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Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis

INTRODUCTION: Differentiation of histologically similar structures in the liver, including anatomical structures, benign bile duct lesions, or common types of liver metastases, can be challenging with conventional histological tissue sections alone. Accurate histopathological classification is param...

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Autores principales: Kriegsmann, Mark, Kriegsmann, Katharina, Steinbuss, Georg, Zgorzelski, Christiane, Albrecht, Thomas, Heinrich, Stefan, Farkas, Stefan, Roth, Wilfried, Dang, Hien, Hausen, Anne, Gaida, Matthias M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10326372/
https://www.ncbi.nlm.nih.gov/pubmed/37415390
http://dx.doi.org/10.1002/ctm2.1299
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author Kriegsmann, Mark
Kriegsmann, Katharina
Steinbuss, Georg
Zgorzelski, Christiane
Albrecht, Thomas
Heinrich, Stefan
Farkas, Stefan
Roth, Wilfried
Dang, Hien
Hausen, Anne
Gaida, Matthias M.
author_facet Kriegsmann, Mark
Kriegsmann, Katharina
Steinbuss, Georg
Zgorzelski, Christiane
Albrecht, Thomas
Heinrich, Stefan
Farkas, Stefan
Roth, Wilfried
Dang, Hien
Hausen, Anne
Gaida, Matthias M.
author_sort Kriegsmann, Mark
collection PubMed
description INTRODUCTION: Differentiation of histologically similar structures in the liver, including anatomical structures, benign bile duct lesions, or common types of liver metastases, can be challenging with conventional histological tissue sections alone. Accurate histopathological classification is paramount for the diagnosis and adequate treatment of the disease. Deep learning algorithms have been proposed for objective and consistent assessment of digital histopathological images. MATERIALS AND METHODS: In the present study, we trained and evaluated deep learning algorithms based on the EfficientNetV2 and ResNetRS architectures to discriminate between different histopathological classes. For the required dataset, specialized surgical pathologists annotated seven different histological classes, including different non‐neoplastic anatomical structures, benign bile duct lesions, and liver metastases from colorectal and pancreatic adenocarcinoma in a large patient cohort. Annotation resulted in a total of 204.159 image patches, followed by discrimination analysis using our deep learning models. Model performance was evaluated on validation and test data using confusion matrices. RESULTS: Evaluation of the test set based on tiles and cases revealed overall highly satisfactory prediction capability of our algorithm for the different histological classes, resulting in a tile accuracy of 89% (38 413/43 059) and case accuracy of 94% (198/211). Importantly, the separation of metastasis versus benign lesions was certainly confident on case level, confirming the classification model performed with high diagnostic accuracy. Moreover, the whole curated raw data set is made publically available. CONCLUSIONS: Deep learning is a promising approach in surgical liver pathology supporting decision making in personalized medicine.
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spelling pubmed-103263722023-07-08 Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis Kriegsmann, Mark Kriegsmann, Katharina Steinbuss, Georg Zgorzelski, Christiane Albrecht, Thomas Heinrich, Stefan Farkas, Stefan Roth, Wilfried Dang, Hien Hausen, Anne Gaida, Matthias M. Clin Transl Med Research Articles INTRODUCTION: Differentiation of histologically similar structures in the liver, including anatomical structures, benign bile duct lesions, or common types of liver metastases, can be challenging with conventional histological tissue sections alone. Accurate histopathological classification is paramount for the diagnosis and adequate treatment of the disease. Deep learning algorithms have been proposed for objective and consistent assessment of digital histopathological images. MATERIALS AND METHODS: In the present study, we trained and evaluated deep learning algorithms based on the EfficientNetV2 and ResNetRS architectures to discriminate between different histopathological classes. For the required dataset, specialized surgical pathologists annotated seven different histological classes, including different non‐neoplastic anatomical structures, benign bile duct lesions, and liver metastases from colorectal and pancreatic adenocarcinoma in a large patient cohort. Annotation resulted in a total of 204.159 image patches, followed by discrimination analysis using our deep learning models. Model performance was evaluated on validation and test data using confusion matrices. RESULTS: Evaluation of the test set based on tiles and cases revealed overall highly satisfactory prediction capability of our algorithm for the different histological classes, resulting in a tile accuracy of 89% (38 413/43 059) and case accuracy of 94% (198/211). Importantly, the separation of metastasis versus benign lesions was certainly confident on case level, confirming the classification model performed with high diagnostic accuracy. Moreover, the whole curated raw data set is made publically available. CONCLUSIONS: Deep learning is a promising approach in surgical liver pathology supporting decision making in personalized medicine. John Wiley and Sons Inc. 2023-07-06 /pmc/articles/PMC10326372/ /pubmed/37415390 http://dx.doi.org/10.1002/ctm2.1299 Text en © 2023 The Authors. Clinical and Translational Medicine published by John Wiley & Sons Australia, Ltd on behalf of Shanghai Institute of Clinical Bioinformatics. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Articles
Kriegsmann, Mark
Kriegsmann, Katharina
Steinbuss, Georg
Zgorzelski, Christiane
Albrecht, Thomas
Heinrich, Stefan
Farkas, Stefan
Roth, Wilfried
Dang, Hien
Hausen, Anne
Gaida, Matthias M.
Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title_full Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title_fullStr Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title_full_unstemmed Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title_short Implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
title_sort implementation of deep learning in liver pathology optimizes diagnosis of benign lesions and adenocarcinoma metastasis
topic Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10326372/
https://www.ncbi.nlm.nih.gov/pubmed/37415390
http://dx.doi.org/10.1002/ctm2.1299
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