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Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides

Treatment of patients with oesophageal and gastric cancer (OeGC) is guided by disease stage, patient performance status and preferences. Lymph node (LN) status is one of the strongest prognostic factors for OeGC patients. However, survival varies between patients with the same disease stage and LN s...

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Autores principales: Beuque, Manon, Magee, Derek R., Chatterjee, Avishek, Woodruff, Henry C., Langley, Ruth E., Allum, William, Nankivell, Matthew G., Cunningham, David, Lambin, Philippe, Grabsch, Heike I.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932489/
https://www.ncbi.nlm.nih.gov/pubmed/36818020
http://dx.doi.org/10.1016/j.jpi.2023.100192
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author Beuque, Manon
Magee, Derek R.
Chatterjee, Avishek
Woodruff, Henry C.
Langley, Ruth E.
Allum, William
Nankivell, Matthew G.
Cunningham, David
Lambin, Philippe
Grabsch, Heike I.
author_facet Beuque, Manon
Magee, Derek R.
Chatterjee, Avishek
Woodruff, Henry C.
Langley, Ruth E.
Allum, William
Nankivell, Matthew G.
Cunningham, David
Lambin, Philippe
Grabsch, Heike I.
author_sort Beuque, Manon
collection PubMed
description Treatment of patients with oesophageal and gastric cancer (OeGC) is guided by disease stage, patient performance status and preferences. Lymph node (LN) status is one of the strongest prognostic factors for OeGC patients. However, survival varies between patients with the same disease stage and LN status. We recently showed that LN size from patients with OeGC might also have prognostic value, thus making delineations of LNs essential for size estimation and the extraction of other imaging biomarkers. We hypothesized that a machine learning workflow is able to: (1) find digital H&E stained slides containing LNs, (2) create a scoring system providing degrees of certainty for the results, and (3) delineate LNs in those images. To train and validate the pipeline, we used 1695 H&E slides from the OE02 trial. The dataset was divided into training (80%) and validation (20%). The model was tested on an external dataset of 826 H&E slides from the OE05 trial. U-Net architecture was used to generate prediction maps from which predefined features were extracted. These features were subsequently used to train an XGBoost model to determine if a region truly contained a LN. With our innovative method, the balanced accuracies of the LN detection were 0.93 on the validation dataset (0.83 on the test dataset) compared to 0.81 (0.81) on the validation (test) datasets when using the standard method of thresholding U-Net predictions to arrive at a binary mask. Our method allowed for the creation of an “uncertain” category, and partly limited false-positive predictions on the external dataset. The mean Dice score was 0.73 (0.60) per-image and 0.66 (0.48) per-LN for the validation (test) datasets. Our pipeline detects images with LNs more accurately than conventional methods, and high-throughput delineation of LNs can facilitate future LN content analyses of large datasets.
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spelling pubmed-99324892023-02-17 Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides Beuque, Manon Magee, Derek R. Chatterjee, Avishek Woodruff, Henry C. Langley, Ruth E. Allum, William Nankivell, Matthew G. Cunningham, David Lambin, Philippe Grabsch, Heike I. J Pathol Inform Original Research Article Treatment of patients with oesophageal and gastric cancer (OeGC) is guided by disease stage, patient performance status and preferences. Lymph node (LN) status is one of the strongest prognostic factors for OeGC patients. However, survival varies between patients with the same disease stage and LN status. We recently showed that LN size from patients with OeGC might also have prognostic value, thus making delineations of LNs essential for size estimation and the extraction of other imaging biomarkers. We hypothesized that a machine learning workflow is able to: (1) find digital H&E stained slides containing LNs, (2) create a scoring system providing degrees of certainty for the results, and (3) delineate LNs in those images. To train and validate the pipeline, we used 1695 H&E slides from the OE02 trial. The dataset was divided into training (80%) and validation (20%). The model was tested on an external dataset of 826 H&E slides from the OE05 trial. U-Net architecture was used to generate prediction maps from which predefined features were extracted. These features were subsequently used to train an XGBoost model to determine if a region truly contained a LN. With our innovative method, the balanced accuracies of the LN detection were 0.93 on the validation dataset (0.83 on the test dataset) compared to 0.81 (0.81) on the validation (test) datasets when using the standard method of thresholding U-Net predictions to arrive at a binary mask. Our method allowed for the creation of an “uncertain” category, and partly limited false-positive predictions on the external dataset. The mean Dice score was 0.73 (0.60) per-image and 0.66 (0.48) per-LN for the validation (test) datasets. Our pipeline detects images with LNs more accurately than conventional methods, and high-throughput delineation of LNs can facilitate future LN content analyses of large datasets. Elsevier 2023-01-25 /pmc/articles/PMC9932489/ /pubmed/36818020 http://dx.doi.org/10.1016/j.jpi.2023.100192 Text en © 2023 The Authors https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Research Article
Beuque, Manon
Magee, Derek R.
Chatterjee, Avishek
Woodruff, Henry C.
Langley, Ruth E.
Allum, William
Nankivell, Matthew G.
Cunningham, David
Lambin, Philippe
Grabsch, Heike I.
Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title_full Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title_fullStr Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title_full_unstemmed Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title_short Automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
title_sort automated detection and delineation of lymph nodes in haematoxylin & eosin stained digitised slides
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932489/
https://www.ncbi.nlm.nih.gov/pubmed/36818020
http://dx.doi.org/10.1016/j.jpi.2023.100192
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