Artificial intelligence algorithm accurately assesses oestrogen receptor immunohistochemistry in metastatic breast cancer cytology specimens: A pilot study

Author:

Li Brenna C.1,Hammond Scott2,Parwani Anil V.2,Shen Rulong2ORCID

Affiliation:

1. Dublin Jerome High School Dublin Ohio USA

2. Department of Pathology, Wexner Medical Center The Ohio State University Columbus Ohio USA

Abstract

AbstractObjectiveThe Visiopharm artificial intelligence (AI) algorithm for oestrogen receptor (ER) immunohistochemistry (IHC) in whole slide images (WSIs) has been successfully validated in surgical pathology. This study aimed to assess its efficacy in cytology specimens.MethodsThe study cohort comprised 105 consecutive cytology specimens with metastatic breast carcinoma. ER IHC WSIs were seamlessly integrated into the Visiopharm platform from the Image Management System (IMS) during our routine digital workflow, and an AI algorithm was employed for analysis. ER AI scores were compared with pathologists' manual consensus scores. Optimization steps were implemented and evaluated to reduce discordance.ResultsThe overall concordance between pathologists' scores and AI scores was excellent (99/105, 94.3%). Six cases exhibited discordant results, including two false‐negative (FN) cases due to abundant histiocytes incorrectly counted as negatively stained tumour cells by AI, two FN cases owing to weak staining, and two false‐positive (FP) cases where pigmented macrophages were erroneously counted as positively stained tumour cells by AI. The Pearson correlation coefficient of ER‐positive percentages between pathologists' and AI scores was 0.8483. Optimization steps, such as lowering the cut‐off threshold and additional training using higher input magnification, significantly improved accuracy.ConclusionsThe automated ER AI algorithm demonstrated excellent concordance with pathologists' assessments and accurately differentiated ER‐positive from ER‐negative metastatic breast carcinoma cytology cases. However, precision in identifying tumour cells in cytology specimens requires further enhancement.

Publisher

Wiley

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