Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study

Background: The aim of this study is to demonstrate the feasibility of automatic classification of Ki-67 histological immunostainings in patients with squamous cell carcinoma of the vulva using a deep convolutional neural network (dCNN). Material and methods: For evaluation of the dCNN, we used 55 w...

Full description

Bibliographic Details
Main Authors: Matthias Choschzick, Mariam Alyahiaoui, Alexander Ciritsis, Cristina Rossi, André Gut, Patryk Hejduk, Andreas Boss
Format: Article
Language:English
Published: Elsevier 2021-07-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844021016807
id doaj-b143ee87be444aa4b6f610fe0e3c28ab
record_format Article
spelling doaj-b143ee87be444aa4b6f610fe0e3c28ab2021-08-02T04:57:53ZengElsevierHeliyon2405-84402021-07-0177e07577Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility studyMatthias Choschzick0Mariam Alyahiaoui1Alexander Ciritsis2Cristina Rossi3André Gut4Patryk Hejduk5Andreas Boss6Institute for Clinical Pathology, University Hospital Zurich, SwitzerlandInstitute for Clinical Pathology, University Hospital Zurich, Switzerland; Institute for Diagnostic and Interventional Radiology, University Hospital Zurich, SwitzerlandInstitute for Diagnostic and Interventional Radiology, University Hospital Zurich, SwitzerlandInstitute for Diagnostic and Interventional Radiology, University Hospital Zurich, SwitzerlandInstitute for Clinical Pathology, University Hospital Zurich, SwitzerlandInstitute for Diagnostic and Interventional Radiology, University Hospital Zurich, SwitzerlandInstitute for Diagnostic and Interventional Radiology, University Hospital Zurich, Switzerland; Corresponding author.Background: The aim of this study is to demonstrate the feasibility of automatic classification of Ki-67 histological immunostainings in patients with squamous cell carcinoma of the vulva using a deep convolutional neural network (dCNN). Material and methods: For evaluation of the dCNN, we used 55 well characterized squamous cell carcinomas of the vulva in a tissue microarray (TMA) format in this retrospective study. The tumor specimens were classified in 3 different categories C1 (0–2%), C2 (2–20%) and C3 (>20%), representing the relation of the number of KI-67 positive tumor cells to all cancer cells on the TMA spot. Representative areas of the spots were manually labeled by extracting images of 351 × 280 pixels. A dCNN with 13 convolutional layers was used for the evaluation. Two independent pathologists classified 45 labeled images in order to compare the dCNN's results to human readouts. Results: Using a small labeled dataset with 1020 images with equal distribution among classes, the dCNN reached an accuracy of 90.9% (93%) for the training (validation) data. Applying a larger dataset with additional 1017 labeled images resulted in an accuracy of 96.1% (91.4%) for the training (validation) dataset. For the human readout, there were no significant differences between the pathologists and the dCNN in Ki-67 classification results. Conclusion: The dCNN is capable of a standardized classification of Ki-67 staining in vulva carcinoma; therefore, it may be suitable for quality control and standardization in the assessment of tumor grading.http://www.sciencedirect.com/science/article/pii/S2405844021016807Ki-67Vulva carcinomaDeep learningConvolutional neural network
collection DOAJ
language English
format Article
sources DOAJ
author Matthias Choschzick
Mariam Alyahiaoui
Alexander Ciritsis
Cristina Rossi
André Gut
Patryk Hejduk
Andreas Boss
spellingShingle Matthias Choschzick
Mariam Alyahiaoui
Alexander Ciritsis
Cristina Rossi
André Gut
Patryk Hejduk
Andreas Boss
Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
Heliyon
Ki-67
Vulva carcinoma
Deep learning
Convolutional neural network
author_facet Matthias Choschzick
Mariam Alyahiaoui
Alexander Ciritsis
Cristina Rossi
André Gut
Patryk Hejduk
Andreas Boss
author_sort Matthias Choschzick
title Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
title_short Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
title_full Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
title_fullStr Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
title_full_unstemmed Deep learning for the standardized classification of Ki-67 in vulva carcinoma: A feasibility study
title_sort deep learning for the standardized classification of ki-67 in vulva carcinoma: a feasibility study
publisher Elsevier
series Heliyon
issn 2405-8440
publishDate 2021-07-01
description Background: The aim of this study is to demonstrate the feasibility of automatic classification of Ki-67 histological immunostainings in patients with squamous cell carcinoma of the vulva using a deep convolutional neural network (dCNN). Material and methods: For evaluation of the dCNN, we used 55 well characterized squamous cell carcinomas of the vulva in a tissue microarray (TMA) format in this retrospective study. The tumor specimens were classified in 3 different categories C1 (0–2%), C2 (2–20%) and C3 (>20%), representing the relation of the number of KI-67 positive tumor cells to all cancer cells on the TMA spot. Representative areas of the spots were manually labeled by extracting images of 351 × 280 pixels. A dCNN with 13 convolutional layers was used for the evaluation. Two independent pathologists classified 45 labeled images in order to compare the dCNN's results to human readouts. Results: Using a small labeled dataset with 1020 images with equal distribution among classes, the dCNN reached an accuracy of 90.9% (93%) for the training (validation) data. Applying a larger dataset with additional 1017 labeled images resulted in an accuracy of 96.1% (91.4%) for the training (validation) dataset. For the human readout, there were no significant differences between the pathologists and the dCNN in Ki-67 classification results. Conclusion: The dCNN is capable of a standardized classification of Ki-67 staining in vulva carcinoma; therefore, it may be suitable for quality control and standardization in the assessment of tumor grading.
topic Ki-67
Vulva carcinoma
Deep learning
Convolutional neural network
url http://www.sciencedirect.com/science/article/pii/S2405844021016807
work_keys_str_mv AT matthiaschoschzick deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT mariamalyahiaoui deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT alexanderciritsis deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT cristinarossi deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT andregut deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT patrykhejduk deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
AT andreasboss deeplearningforthestandardizedclassificationofki67invulvacarcinomaafeasibilitystudy
_version_ 1721241730005598208