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Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens

Surgical margin status of breast lumpectomy specimens for invasive carcinoma and ductal carcinoma in situ (DCIS) guides clinical decisions, as positive margins are associated with higher rates of local recurrence. The “cavity shave” method of margin assessment has the benefits of allowing the surgeo...

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Autores principales: D’Alfonso, Timothy M., Ho, David Joon, Hanna, Matthew G., Grabenstetter, Anne, Yarlagadda, Dig Vijay Kumar, Geneslaw, Luke, Ntiamoah, Peter, Fuchs, Thomas J., Tan, Lee K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9906995/
https://www.ncbi.nlm.nih.gov/pubmed/33903728
http://dx.doi.org/10.1038/s41379-021-00807-9
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author D’Alfonso, Timothy M.
Ho, David Joon
Hanna, Matthew G.
Grabenstetter, Anne
Yarlagadda, Dig Vijay Kumar
Geneslaw, Luke
Ntiamoah, Peter
Fuchs, Thomas J.
Tan, Lee K.
author_facet D’Alfonso, Timothy M.
Ho, David Joon
Hanna, Matthew G.
Grabenstetter, Anne
Yarlagadda, Dig Vijay Kumar
Geneslaw, Luke
Ntiamoah, Peter
Fuchs, Thomas J.
Tan, Lee K.
author_sort D’Alfonso, Timothy M.
collection PubMed
description Surgical margin status of breast lumpectomy specimens for invasive carcinoma and ductal carcinoma in situ (DCIS) guides clinical decisions, as positive margins are associated with higher rates of local recurrence. The “cavity shave” method of margin assessment has the benefits of allowing the surgeon to orient shaved margins intraoperatively and the pathologist to assess one inked margin per specimen. We studied whether a deep convolutional neural network, Deep Multi-Magnification Network (DMMN), could accurately segment carcinoma from benign tissue in whole slide images (WSIs) of shave margin slides, and therefore serve as a potential screening tool to improve efficiency of microscopic evaluation of these specimens. Applying the pretrained DMMN model, or the initial model, to a validation set of 408 WSIs (348 benign, 60 with carcinoma) achieved an area under the curve (AUC) of 0.941. After additional manual annotations and fine-tuning of the model, the updated model achieved an AUC of 0.968 with sensitivity set at 100% and corresponding specificity of 78%. We applied the initial model and updated model to a testing set of 427 WSIs (374 benign, 53 with carcinoma) which showed AUC values of 0.900 and 0.927, respectively. Using the pixel classification threshold selected from the validation set, the model achieved a sensitivity of 92% and specificity of 78%. The 4 false negative classifications resulted from 2 small foci of DCIS (1 mm, 0.5 mm) and 2 foci of well-differentiated invasive carcinoma (3 mm, 1.5 mm). This proof-of-principle study demonstrates that a DMMN machine learning model can segment invasive carcinoma and DCIS in surgical margin specimens with high accuracy and has the potential to be used as a screening tool for pathologic assessment of these specimens.
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spelling pubmed-99069952023-02-08 Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens D’Alfonso, Timothy M. Ho, David Joon Hanna, Matthew G. Grabenstetter, Anne Yarlagadda, Dig Vijay Kumar Geneslaw, Luke Ntiamoah, Peter Fuchs, Thomas J. Tan, Lee K. Mod Pathol Article Surgical margin status of breast lumpectomy specimens for invasive carcinoma and ductal carcinoma in situ (DCIS) guides clinical decisions, as positive margins are associated with higher rates of local recurrence. The “cavity shave” method of margin assessment has the benefits of allowing the surgeon to orient shaved margins intraoperatively and the pathologist to assess one inked margin per specimen. We studied whether a deep convolutional neural network, Deep Multi-Magnification Network (DMMN), could accurately segment carcinoma from benign tissue in whole slide images (WSIs) of shave margin slides, and therefore serve as a potential screening tool to improve efficiency of microscopic evaluation of these specimens. Applying the pretrained DMMN model, or the initial model, to a validation set of 408 WSIs (348 benign, 60 with carcinoma) achieved an area under the curve (AUC) of 0.941. After additional manual annotations and fine-tuning of the model, the updated model achieved an AUC of 0.968 with sensitivity set at 100% and corresponding specificity of 78%. We applied the initial model and updated model to a testing set of 427 WSIs (374 benign, 53 with carcinoma) which showed AUC values of 0.900 and 0.927, respectively. Using the pixel classification threshold selected from the validation set, the model achieved a sensitivity of 92% and specificity of 78%. The 4 false negative classifications resulted from 2 small foci of DCIS (1 mm, 0.5 mm) and 2 foci of well-differentiated invasive carcinoma (3 mm, 1.5 mm). This proof-of-principle study demonstrates that a DMMN machine learning model can segment invasive carcinoma and DCIS in surgical margin specimens with high accuracy and has the potential to be used as a screening tool for pathologic assessment of these specimens. 2021-08 2021-04-26 /pmc/articles/PMC9906995/ /pubmed/33903728 http://dx.doi.org/10.1038/s41379-021-00807-9 Text en http://www.nature.com/authors/editorial_policies/license.html#termsUsers may view, print, copy, and download text and data-mine the content in such documents, for the purposes of academic research, subject always to the full Conditions of use:http://www.nature.com/authors/editorial_policies/license.html#terms
spellingShingle Article
D’Alfonso, Timothy M.
Ho, David Joon
Hanna, Matthew G.
Grabenstetter, Anne
Yarlagadda, Dig Vijay Kumar
Geneslaw, Luke
Ntiamoah, Peter
Fuchs, Thomas J.
Tan, Lee K.
Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title_full Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title_fullStr Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title_full_unstemmed Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title_short Multi-Magnification-Based Machine Learning as an Ancillary Tool for the Pathologic Assessment of Shaved Margins for Breast Carcinoma Lumpectomy Specimens
title_sort multi-magnification-based machine learning as an ancillary tool for the pathologic assessment of shaved margins for breast carcinoma lumpectomy specimens
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9906995/
https://www.ncbi.nlm.nih.gov/pubmed/33903728
http://dx.doi.org/10.1038/s41379-021-00807-9
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