Abstract Background Based on DESTINY-Breast04 (HER2-low) and -06 (HER2-low/-ultralow) trials, T-DXd is approved for HER2-low (immunohistochemistry IHC 1+ or IHC 2+/in situ hybridization negative) or -ultralow (IHC 0 with membrane staining in ≤10% of tumor cells) mBC. Whole slide images (WSIs) from mBC biopsy samples scored HER2 IHC 0/1+ were rescored by pathologists and using digital pathology (DP) to evaluate concordance. Methods This retrospective real-world evidence study included 384 WSIs collected 2020-2023, stained with PATHWAY HER2 (4B5) assay scored as HER2 IHC 0 (n = 246) or 1+ (n = 138). Three pathologists each performed 2 blinded readings per WSI using 2023 ASCO/CAP guidelines; if readings differed, a reconciled score was used. Consensus was agreement by ≥2 of 3 pathologists. The same WSIs were analysed with 4 AI-computational DP tools in development. Concordance vs manual consensus was measured by overall percentage agreement (OPA) and Cohen κ, with review time recorded. Results Of 384 WSIs, 375 had aligned HER2 IHC scores by pathologist review; 9 had discordance. Among consensus cases, 2/3 agreement occurred in 154 WSIs (41.1%) and 3/3 in 221 (58.9%); 81 (21.6%) WSIs were reclassified as IHC 0 absent membrane staining, 85 (22.7%) as IHC 0 with membrane staining, 203 (51.4%) as IHC 1+, and 6 (1.6%) as IHC 2+. HER2 IHC rescoring results with the 4 DP tools are shown in Table 1. OPA (95% CI) between consensus and DP-assisted scores across all HER2 IHC score categories was 74% (69-78%), 73% (68-77%), 69% (64-74%), and 55% (50-60%). Cohen κ (95% CI) ranged from 0.33-0.59. Median review times were shorter with DP vs manual review. Conclusion Preliminary analysis suggests integrating AI-computational DP tools into HER2 IHC clinical workflows may reduce pathologist review time. Further analysis is underway to assess concordance of DP tools with manual scoring. Citation Format: Savitri Krishnamurthy, Dhanrajan Tiruchinapalli, Clara lam, Simon M. Collin, Rosemary Taylor, Linlin Luo, Anupriya Dutta, Ehab A. Elgabry, Michele S. Woo, Grace E. Kwon, Robert Egger, Jennifer A. Hipp, Lauren Brunner, Jeppe S. Thagaard, Thomas W. Ramsing, Henrik Høeg, Wonkyung Jung, Heon Song, Chang Ho Ahn, Vladimir Kravtsov, Patrick Frey, Ralf Banisch, Stella Redpath. Comparison of digital and artificial intelligence (AI)-computational algorithms for quantifying low/ultralow human epidermal growth factor receptor 2 (HER2) protein expression in metastatic breast cancer (mBC) from clinical samples abstract. In: Proceedings of the American Association for Cancer Research Annual Meeting 2026; Part 1 (Regular Abstracts); 2026 Apr 17-22; San Diego, CA. Philadelphia (PA): AACR; Cancer Res 2026;86(7 Suppl):Abstract nr 1455.
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Krishnamurthy et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69d1fdd4a79560c99a0a4248 — DOI: https://doi.org/10.1158/1538-7445.am2026-1455
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context:
Savitri Krishnamurthy
Dhanrajan Tiruchinapalli
Clara lam
Cancer Research
The University of Texas MD Anderson Cancer Center
AstraZeneca (United Kingdom)
University of Seoul
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