The development of fast and accurate screening tools, which could facilitate testing and prevent more costly clinical tests, is key to the current pandemic of COVID-19. In this context, some initial work shows promise in detecting diagnostic signals of COVID-19 from audio sounds. In this paper, we propose a voice-based framework to automatically detect individuals who have tested positive for COVID-19. We evaluate the performance of the proposed framework on a subset of data crowdsourced from our app, containing 828 samples from 343 participants. By combining voice signals and reported symptoms, an AUC of $0.79$ has been attained, with a sensitivity of $0.68$ and a specificity of $0.82$. We hope that this study opens the door to rapid, low-cost, and convenient pre-screening tools to automatically detect the disease.
翻译:开发快速准确的筛选工具,有助于检测和防止费用更高的临床检测,是当前COVID-19流行病的关键。在这方面,一些初步工作显示,从声音中探测COVID-19诊断信号很有希望。在本文件中,我们提议建立一个声音框架,自动检测那些检测出COVID-19阳性的人。我们评估了从我们的应用软件中收集的一组数据的拟议框架的绩效,其中含有343名参与者的828个样本。通过将语音信号与报告的症状结合起来,已经实现了0.79亿美元的AUC, 敏感度为0.68美元,特殊性为0.82美元。我们希望这项研究为快速、低成本和方便的预检工具打开大门,以便自动检测疾病。