论文标题
基于AI驱动的CT的定量,分期和短期结果预测Covid-19肺炎
AI-Driven CT-based quantification, staging and short-term outcome prediction of COVID-19 pneumonia
论文作者
论文摘要
胸部计算机断层扫描(CT)广泛用于治疗2019年冠状病毒病(COVID-19)肺炎,因为其可用性和速度。确认COVID-19的参考标准依赖于微生物测试,但这些测试可能在紧急情况下无法获得,并且与CT相反,它们的结果无法立即获得。除了早期诊断的作用外,CT还可以通过视觉评估COVID-19肺异常的程度,具有预后作用。这项研究的目的是解决短期结局的预测,尤其是对机械通气的需求。在这项以上为中心的研究中,我们提出了一种端到端的人工智能解决方案,用于通过结合肺部疾病的自动CT描述来实现专家的表现以及对生物标志物的预测鉴定,以自动量化和预后评估。鉴于重症监护床和呼吸机的短缺,变量与基于CT的生物标志物的AI驱动组合为最佳患者管理提供了观点。
Chest computed tomography (CT) is widely used for the management of Coronavirus disease 2019 (COVID-19) pneumonia because of its availability and rapidity. The standard of reference for confirming COVID-19 relies on microbiological tests but these tests might not be available in an emergency setting and their results are not immediately available, contrary to CT. In addition to its role for early diagnosis, CT has a prognostic role by allowing visually evaluating the extent of COVID-19 lung abnormalities. The objective of this study is to address prediction of short-term outcomes, especially need for mechanical ventilation. In this multi-centric study, we propose an end-to-end artificial intelligence solution for automatic quantification and prognosis assessment by combining automatic CT delineation of lung disease meeting performance of experts and data-driven identification of biomarkers for its prognosis. AI-driven combination of variables with CT-based biomarkers offers perspectives for optimal patient management given the shortage of intensive care beds and ventilators.