2017
DOI: 10.1186/s13058-017-0920-8
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Establishing and characterizing patient-derived xenografts using pre-chemotherapy percutaneous biopsy and post-chemotherapy surgical samples from a prospective neoadjuvant breast cancer study

Abstract: BackgroundPatient-derived xenografts (PDXs) are increasingly used in cancer research as a tool to inform cancer biology and drug response. Most available breast cancer PDXs have been generated in the metastatic setting. However, in the setting of operable breast cancer, PDX models both sensitive and resistant to chemotherapy are needed for drug development and prospective data are lacking regarding the clinical and molecular characteristics associated with PDX take rate in this setting.MethodsThe Breast Cancer… Show more

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Cited by 57 publications
(77 citation statements)
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“…We have validated PANOPLY’s predictions in a single patient at present using PDXs, in future, we plan to validate PANOPLY-predicted drugs in PDXs derived from additional patients. Like several other groups and we have shown, PDX models faithfully represent tumor biology 23,37 , so these results should provide insight into PANOPLY’s reliability. In conclusion, our results indicate that combining multiple sources of -omics and clinical data to predict promising agents for a patient or groups of patients with cancer is feasible.…”
Section: Discussionsupporting
confidence: 79%
See 1 more Smart Citation
“…We have validated PANOPLY’s predictions in a single patient at present using PDXs, in future, we plan to validate PANOPLY-predicted drugs in PDXs derived from additional patients. Like several other groups and we have shown, PDX models faithfully represent tumor biology 23,37 , so these results should provide insight into PANOPLY’s reliability. In conclusion, our results indicate that combining multiple sources of -omics and clinical data to predict promising agents for a patient or groups of patients with cancer is feasible.…”
Section: Discussionsupporting
confidence: 79%
“…To validate PANOPLY’s drug predictions, we tested PDX models 23 obtained from BEAUTY 24 study (BC_051_1_1) for a TNBC patient whose tumor did not respond to neoadjuvant paclitaxel and anthracycline/cyclophosphamide treatment (Supplementary Methods).…”
Section: Methodsmentioning
confidence: 99%
“…3D organoid cultures recapitulate in vivo tissue structural organization and more closely resemble the actual tumor biology than 2D cultures of primary or immortalized cells (31), thereby providing an attractive platform for testing cancer cell response to drugs (32). As previously described, we generated a panel of PDX models from patients with primary breast cancer recruited in a prospective neoadjuvant study of anthracycline-and taxane-based chemotherapy, with PDX models derived from both baseline percutaneous biopsy prior to chemotherapy and postchemotherapy surgical samples (33,34). In addition to in vivo PDX studies, we also successfully grew organoids using the PDX tumors to test response to therapies and to identify molecular markers that might be associated with response ( Figure 1A).…”
Section: Resultsmentioning
confidence: 99%
“…The BEAUTY (Breast Cancer Genome Guided Therapy) study (NCT ID: NCT02022202) is an example of such a precision medicine study. It is a prospective neoadjuvant chemotherapy trial of stage I to III patients with invasive breast cancer, using percutaneous tumor biopsies (PTBs) to establish stably propagated, patient‐derived xenografts (PDXs) into immunodeficient NOD/SCID or NOD/SCID/IL2γ ‐receptor null (NSG) mice . These PDXs provide opportunities to assess dose–response relationships and pharmacogenomic data to accurately predict drug responses in patients.…”
Section: Integrating Pharmacogenomic Information Into Medical Practicementioning
confidence: 99%