2022
DOI: 10.1371/journal.pone.0271931
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A novel abnormality annotation database for COVID-19 affected frontal lung X-rays

Abstract: Consistent clinical observations of characteristic findings of COVID-19 pneumonia on chest X-rays have attracted the research community to strive to provide a fast and reliable method for screening suspected patients. Several machine learning algorithms have been proposed to find the abnormalities in the lungs using chest X-rays specific to COVID-19 pneumonia and distinguish them from other etiologies of pneumonia. However, despite the enormous magnitude of the pandemic, there are very few instances of public … Show more

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Cited by 4 publications
(1 citation statement)
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“…Studies have compared and evaluated popular CNNs 17,18 for COVID-19 CXRs through accuracy metrics and input manipulation, some incorporating multiple datasets 4,19 and highlighting common pitfalls 20 . Pre-training CNNs with novel datasets 21 would have been also possible, however, we haven't explored this, but used ImageNet pre-trained weight at initialization.…”
Section: Automated Prediction Of Covid-19 Severity Upon Admission By ...mentioning
confidence: 99%
“…Studies have compared and evaluated popular CNNs 17,18 for COVID-19 CXRs through accuracy metrics and input manipulation, some incorporating multiple datasets 4,19 and highlighting common pitfalls 20 . Pre-training CNNs with novel datasets 21 would have been also possible, however, we haven't explored this, but used ImageNet pre-trained weight at initialization.…”
Section: Automated Prediction Of Covid-19 Severity Upon Admission By ...mentioning
confidence: 99%