visual Geometry Group (VGG-16) model based on Mel spectrogram images to extract deep audio features. In addition to the K-means algorithm that determines effective features, followed by a Genetic Algorithm-Support Vector Machine (GA-SVM) classifier to classify cases. The experimental findings indicate the proposed methodology’s capability to classify COVID-19 and NOT COVID-19 from acoustic features compared to COVID-19 symptoms, achieving an accuracy of 97%. The experimental results show that the proposed method remarkably improves the accuracy of COVID-19 detection over the handcrafted features used in previous studies.
基于人工智能的语音信号用于COVID-19诊断
语音信号具有许多特征,这些特征代表了特定语言的特征,并能识别情感。它还包含可用于识别说话人的精神、心理和身体状态的信息。最近,语音信号的声学分析为许多疾病的医学诊断和监测症状提供了一种实用、自动化和可扩展的方法。本文对新冠肺炎确诊阳性病例和阴性病例的深部声学特征进行了研究,并比较了声学特征与新冠肺炎症状的诊断能力。该方法包括基于Mel谱图图像的预训练视觉几何组(VGG-16)模型来提取深度音频特征。除了K-means算法确定有效特征外,还使用遗传算法-支持向量机(GA-SVM)分类器对案例进行分类。实验结果表明,与COVID-19症状相比,所提出的方法能够从声学特征中分类COVID-19和非COVID-19,准确率达到97%。实验结果表明,与以往研究中使用的手工特征相比,该方法显著提高了COVID-19检测的准确性。
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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