Digital Technologies Research Centre, National Research Council Canada, Montreal, QC H3T 2B2, Canada.
Department of Systems Design Engineering, University of Waterloo, Waterloo, ON N2L 3G1, Canada.
Front Biosci (Landmark Ed). 2022 Jun 24;27(7):198. doi: 10.31083/j.fbl2707198.
The Coronavirus Disease 2019 (COVID-19) pandemic continues to have a devastating effect on the health and well-being of the global population. Apart from the global health crises, the pandemic has also caused significant economic and financial difficulties and socio-physiological implications. Effective screening, triage, treatment planning, and prognostication of outcome play a key role in controlling the pandemic. Recent studies have highlighted the role of point-of-care ultrasound imaging for COVID-19 screening and prognosis, particularly given that it is non-invasive, globally available, and easy-to-sanitize. COVIDx-US Dataset: Motivated by these attributes and the promise of artificial intelligence tools to aid clinicians, we introduce COVIDx-US, an open-access benchmark dataset of COVID-19 related ultrasound imaging data. The COVIDx-US dataset was curated from multiple data sources and its current version, i.e., v1.5., consists of 173 ultrasound videos and 21,570 processed images across 147 patients with COVID-19 infection, non-COVID-19 infection, other lung diseases/conditions, as well as normal control cases.
The COVIDx-US dataset was released as part of a large open-source initiative, the COVID-Net initiative, and will be continuously growing, as more data sources become available. To the best of the authors' knowledge, COVIDx-US is the first and largest open-access fully-curated benchmark lung ultrasound imaging dataset that contains a standardized and unified lung ultrasound score per video file, providing better interpretation while enabling other research avenues such as severity assessment. In addition, the dataset is reproducible, easy-to-use, and easy-to-scale thanks to the well-documented modular design.
2019 年冠状病毒病(COVID-19)大流行继续对全球人口的健康和福祉造成破坏性影响。除了全球卫生危机外,大流行还造成了重大的经济和财政困难以及社会心理影响。有效的筛查、分诊、治疗计划和预后预测对于控制大流行起着关键作用。最近的研究强调了即时护理超声成像在 COVID-19 筛查和预后中的作用,特别是考虑到它是非侵入性的、全球可用的且易于消毒。COVIDx-US 数据集:鉴于这些属性以及人工智能工具为临床医生提供帮助的前景,我们引入了 COVIDx-US,这是一个 COVID-19 相关超声成像数据的开放获取基准数据集。COVIDx-US 数据集是从多个数据源整理而来的,其当前版本(即 v1.5)包含 173 个超声视频和 147 名 COVID-19 感染、非 COVID-19 感染、其他肺部疾病/病症以及正常对照病例的 21,570 个处理图像。
COVIDx-US 数据集是作为大型开源倡议 COVID-Net 倡议的一部分发布的,随着更多数据源的出现,它将不断增长。据作者所知,COVIDx-US 是第一个也是最大的开放获取的完全经过整理的基准肺部超声成像数据集,其中包含每个视频文件的标准化和统一的肺部超声评分,在实现其他研究途径(如严重程度评估)的同时提供更好的解释。此外,由于具有良好记录的模块化设计,该数据集具有可重现性、易用性和易于扩展的特点。