Cargando…

An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image

The paper explored the problem of automatic diagnosis based on immunohistochemical image analysis. The issue of automated diagnosis is a preliminary and advisory statement for a diagnostician. The authors studied breast cancer histological and immunohistochemical images using the following biomarker...

Descripción completa

Detalles Bibliográficos
Autores principales: Berezsky, Oleh, Pitsun, Oleh, Melnyk, Grygoriy, Datsko, Tamara, Izonin, Ivan, Derysh, Bohdan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866917/
https://www.ncbi.nlm.nih.gov/pubmed/36662110
http://dx.doi.org/10.3390/jimaging9010012
_version_ 1784876211391954944
author Berezsky, Oleh
Pitsun, Oleh
Melnyk, Grygoriy
Datsko, Tamara
Izonin, Ivan
Derysh, Bohdan
author_facet Berezsky, Oleh
Pitsun, Oleh
Melnyk, Grygoriy
Datsko, Tamara
Izonin, Ivan
Derysh, Bohdan
author_sort Berezsky, Oleh
collection PubMed
description The paper explored the problem of automatic diagnosis based on immunohistochemical image analysis. The issue of automated diagnosis is a preliminary and advisory statement for a diagnostician. The authors studied breast cancer histological and immunohistochemical images using the following biomarkers progesterone, estrogen, oncoprotein, and a cell proliferation biomarker. The authors developed a breast cancer diagnosis method based on immunohistochemical image analysis. The proposed method consists of algorithms for image preprocessing, segmentation, and the determination of informative indicators (relative area and intensity of cells) and an algorithm for determining the molecular genetic breast cancer subtype. An adaptive algorithm for image preprocessing was developed to improve the quality of the images. It includes median filtering and image brightness equalization techniques. In addition, the authors developed a software module part of the HIAMS software package based on the Java programming language and the OpenCV computer vision library. Four molecular genetic breast cancer subtypes could be identified using this solution: subtype Luminal A, subtype Luminal B, subtype HER2/neu amplified, and basalt-like subtype. The developed algorithm for the quantitative characteristics of the immunohistochemical images showed sufficient accuracy in determining the cancer subtype “Luminal A”. It was experimentally established that the relative area of the nuclei of cells covered with biomarkers of progesterone, estrogen, and oncoprotein was more than 85%. The given approach allows for automating and accelerating the process of diagnosis. Developed algorithms for calculating the quantitative characteristics of cells on immunohistochemical images can increase the accuracy of diagnosis.
format Online
Article
Text
id pubmed-9866917
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-98669172023-01-22 An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image Berezsky, Oleh Pitsun, Oleh Melnyk, Grygoriy Datsko, Tamara Izonin, Ivan Derysh, Bohdan J Imaging Article The paper explored the problem of automatic diagnosis based on immunohistochemical image analysis. The issue of automated diagnosis is a preliminary and advisory statement for a diagnostician. The authors studied breast cancer histological and immunohistochemical images using the following biomarkers progesterone, estrogen, oncoprotein, and a cell proliferation biomarker. The authors developed a breast cancer diagnosis method based on immunohistochemical image analysis. The proposed method consists of algorithms for image preprocessing, segmentation, and the determination of informative indicators (relative area and intensity of cells) and an algorithm for determining the molecular genetic breast cancer subtype. An adaptive algorithm for image preprocessing was developed to improve the quality of the images. It includes median filtering and image brightness equalization techniques. In addition, the authors developed a software module part of the HIAMS software package based on the Java programming language and the OpenCV computer vision library. Four molecular genetic breast cancer subtypes could be identified using this solution: subtype Luminal A, subtype Luminal B, subtype HER2/neu amplified, and basalt-like subtype. The developed algorithm for the quantitative characteristics of the immunohistochemical images showed sufficient accuracy in determining the cancer subtype “Luminal A”. It was experimentally established that the relative area of the nuclei of cells covered with biomarkers of progesterone, estrogen, and oncoprotein was more than 85%. The given approach allows for automating and accelerating the process of diagnosis. Developed algorithms for calculating the quantitative characteristics of cells on immunohistochemical images can increase the accuracy of diagnosis. MDPI 2023-01-04 /pmc/articles/PMC9866917/ /pubmed/36662110 http://dx.doi.org/10.3390/jimaging9010012 Text en © 2023 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
Berezsky, Oleh
Pitsun, Oleh
Melnyk, Grygoriy
Datsko, Tamara
Izonin, Ivan
Derysh, Bohdan
An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title_full An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title_fullStr An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title_full_unstemmed An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title_short An Approach toward Automatic Specifics Diagnosis of Breast Cancer Based on an Immunohistochemical Image
title_sort approach toward automatic specifics diagnosis of breast cancer based on an immunohistochemical image
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9866917/
https://www.ncbi.nlm.nih.gov/pubmed/36662110
http://dx.doi.org/10.3390/jimaging9010012
work_keys_str_mv AT berezskyoleh anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT pitsunoleh anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT melnykgrygoriy anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT datskotamara anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT izoninivan anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT deryshbohdan anapproachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT berezskyoleh approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT pitsunoleh approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT melnykgrygoriy approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT datskotamara approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT izoninivan approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage
AT deryshbohdan approachtowardautomaticspecificsdiagnosisofbreastcancerbasedonanimmunohistochemicalimage