The 2021 SIIM-FISABIO-RSNA machine learning COVID-19 challenge: Annotation and standard exam classification of COVID-19 chest radiographs

P Lakhani, J Mongan, C Singhal, Q Zhou… - Journal of Digital …, 2023 - Springer
P Lakhani, J Mongan, C Singhal, Q Zhou, KP Andriole, WF Auffermann, PM Prasanna…
Journal of Digital Imaging, 2023Springer
We describe the curation, annotation methodology, and characteristics of the dataset used in
an artificial intelligence challenge for detection and localization of COVID-19 on chest
radiographs. The chest radiographs were annotated by an international group of radiologists
into four mutually exclusive categories, including “typical,”“indeterminate,” and “atypical
appearance” for COVID-19, or “negative for pneumonia,” adapted from previously published
guidelines, and bounding boxes were placed on airspace opacities. This dataset and …
Abstract
We describe the curation, annotation methodology, and characteristics of the dataset used in an artificial intelligence challenge for detection and localization of COVID-19 on chest radiographs. The chest radiographs were annotated by an international group of radiologists into four mutually exclusive categories, including “typical,” “indeterminate,” and “atypical appearance” for COVID-19, or “negative for pneumonia,” adapted from previously published guidelines, and bounding boxes were placed on airspace opacities. This dataset and respective annotations are available to researchers for academic and noncommercial use.
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