Development of a deep‐learning model tailored for HER2 detection in breast cancer to aid pathologists in interpreting HER2‐low cases

Author:

Bannier Pierre‐Antoine1ORCID,Broeckx Glenn2,Herpin Loïc1,Dubois Rémy1,Van Praet Lydwine1,Maussion Charles1,Deman Frederik2,Amonoo Ellen3,Mera Anca3,Timbres Jasmine3,Gillett Cheryl3,Sawyer Elinor34,Gazińska Patrycja35,Ziolkowski Piotr6,Lacroix‐Triki Magali7,Salgado Roberto28,Irshad Sheeba34

Affiliation:

1. Owkin France Paris France

2. Department of Pathology ZAS Hospitals Antwerp Belgium

3. Cancer & Pharmaceutical Sciences King's College London London UK

4. Guy's & ST Thomas' NHS Trust London UK

5. Biobank Research Group, Lukasiewicz Research Network–PORT Polish Center for Technology Development Wroclaw Poland

6. Department of Clinical and Experimental Pathology Wroclaw Medical University Wroclaw Poland

7. Institut Gustave Roussy Villejuif France

8. Division of Research, Peter Mac Callum Cancer Centre Melbourne Australia

Abstract

AimsOver 50% of breast cancer cases are “Human epidermal growth factor receptor 2 (HER2) low breast cancer (BC)”, characterized by HER2 immunohistochemistry (IHC) scores of 1+ or 2+ alongside no amplification on fluorescence in situ hybridization (FISH) testing. The development of new anti‐HER2 antibody‐drug conjugates (ADCs) for treating HER2‐low breast cancers illustrates the importance of accurately assessing HER2 status, particularly HER2‐low breast cancer. In this study we evaluated the performance of a deep‐learning (DL) model for the assessment of HER2, including an assessment of the causes of discordances of HER2‐Null between a pathologist and the DL model. We specifically focussed on aligning the DL model rules with the ASCO/CAP guidelines, including stained cells' staining intensity and completeness of membrane staining.Methods and ResultsWe trained a DL model on a multicentric cohort of breast cancer cases with HER2‐IHC scores (n = 299). The model was validated on two independent multicentric validation cohorts (n = 369 and n = 92), with all cases reviewed by three senior breast pathologists. All cases underwent a thorough review by three senior breast pathologists, with the ground truth determined by a majority consensus on the final HER2 score among the pathologists. In total, 760 breast cancer cases were utilized throughout the training and validation phases of the study. The model's concordance with the ground truth (ICC = 0.77 [0.68–0.83]; Fisher P = 1.32e‐10) is higher than the average agreement among the three senior pathologists (ICC = 0.45 [0.17–0.65]; Fisher P = 2e‐3). In the two validation cohorts, the DL model identifies 95% [93% ‐ 98%] and 97% [91% ‐ 100%] of HER2‐low and HER2‐positive tumours, respectively. Discordant results were characterized by morphological features such as extended fibrosis, a high number of tumour‐infiltrating lymphocytes, and necrosis, whilst some artefacts such as nonspecific background cytoplasmic stain in the cytoplasm of tumour cells also cause discrepancy.ConclusionDeep learning can support pathologists' interpretation of difficult HER2‐low cases. Morphological variables and some specific artefacts can cause discrepant HER2‐scores between the pathologist and the DL model.

Publisher

Wiley

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