利用咳嗽声检测新冠病毒的机器学习框架

Panigrahi Srikantrh, C. Behera
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引用次数: 1

摘要

目前的COVID-19诊断需要患者直接互动,需要不同的时间才能获得结果,而且成本高昂。在某些贫穷国家,一般民众甚至无法获得医疗服务,导致医疗服务短缺。因此,一种温和、快速且易于获得的COVID-19诊断方法至关重要。已经采取了一些举措,利用智能手机收集的声音和咳嗽来构建机器学习算法,这些算法可以将COVID-19的声音与健康组织进行分类和区分。之前的大多数研究都使用呼吸或咳嗽之类的声音来训练他们的分析器,并获得了令人印象深刻的结果。为了开展这项重要的调查,我们使用了这个Coswara数据集,其中包含了COVID-19咳嗽、呼吸和说话状态的九种不同声音类型的录音。使用训练有素的各种音频模型,而不是仅训练咳嗽的特定模型,可以更准确地诊断COVID-19。这项工作探讨了使用机器学习技术通过监测音频以这种初始和非侵入性方式增强COVID-19识别的潜在前景。XGBoost优于现有的基准分类算法,对所有声音的准确率达到92%。其中,元音/e/的声音随机森林识别效果最好,准确率为98.36%,并且与其他元音相比,元音/e/也可以用于评估检测目的;COVID-19对音质的影响更为精确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning framework for Covid Detection Using Cough Sounds
The present COVID-19 diagnosis necessitates direct patient interaction, involves variable duration to get outcomes, and is costly. In certain poor nations, this is even unreachable to the populace at large, leading to a shortage of medical care. Therefore, a moderate, rapid, but also readily available method for the diagnosis of COVID-19 is essential. Several initiatives have been made to use smartphone-collected sounds and coughs to build machine learning algorithms that can categories and discriminate COVID-19 sounds with healthy tissue. The majority of prior studies used sounds like breathing or coughing to train their analyzers as well as get impressive outcomes. In order to carry out this significant investigation, we used this Coswara dataset, which contains recordings of nine distinct sound varieties of the COVID-19 state of cough, breathing, and speech. COVID-19 could be diagnosed more accurately using trained models on a variety of audio instead of a specific model trained on cough alone. This work examines the potential prospect of using machine learning techniques to enhance the identification of COVID-19 in such an initial and non-invasive manner through the monitoring of audio sounds. The XGBoost outperforms existing benchmark classification algorithms and achieves 92% accuracy with all sounds. Vowel/e/sound random forest with 98.36% was determined to be among the most effective, and the vowel/e/can also evaluated for the purpose of detecting compared to the other vowels; the impact of COVID-19 on sound quality is more precise.
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