POLCOVID: a multicenter multiclass chest X-ray database (Poland, 2020–2021)
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Published:2023-06-02
Issue:1
Volume:10
Page:
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ISSN:2052-4463
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Container-title:Scientific Data
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language:en
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Short-container-title:Sci Data
Author:
Suwalska Aleksandra, Tobiasz JoannaORCID, Prazuch Wojciech, Socha Marek, Foszner Pawel, Piotrowski Damian, Gruszczynska Katarzyna, Sliwinska Magdalena, Walecki Jerzy, Popiela Tadeusz, Przybylski Grzegorz, Nowak Mateusz, Fiedor Piotr, Pawlowska Malgorzata, Flisiak Robert, Simon Krzysztof, Zapolska Gabriela, Gizycka Barbara, Szurowska Edyta, Oronowicz-Jaskowiak Agnieszka, Golebiewski Bogumil, Rataj Mateusz, Chmielarz Przemyslaw, Tur Adrianna, Drabik Grzegorz, Kozub Justyna, Kozanecka Anna, Hildebrandt Sebastian, Krutul-Walenciej Katarzyna, Jan Baron , Jaroszewicz Jerzy, Wasilewski Piotr, Mazur Samuel, Klaude Krzysztof, Rataj Katarzyna, Golebiewski Bogumil, Rabiko Piotr, Rajewski Pawel, Blewaska Piotr, Sznajder Katarzyna, Plesniak Robert, Marczyk Michal, Cieszanowski Andrzej, Polanska JoannaORCID,
Abstract
AbstractThe outbreak of the SARS-CoV-2 pandemic has put healthcare systems worldwide to their limits, resulting in increased waiting time for diagnosis and required medical assistance. With chest radiographs (CXR) being one of the most common COVID-19 diagnosis methods, many artificial intelligence tools for image-based COVID-19 detection have been developed, often trained on a small number of images from COVID-19-positive patients. Thus, the need for high-quality and well-annotated CXR image databases increased. This paper introduces POLCOVID dataset, containing chest X-ray (CXR) images of patients with COVID-19 or other-type pneumonia, and healthy individuals gathered from 15 Polish hospitals. The original radiographs are accompanied by the preprocessed images limited to the lung area and the corresponding lung masks obtained with the segmentation model. Moreover, the manually created lung masks are provided for a part of POLCOVID dataset and the other four publicly available CXR image collections. POLCOVID dataset can help in pneumonia or COVID-19 diagnosis, while the set of matched images and lung masks may serve for the development of lung segmentation solutions.
Funder
Narodowe Centrum Nauki Politechnika lska Ministry of Science and Higher Education | Narodowe Centrum Badań i Rozwoju EC | Directorate-General for Employment, Social Affairs and Inclusion | European Social Fund
Publisher
Springer Science and Business Media LLC
Subject
Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability
Reference22 articles.
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