Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis

Abstract Histopathologic diagnosis of Hirschsprung's disease (HSCR) is time consuming and requires expertise. The use of artificial intelligence (AI) in digital pathology is actively researched and may improve the diagnosis of HSCR. The purpose of this research was to develop an algorithm capab...

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Main Authors: Ariel Greenberg, Asaf Aizic, Asia Zubkov, Sarah Borsekofsky, Rami R. Hagege, Dov Hershkovitz
Format: Article
Language:English
Published: Nature Publishing Group 2021-02-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-82869-y
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spelling doaj-8ca5719ee4a04a26979e03abc344c30e2021-02-14T12:30:45ZengNature Publishing GroupScientific Reports2045-23222021-02-011111910.1038/s41598-021-82869-yAutomatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosisAriel Greenberg0Asaf Aizic1Asia Zubkov2Sarah Borsekofsky3Rami R. Hagege4Dov Hershkovitz5Institute of Pathology, Tel-Aviv Sourasky Medical CenterInstitute of Pathology, Tel-Aviv Sourasky Medical CenterInstitute of Pathology, Tel-Aviv Sourasky Medical CenterInstitute of Pathology, Tel-Aviv Sourasky Medical CenterInstitute of Pathology, Tel-Aviv Sourasky Medical CenterInstitute of Pathology, Tel-Aviv Sourasky Medical CenterAbstract Histopathologic diagnosis of Hirschsprung's disease (HSCR) is time consuming and requires expertise. The use of artificial intelligence (AI) in digital pathology is actively researched and may improve the diagnosis of HSCR. The purpose of this research was to develop an algorithm capable of identifying ganglion cells in digital pathology slides and implement it as an assisting tool for the pathologist in the diagnosis of HSCR. Ninety five digital pathology slides were used for the construction and training of the algorithm. Fifty cases suspected for HSCR (727 slides) were used as a validation cohort. Image sets suspected to contain ganglion cells were chosen by the algorithm and then reviewed and scored by five pathologists, one HSCR expert and 4 non-experts. The algorithm was able to identify ganglion cells with 96% sensitivity and 99% specificity (in normal colon) as well as to correctly identify a case previously misdiagnosed as non-HSCR. The expert was able to achieve perfectly accurate diagnoses based solely on the images suggested by the algorithm, with over 95% time saved. Non-experts would require expert consultation in 20–58% of the cases to achieve similar results. The use of AI in the diagnosis of HSCR can greatly reduce the time and effort required for diagnosis and improve accuracy.https://doi.org/10.1038/s41598-021-82869-y
collection DOAJ
language English
format Article
sources DOAJ
author Ariel Greenberg
Asaf Aizic
Asia Zubkov
Sarah Borsekofsky
Rami R. Hagege
Dov Hershkovitz
spellingShingle Ariel Greenberg
Asaf Aizic
Asia Zubkov
Sarah Borsekofsky
Rami R. Hagege
Dov Hershkovitz
Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
Scientific Reports
author_facet Ariel Greenberg
Asaf Aizic
Asia Zubkov
Sarah Borsekofsky
Rami R. Hagege
Dov Hershkovitz
author_sort Ariel Greenberg
title Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
title_short Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
title_full Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
title_fullStr Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
title_full_unstemmed Automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
title_sort automatic ganglion cell detection for improving the efficiency and accuracy of hirschprung disease diagnosis
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-02-01
description Abstract Histopathologic diagnosis of Hirschsprung's disease (HSCR) is time consuming and requires expertise. The use of artificial intelligence (AI) in digital pathology is actively researched and may improve the diagnosis of HSCR. The purpose of this research was to develop an algorithm capable of identifying ganglion cells in digital pathology slides and implement it as an assisting tool for the pathologist in the diagnosis of HSCR. Ninety five digital pathology slides were used for the construction and training of the algorithm. Fifty cases suspected for HSCR (727 slides) were used as a validation cohort. Image sets suspected to contain ganglion cells were chosen by the algorithm and then reviewed and scored by five pathologists, one HSCR expert and 4 non-experts. The algorithm was able to identify ganglion cells with 96% sensitivity and 99% specificity (in normal colon) as well as to correctly identify a case previously misdiagnosed as non-HSCR. The expert was able to achieve perfectly accurate diagnoses based solely on the images suggested by the algorithm, with over 95% time saved. Non-experts would require expert consultation in 20–58% of the cases to achieve similar results. The use of AI in the diagnosis of HSCR can greatly reduce the time and effort required for diagnosis and improve accuracy.
url https://doi.org/10.1038/s41598-021-82869-y
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