Ex vivo tissue modelling informs drug selection for rare cancers

Author:

Lee Jenny H.12,Ming Zizhen13,Cheung Veronica K. Y.45,Pedersen Bernadette1,Wykes James J.56,Palme Carsten E.56,Clark Jonathan J.567,Gupta Ruta45,Rizos Helen18ORCID

Affiliation:

1. Macquarie Medical School Macquarie University Sydney New South Wales Australia

2. Department of Medical Oncology, Chris O'Brien Lifehouse Sydney New South Wales Australia

3. Department of Immunology and Microbiology, Shanghai Institute of Immunology Shanghai Jiao Tong University School of Medicine Shanghai China

4. Department of Tissue Pathology and Diagnostic Oncology, Royal Prince Alfred Hospital Sydney New South Wales Australia

5. Sydney Medical School, Faculty of Medicine and Health The University of Sydney New South Wales Australia

6. Department of Head and Neck Surgery, Chris O'Brien Lifehouse Sydney New South Wales Australia

7. Royal Prince Alfred Institute of Academic Surgery, Sydney Local Health District Sydney New South Wales Australia

8. Melanoma Institute Australia The University of Sydney New South Wales Australia

Abstract

AbstractThe identification and therapeutic targeting of actionable gene mutations across many cancer types has resulted in improved response rates in a minority of patients. The identification of actionable mutations is usually not sufficient to ensure complete nor durable responses, and in rare cancers, where no therapeutic standard of care exists, precision medicine indications are often based on pan‐cancer data. The inclusion of functional data, however, can provide evidence of oncogene dependence and guide treatment selection based on tumour genetic data. We applied an ex vivo cancer explant modelling approach, that can be embedded in routine clinical care and allows for pathological review within 10 days of tissue collection. We now report that ex vivo tissue modelling provided accurate longitudinal response data in a patient with BRAFV600E‐mutant papillary thyroid tumour with squamous differentiation. The ex vivo model guided treatment selection for this patient and confirmed treatment resistance when the patient's disease progressed after 8 months of treatment.

Funder

National Health and Medical Research Council

Publisher

Wiley

Subject

Cancer Research,Oncology

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