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PediCXR: An open, large-scale chest radiograph dataset for interpretation of common thoracic diseases in children

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arxiv 2203.10612 v3 pith:6I4WMTNT submitted 2022-03-20 eess.IV cs.CV

PediCXR: An open, large-scale chest radiograph dataset for interpretation of common thoracic diseases in children

classification eess.IV cs.CV
keywords datasetpediatricdiseasespedicxrdevelopmentfindingsinterpretationabnormal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The development of diagnostic models for detecting and diagnosing pediatric diseases in CXR scans is undertaken due to the lack of high-quality physician-annotated datasets. To overcome this challenge, we introduce and release PediCXR, a new pediatric CXR dataset of 9,125 studies retrospectively collected from a major pediatric hospital in Vietnam between 2020 and 2021. Each scan was manually annotated by a pediatric radiologist with more than ten years of experience. The dataset was labeled for the presence of 36 critical findings and 15 diseases. In particular, each abnormal finding was identified via a rectangle bounding box on the image. To the best of our knowledge, this is the first and largest pediatric CXR dataset containing lesion-level annotations and image-level labels for the detection of multiple findings and diseases. For algorithm development, the dataset was divided into a training set of 7,728 and a test set of 1,397. To encourage new advances in pediatric CXR interpretation using data-driven approaches, we provide a detailed description of the PediCXR data sample and make the dataset publicly available on https://physionet.org/content/pedicxr/1.0.0/

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