As the COVID-19 pandemic continues to devastate globally, one promising field of research is machine learning-driven computer vision to streamline various parts of the COVID-19 clinical workflow. These machine learning methods are typically stand-alone models designed without consideration for the integration necessary for real-world application workflows. In this study, we take a machine learning and systems (MLSys) perspective to design a system for COVID-19 patient screening with the clinical workflow in mind. The COVID-Net system is comprised of the continuously evolving COVIDx dataset, COVID-Net deep neural network for COVID-19 patient detection, and COVID-Net S deep neural networks for disease severity scoring for COVID-19 positive patient cases. The deep neural networks within the COVID-Net system possess state-of-the-art performance, and are designed to be integrated within a user interface (UI) for clinical decision support with automatic report generation to assist clinicians in their treatment decisions.
翻译:由于COVID-19大流行继续在全球蔓延,一个大有希望的研究领域是机器学习驱动的计算机愿景,以精简COVID-19临床工作流程的各个部分,这些机器学习方法通常是独立模式,设计时没有考虑对现实世界应用工作流程所必要的整合;在这项研究中,我们从机器学习和系统(MLSys)的角度设计一个CVID-19病人筛查系统,同时考虑到临床工作流程;COVID-Net系统包括不断发展的COVIDx数据集、COVID-网络用于COVID-19病人检测的深神经网络和COVID-网络疾病严重度评分的深度神经网络,COVID-19积极病人病例的深度神经网络,COVID-Net内部的深神经网络具有最新性能,并设计成一个用户界面(UI),用于临床决策支持和自动报告生成,以协助临床医生作出治疗决定。