Understanding tumour growth variability in breast cancer xenograft models identifies PARP inhibition resistance biomarkers.
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Peer-reviewed
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Abstract
Understanding the mechanisms of resistance to PARP inhibitors (PARPi) is a clinical priority, especially in breast cancer. We developed a novel mathematical framework accounting for intrinsic resistance to olaparib, identified by fitting the model to tumour growth metrics from breast cancer patient-derived xenograft (PDX) data. Pre-treatment transcriptomic profiles were used with the calculated resistance to identify baseline biomarkers of resistance, including potential combination targets. The model provided both a classification of responses, as well as a continuous description of resistance, allowing for more robust biomarker associations and capturing the observed variability. Thirty-six resistance gene markers were identified, including multiple homologous recombination repair (HRR) pathway genes. High WEE1 expression was also linked to resistance, highlighting an opportunity for combining PARP and WEE1 inhibitors. This framework facilitates a fully automated way of capturing intrinsic resistance, and accounts for the pharmacological response variability captured within PDX studies and hence provides a precision medicine approach.
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Acknowledgements: We thank AstraZeneca for PostDoc Fellowship funding for this project. The authors would also like to thank the Oncology Data Science, DMPK and Early Oncology OTD Bioscience groups in Oncology R&D, AstraZeneca for productive discussions and feedback on the study and manuscript. The authors would also like to thank our collaborators and their teams (Serra Lab) at Vall d’Hebron Institute of Oncology.
Funder: Astrazeneca PostDoc fellowship
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2397-768X

