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Quality assurance for automatically generated contours with additional deep learning

OBJECTIVE: Deploying an automatic segmentation model in practice should require rigorous quality assurance (QA) and continuous monitoring of the model’s use and performance, particularly in high-stakes scenarios such as healthcare. Currently, however, tools to assist with QA for such models are not...

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Autores principales: Isaksson, Lars Johannes, Summers, Paul, Bhalerao, Abhir, Gandini, Sara, Raimondi, Sara, Pepa, Matteo, Zaffaroni, Mattia, Corrao, Giulia, Mazzola, Giovanni Carlo, Rotondi, Marco, Lo Presti, Giuliana, Haron, Zaharudin, Alessi, Sara, Pricolo, Paola, Mistretta, Francesco Alessandro, Luzzago, Stefano, Cattani, Federica, Musi, Gennaro, De Cobelli, Ottavio, Cremonesi, Marta, Orecchia, Roberto, Marvaso, Giulia, Petralia, Giuseppe, Jereczek-Fossa, Barbara Alicja
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Vienna 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9385913/
https://www.ncbi.nlm.nih.gov/pubmed/35976491
http://dx.doi.org/10.1186/s13244-022-01276-7
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author Isaksson, Lars Johannes
Summers, Paul
Bhalerao, Abhir
Gandini, Sara
Raimondi, Sara
Pepa, Matteo
Zaffaroni, Mattia
Corrao, Giulia
Mazzola, Giovanni Carlo
Rotondi, Marco
Lo Presti, Giuliana
Haron, Zaharudin
Alessi, Sara
Pricolo, Paola
Mistretta, Francesco Alessandro
Luzzago, Stefano
Cattani, Federica
Musi, Gennaro
De Cobelli, Ottavio
Cremonesi, Marta
Orecchia, Roberto
Marvaso, Giulia
Petralia, Giuseppe
Jereczek-Fossa, Barbara Alicja
author_facet Isaksson, Lars Johannes
Summers, Paul
Bhalerao, Abhir
Gandini, Sara
Raimondi, Sara
Pepa, Matteo
Zaffaroni, Mattia
Corrao, Giulia
Mazzola, Giovanni Carlo
Rotondi, Marco
Lo Presti, Giuliana
Haron, Zaharudin
Alessi, Sara
Pricolo, Paola
Mistretta, Francesco Alessandro
Luzzago, Stefano
Cattani, Federica
Musi, Gennaro
De Cobelli, Ottavio
Cremonesi, Marta
Orecchia, Roberto
Marvaso, Giulia
Petralia, Giuseppe
Jereczek-Fossa, Barbara Alicja
author_sort Isaksson, Lars Johannes
collection PubMed
description OBJECTIVE: Deploying an automatic segmentation model in practice should require rigorous quality assurance (QA) and continuous monitoring of the model’s use and performance, particularly in high-stakes scenarios such as healthcare. Currently, however, tools to assist with QA for such models are not available to AI researchers. In this work, we build a deep learning model that estimates the quality of automatically generated contours. METHODS: The model was trained to predict the segmentation quality by outputting an estimate of the Dice similarity coefficient given an image contour pair as input. Our dataset contained 60 axial T2-weighted MRI images of prostates with ground truth segmentations along with 80 automatically generated segmentation masks. The model we used was a 3D version of the EfficientDet architecture with a custom regression head. For validation, we used a fivefold cross-validation. To counteract the limitation of the small dataset, we used an extensive data augmentation scheme capable of producing virtually infinite training samples from a single ground truth label mask. In addition, we compared the results against a baseline model that only uses clinical variables for its predictions. RESULTS: Our model achieved a mean absolute error of 0.020 ± 0.026 (2.2% mean percentage error) in estimating the Dice score, with a rank correlation of 0.42. Furthermore, the model managed to correctly identify incorrect segmentations (defined in terms of acceptable/unacceptable) 99.6% of the time. CONCLUSION: We believe that the trained model can be used alongside automatic segmentation tools to ensure quality and thus allow intervention to prevent undesired segmentation behavior.
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spelling pubmed-93859132022-08-19 Quality assurance for automatically generated contours with additional deep learning Isaksson, Lars Johannes Summers, Paul Bhalerao, Abhir Gandini, Sara Raimondi, Sara Pepa, Matteo Zaffaroni, Mattia Corrao, Giulia Mazzola, Giovanni Carlo Rotondi, Marco Lo Presti, Giuliana Haron, Zaharudin Alessi, Sara Pricolo, Paola Mistretta, Francesco Alessandro Luzzago, Stefano Cattani, Federica Musi, Gennaro De Cobelli, Ottavio Cremonesi, Marta Orecchia, Roberto Marvaso, Giulia Petralia, Giuseppe Jereczek-Fossa, Barbara Alicja Insights Imaging Original Article OBJECTIVE: Deploying an automatic segmentation model in practice should require rigorous quality assurance (QA) and continuous monitoring of the model’s use and performance, particularly in high-stakes scenarios such as healthcare. Currently, however, tools to assist with QA for such models are not available to AI researchers. In this work, we build a deep learning model that estimates the quality of automatically generated contours. METHODS: The model was trained to predict the segmentation quality by outputting an estimate of the Dice similarity coefficient given an image contour pair as input. Our dataset contained 60 axial T2-weighted MRI images of prostates with ground truth segmentations along with 80 automatically generated segmentation masks. The model we used was a 3D version of the EfficientDet architecture with a custom regression head. For validation, we used a fivefold cross-validation. To counteract the limitation of the small dataset, we used an extensive data augmentation scheme capable of producing virtually infinite training samples from a single ground truth label mask. In addition, we compared the results against a baseline model that only uses clinical variables for its predictions. RESULTS: Our model achieved a mean absolute error of 0.020 ± 0.026 (2.2% mean percentage error) in estimating the Dice score, with a rank correlation of 0.42. Furthermore, the model managed to correctly identify incorrect segmentations (defined in terms of acceptable/unacceptable) 99.6% of the time. CONCLUSION: We believe that the trained model can be used alongside automatic segmentation tools to ensure quality and thus allow intervention to prevent undesired segmentation behavior. Springer Vienna 2022-08-17 /pmc/articles/PMC9385913/ /pubmed/35976491 http://dx.doi.org/10.1186/s13244-022-01276-7 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Article
Isaksson, Lars Johannes
Summers, Paul
Bhalerao, Abhir
Gandini, Sara
Raimondi, Sara
Pepa, Matteo
Zaffaroni, Mattia
Corrao, Giulia
Mazzola, Giovanni Carlo
Rotondi, Marco
Lo Presti, Giuliana
Haron, Zaharudin
Alessi, Sara
Pricolo, Paola
Mistretta, Francesco Alessandro
Luzzago, Stefano
Cattani, Federica
Musi, Gennaro
De Cobelli, Ottavio
Cremonesi, Marta
Orecchia, Roberto
Marvaso, Giulia
Petralia, Giuseppe
Jereczek-Fossa, Barbara Alicja
Quality assurance for automatically generated contours with additional deep learning
title Quality assurance for automatically generated contours with additional deep learning
title_full Quality assurance for automatically generated contours with additional deep learning
title_fullStr Quality assurance for automatically generated contours with additional deep learning
title_full_unstemmed Quality assurance for automatically generated contours with additional deep learning
title_short Quality assurance for automatically generated contours with additional deep learning
title_sort quality assurance for automatically generated contours with additional deep learning
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9385913/
https://www.ncbi.nlm.nih.gov/pubmed/35976491
http://dx.doi.org/10.1186/s13244-022-01276-7
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