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Patient-Derived Tumor Explants As a "Live" Preclinical Platform for Predicting Drug Resistance in Patients

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journal contribution
posted on 2021-05-26, 11:43 authored by Giuditta Viticchié, Ian Powley, Constantinos Demetriou, James Cooper, Michael Butterworth, Meeta Patel, Naila Abid, Gareth Miles, Lynne Howells, Howard Pringle, Marion MacFarlane, Catrin Pritchard
An understanding of drug resistance and the development of novel strategies to sensitize highly resistant cancers rely on the availability of suitable preclinical models that can accurately predict patient responses. One of the disadvantages of existing preclinical models is the inability to contextually preserve the human tumor microenvironment (TME) and accurately represent intratumoral heterogeneity, thus limiting the clinical translation of data. By contrast, by representing the culture of live fragments of human tumors, the patient-derived explant (PDE) platform allows drug responses to be examined in a three-dimensional (3D) context that mirrors the pathological and architectural features of the original tumors as closely as possible. Previous reports with PDEs have documented the ability of the platform to distinguish chemosensitive from chemoresistant tumors, and it has been shown that this segregation is predictive of patient responses to the same chemotherapies. Simultaneously, PDEs allow the opportunity to interrogate molecular, genetic, and histological features of tumors that predict drug responses, thereby identifying biomarkers for patient stratification as well as novel interventional approaches to sensitize resistant tumors. This paper reports PDE methodology in detail, from collection of patient samples through to endpoint analysis. It provides a detailed description of explant derivation and culture methods, highlighting bespoke conditions for particular tumors, where appropriate. For endpoint analysis, there is a focus on multiplexed immunofluorescence and multispectral imaging for the spatial profiling of key biomarkers within both tumoral and stromal regions. By combining these methods, it is possible to generate quantitative and qualitative drug response data that can be related to various clinicopathological parameters and thus potentially be used for biomarker identification.

History

Author affiliation

Leicester Cancer Research Centre, University of Leicester

Version

  • AM (Accepted Manuscript)

Published in

Journal of Visualized Experiments

Volume

2021

Issue

168

Publisher

MyJove Corporation

issn

1940-087X

eissn

1940-087X

Copyright date

2021

Available date

2021-08-07

Spatial coverage

United States

Language

en

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