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Deploying deep learning models on unseen medical imaging using adversarial domain adaptation

The fundamental challenge in machine learning is ensuring that trained models generalize well to unseen data. We developed a general technique for ameliorating the effect of dataset shift using generative adversarial networks (GANs) on a dataset of 149,298 handwritten digits and dataset of 868,549 c...

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Autores principales: Valliani, Aly A., Gulamali, Faris F., Kwon, Young Joon, Martini, Michael L., Wang, Chiatse, Kondziolka, Douglas, Chen, Viola J., Wang, Weichung, Costa, Anthony B., Oermann, Eric K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9565422/
https://www.ncbi.nlm.nih.gov/pubmed/36240135
http://dx.doi.org/10.1371/journal.pone.0273262
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author Valliani, Aly A.
Gulamali, Faris F.
Kwon, Young Joon
Martini, Michael L.
Wang, Chiatse
Kondziolka, Douglas
Chen, Viola J.
Wang, Weichung
Costa, Anthony B.
Oermann, Eric K.
author_facet Valliani, Aly A.
Gulamali, Faris F.
Kwon, Young Joon
Martini, Michael L.
Wang, Chiatse
Kondziolka, Douglas
Chen, Viola J.
Wang, Weichung
Costa, Anthony B.
Oermann, Eric K.
author_sort Valliani, Aly A.
collection PubMed
description The fundamental challenge in machine learning is ensuring that trained models generalize well to unseen data. We developed a general technique for ameliorating the effect of dataset shift using generative adversarial networks (GANs) on a dataset of 149,298 handwritten digits and dataset of 868,549 chest radiographs obtained from four academic medical centers. Efficacy was assessed by comparing area under the curve (AUC) pre- and post-adaptation. On the digit recognition task, the baseline CNN achieved an average internal test AUC of 99.87% (95% CI, 99.87-99.87%), which decreased to an average external test AUC of 91.85% (95% CI, 91.82-91.88%), with an average salvage of 35% from baseline upon adaptation. On the lung pathology classification task, the baseline CNN achieved an average internal test AUC of 78.07% (95% CI, 77.97-78.17%) and an average external test AUC of 71.43% (95% CI, 71.32-71.60%), with a salvage of 25% from baseline upon adaptation. Adversarial domain adaptation leads to improved model performance on radiographic data derived from multiple out-of-sample healthcare populations. This work can be applied to other medical imaging domains to help shape the deployment toolkit of machine learning in medicine.
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spelling pubmed-95654222022-10-15 Deploying deep learning models on unseen medical imaging using adversarial domain adaptation Valliani, Aly A. Gulamali, Faris F. Kwon, Young Joon Martini, Michael L. Wang, Chiatse Kondziolka, Douglas Chen, Viola J. Wang, Weichung Costa, Anthony B. Oermann, Eric K. PLoS One Research Article The fundamental challenge in machine learning is ensuring that trained models generalize well to unseen data. We developed a general technique for ameliorating the effect of dataset shift using generative adversarial networks (GANs) on a dataset of 149,298 handwritten digits and dataset of 868,549 chest radiographs obtained from four academic medical centers. Efficacy was assessed by comparing area under the curve (AUC) pre- and post-adaptation. On the digit recognition task, the baseline CNN achieved an average internal test AUC of 99.87% (95% CI, 99.87-99.87%), which decreased to an average external test AUC of 91.85% (95% CI, 91.82-91.88%), with an average salvage of 35% from baseline upon adaptation. On the lung pathology classification task, the baseline CNN achieved an average internal test AUC of 78.07% (95% CI, 77.97-78.17%) and an average external test AUC of 71.43% (95% CI, 71.32-71.60%), with a salvage of 25% from baseline upon adaptation. Adversarial domain adaptation leads to improved model performance on radiographic data derived from multiple out-of-sample healthcare populations. This work can be applied to other medical imaging domains to help shape the deployment toolkit of machine learning in medicine. Public Library of Science 2022-10-14 /pmc/articles/PMC9565422/ /pubmed/36240135 http://dx.doi.org/10.1371/journal.pone.0273262 Text en © 2022 Valliani 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
Valliani, Aly A.
Gulamali, Faris F.
Kwon, Young Joon
Martini, Michael L.
Wang, Chiatse
Kondziolka, Douglas
Chen, Viola J.
Wang, Weichung
Costa, Anthony B.
Oermann, Eric K.
Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title_full Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title_fullStr Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title_full_unstemmed Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title_short Deploying deep learning models on unseen medical imaging using adversarial domain adaptation
title_sort deploying deep learning models on unseen medical imaging using adversarial domain adaptation
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9565422/
https://www.ncbi.nlm.nih.gov/pubmed/36240135
http://dx.doi.org/10.1371/journal.pone.0273262
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