Advancing Ki67 hotspot detection in breast cancer: a comparative analysis of automated digital image analysis algorithms

Author:

Zwager Mieke C1ORCID,Yu Shibo1ORCID,Buikema Henk J1ORCID,de Bock Geertruida H2ORCID,Ramsing Thomas W3,Thagaard Jeppe3ORCID,Koopman Timco14ORCID,van der Vegt Bert1ORCID

Affiliation:

1. Department of Pathology University of Groningen, University Medical Center Groningen Groningen The Netherlands

2. Department of Epidemiology University of Groningen, University Medical Center Groningen Groningen The Netherlands

3. Visiopharm Hørsholm Denmark

4. Pathologie Friesland Leeuwarden The Netherlands

Abstract

AimManual detection and scoring of Ki67 hotspots is difficult and prone to variability, limiting its clinical utility. Automated hotspot detection and scoring by digital image analysis (DIA) could improve the assessment of the Ki67 hotspot proliferation index (PI). This study compared the clinical performance of Ki67 hotspot detection and scoring DIA algorithms based on virtual dual staining (VDS) and deep learning (DL) with manual Ki67 hotspot PI assessment.MethodsTissue sections of 135 consecutive invasive breast carcinomas were immunohistochemically stained for Ki67. Two DIA algorithms, based on VDS and DL, automatically determined the Ki67 hotspot PI. For manual assessment; two independent observers detected hotspots and calculated scores using a validated scoring protocol.ResultsAutomated hotspot detection and assessment by VDS and DL could be performed in 73% and 100% of the cases, respectively. Automated hotspot detection by VDS and DL led to higher Ki67 hotspot PIs (mean 39.6% and 38.3%, respectively) compared to manual consensus Ki67 PIs (mean 28.8%). Comparing manual consensus Ki67 PIs with VDS Ki67 PIs revealed substantial correlation (r = 0.90), while manual consensus versus DL Ki67 PIs demonstrated high correlation (r = 0.95).ConclusionAutomated Ki67 hotspot detection and analysis correlated strongly with manual Ki67 assessment and provided higher PIs compared to manual assessment. The DL‐based algorithm outperformed the VDS‐based algorithm in clinical applicability, because it did not depend on virtual alignment of slides and correlated stronger with manual scores. Use of a DL‐based algorithm may allow clearer Ki67 PI cutoff values, thereby improving the clinical usability of Ki67.

Publisher

Wiley

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