Cargando…

Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections

BACKGROUND: Uveal melanoma (UM) is the most common primary intraocular malignancy in adults. Monosomy 3 and BAP1 mutation are strong prognostic factors predicting metastatic risk in UM. Nuclear BAP1 (nBAP1) expression is a close immunohistochemical surrogate for both genetic alterations. Not all lab...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhang, Hongrun, Kalirai, Helen, Acha-Sagredo, Amelia, Yang, Xiaoyun, Zheng, Yalin, Coupland, Sarah E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Association for Research in Vision and Ophthalmology 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7476670/
https://www.ncbi.nlm.nih.gov/pubmed/32953248
http://dx.doi.org/10.1167/tvst.9.2.50
_version_ 1783579746030845952
author Zhang, Hongrun
Kalirai, Helen
Acha-Sagredo, Amelia
Yang, Xiaoyun
Zheng, Yalin
Coupland, Sarah E.
author_facet Zhang, Hongrun
Kalirai, Helen
Acha-Sagredo, Amelia
Yang, Xiaoyun
Zheng, Yalin
Coupland, Sarah E.
author_sort Zhang, Hongrun
collection PubMed
description BACKGROUND: Uveal melanoma (UM) is the most common primary intraocular malignancy in adults. Monosomy 3 and BAP1 mutation are strong prognostic factors predicting metastatic risk in UM. Nuclear BAP1 (nBAP1) expression is a close immunohistochemical surrogate for both genetic alterations. Not all laboratories perform routine BAP1 immunohistochemistry or genetic testing, and rely mainly on clinical information and anatomic/morphologic analyses for UM prognostication. The purpose of our study was to pilot deep learning (DL) techniques to predict nBAP1 expression on whole slide images (WSIs) of hematoxylin and eosin (H&E) stained UM sections. METHODS: One hundred forty H&E-stained UMs were scanned at 40 × magnification, using commercially available WSI image scanners. The training cohort comprised 66 BAP1(+) and 74 BAP1(−) UM, with known chromosome 3 status and clinical outcomes. Nonoverlapping areas of three different dimensions (512 × 512, 1024 × 1024, and 2048 × 2048 pixels) for comparison were extracted from tumor regions in each WSI, and were resized to 256 × 256 pixels. Deep convolutional neural networks (Resnet18 pre-trained on Imagenet) and auto-encoder-decoders (U-Net) were trained to predict nBAP1 expression of these patches. Trained models were tested on the patches cropped from a test cohort of WSIs of 16 BAP1(+) and 28 BAP1(−) UM cases. RESULTS: The trained model with best performance achieved area under the curve values of 0.90 for patches and 0.93 for slides on the test set. CONCLUSIONS: Our results show the effectiveness of DL for predicting nBAP1 expression in UM on the basis of H&E sections only. TRANSLATIONAL RELEVANCE: Our pilot demonstrates a high capacity of artificial intelligence-related techniques for automated prediction on the basis of histomorphology, and may be translatable into routine histology laboratories.
format Online
Article
Text
id pubmed-7476670
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher The Association for Research in Vision and Ophthalmology
record_format MEDLINE/PubMed
spelling pubmed-74766702020-09-18 Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections Zhang, Hongrun Kalirai, Helen Acha-Sagredo, Amelia Yang, Xiaoyun Zheng, Yalin Coupland, Sarah E. Transl Vis Sci Technol Special Issue BACKGROUND: Uveal melanoma (UM) is the most common primary intraocular malignancy in adults. Monosomy 3 and BAP1 mutation are strong prognostic factors predicting metastatic risk in UM. Nuclear BAP1 (nBAP1) expression is a close immunohistochemical surrogate for both genetic alterations. Not all laboratories perform routine BAP1 immunohistochemistry or genetic testing, and rely mainly on clinical information and anatomic/morphologic analyses for UM prognostication. The purpose of our study was to pilot deep learning (DL) techniques to predict nBAP1 expression on whole slide images (WSIs) of hematoxylin and eosin (H&E) stained UM sections. METHODS: One hundred forty H&E-stained UMs were scanned at 40 × magnification, using commercially available WSI image scanners. The training cohort comprised 66 BAP1(+) and 74 BAP1(−) UM, with known chromosome 3 status and clinical outcomes. Nonoverlapping areas of three different dimensions (512 × 512, 1024 × 1024, and 2048 × 2048 pixels) for comparison were extracted from tumor regions in each WSI, and were resized to 256 × 256 pixels. Deep convolutional neural networks (Resnet18 pre-trained on Imagenet) and auto-encoder-decoders (U-Net) were trained to predict nBAP1 expression of these patches. Trained models were tested on the patches cropped from a test cohort of WSIs of 16 BAP1(+) and 28 BAP1(−) UM cases. RESULTS: The trained model with best performance achieved area under the curve values of 0.90 for patches and 0.93 for slides on the test set. CONCLUSIONS: Our results show the effectiveness of DL for predicting nBAP1 expression in UM on the basis of H&E sections only. TRANSLATIONAL RELEVANCE: Our pilot demonstrates a high capacity of artificial intelligence-related techniques for automated prediction on the basis of histomorphology, and may be translatable into routine histology laboratories. The Association for Research in Vision and Ophthalmology 2020-09-01 /pmc/articles/PMC7476670/ /pubmed/32953248 http://dx.doi.org/10.1167/tvst.9.2.50 Text en Copyright 2020 The Authors http://creativecommons.org/licenses/by/4.0/ This work is licensed under a Creative Commons Attribution 4.0 International License.
spellingShingle Special Issue
Zhang, Hongrun
Kalirai, Helen
Acha-Sagredo, Amelia
Yang, Xiaoyun
Zheng, Yalin
Coupland, Sarah E.
Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title_full Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title_fullStr Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title_full_unstemmed Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title_short Piloting a Deep Learning Model for Predicting Nuclear BAP1 Immunohistochemical Expression of Uveal Melanoma from Hematoxylin-and-Eosin Sections
title_sort piloting a deep learning model for predicting nuclear bap1 immunohistochemical expression of uveal melanoma from hematoxylin-and-eosin sections
topic Special Issue
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7476670/
https://www.ncbi.nlm.nih.gov/pubmed/32953248
http://dx.doi.org/10.1167/tvst.9.2.50
work_keys_str_mv AT zhanghongrun pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections
AT kaliraihelen pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections
AT achasagredoamelia pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections
AT yangxiaoyun pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections
AT zhengyalin pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections
AT couplandsarahe pilotingadeeplearningmodelforpredictingnuclearbap1immunohistochemicalexpressionofuvealmelanomafromhematoxylinandeosinsections