As the COVID-19 pandemic continues to devastate globally, the use of chest X-ray (CXR) imaging as a complimentary screening strategy to RT-PCR testing continues to grow given its routine clinical use for respiratory complaint. As part of the COVID-Net open source initiative, we introduce COVID-Net CXR-2, an enhanced deep convolutional neural network design for COVID-19 detection from CXR images built using a greater quantity and diversity of patients than the original COVID-Net. To facilitate this, we also introduce a new benchmark dataset composed of 19,203 CXR images from a multinational cohort of 16,656 patients from at least 51 countries, making it the largest, most diverse COVID-19 CXR dataset in open access form. The COVID-Net CXR-2 network achieves sensitivity and positive predictive value of 95.5%/97.0%, respectively, and was audited in a transparent and responsible manner. Explainability-driven performance validation was used during auditing to gain deeper insights in its decision-making behaviour and to ensure clinically relevant factors are leveraged for improving trust in its usage. Radiologist validation was also conducted, where select cases were reviewed and reported on by two board-certified radiologists with over 10 and 19 years of experience, respectively, and showed that the critical factors leveraged by COVID-Net CXR-2 are consistent with radiologist interpretations. While not a production-ready solution, we hope the open-source, open-access release of COVID-Net CXR-2 and the respective CXR benchmark dataset will encourage researchers, clinical scientists, and citizen scientists to accelerate advancements and innovations in the fight against the pandemic.
翻译:由于COVID-Net CXR-2,由于COVID-Net开放源倡议的一部分,我们引入了COVID-Net CXR-2,这是CXR图像探测COVID-19的更深革命性神经网络设计,CXR图像中COVID-19的检测量为95.5%/97.0 %,并以透明和负责的方式对CXR图像进行了审计。为了便利这项工作,我们还引入了一个新的基准数据集,其中包括由来自至少51个国家的16,6556名来自至少51个国家的16,656名患者组成的多国组群的19,203 CXR(CXR)图像作为RT-PCR测试的补充性筛选战略,继续增加使用。作为COVID-Net开放源倡议的一部分,我们引入了COVI-Net-Net CXR-2的常规测试。作为COVI-Net-Net CXRR-2网络的敏感度和积极预测值分别为95.5%/97.0%,并以透明和负责的公开方式对CX的检测进行了审计,在审计期间,采用了可解释性的业绩评估,以便更深入了解其决策行为,并确保与相关解释的CVI的19-VI的临床因素,在10年的争论中也进行更新中,并报告、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录、记录