4.6 Article

Implementing Systems Modelling and Molecular Imaging to Predict the Efficacy of BCL-2 Inhibition in Colorectal Cancer Patient-Derived Xenograft Models

Journal

CANCERS
Volume 12, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/cancers12102978

Keywords

ABT-199; Venetoclax; colorectal cancer; BCL-2; FOLFOX; PDX; preclinical imaging; radiomics; systems biology; deterministic modelling

Categories

Funding

  1. Health Research Board, Ireland [HRA-POR-2014-547]
  2. Science Foundation Ireland [13/IA/1881, 14/IA/2582]
  3. Science Foundation Ireland (SFI) Career Development Award 'Coloforetell' [13/CDA/2183]
  4. European Union's Horizon 2020 Health Research and Innovation award 'Colossus' [754923]
  5. European Union [731105]
  6. Irish Cancer Society Collaborative Cancer Research Centre BREAST-PREDICT [CCRC13GAL]
  7. Science Foundation Ireland Investigator Programme OPTi-PREDICT [15/IA/3104]
  8. Science Foundation Ireland Strategic Partnership Programme Precision Oncology Ireland [18/SPP/3522]
  9. Science Foundation Ireland (SFI) [18/RI/5759]
  10. European Regional Development Fund (ERDF) [13/RC/2073]
  11. Dutch Cancer Society (KWF Kankerbestrijding) [12085/2018-2, UM 2017-8295]
  12. H2020 Societal Challenges Programme [754923] Funding Source: H2020 Societal Challenges Programme
  13. Health Research Board (HRB) [HRA-POR-2014-547] Funding Source: Health Research Board (HRB)

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Simple Summary Drugs that sensitise tumours to chemotherapy by enhancing cell death signalling are of significant clinical interest. However, it is challenging to determine which colorectal cancer patients may benefit from such sensitisers. The ability to predict this would be advantageous. Here we show that protein profiling combined with mathematical modelling identifies responsive tumours. Using our modelling method, we predicted the effect of adding a sensitizer drug to chemotherapy in two patient-derived colorectal tumours. We grew the tumours in mice, treated animals with these drugs and performed PET/CT imaging. The predicted sensitive tumours were smaller when the sensitising drug was added to chemotherapy whilst it did not further reduce tumour size in non-sensitive tumours, thus validating our prediction. PET imaging also supported our predictions. CT analysis (radiomics) revealed features that distinguished the two tumours. This was the first application of radiomic analyses to PDX derived CT data. Resistance to chemotherapy often results from dysfunctional apoptosis, however multiple proteins with overlapping functions regulate this pathway. We sought to determine whether an extensively validated, deterministic apoptosis systems model, 'DR_MOMP', could be used as a stratification tool for the apoptosis sensitiser and BCL-2 antagonist, ABT-199 in patient-derived xenograft (PDX) models of colorectal cancer (CRC). Through quantitative profiling of BCL-2 family proteins, we identified two PDX models which were predicted by DR_MOMP to be sufficiently sensitive to 5-fluorouracil (5-FU)-based chemotherapy (CRC0344), or less responsive to chemotherapy but sensitised by ABT-199 (CRC0076). Treatment with ABT-199 significantly improved responses of CRC0076 PDXs to 5-FU-based chemotherapy, but showed no sensitisation in CRC0344 PDXs, as predicted from systems modelling. F-18-Fluorodeoxyglucose positron emission tomography/computed tomography (F-18-FDG-PET/CT) scans were performed to investigate possible early biomarkers of response. In CRC0076, a significant post-treatment decrease in mean standard uptake value was indeed evident only in the combination treatment group. Radiomic CT feature analysis of pre-treatment images in CRC0076 and CRC0344 PDXs identified features which could phenotypically discriminate between models, but were not predictive of treatment responses. Collectively our data indicate that systems modelling may identify metastatic (m)CRC patients benefitting from ABT-199, and that F-18-FDG-PET could independently support such predictions.

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