Title Automated image analysis of HER2 fluorescence in situ hybridization to refine definitions of genetic heterogeneity in breast cancer tissue /
Authors Radžiuvienė, Gedmantė ; Rasmusson, Allan ; Augulis, Renaldas ; Leščiūtė-Krilavičienė, Daiva ; Laurinavičienė, Aida ; Clim, Eduard ; Laurinavičius, Arvydas
DOI 10.1155/2017/2321916
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Is Part of BioMed research international.. London : Hindawi Publishing Corporation. 2017, art. no. 2321916, [11 p.].. ISSN 2314-6133. eISSN 2314-6141
Keywords [eng] breast carcinoma ; cancer patient ; cancer tissue
Abstract [eng] Human epidermal growth factor receptor 2 gene- (HER2-) targeted therapy for breast cancer relies primarily on HER2 overexpression established by immunohistochemistry (IHC) with borderline cases being further tested for amplification by fluorescence in situ hybridization (FISH). Manual interpretation of HER2 FISH is based on a limited number of cells and rather complex definitions of equivocal, polysomic, and genetically heterogeneous (GH) cases. Image analysis (IA) can extract high-capacity data and potentially improve HER2 testing in borderline cases. We investigated statistically derived indicators of HER2 heterogeneity in HER2 FISH data obtained by automated IA of 50 IHC borderline (2+) cases of invasive ductal breast carcinoma. Overall, IA significantly underestimated the conventional HER2, CEP17 counts, and HER2/CEP17 ratio; however, it collected more amplified cells in some cases below the lower limit of GH definition by manual procedure. Indicators for amplification, polysomy, and bimodality were extracted by factor analysis and allowed clustering of the tumors into amplified, nonamplified, and equivocal/polysomy categories. The bimodality indicator provided independent cell diversity characteristics for all clusters. Tumors classified as bimodal only partially coincided with the conventional GH heterogeneity category. We conclude that automated high-capacity nonselective tumor cell assay can generate evidence-based HER2 intratumor heterogeneity indicators to refine GH definitions.
Published London : Hindawi Publishing Corporation
Type Journal article
Language English
Publication date 2017