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Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations

The use of artificial intelligence (AI) in image analysis is an intensively debated topic in the radiology community these days. AI computer vision algorithms typically rely on large-scale image databases, annotated by specialists. Developing and maintaining them is time-consuming, thus, the involve...

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Autores principales: Nagy, Eszter, Marterer, Robert, Hržić, Franko, Sorantin, Erich, Tschauner, Sebastian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9584407/
https://www.ncbi.nlm.nih.gov/pubmed/36264961
http://dx.doi.org/10.1371/journal.pone.0276503
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author Nagy, Eszter
Marterer, Robert
Hržić, Franko
Sorantin, Erich
Tschauner, Sebastian
author_facet Nagy, Eszter
Marterer, Robert
Hržić, Franko
Sorantin, Erich
Tschauner, Sebastian
author_sort Nagy, Eszter
collection PubMed
description The use of artificial intelligence (AI) in image analysis is an intensively debated topic in the radiology community these days. AI computer vision algorithms typically rely on large-scale image databases, annotated by specialists. Developing and maintaining them is time-consuming, thus, the involvement of non-experts into the workflow of annotation should be considered. We assessed the learning rate of inexperienced evaluators regarding correct labeling of pediatric wrist fractures on digital radiographs. Students with and without a medical background labeled wrist fractures with bounding boxes in 7,000 radiographs over ten days. Pediatric radiologists regularly discussed their mistakes. We found F1 scores—as a measure for detection rate—to increase substantially under specialist feedback (mean 0.61±0.19 at day 1 to 0.97±0.02 at day 10, p<0.001), but not the Intersection over Union as a parameter for labeling precision (mean 0.27±0.29 at day 1 to 0.53±0.25 at day 10, p<0.001). The times needed to correct the students decreased significantly (mean 22.7±6.3 seconds per image at day 1 to 8.9±1.2 seconds at day 10, p<0.001) and were substantially lower as annotated by the radiologists alone. In conclusion our data showed, that the involvement of undergraduated students into annotation of pediatric wrist radiographs enables a substantial time saving for specialists, therefore, it should be considered.
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spelling pubmed-95844072022-10-21 Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations Nagy, Eszter Marterer, Robert Hržić, Franko Sorantin, Erich Tschauner, Sebastian PLoS One Research Article The use of artificial intelligence (AI) in image analysis is an intensively debated topic in the radiology community these days. AI computer vision algorithms typically rely on large-scale image databases, annotated by specialists. Developing and maintaining them is time-consuming, thus, the involvement of non-experts into the workflow of annotation should be considered. We assessed the learning rate of inexperienced evaluators regarding correct labeling of pediatric wrist fractures on digital radiographs. Students with and without a medical background labeled wrist fractures with bounding boxes in 7,000 radiographs over ten days. Pediatric radiologists regularly discussed their mistakes. We found F1 scores—as a measure for detection rate—to increase substantially under specialist feedback (mean 0.61±0.19 at day 1 to 0.97±0.02 at day 10, p<0.001), but not the Intersection over Union as a parameter for labeling precision (mean 0.27±0.29 at day 1 to 0.53±0.25 at day 10, p<0.001). The times needed to correct the students decreased significantly (mean 22.7±6.3 seconds per image at day 1 to 8.9±1.2 seconds at day 10, p<0.001) and were substantially lower as annotated by the radiologists alone. In conclusion our data showed, that the involvement of undergraduated students into annotation of pediatric wrist radiographs enables a substantial time saving for specialists, therefore, it should be considered. Public Library of Science 2022-10-20 /pmc/articles/PMC9584407/ /pubmed/36264961 http://dx.doi.org/10.1371/journal.pone.0276503 Text en © 2022 Nagy et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Nagy, Eszter
Marterer, Robert
Hržić, Franko
Sorantin, Erich
Tschauner, Sebastian
Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title_full Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title_fullStr Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title_full_unstemmed Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title_short Learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
title_sort learning rate of students detecting and annotating pediatric wrist fractures in supervised artificial intelligence dataset preparations
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9584407/
https://www.ncbi.nlm.nih.gov/pubmed/36264961
http://dx.doi.org/10.1371/journal.pone.0276503
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