Imran Ali, Posokhova Iryna, Qureshi Haneya N, Masood Usama, Riaz Muhammad Sajid, Ali Kamran, John Charles N, Hussain Md Iftikhar, Nabeel Muhammad
AI4Networks Research Center, Dept. of Electrical & Computer Engineering, University of Oklahoma, USA.
AI4Lyf LLC, USA.
Inform Med Unlocked. 2020;20:100378. doi: 10.1016/j.imu.2020.100378. Epub 2020 Jun 26.
The inability to test at scale has become humanity's Achille's heel in the ongoing war against the COVID-19 pandemic. A scalable screening tool would be a game changer. Building on the prior work on cough-based diagnosis of respiratory diseases, we propose, develop and test an Artificial Intelligence (AI)-powered screening solution for COVID-19 infection that is deployable via a smartphone app. The app, named AI4COVID-19 records and sends three 3-s cough sounds to an AI engine running in the cloud, and returns a result within 2 min.
Cough is a symptom of over thirty non-COVID-19 related medical conditions. This makes the diagnosis of a COVID-19 infection by cough alone an extremely challenging multidisciplinary problem. We address this problem by investigating the distinctness of pathomorphological alterations in the respiratory system induced by COVID-19 infection when compared to other respiratory infections. To overcome the COVID-19 cough training data shortage we exploit transfer learning. To reduce the misdiagnosis risk stemming from the complex dimensionality of the problem, we leverage a multi-pronged mediator centered risk-averse AI architecture.
Results show AI4COVID-19 can distinguish among COVID-19 coughs and several types of non-COVID-19 coughs. The accuracy is promising enough to encourage a large-scale collection of labeled cough data to gauge the generalization capability of AI4COVID-19. AI4COVID-19 is not a clinical grade testing tool. Instead, it offers a screening tool deployable anytime, anywhere, by anyone. It can also be a clinical decision assistance tool used to channel clinical-testing and treatment to those who need it the most, thereby saving more lives.
在抗击新冠疫情的持久战中,无法进行大规模检测已成为人类的致命弱点。一种可扩展的筛查工具将会带来重大改变。基于此前对基于咳嗽诊断呼吸系统疾病的研究,我们提出、开发并测试了一种由人工智能驱动的新冠病毒感染筛查解决方案,该方案可通过智能手机应用程序部署。这款名为AI4COVID-19的应用程序会记录三段3秒的咳嗽声音并发送至云端运行的人工智能引擎,然后在2分钟内返回结果。
咳嗽是三十多种与新冠无关的病症的症状。这使得仅通过咳嗽来诊断新冠感染成为一个极具挑战性的多学科问题。我们通过研究新冠感染与其他呼吸道感染相比在呼吸系统中引起的病理形态学改变的差异来解决这个问题。为克服新冠咳嗽训练数据短缺的问题,我们采用迁移学习。为降低因问题维度复杂而产生的误诊风险,我们利用一种多方面的以调解人为中心的风险规避型人工智能架构。
结果显示,AI4COVID-19能够区分新冠咳嗽和几种非新冠咳嗽。其准确率足以鼓励大规模收集标记咳嗽数据,以评估AI4COVID-19的泛化能力。AI4COVID-19不是临床级检测工具。相反,它提供了一种任何人都可在任何时间、任何地点部署的筛查工具。它还可以成为一种临床决策辅助工具,用于将临床检测和治疗引导至最需要的人,从而挽救更多生命。