Rapid and affordable methods of testing for COVID-19 infections are essential to reduce infection rates and prevent medical facilities from becoming overwhelmed. Current approaches of detecting COVID-19 require in-person testing with expensive kits that are not always easily accessible. This study demonstrates that crowdsourced cough audio samples acquired on smartphones from around the world can be used to develop a AI-based method that accurately predicts COVID-19 infection with an ROC-AUC of 77.1% (75.2%-78.3%). Furthermore, we show that our method is able to generalize to crowdsourced samples from Latin America and clinical samples from South Asia, without further training using the specific samples from those regions. As more crowdsourced data is collected, further development can be implemented using various respiratory audio samples to create a cough analysis-based machine learning (ML) solution for COVID-19 detection that can likely generalize globally to all demographic groups in both clinical and non-clinical settings.
翻译:对COVID-19感染的快速和负担得起的检测方法对于降低感染率和防止医疗设施不堪重负至关重要。目前的检测COVID-19的方法要求用并非总能轻易获得的昂贵的药包进行现场检测。这项研究表明,从世界各地智能手机上获取的由众包组成的咳嗽声样可以用来开发一种基于AI的方法,精确地预测COVID-19感染,而ROC-AUC的感染率为77.1%(75.2%-78.3%)。此外,我们表明,我们的方法能够将来自拉丁美洲的众包样本和来自南亚的临床样本加以推广,而无需利用这些区域的具体样本进行进一步的培训。随着收集到更多的来自众包的数据,可以使用各种呼吸道声样本进行进一步开发,以创建一种基于咳嗽分析的机器学习法,用于COVID-19检测,这种检测有可能在临床和非临床环境中向全球所有人口群体普及。