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Concordance in Breast Cancer Grading by Artificial Intelligence on Whole Slide Images Compares With a Multi-Institutional Cohort of Breast Pathologists

Authors :
Mantrala, Siddhartha
Ginter, Paula S.
Mitkari, Aditya
Joshi, Sripad
Prabhala, Harish
Ramachandra, Vikas
Kini, Lata
Idress, Romana
D'Alfonso, Timothy M.
Fineberg, Susan
Jaffer, Shabnam
Sattar, Abida K.
Chagpar, Anees B.
Wilson, Parker
Singh, Kamaljeet
Harigopal, Malini
Koka, Dinesh
Source :
Archives of Pathology & Laboratory Medicine. November, 2022, Vol. 146 Issue 11, p1369, 9 p.
Publication Year :
2022

Abstract

* Context.--Breast carcinoma grade, as determined by the Nottingham Grading System (NGS), is an important criterion for determining prognosis. The NGS is based on 3 parameters: tubule formation (TF), nuclear pleomorphism (NP), and mitotic count (MC). The advent of digital pathology and artificial intelligence (AI) have increased interest in virtual microscopy using digital whole slide imaging (WSI) more broadly. Objective.--To compare concordance in breast carcinoma grading between AI and a multi-institutional group of breast pathologists using digital WSI. Design.--We have developed an automated NGS framework using deep learning. Six pathologists and AI independently reviewed a digitally scanned slide from 137 invasive carcinomas and assigned a grade based on scoring of the TF, NP, and MC. Results.--Interobserver agreement for the pathologists and AI for overall grade was moderate ([kappa] = 0.471). Agreement was good ([kappa] = 0.681), moderate ([kappa] = 0.442), and fair ([kappa] = 0.368) for grades 1, 3, and 2, respectively. Observer pair concordance for AI and individual pathologists ranged from fair to good ([kappa] = 0.313-0.606). Perfect agreement was observed in 25 cases (27.4%). Interobserver agreement for the individual components was best for TF ([kappa] = 0.471 each) followed by NP ([kappa] = 0.342) and was worst for MC ([kappa] = 0.233). There were no observed differences in concordance amongst pathologists alone versus pathologists + AI. Conclusions.--Ours is the first study comparing concordance in breast carcinoma grading between a multi-institutional group of pathologists using virtual microscopy to a newly developed WSI AI methodology. Using explainable methods, AI demonstrated similar concordance to pathologists alone. doi: 10.5858/arpa.2021-0299-OA<br />Over the years, microscopic evaluation of hematoxylin-eosin-stained slides from patient samples has been the gold standard for cancer diagnosis and grading of malignancy. The Nottingham Grading System (NGS) is widely [...]

Details

Language :
English
ISSN :
15432165
Volume :
146
Issue :
11
Database :
Gale General OneFile
Journal :
Archives of Pathology & Laboratory Medicine
Publication Type :
Academic Journal
Accession number :
edsgcl.728170917
Full Text :
https://doi.org/10.5858/arpa.2021-0299-OA