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Augmented interpretation of HER2, ER, and PR in breast cancer by artificial intelligence analyzer: enhancing interobserver agreement through a reader study of 201 cases

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Authors

Jung, Minsun; Song, Seung Geun; Cho, Soo Ick; Shin, Sangwon; Lee, Taebum; Jung, Wonkyung; Lee, Hajin; Park, Jiyoung; Song, Sanghoon; Park, Gahee; Song, Heon; Park, Seonwook; Lee, Jinhee; Kang, Mingu; Park, Jongchan; Pereira, Sergio; Yoo, Donggeun; Chung, Keunhyung; Ali, Siraj M.; Kim, So-Woon

Issue Date
2024-02-23
Publisher
BMC
Citation
Breast Cancer Research, Vol.26 no.31
Keywords
Artificial intelligence (AI)Breast cancerConcordanceDigital pathologyEstrogen receptor (ER)Human epidermal growth factor receptor 2 (HER2)Progesterone receptor (PR)Whole-slide image (WSI)
Abstract
Background
Accurate classification of breast cancer molecular subtypes is crucial in determining treatment strategies and predicting clinical outcomes. This classification largely depends on the assessment of human epidermal growth factor receptor 2 (HER2), estrogen receptor (ER), and progesterone receptor (PR) status. However, variability in interpretation among pathologists pose challenges to the accuracy of this classification. This study evaluates the role of artificial intelligence (AI) in enhancing the consistency of these evaluations.

Methods
AI-powered HER2 and ER/PR analyzers, consisting of cell and tissue models, were developed using 1,259 HER2, 744 ER, and 466 PR-stained immunohistochemistry (IHC) whole-slide images of breast cancer. External validation cohort comprising HER2, ER, and PR IHCs of 201 breast cancer cases were analyzed with these AI-powered analyzers. Three board-certified pathologists independently assessed these cases without AI annotation. Then, cases with differing interpretations between pathologists and the AI analyzer were revisited with AI assistance, focusing on evaluating the influence of AI assistance on the concordance among pathologists during the revised evaluation compared to the initial assessment.

Results
Reevaluation was required in 61 (30.3%), 42 (20.9%), and 80 (39.8%) of HER2, in 15 (7.5%), 17 (8.5%), and 11 (5.5%) of ER, and in 26 (12.9%), 24 (11.9%), and 28 (13.9%) of PR evaluations by the pathologists, respectively. Compared to initial interpretations, the assistance of AI led to a notable increase in the agreement among three pathologists on the status of HER2 (from 49.3 to 74.1%, p < 0.001), ER (from 93.0 to 96.5%, p = 0.096), and PR (from 84.6 to 91.5%, p = 0.006). This improvement was especially evident in cases of HER2 2+ and 1+, where the concordance significantly increased from 46.2 to 68.4% and from 26.5 to 70.7%, respectively. Consequently, a refinement in the classification of breast cancer molecular subtypes (from 58.2 to 78.6%, p < 0.001) was achieved with AI assistance.

Conclusions
This study underscores the significant role of AI analyzers in improving pathologists' concordance in the classification of breast cancer molecular subtypes.
ISSN
1465-542X
Language
English
URI
https://hdl.handle.net/10371/199048
DOI
https://doi.org/10.1186/s13058-024-01784-y
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