OpenPOCUS - Lung Ultrasound Image Database

folder OpenPOCUS (2 files)
fileDatabase for Github.xlsx 23.25kB
fileLung Database.zip 5.26GB
Type: Dataset
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Metadata:
@article{,
title= {OpenPOCUS - Lung Ultrasound Image Database},
journal= {},
author= {},
year= {},
url= {https://www.medrxiv.org/content/10.1101/2025.05.09.25327337v1},
abstract= {https://i.imgur.com/s0eFv64.png

Background Lung ultrasound (LUS) offers advantages over traditional imaging for diagnosing pulmonary conditions, with superior accuracy compared to chest X-ray and similar performance to CT at lower cost. Despite these benefits, widespread adoption is limited by operator dependency, moderate interrater reliability, and training requirements. Deep learning (DL) could potentially address these challenges, but development of effective algorithms is hindered by the scarcity of comprehensive image repositories with proper metadata.

Methods We created an open-source dataset of LUS images derived a multi-center study involving N=226 adult patients presenting with respiratory symptoms to emergency departments between March 2020 and April 2022. Images were acquired using a standardized scanning protocol (12-zone or modified 8-zone) with various point-of-care ultrasound devices. Three blinded researchers independently analyzed each image following consensus guidelines, with disagreements adjudicated to provide definitive interpretations. Videos were pre-processed to remove identifiers, and frames were extracted and resized to 128×128 pixels.

Results The dataset contains 1,874 video clips comprising 303,977 frames. Half of the participants (50%) had COVID-19 pneumonia. Among all clips, 66% contained no abnormalities, 18% contained B-lines, 4.5% contained consolidations, 6.4% contained both B-lines and consolidations, and 5.2% had indeterminate findings. Pathological findings varied significantly by lung zone, with anterior zones more frequently normal and less likely to show consolidations compared to lateral and posterior zones.

Discussion This dataset represents one of the largest annotated LUS repositories to date, including both COVID-19 and non-COVID-19 patients. The comprehensive metadata and expert interpretations enhance its utility for DL applications. Despite limitations including potential device-specific characteristics and COVID-19 predominance, this repository provides a valuable resource for developing AI tools to improve LUS acquisition and interpretation.



https://www.medrxiv.org/content/10.1101/2025.05.09.25327337v1

https://github.com/kumarandre/OpenPOCUS
https://stanfordmedicine.app.box.com/s/ajv4y3fv5i6mhs345mwhbvkg80cuvzcc},
keywords= {},
terms= {},
license= {},
superseded= {}
}

Citation:
OpenPOCUS - Lung Ultrasound Image Database. (2026). [Data set]. Academic Torrents. https://academictorrents.com/details/63ad0470f43e022cc73407be9c760449d947cb97
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