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Erschienen in: Journal of Digital Imaging 2/2020

25.11.2019 | Original Paper

Crowdsourcing pneumothorax annotations using machine learning annotations on the NIH chest X-ray dataset

verfasst von: Ross W. Filice, Anouk Stein, Carol C. Wu, Veronica A. Arteaga, Stephen Borstelmann, Ramya Gaddikeri, Maya Galperin-Aizenberg, Ritu R. Gill, Myrna C. Godoy, Stephen B. Hobbs, Jean Jeudy, Paras C. Lakhani, Archana Laroia, Sundeep M. Nayak, Maansi R. Parekh, Prasanth Prasanna, Palmi Shah, Dharshan Vummidi, Kavitha Yaddanapudi, George Shih

Erschienen in: Journal of Imaging Informatics in Medicine | Ausgabe 2/2020

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Abstract

Pneumothorax is a potentially life-threatening condition that requires prompt recognition and often urgent intervention. In the ICU setting, large numbers of chest radiographs are performed and must be interpreted on a daily basis which may delay diagnosis of this entity. Development of artificial intelligence (AI) techniques to detect pneumothorax could help expedite detection as well as localize and potentially quantify pneumothorax. Open image analysis competitions are useful in advancing state-of-the art AI algorithms but generally require large expert annotated datasets. We have annotated and adjudicated a large dataset of chest radiographs to be made public with the goal of sparking innovation in this space. Because of the cumbersome and time-consuming nature of image labeling, we explored the value of using AI models to generate annotations for review. Utilization of this machine learning annotation (MLA) technique appeared to expedite our annotation process with relatively high sensitivity at the expense of specificity. Further research is required to confirm and better characterize the value of MLAs. Our adjudicated dataset is now available for public consumption in the form of a challenge.
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Metadaten
Titel
Crowdsourcing pneumothorax annotations using machine learning annotations on the NIH chest X-ray dataset
verfasst von
Ross W. Filice
Anouk Stein
Carol C. Wu
Veronica A. Arteaga
Stephen Borstelmann
Ramya Gaddikeri
Maya Galperin-Aizenberg
Ritu R. Gill
Myrna C. Godoy
Stephen B. Hobbs
Jean Jeudy
Paras C. Lakhani
Archana Laroia
Sundeep M. Nayak
Maansi R. Parekh
Prasanth Prasanna
Palmi Shah
Dharshan Vummidi
Kavitha Yaddanapudi
George Shih
Publikationsdatum
25.11.2019
Verlag
Springer International Publishing
Erschienen in
Journal of Imaging Informatics in Medicine / Ausgabe 2/2020
Print ISSN: 2948-2925
Elektronische ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-019-00299-9

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