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Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks

With the rapid growth and increasing use of brain MRI, there is an interest in automated image classification to aid human interpretation and improve workflow. We aimed to train a deep convolutional neural network and assess its performance in identifying abnormal brain MRIs and critical intracrania...

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Autores principales: Nael, Kambiz, Gibson, Eli, Yang, Chen, Ceccaldi, Pascal, Yoo, Youngjin, Das, Jyotipriya, Doshi, Amish, Georgescu, Bogdan, Janardhanan, Nirmal, Odry, Benjamin, Nadar, Mariappan, Bush, Michael, Re, Thomas J., Huwer, Stefan, Josan, Sonal, von Busch, Heinrich, Meyer, Heiko, Mendelson, David, Drayer, Burton P., Comaniciu, Dorin, Fayad, Zahi A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7994311/
https://www.ncbi.nlm.nih.gov/pubmed/33767226
http://dx.doi.org/10.1038/s41598-021-86022-7
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author Nael, Kambiz
Gibson, Eli
Yang, Chen
Ceccaldi, Pascal
Yoo, Youngjin
Das, Jyotipriya
Doshi, Amish
Georgescu, Bogdan
Janardhanan, Nirmal
Odry, Benjamin
Nadar, Mariappan
Bush, Michael
Re, Thomas J.
Huwer, Stefan
Josan, Sonal
von Busch, Heinrich
Meyer, Heiko
Mendelson, David
Drayer, Burton P.
Comaniciu, Dorin
Fayad, Zahi A.
author_facet Nael, Kambiz
Gibson, Eli
Yang, Chen
Ceccaldi, Pascal
Yoo, Youngjin
Das, Jyotipriya
Doshi, Amish
Georgescu, Bogdan
Janardhanan, Nirmal
Odry, Benjamin
Nadar, Mariappan
Bush, Michael
Re, Thomas J.
Huwer, Stefan
Josan, Sonal
von Busch, Heinrich
Meyer, Heiko
Mendelson, David
Drayer, Burton P.
Comaniciu, Dorin
Fayad, Zahi A.
author_sort Nael, Kambiz
collection PubMed
description With the rapid growth and increasing use of brain MRI, there is an interest in automated image classification to aid human interpretation and improve workflow. We aimed to train a deep convolutional neural network and assess its performance in identifying abnormal brain MRIs and critical intracranial findings including acute infarction, acute hemorrhage and mass effect. A total of 13,215 clinical brain MRI studies were categorized to training (74%), validation (9%), internal testing (8%) and external testing (8%) datasets. Up to eight contrasts were included from each brain MRI and each image volume was reformatted to common resolution to accommodate for differences between scanners. Following reviewing the radiology reports, three neuroradiologists assigned each study to abnormal vs normal, and identified three critical findings including acute infarction, acute hemorrhage, and mass effect. A deep convolutional neural network was constructed by a combination of localization feature extraction (LFE) modules and global classifiers to identify the presence of 4 variables in brain MRIs including abnormal, acute infarction, acute hemorrhage and mass effect. Training, validation and testing sets were randomly defined on a patient basis. Training was performed on 9845 studies using balanced sampling to address class imbalance. Receiver operating characteristic (ROC) analysis was performed. The ROC analysis of our models for 1050 studies within our internal test data showed AUC/sensitivity/specificity of 0.91/83%/86% for normal versus abnormal brain MRI, 0.95/92%/88% for acute infarction, 0.90/89%/81% for acute hemorrhage, and 0.93/93%/85% for mass effect. For 1072 studies within our external test data, it showed AUC/sensitivity/specificity of 0.88/80%/80% for normal versus abnormal brain MRI, 0.97/90%/97% for acute infarction, 0.83/72%/88% for acute hemorrhage, and 0.87/79%/81% for mass effect. Our proposed deep convolutional network can accurately identify abnormal and critical intracranial findings on individual brain MRIs, while addressing the fact that some MR contrasts might not be available in individual studies.
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spelling pubmed-79943112021-03-26 Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks Nael, Kambiz Gibson, Eli Yang, Chen Ceccaldi, Pascal Yoo, Youngjin Das, Jyotipriya Doshi, Amish Georgescu, Bogdan Janardhanan, Nirmal Odry, Benjamin Nadar, Mariappan Bush, Michael Re, Thomas J. Huwer, Stefan Josan, Sonal von Busch, Heinrich Meyer, Heiko Mendelson, David Drayer, Burton P. Comaniciu, Dorin Fayad, Zahi A. Sci Rep Article With the rapid growth and increasing use of brain MRI, there is an interest in automated image classification to aid human interpretation and improve workflow. We aimed to train a deep convolutional neural network and assess its performance in identifying abnormal brain MRIs and critical intracranial findings including acute infarction, acute hemorrhage and mass effect. A total of 13,215 clinical brain MRI studies were categorized to training (74%), validation (9%), internal testing (8%) and external testing (8%) datasets. Up to eight contrasts were included from each brain MRI and each image volume was reformatted to common resolution to accommodate for differences between scanners. Following reviewing the radiology reports, three neuroradiologists assigned each study to abnormal vs normal, and identified three critical findings including acute infarction, acute hemorrhage, and mass effect. A deep convolutional neural network was constructed by a combination of localization feature extraction (LFE) modules and global classifiers to identify the presence of 4 variables in brain MRIs including abnormal, acute infarction, acute hemorrhage and mass effect. Training, validation and testing sets were randomly defined on a patient basis. Training was performed on 9845 studies using balanced sampling to address class imbalance. Receiver operating characteristic (ROC) analysis was performed. The ROC analysis of our models for 1050 studies within our internal test data showed AUC/sensitivity/specificity of 0.91/83%/86% for normal versus abnormal brain MRI, 0.95/92%/88% for acute infarction, 0.90/89%/81% for acute hemorrhage, and 0.93/93%/85% for mass effect. For 1072 studies within our external test data, it showed AUC/sensitivity/specificity of 0.88/80%/80% for normal versus abnormal brain MRI, 0.97/90%/97% for acute infarction, 0.83/72%/88% for acute hemorrhage, and 0.87/79%/81% for mass effect. Our proposed deep convolutional network can accurately identify abnormal and critical intracranial findings on individual brain MRIs, while addressing the fact that some MR contrasts might not be available in individual studies. Nature Publishing Group UK 2021-03-25 /pmc/articles/PMC7994311/ /pubmed/33767226 http://dx.doi.org/10.1038/s41598-021-86022-7 Text en © The Author(s) 2021 Open Access This 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/.
spellingShingle Article
Nael, Kambiz
Gibson, Eli
Yang, Chen
Ceccaldi, Pascal
Yoo, Youngjin
Das, Jyotipriya
Doshi, Amish
Georgescu, Bogdan
Janardhanan, Nirmal
Odry, Benjamin
Nadar, Mariappan
Bush, Michael
Re, Thomas J.
Huwer, Stefan
Josan, Sonal
von Busch, Heinrich
Meyer, Heiko
Mendelson, David
Drayer, Burton P.
Comaniciu, Dorin
Fayad, Zahi A.
Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title_full Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title_fullStr Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title_full_unstemmed Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title_short Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks
title_sort automated detection of critical findings in multi-parametric brain mri using a system of 3d neural networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7994311/
https://www.ncbi.nlm.nih.gov/pubmed/33767226
http://dx.doi.org/10.1038/s41598-021-86022-7
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