Cargando…

Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma

Deep learning for the analysis of H&E stains requires a large annotated training set. This may form a labor-intensive task involving highly skilled pathologists. We aimed to optimize and evaluate computer-assisted annotation based on digital dual stains of the same tissue section. H&E stains...

Descripción completa

Detalles Bibliográficos
Autores principales: Nielsen, Patricia Switten, Georgsen, Jeanette Baehr, Vinding, Mads Sloth, Østergaard, Lasse Riis, Steiniche, Torben
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9654525/
https://www.ncbi.nlm.nih.gov/pubmed/36361209
http://dx.doi.org/10.3390/ijerph192114327
_version_ 1784828954047152128
author Nielsen, Patricia Switten
Georgsen, Jeanette Baehr
Vinding, Mads Sloth
Østergaard, Lasse Riis
Steiniche, Torben
author_facet Nielsen, Patricia Switten
Georgsen, Jeanette Baehr
Vinding, Mads Sloth
Østergaard, Lasse Riis
Steiniche, Torben
author_sort Nielsen, Patricia Switten
collection PubMed
description Deep learning for the analysis of H&E stains requires a large annotated training set. This may form a labor-intensive task involving highly skilled pathologists. We aimed to optimize and evaluate computer-assisted annotation based on digital dual stains of the same tissue section. H&E stains of primary and metastatic melanoma (N = 77) were digitized, re-stained with SOX10, and re-scanned. Because images were aligned, annotations of SOX10 image analysis were directly transferred to H&E stains of the training set. Based on 1,221,367 annotated nuclei, a convolutional neural network for calculating tumor burden (CNN(TB)) was developed. For primary melanomas, precision of annotation was 100% (95%CI, 99% to 100%) for tumor cells and 99% (95%CI, 98% to 100%) for normal cells. Due to low or missing tumor-cell SOX10 positivity, precision for normal cells was markedly reduced in lymph-node and organ metastases compared with primary melanomas (p < 0.001). Compared with stereological counts within skin lesions, mean difference in tumor burden was 6% (95%CI, −1% to 13%, p = 0.10) for CNN(TB) and 16% (95%CI, 4% to 28%, p = 0.02) for pathologists. Conclusively, the technique produced a large annotated H&E training set with high quality within a reasonable timeframe for primary melanomas and subcutaneous metastases. For these lesion types, the training set generated a high-performing CNN(TB), which was superior to the routine assessments of pathologists.
format Online
Article
Text
id pubmed-9654525
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-96545252022-11-15 Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma Nielsen, Patricia Switten Georgsen, Jeanette Baehr Vinding, Mads Sloth Østergaard, Lasse Riis Steiniche, Torben Int J Environ Res Public Health Article Deep learning for the analysis of H&E stains requires a large annotated training set. This may form a labor-intensive task involving highly skilled pathologists. We aimed to optimize and evaluate computer-assisted annotation based on digital dual stains of the same tissue section. H&E stains of primary and metastatic melanoma (N = 77) were digitized, re-stained with SOX10, and re-scanned. Because images were aligned, annotations of SOX10 image analysis were directly transferred to H&E stains of the training set. Based on 1,221,367 annotated nuclei, a convolutional neural network for calculating tumor burden (CNN(TB)) was developed. For primary melanomas, precision of annotation was 100% (95%CI, 99% to 100%) for tumor cells and 99% (95%CI, 98% to 100%) for normal cells. Due to low or missing tumor-cell SOX10 positivity, precision for normal cells was markedly reduced in lymph-node and organ metastases compared with primary melanomas (p < 0.001). Compared with stereological counts within skin lesions, mean difference in tumor burden was 6% (95%CI, −1% to 13%, p = 0.10) for CNN(TB) and 16% (95%CI, 4% to 28%, p = 0.02) for pathologists. Conclusively, the technique produced a large annotated H&E training set with high quality within a reasonable timeframe for primary melanomas and subcutaneous metastases. For these lesion types, the training set generated a high-performing CNN(TB), which was superior to the routine assessments of pathologists. MDPI 2022-11-02 /pmc/articles/PMC9654525/ /pubmed/36361209 http://dx.doi.org/10.3390/ijerph192114327 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nielsen, Patricia Switten
Georgsen, Jeanette Baehr
Vinding, Mads Sloth
Østergaard, Lasse Riis
Steiniche, Torben
Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title_full Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title_fullStr Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title_full_unstemmed Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title_short Computer-Assisted Annotation of Digital H&E/SOX10 Dual Stains Generates High-Performing Convolutional Neural Network for Calculating Tumor Burden in H&E-Stained Cutaneous Melanoma
title_sort computer-assisted annotation of digital h&e/sox10 dual stains generates high-performing convolutional neural network for calculating tumor burden in h&e-stained cutaneous melanoma
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9654525/
https://www.ncbi.nlm.nih.gov/pubmed/36361209
http://dx.doi.org/10.3390/ijerph192114327
work_keys_str_mv AT nielsenpatriciaswitten computerassistedannotationofdigitalhesox10dualstainsgenerateshighperformingconvolutionalneuralnetworkforcalculatingtumorburdeninhestainedcutaneousmelanoma
AT georgsenjeanettebaehr computerassistedannotationofdigitalhesox10dualstainsgenerateshighperformingconvolutionalneuralnetworkforcalculatingtumorburdeninhestainedcutaneousmelanoma
AT vindingmadssloth computerassistedannotationofdigitalhesox10dualstainsgenerateshighperformingconvolutionalneuralnetworkforcalculatingtumorburdeninhestainedcutaneousmelanoma
AT østergaardlasseriis computerassistedannotationofdigitalhesox10dualstainsgenerateshighperformingconvolutionalneuralnetworkforcalculatingtumorburdeninhestainedcutaneousmelanoma
AT steinichetorben computerassistedannotationofdigitalhesox10dualstainsgenerateshighperformingconvolutionalneuralnetworkforcalculatingtumorburdeninhestainedcutaneousmelanoma