Implementing an On-Slide Molecular Classification of Gastric Cancer: A Tissue Microarray Study

Author:

Costache Simona12,de Havilland Rebecca2,Diaz McLynn Sofia2,Sajin Maria13,Baltan Adelina12,Wedden Sarah4,D’Arrigo Corrado2

Affiliation:

1. Pathology Department, University of Medicine and Pharmacy “Carol Davila”, 020021 Bucharest, Romania

2. Poundbury Cancer Institute, Dorchester DT1 3BJ, UK

3. Pathology Department, University Emergency Hospital, 050098 Bucharest, Romania

4. Cancer Diagnostic Quality Assurance Services (CADQAS), Dorchester DT1 3BJ, UK

Abstract

Background and Objectives: Gastric cancer (GC) is one of the most commonly diagnosed cancers and the fourth cause of cancer death worldwide. Personalised treatment improves GC outcomes. A molecular classification is needed to choose the appropriate therapy. A classification that uses on-slide biomarkers and formalin-fixed and paraffin-embedded (FFPE) tissue is preferable to comprehensive genomic analysis. In 2016, Setia and colleagues proposed an on-slide classification; however, this is not in widespread use. We propose a modification of this classification that has six subgroups: GC associated with Epstein–Barr virus (GC EBV+), GC with mismatch-repair deficiency (GC dMMR), GC with epithelial–mesenchymal transformation (GC EMT), GC with chromosomal instability (GC CIN), CG that is genomically stable (GC GS) and GC not otherwise specified (GC NOS). This classification also has a provision for biomarkers for current or emerging targeted therapies (Her2, PD-L1 and Claudin18.2). Here, we assess the implementation and feasibility of this inclusive working classification. Materials and Methods: We constructed a tissue microarray library from a cohort of 79 resection cases from FFPE tissue archives. We used a restricted panel of on-slide markers (EBER, MMR, E-cadherin, beta-catenin and p53), defined their interpretation algorithms and assigned each case to a specific molecular subtype. Results: GC EBV(+) cases were 6%, GC dMMR cases were 20%, GC EMT cases were 14%, GC CIN cases were 23%, GC GS cases were 29%, and GC NOS cases were 8%. Conclusions: This working classification uses markers that are widely available in histopathology and are easy to interpret. A diagnostic subgroup is obtained for 92% of the cases. The proportion of cases in each subgroup is in keeping with other published series. Widescale implementation appears feasible. A study using endoscopic biopsies is warranted.

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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