Improved concordance of challenging human epidermal growth factor receptor 2 dual in-situ hybridisation cases with the use of a digital image analysis algorithm in breast cancer
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Liu, Cheng
Srinivasan, Bhuvana
Wilkinson, Lisa
Dunk, Louisa
Yang, Yuanhao
Schreiber, Veronika
Tuffaha, Haitham
Kryza, Thomas
Hooper, John D
Lakhani, Sunil R
Snell, Cameron E
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Abstract
Aims Accurate assessment of human epidermal growth factor receptor 2 (HER2) expression by HER2 immunohistochemistry and in-situ hybridisation (ISH) is critical for the management of patients with breast cancer. The revised 2018 ASCO/CAP guidelines define 5 groups based on HER2 expression and copy number. Manual pathologist quantification by light microscopy of equivocal and less common HER2 ISH groups (groups 2–4) can be challenging, and there are no data on interobserver variability in reporting of these cases. We sought to determine whether a digital algorithm could improve interobserver variability in the assessment of difficult HER2 ISH cases.
Methods and results HER2 ISH was evaluated in a cohort enriched for less common HER2 patterns using standard light microscopy versus analysis of whole slide images using the Roche uPath HER2 dual ISH image analysis algorithm. Standard microscopy demonstrated significant interobserver variability with a Fleiss's kappa value of 0.471 (fair–moderate agreement) improving to 0.666 (moderate–good) with the use of the algorithm. For HER2 group designation (groups 1–5), there was poor–moderate reliability between pathologists by microscopy [intraclass correlation coefficient (ICC) = 0.526], improving to moderate–good agreement (ICC = 0.763) with the use of the algorithm. In subgroup analysis, the algorithm improved concordance particularly in groups 2, 4 and 5. Time to enumerate cases was also significantly reduced.
Conclusion This work demonstrates the potential of a digital image analysis algorithm to improve the concordance of pathologist HER2 amplification status reporting in less common HER2 groups. This has the potential to improve therapy selection and outcomes for patients with HER2-low and borderline HER2-amplified breast cancers.
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Histopathology
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83
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4
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© 2023 The Authors. Histopathology published by John Wiley & Sons Ltd.
This is an open access article under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non-commercial and no modifications or adaptations are made.
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Clinical sciences
Oncology and carcinogenesis
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Life Sciences & Biomedicine
Cell Biology
Pathology
breast cancer
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Gough, M; Liu, C; Srinivasan, B; Wilkinson, L; Dunk, L; Yang, Y; Schreiber, V; Tuffaha, H; Kryza, T; Hooper, JD; Lakhani, SR; Snell, CE, Improved concordance of challenging human epidermal growth factor receptor 2 dual in-situ hybridisation cases with the use of a digital image analysis algorithm in breast cancer, Histopathology, 2023, 83 (4), pp. 647-656